A Techno-Economic Model for Benchmarking the Production Cost of Lithium-Ion Battery Cells

: In response to the increasing expansion of the electric vehicles (EVs) market and demand, billions of dollars are invested into the battery industry to increase the number and production volume of battery cell manufacturing plants across the world, evident in Giga-battery factories. On the other side, despite the increase in the battery cell raw material prices, the total production cost of battery cells requires reaching a speciﬁc value to grow cost-competitive with internal combustion vehicles. Further, obtaining a high-quality battery at the end of the production line requires integrating numerous complex processes. Thus, developing a cost model that simultaneously includes the physical and chemical characteristics of battery cells, commodities prices, process parameters, and economic aspects of a battery production plant is essential in identifying the cost-intensive areas of battery production. Moreover, such a model is helpful in ﬁnding the minimum efﬁcient scale for the battery production plant which complies with the emergence of Giga-battery plants. In this regard, a process-based cost model (PBCM) is developed to investigate the ﬁnal cost for producing ten state-of-the-art battery cell chemistries on large scales in nine locations. For a case study plant of 5.3 GWh.year − 1 that produces prismatic NMC111-G battery cells, location can alter the total cost of battery cell production by approximately 47 US$/kWh, which is dominated by the labor cost. This difference could decrease by approximately 31% at the minimum efﬁcient scale of the battery production plant, which is 7.8 GWh.year − 1 for the case study in this work. Finally, a comprehensive sensitivity analysis is conducted to investigate the ﬁnal prices of battery cell chemistries due to the changes in commodities prices, economic factors of the plant, battery cell production parameters, and production volume. The outcomes of this work can support policy designers and battery industry leaders in managing production technology and location.


Introduction
While the transition from fossil fuels to the electrification of the transportation sector is pursued swiftly over the globe, an enormous increase has been forecasted in this sector in the coming decades. According to the sustainable development scenario, the global EVs stock will reach somewhere near 250 million in 2030, eight times more than today's [1]. In line with this change, which is also supported by incentive schemes by policymakers [2], battery capacity demand in the transportation section is surging from 170 to greater than 1200 GWh from 2020 to 2030 to meet EVs market needs [3][4][5].
On the other hand, the majority of present transportation systems are based on internal combustion vehicles (ICVs) [6] due to the lower price compared with EVs, where the battery is the most expensive segment in a car rather than chassis, assembly, interior, powertrain, and exterior [7]. Considering EVs, a battery consists of one-third of an electric vehicles' cost [7], but this value sometimes exceeds 40%, e.g., 2018 Tesla Model 3 [6]. To make cell plant. Section 2 provides a brief explanation of the production model, proceeding with a detailed study of the design and calculation of the cost model. In Section 3, a case study for different countries is presented and analyzed, and the main cost-driver areas of batteries are discussed in detail. Section 3 proceeds to compare the results with recently available cost models. Moreover, a study into the cost-efficient size of a plant is discussed. In Section 4, first, the results of the model for ten battery chemistries are presented. Then, a comprehensive sensitivity analysis is conducted to investigate the effect of process parameters, commodity prices, and economic aspects of the plant on each battery cell chemistry.

Methodology
From a PBCM perspective, the chemical and physical characteristics of a battery cell can be transformed into an operational model by which required energy and material, number and size of machinery, land footprint, and labor for applied units in the plant are extracted to meet the desired production requirement. Adding the unit price of deployed resources and a set of economic factors leads to a cell's manufacturing cost breakdown [4]. In other words, process-based cost modeling simultaneously embraces cell characteristics, operating conditions, and prices of resources. Such a model can deploy economics of scale to study the minimum effect scale for a battery manufacturing plant in the direction of a cost-effective battery cell. Moreover, the obtained results highlight a set of processes, economics, and technical and technological parameters having more impact on the total cost of the cell. In this study, a generalized and flexible bottom-up cost model is based on a cell production process model, which has already been developed by Jinasena et al. [20] on an industrial scale. A graphical model architecture is depicted in Figure 1 to clarify the structure of the current study as well as inputs and outputs. The current cost model is based on a modified battery cell production model already developed by Jinasena et al. [20] to estimate energy and material flow in a large-scale battery cell plant. Section 2 provides a brief explanation of the production model, proceeding with a detailed study of the design and calculation of the cost model. In Section 3, a case study for different countries is presented and analyzed, and the main cost-driver areas of batteries are discussed in detail. Section 3 proceeds to compare the results with recently available cost models. Moreover, a study into the cost-efficient size of a plant is discussed. In Section 4, first, the results of the model for ten battery chemistries are presented. Then, a comprehensive sensitivity analysis is conducted to investigate the effect of process parameters, commodity prices, and economic aspects of the plant on each battery cell chemistry.

Methodology
From a PBCM perspective, the chemical and physical characteristics of a battery cell can be transformed into an operational model by which required energy and material, number and size of machinery, land footprint, and labor for applied units in the plant are extracted to meet the desired production requirement. Adding the unit price of deployed resources and a set of economic factors leads to a cell's manufacturing cost breakdown [4]. In other words, process-based cost modeling simultaneously embraces cell characteristics, operating conditions, and prices of resources. Such a model can deploy economics of scale to study the minimum effect scale for a battery manufacturing plant in the direction of a cost-effective battery cell. Moreover, the obtained results highlight a set of processes, economics, and technical and technological parameters having more impact on the total cost of the cell. In this study, a generalized and flexible bottom-up cost model is based on a cell production process model, which has already been developed by Jinasena et al. [20] on an industrial scale. A graphical model architecture is depicted in Figure 1 to clarify the structure of the current study as well as inputs and outputs.  First, applied units and relevant technologies in the battery process model are briefly introduced, and then the development and calculation of constituent layers for the cost model are discussed in detail.

Battery Process Model
The manufacturing of lithium-ion battery cells is a highly complex process chain requiring the inclusion of different consecutive and interconnected units. A slight variation in one parameter might have an immense impact on the functionality of other units and, consequently, on the performance and cost of the process chain output [21]. In general, the production chain of a battery cell is repeatedly divided into three principal categories: electrode manufacturing, cell assembly, and cell finishing. Every single category consists of individual units. A schematic diagram of the battery cell process chain, which illustrates constituent units in each category, is represented in Figure 2.

Battery Process Model
The manufacturing of lithium-ion battery cells is a highly complex process chain requiring the inclusion of different consecutive and interconnected units. A slight variation in one parameter might have an immense impact on the functionality of other units and, consequently, on the performance and cost of the process chain output [21]. In general, the production chain of a battery cell is repeatedly divided into three principal categories: electrode manufacturing, cell assembly, and cell finishing. Every single category consists of individual units. A schematic diagram of the battery cell process chain, which illustrates constituent units in each category, is represented in Figure 2. Electrode manufacturing of battery cells begins with a mixing unit, where active materials, conductive nano microscopic carbon black [22], electrochemical inert binder [23], and conductive additives, e.g., carbon, are carefully mixed as powders (dry mixing) with a specific weight ratio between components to ensure the high electrochemical performance of the electrode, followed by adding solvent to form a homogenous slurry (wet mixing). Production scale [23] and quality requirements [20] lead battery cell producers to select different mixer systems. Planetary, intensive high-speed, universal, and static mixers are suitable for industrial production scale. A detailed study of various sorts of mixing technologies can be found in the work of Bryntesen et al. [23]. An intensive mixer for both cathode and anode production lines of battery cell plants has been assumed in the process model of this work.
A well-mixed slurry of mixing units is pumped to be coated, with a fixed thickness [23], on Al or Cu foil as a cathode or anode, respectively. To meet low-cost battery cell requirements, an automated, continuous, and integrated slot-die coater has been selected among different systems of coater machines at the industrial scale of the production [22,23]. The coating unit is conventionally integrated into the drying and solvent recovery units [24]. Within a dryer unit, solvent from a wet-coated slurry layer on current collectors evaporates by the application of heat energy from hot air in a conventional convective drying unit [23], which is currently a predominant method for electrode drying. Supplementing infrared drying to the dryer mentioned above enhances the efficiency of the dryer unit [22], causing a reduction in battery cell manufacturing costs. The dryer unit in the battery process model of this work consists of convective air drying and infrared radia- Electrode manufacturing of battery cells begins with a mixing unit, where active materials, conductive nano microscopic carbon black [22], electrochemical inert binder [23], and conductive additives, e.g., carbon, are carefully mixed as powders (dry mixing) with a specific weight ratio between components to ensure the high electrochemical performance of the electrode, followed by adding solvent to form a homogenous slurry (wet mixing). Production scale [23] and quality requirements [20] lead battery cell producers to select different mixer systems. Planetary, intensive high-speed, universal, and static mixers are suitable for industrial production scale. A detailed study of various sorts of mixing technologies can be found in the work of Bryntesen et al. [23]. An intensive mixer for both cathode and anode production lines of battery cell plants has been assumed in the process model of this work.
A well-mixed slurry of mixing units is pumped to be coated, with a fixed thickness [23], on Al or Cu foil as a cathode or anode, respectively. To meet low-cost battery cell requirements, an automated, continuous, and integrated slot-die coater has been selected among different systems of coater machines at the industrial scale of the production [22,23]. The coating unit is conventionally integrated into the drying and solvent recovery units [24]. Within a dryer unit, solvent from a wet-coated slurry layer on current collectors evaporates by the application of heat energy from hot air in a conventional convective drying unit [23], which is currently a predominant method for electrode drying. Supplementing infrared drying to the dryer mentioned above enhances the efficiency of the dryer unit [22], causing a reduction in battery cell manufacturing costs. The dryer unit in the battery process model of this work consists of convective air drying and infrared radiation. Further to the drying unit, the vacuum drying unit has been presupposed to be integrated into the dryer unit and the total solvent is entirely evaporated. The process model proceeds with calendering, where constant pressure is exerted using a set of top and bottom rollers [22] to decrease thickness and porosity of the electrodes [23], then ends up with a slitting unit, where rolling knives cut the prepared electrodes into the desired dimensions.
Within the winding unit of the process model, the separator is fed as an endless band between dried cathode and anode electrodes being wound around a winding mandrel [22]. Current collectors are welded, most commonly via ultrasonic technology [24], and then are inserted into a casing and sealed [20]. By the application of high-precision dosing needles, the filling is conducted where the cell is filled with electrolytes and then closed.
After connecting the cells to the contact pins in formation racks, the formation and aging begin with the charge and discharge of battery cells based on precisely predefined current and voltage profiles under a low rate [22,24]. The rate gradually increases to ensure the formation of a protective interface layer, called a solid electrolyte interphase (SEI), between electrolytes and the anode electrode. In search of measurements for quality assurance of cell characteristics and performance, the cells are stored on aging shelves and monitored for an extended time. This process might take up to several weeks based on the aging temperature [22]. The defective cells are regarded as rejected ones.

Structure of Developed Cost Model
A scalable and flexible bottom-up battery cell cost model is developed to combine seven interconnected layers: material and scrap, energy, machinery and installation, labor, building and land, maintenance, and overhead. The main objective of each layer is to calculate the share of that individual layer among the total cost of a battery cell. As mentioned earlier, such implemented strategy of cost modeling aids in identifying the most significant cost driver(s) behind the battery cell cost. Moreover, the scalability of the present cost model to a wide range of manufacturing capacities gives insight into cost-effective production scale with the deployment of the economics of scale. Moreover, the model's flexibility could cover numerous cell sizes, battery chemistries, the manufacturing plant's location, etc.

Material and Scrap
The unit price for materials in a cell, particularly cathode active materials (CAM), is non-constant and unique because numerous parameters affect their prices, especially changeable raw material prices and relevant manufacturing costs [6]. Therefore, an accurate battery cell cost model requires an updated price of the material. In this work, two assumptions are made for the unit price of the material. First, the existence of a highvolume market for all materials except cathode active material is assumed [18], resulting in the insensitivity of unit prices of these components to the volume of the battery production plant. Driven by this, the manufacturers prefer to purchase these products as ready-touse [6,18]. These prices are formulated as I, J, K set indexes and the unit price for each of them is listed in Table S1. Secondly, it is assumed that the unit price of cathode active material has a sensitivity to the production volume [18], the relevant commodities prices, and the location of the plant. In search of this, the calculation for the unit price of CAMs is based on the extraction of metal content by the stoichiometric of CAM (x g CAM ), the average unit price of constituent raw material metals in the desired CAM (P g CAM ), and the inclusion of relevant process factors for the conversion of required precursors to the desired CAMs (p h CAM ). In addition, parameter β is defined as a price factor to relate the calculated unit price of CAMs to the plant's annual production volume (θ). Using such a strategy considerably benefits from the consideration of the sensitivity of CAM price to production volume instead of considering a fixed price for CAMs. Moreover, there is the possibility to improve the processes required to convert the precursors to CAMs in a battery cell. More importantly, investigation of changes in raw material prices into the unit price of CAMs can be investigated since the unit price of CAMs and, consequently, of battery cells, are highly linked to the volatility of raw material prices. In addition to the above, as the presented model aims to present the results of PBCM for different locations, a location-based process function (Ω loc,prs ) is added to distinguish between the cost of needed resources, e.g., labor, energy, and land for the production of CAMs in different countries.
To acquire a precise estimation of material cost, averages of five years of metal prices, from 2017 to 2021, have been considered in this work [25], defined as the G set index in Table S1. Equation (1), presented below, is applied to estimate the unit price for CAMs in this work based on the method explained above. The relevant process factors, defined as the H set index, are extracted from supplementary materials of the work of Wentker et al. [6].
Considering Ω loc,prs , this function is divided into two parts. The first part includes the cost factors which are highly dependent on the unit price of the needed resources in a specific location, including labor, utilities, and land. The second part includes those cost factors associated with the production process of CAMs, which is not highly dependent on the location, e.g., the equipment required in the production of CAMs. This part is assumed to be constant for all locations in this study. Thus, the Ω loc,prs is formulated as: Ω loc,prs = ε × λ lab P lab,loc P lab,bsc + λ nrg P nrg,loc P nrg,bsc + λ bld P bld,loc P bld,bsc where ε is an estimation for the changeable portion of the location-based process function in the production of CAMs and λ is the share of each cost factor. In addition, (1 − ε) covers the portion of constant cost factors to the location in this study. It should be noted that P lab indicates an average hourly wage for different classes of workers, P nrg is the unit price of utilities, and P bld is the unit price for land and building. In addition, both loc and bsc indices show a specific location and the base country. In general, a full battery cell consists of positive and negative electrode active materials, binder, solvent, conductive carbon, separator, electrolyte, current collector foils, positive and negative terminals, and cell container. Since the required parameters for the calculation of each component varies in the unit, elements of a battery cell are divided into three groups where the summation of defined groups forms the material cost of one produced battery cell. Moreover, material scrap is included by defining a constant percentage for each component in the cell to cover the material scrap costs, since the process chain of battery manufacturing is not perfect.

Mass-Related Components (I Set)
Based on the chemistry and size of a battery cell, different mass and mass fractions of active materials, binder, conductive carbon, and solvent are mixed to form the total mass required for the cathode and anode slurry. In addition, an organic liquid electrolyte is injected into the produced cell in the filling process step. These components are defined as the I set index, where i indicates each element in the defined set in this work. Furthermore, generated scrap, within the manufacturing units in the plant for the components in a cell, is specified to each element of the I set as a scarp percentage rate (S i ). Thus, the material and scrap cost of mass-related components (C I msp ) in a battery cell is estimated as: where m i mat is the mass of i components in a cell and P i mat indicates the unit price for i elements. It should be noted that the price of CAMs is calculated based on Equations (1) and (2).

Area-Related Components (J Set)
In this work, separator and positive and negative current collector components (j elements) are assumed as area-related components of the J set. Thus, estimation of cost for the area-related components is performed based on unit price (P j mat ) and the required area of element j in a battery cell. The area of these elements is calculated based on the width (w j ), length (l j ), and the number of bi-cell layers (N j bcl ) of area-based components of a battery cell. In addition, the generated scrap for the elements in the defined set is presumed as S j . Thus, the area-related components cost (C J msp ) is estimated as

Item-Related Components (K Set)
For the simplicity of modeling in the project at hand, negative and positive terminals and cell container are assumed as item-related components since the mass and size differentials of these elements do not considerably impose changes on the final price of a battery cell. Thus, by assuming a fixed price for the mentioned elements (P k mat ) with the simultaneous consideration of scrap percentage rate (S k ), the cost of item-related components (C K msp ) is estimated as While the summation of Equations (3)-(5) results in total material and scrap cost of used components in a battery cell, a cell rejection percentage rate (R) needs to be defined for the inclusion of those battery cells that are rejected at the end of production line, since the yield in the testing process step is not 100% [26]. It is worthy to note that the scrap includes materials which are wasted within the battery production process steps, from mixing to formation, and the rejection includes those battery cells that could not meet the specified test requirements in the testing process step. Driven by this, the total material and scrap cost for the produced battery cell is estimated as

Energy
In general, energy cost in available cost models is assumed as a constant percentage of other layers. For instance, a constant 3% of the material and labor costs are estimated as the energy cost in some publications [17,18]. In the present study, the energy cost for each unit is separately calculated since the current work is based on a modified version of the work of Jinasena et al. [20], where energy and material flow for large-scale battery production plants have already been modeled. Hence, the total electrical energy cost in the plant (C nrg ) is calculated based on the needed energy of each unit of the plant to produce one cell (E u ) and the unit price for energy (P nrg ). U is presupposed as a set index that includes all process steps of battery manufacturing presented in Figure 2 and u indicates each process step.

Machinery and Installation
High levels of accuracy and consistency in the battery production plant are achieved with well-integrated machinery [27]. The number of required machines or production lines for an individual unit in battery cell production directly results from the processing rate, cycle time, and the annual throughput of the plant.
By the application of a flow scale factor (ζ flw ), Equation (8), the base case model in the work by Jinasena et al. [20] can be scaled up and/or down. The logic behind this is the required mass of slurry to product cells in a certain time slot varies in capacity, battery chemistry, and size; consequently, the size of mixers required for both cathode and anode units varies. Aforesaid logic is interpreted as Equation (8) where M θ estimates the required size of the mixer to convey adequate slurry to the production line(s) to meet the annual production volume requirement of the plant and M θ meets the same requirement for the base case study.
In this work, it is assumed that the production lines are dedicated, meaning producing only the considered battery cell [28]. Thus, rounding up the flow scale factor calculates the number of production lines required (N u mch ) for each unit in the plant (except mixing and dry room units) compared to the base case study. The scaling up/down will be conducted differently for the mixing and dry room, explained in the following equation ( − sign indicates the ceiling function used to round up.): The machinery and installation cost for the mixing and the dry room is calculated in a different way to other process steps. Considering the dry room, the required size of drying room (V drr ) for each capacity of the plant is scaled up or down using the scaling factor and the volume of entry air into the dry room in the base case study ( V drr ) follows as Thus, the capital cost and installation of dry room (P u=drr ) for each capacity are calculated with Equation (11) in which P u=drr is the cost of the dry room for the base case and µ drr is used as a scaling power factor based on the sixth-tenth rule.
As mentioned above, since the size of the mixer varies in the production volume of the plant and the needed slurry for individual battery chemistry, a flow scale factor is applied to distribute the unit price of mixers in the base case study ( P u=mix,cat , P u=mix,and ) to smaller and larger ones. Thus, the price of mixers for each capacity of the plant (P u=mix ) follows as where µ mix is the scaling factor of mixers. This factor is assumed to be 0.7 in this project [18]. The applied machines for battery cell production are depreciated over a period of time. Driven by this, τ mch requires to be defined as the depreciation period of machinery and equipment or productive life of the equipment. To implement this parameter in the cost model, the percent discount rate (r loc ) is also considered for the location and year of study to factor in the time value of money. These requirements are satisfied by means of machinery annualized factor (F U anl ) for equipment [29,30], and follows as Since this work intends to investigate the battery production cost for different locations, the installation cost of machinery and equipment requires specification to the location of study. The logic behind this matter is that, for a specific location, local labor is employed to install the production lines and equipment [31]. In search of this, an installation coefficient (α mch,ins ) is defined to subtract the share of installation cost from the total cost of equipment and installation. To investigate the effect of using local labor in the current model, a comparative installation factor (φ ins,loc ) is specified for each location, defined as the average wage of labor in the location of study (P lab,loc ) to the average wage of labor for the location from where the equipment is sourced (P lab,sup ). Equation (14) presents the defined comparative installation factor.
Considering Equations (8)-(14), the capital equipment and installation cost (C eqp ) layer for the production of one cell in a specific location of the plant is formulated as where P u mch is the unit price for the machinery applied in the model (except mixing and dry room) and N cell shows the total number of cells produced per year.
Concerning the variable N cell , it is a function of the annual capacity of the plant factory (θ) and the mass (m cell ) and specific energy (E spf ) of the produced cell. In other words, the number of cells produced per year is calculated as It is worthy to mention that the unit price for the machinery and installation of battery manufacturing is listed in Table S1.

Labor
A battery production plant requires two groups of labor in general. The first group, named direct labor, includes operators and technicians, and the second one, named indirect labor, embraces overhead and maintenance staff, management personnel, and engineers [32].
For the modeling of labor cost, first, the total number of required operators in a working shift (N opr ) is distributed between the units in the plant based on the number of machines (N u mch ) working for that particular unit and fractional use of operators (α u opr ) for each unit. Implementing the number of shifts per day (N shf ), hours of each shift (τ shf ), the wage of an operator per hour (P opr ), and the number of working days per year (N wpy ) yields an annual labor cost model for operators.
In addition, for the mixer unit in the model, three laborers per working shift for each cathode and anode mixer, regardless of the size of mixers, are allocated. Concerning the dry room control, two laborer per working shift are allocated. The fractional distribution of operators between different process steps of the battery cell factory is listed in Table S2.
Dividing the annual cost layer into the number of cells produced per year results in the operators cost (C opr ) for one cell, and follows as In Equation (17), two additional terms are defined, τ ubt and τ nos , to consider both unpaid break hours for each shift and no shift hours per day, respectively [16].
Then, technicians and indirect labor are added to C opr to form the total labor cost layer (C lab ) as follows: C lab = C opr 1 + α tch P tch P opr + α ind,lab P ind,lab P opr (18) where P tch is the hourly wage for technicians, P ind,lab is the unit price for indirect labor, and α tch and α ind,lab indicate the fractional use of technicians and indirect labor compared to the total number of operators, respectively, in the plant. Both defined coefficients are tuned to the [32] report. The unit price of workers in this study comprises bonuses and gratuities, the cost of food and drink, work clothes and recruitment, vocational training, welfare services, and social security expenditures [33].

Building and Land
To provide a cost model for the required area of land and building, a predefined area that fulfills the requirement of the base case study is scaled up and/or down to other capacities and chemistries using the land and building scaling factor (ζ bld ), which is relevant to the number of production lines (N u mch ) and flow scale factor (Equation (8)). The land and building scaling factor is fitted with the land and building cost in [4,16], and works by the application of both coefficients in Equation (19). Considering the land and building footprint of the base case study and Equation (19) results in the land and building footprint for other capacities (L).
where L indicates the area of land and buildings in the base case study, around 50,000 m 2 , based on an optimized building concept [34].
To calculate the annualized factor for land and building, both parameters of depreciation period of the building (τ bld ) and interest rate (r loc ) for the location of the plant must be taken into consideration. The annualized factor for buildings (F bld anl ) is defined as Hence, the required land and building cost layer in this study is formulated as below to calculate the share of this layer to produce a cell.
where C bld is the land and building cost and P bld is the unit price of land and construction of the building.

Maintenance
Keeping the assets of the battery cell manufacturing plant in good working condition incurs expenses due to requiring time-to-time maintenance of machinery. These costs are covered by maintenance cost (C mnt ) presupposed as a percentage (γ mnt ) of machinery and installation. Thus,

Overhead
Overhead cost is calculated as a percentage of capital equipment, buildings, and maintenance cost layers [4,17].
where, γ OH is surcharge rate of overhead. The per-unit battery cell cost (C Cell ) is the summation of defined cost layers. Thus, It is worth mentioning that since the units in this work are based on US$/kWh, the total battery cell cost (C Cell ) is divided by the product of specific energy of battery cell (E spf ) and mass of cell (m cell ) to the output (US$/kWh) unit.

Results and Discussion
A breakdown of battery cell production cost for the selected case study, where a manufacturing plant of 5.3 GWh annually produces approximately 24,215,000 NMC111-G prismatic cells, is presented here. The case study is assumed for eight different countries, in order to investigate also the effect of location.
The total mass of the cell is estimated to be 0.8285 (kg), extracted from the material flow from the work of Jinasena et al. [20]. Considering the physical and chemical characteristics of the battery cell, the total mass for cathode and anode components is 0.407 (kg/cell), with a cathode mass fraction of 96:2:2 including cathode active material, carbon, and binder, and 0.196 (kg/cell) with anode mass fraction of 98:0:2, in the same order, with the cathode. In addition, the volume of the required electrolyte for the cell is 0.0751 (liter/cell). The mass fraction of solvent for each cathode and anode is assumed to be 48% of its mass [18,20]. The other relevant values to both process and cost models can be found in Tables S3 and S4.

A Location-Wise Breakdown of the Cost Model with Further Focus on Key Drivers
The breakdown of battery cell cost, based on the layers defined in the model for the case study in Section 3, is presented in Figure 3. This assessment is based on differential unit prices for land and construction, energy, installation of production lines, labor, and interest rate which all vary in location and years.
Regarding the unit price of electricity, the values used in the project at hand are calculated based on the electricity bill for 1,000,000 (kWh) annual industrial consumption, including the cost of power, distribution, and taxes.
Considering the wage for labor, three different costs for each country are assumed. The relevant data for the labor are listed in Table S4.
Furthermore, it has been assumed that the initial cost for purchasing equipment and machinery is the same for all analyzed places.
Considering Figure 3, it can be seen that location can vary the production cost, ranging from 106.4 (US$/kWh) in China to 153.6 (US$/kWh) in Norway. It can be seen that labor is the key driver in altering the total cell cost. Based on the current cost model, production of the presented cell in the case study in Poland only requires allocation of around 6 (US$/kWh) to workers, while this value for Germany is 25.6 (US$/kWh). This cost differential results from the unit price of labor. A similar study between two countries has been conducted in the work by Duffner et al. [4]. Their results reveal that such change in plant location has the potential of a 6 (US$/kWh) lower price of cell production in Poland. This difference for the two countries mentioned above in our model is approximately 19 (US$/kWh), deriving from three reasons. First, the average unit price for German workers in our model is approximately 20% higher than what is stated in the work by Duffner et al. [4]. Second, the number of workers for the two models is different because we also included technicians and indirect labor in the plant. Third, the annual production volume is different for the two projects. By setting our model to the same unit price of labor in Germany and Poland and the annual size of the factory (35 GWh), the cost differential of labor for Germany and Poland reduces by 7 (US$/kWh), which is only 1 (US$/kWh) higher than what is stated in the work by Duffner et al. [4].  Considering Figure 3, it can be seen that location can vary the production cost, ranging from 106.4 (US$/kWh) in China to 153.6 (US$/kWh) in Norway. It can be seen that labor is the key driver in altering the total cell cost. Based on the current cost model, production of the presented cell in the case study in Poland only requires allocation of around 6 (US$/kWh) to workers, while this value for Germany is 25.6 (US$/kWh). This cost differential results from the unit price of labor. A similar study between two countries has been conducted in the work by Duffner et al. [4]. Their results reveal that such change in plant location has the potential of a 6 (US$/kWh) lower price of cell production in Poland. This difference for the two countries mentioned above in our model is approximately 19 (US$/kWh), deriving from three reasons. First, the average unit price for German workers in our model is approximately 20% higher than what is stated in the work by Duffner et al. [4]. Second, the number of workers for the two models is different because we also included technicians and indirect labor in the plant. Third, the annual production volume is different for the two projects. By setting our model to the same unit price of labor in Germany and Poland and the annual size of the factory (35 GWh), the cost differential of labor for Germany and Poland reduces by 7 (US$/kWh), which is only 1 (US$/kWh) higher than what is stated in the work by Duffner et al. [4].
Energy cost is directly tied to the unit price of industrial electricity. In other words, a lower price of electricity reduces the share of the energy layer from the total cost of the cell and vice versa. For the case study in Figure 3, the cell production in Sweden costs only 1.4 (US$/kWh) for energy, the lowest value compared to other countries, while this value for Germany is 6.9 (US$/kWh), the highest one. Such difference is linearly proportional to the unit price of electricity in the two countries, as mentioned earlier.
Concerning maintenance in our model, location is not capable of leading to substantial changes in this layer because maintenance is dependent on capital equipment, where the only changing parameters in the location-related analysis are the interest rate and share of labor in the installation of machinery with minor effects on capital equipment and installation, approximately 3 (US$/kWh), with a consequently negligible effect on maintenance: less than 0.5 (US$/kWh). Table S5 presents all the values in Figure 3 as well as the percentage of contribution of each layer to the total cost.
Considering the material layer from the cost model, Figure 4a shows that the active material of cathode, the active material of anode, electrolytes, and separator dominate the Energy cost is directly tied to the unit price of industrial electricity. In other words, a lower price of electricity reduces the share of the energy layer from the total cost of the cell and vice versa. For the case study in Figure 3, the cell production in Sweden costs only 1.4 (US$/kWh) for energy, the lowest value compared to other countries, while this value for Germany is 6.9 (US$/kWh), the highest one. Such difference is linearly proportional to the unit price of electricity in the two countries, as mentioned earlier.
Concerning maintenance in our model, location is not capable of leading to substantial changes in this layer because maintenance is dependent on capital equipment, where the only changing parameters in the location-related analysis are the interest rate and share of labor in the installation of machinery with minor effects on capital equipment and installation, approximately 3 (US$/kWh), with a consequently negligible effect on maintenance: less than 0.5 (US$/kWh). Table S5 presents all the values in Figure 3 as well as the percentage of contribution of each layer to the total cost.
Considering the material layer from the cost model, Figure 4a shows that the active material of cathode, the active material of anode, electrolytes, and separator dominate the material cost layer. These results are consistent with available cost models and publications. In search of this, validation is conducted as well as mentioning the reasons in case of differences. Barnett et al. [35] investigated the cost for different sorts of battery chemistry, revealing that 19-27% of the final cost is made of the cost of cathode active material, which is approximately 30% in the current project. In their cost model, anode active material, electrolytes, and separator are the other key drivers of the material cost layer. ElementEnergy [15] reported that the cathode active material composes of 43% of total NMC cell material cost, while this is 57% in the present work. This difference mainly results from the high price of cobalt in the years 2018 and 2021, leading to a high average price of cobalt in this study. Furthermore, compared with the mentioned report, there are some differences in the unit price of components in a cell. For instance, the unit price of separator and electrolytes in their cost model is 2 (US$/m 2 ) and 21.6 (US$/litre), respectively, whereas these values are much lower in our work (Table S1). Paul A et al. [18] presented a cost breakdown for NMC111-G in pack level where cathode positive active material consists of 44% of the total cost of a battery pack as well as 14% for negative active material, 4% for separator, and 5% for the electrolytes. The unit price of NMC111 in their work is assumed as 21 (US$/kg) for all the capacity of the plant, which is lower than the average cost of CAM in the present work. The main reason for such a difference results from the cost of raw materials, especially nickel and cobalt, which are highly volatile. PILLOT et al. [36] carried out a detailed assessment of the NMC cell for EVs. The results indicate that cathode active material makes up more than 48% of total cell cost. Their assessment also shows that the share of anode active material is approximately 12%, 12% for electrolytes, and 15% for separator. PILLOT et al. [5] presented a cost model for NMC battery cells where the share of active material is more than 58% of the total material cost. Wentker et al. [6] presented a bottom-up cost model for different cell chemistries in which the cost of cathode active material forms more than 50% of the total cell cost. In their work, the share of the separator is higher than anode active material and electrolytes because of the high unit price of the separator in their work compared to the present project. Sakti et al. [16] provided a process-based cost model for the NMC-G battery pack. According to the cost breakdown in their work, positive active material includes 38% of the total cost of a battery pack. The share of negative active material, separator, and electrolytes from total pack cost is 13%, 8%, and 6%, respectively. By subtracting the cost of relevant instruments of the battery pack from their cost breakdown, the share of cathode active material increases by 49%. Patry et al. [37] presented a cell cost breakdown for four different chemistries of NMC, NCA, LFP, and LMO. Considering NMC in their work, positive active material comprises approximately 31% of the material cost. Data for other components in the cell are not available in their project. The unit price of NMC in their work is 27 (US$/kg) and the unit price for other components is higher than this work. For instance, graphite and electrolytes of aforesaid work cost 18.5 and 19.5 (US$/kg), respectively, which are 41% and 23% higher than the unit prices of given components in this project. This is the reason for the difference in the share of positive active material in both works. and drying units cost 14.96% of the total cost. Paul A et al. [18] represented a cost breakdown for the installed machinery cost layer. According to their results, the formation cycling unit forms 29% of total machinery cost, the highest share among other units. In the mentioned work, the coating and drying unit and dry room unit consist of the following cost-driving units with 18% and 17% of the total cost for installed machines. Regarding the portion of the dry room out of the total installed equipment cost, all welding, enclosing, and filling units are included in the dry room in the mentioned work [18].

Comparing Total Cell Cost of the Case Study with Literature
The previous section presents the total cost for the NMC111-G prismatic cell as a case study of the current cost model for different locations. The total cost of a cell varies from one cost model to another due to the dependency of cost models on numerous parameters and assumptions. A comprehensive comparison between our results with some available Considering the capital equipment and installation layer from the cost model, Figure 4b indicates the most cost-driving units in the plant. The largest portion, 31.9%, of investment into machinery and equipment is required to be allocated to the formation unit for the case study. Coating and drying units for both cathode and anode lines comprise 12.4% of the total machinery cost. As mentioned earlier, both coating and drying in this work are assumed to be integrated and continuous units. In addition, winding and mixing of anode and cathode units include 12.4% and 7.8% of the total cost, respectively. Duffner et al. [4] designed a process-based cost model based on two different scenarios where the base scenario identifies formation (25%), stacking (22%), and coating and drying (12%) as the cost-driving units. Liu et al. [24] estimated the cost for different units in the battery manufacturing plant. According to the cost breakdown presented in their work, the formation unit is dominant in equipment cost, comprising 32.61% of the total cost. Coating and drying units cost 14.96% of the total cost. Paul A et al. [18] represented a cost breakdown for the installed machinery cost layer. According to their results, the formation cycling unit forms 29% of total machinery cost, the highest share among other units. In the mentioned work, the coating and drying unit and dry room unit consist of the following cost-driving units with 18% and 17% of the total cost for installed machines. Regarding the portion of the dry room out of the total installed equipment cost, all welding, enclosing, and filling units are included in the dry room in the mentioned work [18].

Comparing Total Cell Cost of the Case Study with Literature
The previous section presents the total cost for the NMC111-G prismatic cell as a case study of the current cost model for different locations. The total cost of a cell varies from one cost model to another due to the dependency of cost models on numerous parameters and assumptions. A comprehensive comparison between our results with some available works is conducted here. The collected data from the available cost models are presented in Table S6.
In addition to including previous and current cost models, two predictions for 2025 have been added to Figure 5 [5,38]. A decreasing trend in battery cell cost is transparently obvious. Although the results of this work are comparable with the latest cost models, the main reasons for cell cost differentials are mentioned. The unit price for labor and land in the current work is higher than in some recent works [4,18]. Considering the labor, including technicians and indirect labor separately, labor cost leads to this difference. Regarding the building and land, this layer is based on a high-tech factory that requires the highest unit cost for the construction compared to other industrial purposes. Furthermore, the unit price for cathode active material in this project is higher on average compared to some cost models such as the one proposed by Ciez et al. [18] because of the higher average price for raw material, in particular, cobalt, in the studied period. Concerning the equipment and machinery, this layer of the cost model has been based on sophisticated machines to offer superior quality and accuracy within the process chain in the plant, consequently requiring higher investment into the machinery layer. The difference between the production volume of some available models and the current one causes a difference in total cell cost. For instance, Duffner et al. [4] recently published an in-depth cost model in which they presented a cost model for a battery factory of 35 GWh per year while the presented case study is 5.3 (GWh/year).  Figure 5 are the results of the case study and the minimum efficient scale for the US location in this work, and the black dots show the results extracted from other cost models), (Numbers on Figure 5 are based on Table S6).

Study into the Cost-Effective Size of Battery Manufacturing Plant for the Case Study
As mentioned earlier, expanding production volume is one of the strategies which is employed to reduce the manufacturing cost of the cell. Driven by this, the economics of scale must be maximally materialized to reach a minimum efficient scale corresponding to the lowest point on the cost curve. In search of this, a cost curve showing the total cell cost against the annual capacities of the plant is depicted in Figure 6 for the case study.   Figure 5 are the results of the case study and the minimum efficient scale for the US location in this work, and the black dots show the results extracted from other cost models), (Numbers on Figure 5 are based on Table S6).

Study into the Cost-Effective Size of Battery Manufacturing Plant for the Case Study
As mentioned earlier, expanding production volume is one of the strategies which is employed to reduce the manufacturing cost of the cell. Driven by this, the economics of scale must be maximally materialized to reach a minimum efficient scale corresponding to the lowest point on the cost curve. In search of this, a cost curve showing the total cell cost against the annual capacities of the plant is depicted in Figure 6 for the case study.  Figure 5 are the results of the case study and the minimum efficient scale for the US location in this work, and the black dots show the results extracted from other cost models), (Numbers on Figure 5 are based on Table S6).

Study into the Cost-Effective Size of Battery Manufacturing Plant for the Case Study
As mentioned earlier, expanding production volume is one of the strategies which is employed to reduce the manufacturing cost of the cell. Driven by this, the economics of scale must be maximally materialized to reach a minimum efficient scale corresponding to the lowest point on the cost curve. In search of this, a cost curve showing the total cell cost against the annual capacities of the plant is depicted in Figure 6 for the case study.  From Figure 6, it is seen that the produced cell at the capacity of 15.6 GWh (blue circle in Figure 6) has the lowest cost, 106.8 (US$/kWh), among other capacities. The cost value for the capacity of 7.8 GWh (red circle in Figure 6) is 108.3 (US$/kWh). Considering both mentioned cases indicates that a twofold increase in the capacity of the manufacturing plant only decreases the manufacturing cost by approximately 2 (US$/kWh), around 2%. Such a strategy for expanding the capacity from 7.8 to 15.6 could not be reasonable due to a considerable increase in initial investments and associated risks [2], higher cost for fire protection, emergency stairs, and escape tunnels, increasing problems in management and ineffective communication of employees for larger companies [39]. Hence, the capacity of 7.8 GWh per year is regarded as the minimum efficient scale for this project's case study. There is no agreement on the efficient scale of battery production plants among different works yet. For instance, Mauler et al. [2] investigated some relevant recent cost models wherein Nelson et al. [40]  Moreover, Wentker et al. [6] expected that the plant reaches its minimum efficient scale at the capacity of 3 (GWh/year). Eberhardt et al. [41] reported that 6-8 (GWh/year) is an economic size for the battery cell factory.
As mentioned above, expanding the plant capacity from the case study (5.3 GWh/year) to the minimum efficient scale (7.8 GWh/year) decreases the total cost of the cell by around 15.8 (US$/kWh). From Figure 6, it is seen that machinery and labor layers have the highest share of this reduction.

Sensitivity Analysis of the Cost Model
Since the developed cost model is tied to a large volume of parameters and variables, conducting a sensitivity analysis gives insights into the influence of parameters on the total battery cell production cost. First, the sensitivity of the current cost model to different battery chemistries is examined. Then, the model's sensitivity to the commodity prices, economic factors of the plant, and process parameters are investigated. Figure 7 represents the sensitivity of the cost model to 10 different chemistries. All the assumptions for the case study in Table S1 have been presupposed for this part. It is seen that, despite differences in the unit price of material for individual chemistries, the material layer remains the key driver of the total cell cost for all chemistries in the case study. Moreover, from Figure 7, it is thoroughly understandable that switching from one chemistry to another significantly alters the total cell cost, from 89.7 (US$/kWh) for NMC811-G to 218 (US$/kWh) for LMO-LTO. One of the principal grounds for this significant variance in the total cost of the two cells above is the total mass differential of cells in our model, where LMO-LTO is approximately threefold of NMC811-G, while the number of produced cells is approximately threefold for a certain level of annual production kept almost the same. Hence, in the comparison, LMO-LTO requires a different amount of material than NMC811-G; consequently, further numbers of production lines in the plant are required to fulfill the desired manufacturing requirement. Such an increase in the plant's production lines requires more extensive land and buildings in size and/or number and hiring more labor. Driven by this extension, maintenance and overhead impose higher costs on the manufacturing cost. Moreover, the use of NMP instead of water as a solvent in the anode of LMO-LTO battery chemistry leads to higher costs.

Sensitivity of the Current Cost Model to Battery Cell Chemistry
Considering NMC battery cells from Figure 7, NMC811-G requires lower costs in different model layers, particularly material and equipment, compared to other NMC cells. This result is in good agreement with other cost models [6,18,36]. That is why NMC811-G is expected to gain a higher share of the lithium-ion battery market in the following years [36]. Another reason for the increased attention of the market to NMC811-G rather than other NMC cells in the future results from the lower dependency of this chemistry on cobalt price [6]. G rather than other NMC cells in the future results from the lower dependency of this chemistry on cobalt price [6]. GWh per year. The location of this analysis has been presumed to be the US.

Sensitivity of the Cost Model to Commodities Prices, Economic Factors, and Production Volume
A sensitivity analysis for the different available chemistries of this work is conducted to investigate how the change in one parameter in the cost model affects the total cost of the battery cell chemistries. The results are depicted in Figure 8.
Considering the commodities prices, for the NMCs group and NCA battery cell chemistry, cobalt and nickel prices are the greatest cost drivers. In contrast, LMO and LFP cathode active materials are highly sensitive to manganese and lithium prices.
As can be seen from the cobalt price sensitivity, a 30 US$/kg increase in the cobalt price, rather than what is observed in the case study, can increase the cost of the NMC111-SiNW battery cell by approximately 3% as the least among the cobalt dependence group, while this increase for the NMC111-G battery cell is around 12.6%, the highest increase. Such an assumption can also increase the battery cell cost for NMC532-G, NMC622-G, and NCA-G chemistries by 8.8%, 7.1%, and 4.6%, respectively, which agrees with the work by Leader et al. [42]. Furthermore, the battery cell price for NCA-G and NMC811-G rises by around 9.5% and 8.9%, respectively, with a 50% increase in the unit price of nickel from the case study. Such increases are the highest in this work compared to the rest of the battery cell chemistries.
Considering the lithium price, both LFP-G and LMO-G are the most sensitive battery cell chemistries with 10.48% and 7.1% increases, respectively, in case of a 100% increase in the lithium price. These outcomes are closely aligned with the study by Leader et al. [42]. In addition, a twofold increase in lithium price changes the total cost of the NMC811-G battery cell by less than 4%, which is in good agreement with BloombergNEF's report [43].
Regarding the manganese price, all the chemistries in this study have a sensitivity of less than 1% for a 100% increase in the commodity, except the LMO-G battery cell chemistry, with 2.5%.
As mentioned before, a change in the plant's production capacity has the potential to increase or decrease the final price of the battery cell. According to this study, with a 50% Figure 7. Sensitivity of the developed cost model to chemistries for the production capacity of 5.3 GWh per year. The location of this analysis has been presumed to be the US.

Sensitivity of the Cost Model to Commodities Prices, Economic Factors, and Production Volume
A sensitivity analysis for the different available chemistries of this work is conducted to investigate how the change in one parameter in the cost model affects the total cost of the battery cell chemistries. The results are depicted in Figure 8.
Considering the commodities prices, for the NMCs group and NCA battery cell chemistry, cobalt and nickel prices are the greatest cost drivers. In contrast, LMO and LFP cathode active materials are highly sensitive to manganese and lithium prices.
As can be seen from the cobalt price sensitivity, a 30 US$/kg increase in the cobalt price, rather than what is observed in the case study, can increase the cost of the NMC111-SiNW battery cell by approximately 3% as the least among the cobalt dependence group, while this increase for the NMC111-G battery cell is around 12.6%, the highest increase. Such an assumption can also increase the battery cell cost for NMC532-G, NMC622-G, and NCA-G chemistries by 8.8%, 7.1%, and 4.6%, respectively, which agrees with the work by Leader et al. [42]. Furthermore, the battery cell price for NCA-G and NMC811-G rises by around 9.5% and 8.9%, respectively, with a 50% increase in the unit price of nickel from the case study. Such increases are the highest in this work compared to the rest of the battery cell chemistries.
Considering the lithium price, both LFP-G and LMO-G are the most sensitive battery cell chemistries with 10.48% and 7.1% increases, respectively, in case of a 100% increase in the lithium price. These outcomes are closely aligned with the study by Leader et al. [42]. In addition, a twofold increase in lithium price changes the total cost of the NMC811-G battery cell by less than 4%, which is in good agreement with BloombergNEF's report [43].
Regarding the manganese price, all the chemistries in this study have a sensitivity of less than 1% for a 100% increase in the commodity, except the LMO-G battery cell chemistry, with 2.5%.
As mentioned before, a change in the plant's production capacity has the potential to increase or decrease the final price of the battery cell. According to this study, with a 50% decrease in the production capacity of the plant compared to the case study (5.3 GWh/year), the final price of the battery chemistries increases by 19.5% at most for the LFP-G and 1% as the slightest change for the LMO-G. Moreover, minor changes in the total cell cost are seen after the capacity of 8 GWh/year. In other words, almost all battery cells reach the minimum efficient scale before or around this capacity.   Tables S1 and S4).
As can be seen from the discount rate diagram, all the cell chemistries almost follow the same trend in the case of changes in the discount rate, a 4.3% and 5.3% increase in the final cost of NMC811-G and LFP-G battery cells, respectively, in case of a twofold increase in the discount rate. Assuming a 25% increase or decrease in the construction cost of the buildings in the battery manufacturing plant can change the final battery cell cost by, at most, 2.3%, while the same assumption for the labor wage can alter the battery cell cost, on average, by 8.2%. This is why automation has become an interesting topic in this industry in recent years, resulting in decreasing labor dependency in production, particularly for locations with high salary rates, e.g., Norway. Developing such a strategy also brings higher accuracy and speed to the production line(s), resulting in a lower scrap rate and less machinery in the production lines, respectively.
A range of 4-15 years for the recovery period of the machinery has been reported in the relevant literature [4,18,44], which results in a range of 23-31% changes in the cost of battery cell chemistries in this work.

Limitations
While the concluded results of this work are in good agreement with relevant cost models, it lacks a high resolution due to the factors listed below.
Transportation expense is one of the common elements in the PBCM approach [28], while this work has not included this element. The reason for this exclusion is that the plant's exact location, as well as machinery and material suppliers for a specific plant need to be available, while these data are not included in the relevant literature.
In Equations (1) and (2), it is assumed that the price of equipment needed in the production of CAMs is not dependent on the location, since the relevant data for each location were not available in the literature. Considering machinery and equipment for the battery production plant, the same supplier has been assumed for all the locations. This assumption requires implementing distinct shipment and transit expenses for each location, causing greater differentials in the equipment layer of location-wise cost analysis, but these expenses have not been included in this study. In addition, to have a holistic locationrelated analysis, purchasing equipment locally must also be investigated and compared with current results. This is because, in the case of local supply of equipment, having access to spare parts is more accessible and less expensive than importing, consequently imposing lower costs on the manufacturing chain.
Labor cost has been attempted to be updated and accurate based on credible and notable resources, but Brodd et al. [45] reports that Chinese manufacturers recruit semiskilled workers with a wage of 2.42 (US$/hour), which is lower than the reported wage in this work, resulting in a lower cost for the produced cell. This report was conducted based on face-to-face interviews with selected individuals who worked as researchers and managers in battery companies in both the US and China. In addition, the unit price for indirect labor has been assumed to be an average of some relevant labor classes due to the lack of data for an exact number of each class of labor being hired in the battery cell plant.
To have a precise analysis of the location, the exact region of the plant should be specified, which is not mentioned in this work, due to the lack of relevant data and modeling complexity. This matter could have a significant impact on all layers of the cost model. For instance, the industrial land cost in China dramatically varies from 155.97 (US$/m 2 ) in Nanjing to 226.04 (US$/m 2 ) in Shenzhen [45]. Moreover, the unit price for labor, electricity, and construction varies from one region to another in a particular country.
The generated scrap of material within the process chain and the defective cells at the end of the process chain could be sold to recycling companies, generating revenue and a decline in cell manufacturing cost. The current cost model excludes this part due to the lack of relevant information on the unit price of scrap material.
The latest technologies for different applied units in the process model are required to be studied and the results should be compared with the present ones. For instance, a single line of fully continuous mixing technology can be replaced with multiple batch mixers, reducing relevant machinery investment and labor by 50% [46]. In addition, the relevant literature reported three times less required energy and a considerable reduction in the area compared to conventional batch mixing systems.
Incentives to land and taxes for the battery manufacturers should be considered to reach a more precise cost model [47], but the relevant data for this part are not available. Implementing these incentives leads to lower costs for the produced cells.
Depreciation for all the equipment in the process chain has been assumed to be equal, but, in reality, this parameter varies from one piece of equipment to another.
In this work, a conventional process chain of the battery production has been assumed, while the next-generation technologies, e.g., 24 M, can decrease the total cost of the cell by 53% [38]. The relevant data for these technologies are not available in the literature yet.

Conclusions
In summary, a process-based cost model was developed to determine a cost breakdown of battery cell manufacturing. The commodities prices, chemical and physical characteristics of the cell, operational conditions, and economic factors are simultaneously taken into account in the model. The cost model comprises seven interconnected layers of material and scrap, energy, machinery and installation, labor, land and buildings, overhead, and maintenance. The model allows for a detailed investigation of the critical cost drivers of battery cell production for R&D and optimization. Moreover, the model has flexibility in the propagation of different production volumes, locations, battery cell chemistry, and technologies. Apart from the benefits mentioned above, the current cost model is beneficial in identifying the projection of battery cell production cost, since the ongoing changes in the commodity prices, technologies, and the economic factors of the plant can be applied in the model.
As a case study, a 5.3 GWh conventional production plant which produces NMC111-G battery cells was investigated for nine different locations. Among the studied locations, China has the lowest battery cell production cost, 106.4 (US$/kWh), while this value for Norway is the highest, 153.6 (US$/kWh). Such a difference for the case study could be considerably reduced, by approximately 31%, through the application of economics of scale where all the resources in the plant are effectively utilized. A cost curve indicated that the plant size of 7.8 GWh provides the most cost-efficient production for the case study. Moreover, the model was utilized to investigate the production cost for nine other state-of-the-art battery cell chemistries.
Among the presumed layers in the model, it could be concluded that the labor cost is the most important factor of difference in the total battery cell production cost in the studied locations. Driven by this, automation has obtained more interest in the recent years in order to dramatically reduce the dependency of the production on the labor force.
In addition, a systematic and complete analysis was conducted to investigate the sensitivity of production cost to the different regional and process parameters for different battery cell chemistries. The outcomes of such an analysis could be helpful for both leaders in the battery industry field and policymakers.
Despite the consistency between the results of this work and the recent cost models, we recognize that there are still areas of improvement. Therefore, we included a list of limitations to our best ability. We believe that overcoming the mentioned limitations is a reasonable step in search of a higher-resolution model.

Supplementary Materials:
The following supporting information can be downloaded at: https://www. mdpi.com/article/10.3390/batteries8080083/s1, Table S1: Unit price of material components and the relevant machinery, Table S2: Fractional distribution of the operators between different process steps in the battery cell manufacturing plant, Table S3: Relevant parameters of the battery cell in the case study as inputs to the process and cost model, Table S4: Assumed economic factors to study the effect of location on the total cost of cell, Table S5: A location-wise distribution of the total cell cost of the case study between defined layers of the cost model, Table S6: Battery cell cost reported in works of literature and available cost models, Table S7: Relevant ratios to convert different levels of cost to cell level. References  are cited in the supplementary materials.

Conflicts of Interest:
The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

Abbreviations
The following abbreviations are used in this manuscript: