A Systematic Review of Life Cycle Assessment of Electric Vehicles Studies: Goals, Methodologies, Results and Uncertainties
Abstract
1. Introduction
- Goal and Scope Definition: To analyze the technologies studied, the system boundaries applied (e.g., cradle-to-grave, well-to-wheel), and the prevalent modeling philosophies (attributional vs. consequential).
- Life Cycle Inventory (LCI): To identify the dominant software tools, LCI databases, and data sources used to quantify environmental inputs and outputs.
- Life Cycle Impact Assessment (LCIA): To compare the different impact assessment methodologies (e.g., ReCiPe, CML) employed to translate inventory data into environmental impacts.
- Interpretation: To investigate how researchers address uncertainty and variability through sensitivity and scenario analyses.
2. Materials and Methods
2.1. Systematic Literature Search
- “Life cycle assessment” OR “LCA” AND “electric vehicles”
- “Vehicle integrated photovoltaics” OR “VIPV” OR “solar powered vehicles”
- “Environmental impact” AND “electric vehicles” AND “solar panels”
- “LCA methodology” AND “solar powered vehicles”
- “LCA” AND “uncertainty analysis” AND “electric vehicles”
- Literature Summarization: After downloading and evaluating over 100 scientific papers, Perplexity AI (Pro version) aided in extracting key insights, identifying trends, and synthesizing themes, particularly in areas related to functional units, system boundaries and the inclusion of uncertainty used in each study.
- Language and Clarity Improvement: Paperpal AI was used to refine specific sections of the manuscript, enhancing grammatical precision, technical accuracy, and overall readability, focusing on the introduction and the conclusion.
- Structural Critique and Feedback: Both tools served as initial reviewers, offering suggestions on the logical progression of arguments and highlighting areas of redundancy or wordiness in the draft. All feedback provided by the AI was thoroughly reviewed and edited by the authors to maintain alignment with the original source and ensure scientific integrity.
2.2. Life Cycle Assessment Methodology
- Goal and Scope Definition: This initial phase defines the purpose of the study, product system to be evaluated, functional unit (the basis for comparison, e.g., one kilometer driven), and the system boundaries (which processes are included).
- Life Cycle Inventory (LCI): In this phase, data on all environmental inputs (e.g., energy, raw materials) and outputs (e.g., emissions, waste) are collected for every process within the system boundaries.
- Life Cycle Impact Assessment (LCIA): This phase translates the LCI results into potential environmental impacts. Inventory flows are classified into impact categories (e.g., climate change, acidification) and characterized using scientific models to quantify their potential effects.
- Interpretation: The final phase involved evaluating the results from the LCI and LCIA to draw conclusions, identify significant issues, check for completeness and consistency, and provide recommendations in line with the study’s goal.
3. Results and Discussion
3.1. Goal and Scope Definition
3.1.1. Functional Unit
3.1.2. System Boundaries
- Cradle-to-Grave: This is the most comprehensive and common approach, used in 53.7% of the reviewed studies. The cradle-to-grave approach is the most comprehensive, encompassing all life cycle stages from raw material extraction, through manufacturing, distribution, vehicle use (including fuel/electricity consumption and maintenance), to end-of-life (EOL) treatments such as disposal or recycling [53,54]. This approach provides a more complete picture of the vehicle’s environmental performance but requires more extensive data collection and modeling [55]. It is frequently recommended for making robust comparisons, as demonstrated by Alexander et al. [27] for ICEVs/BEVs, Rashid et al. [56] for HEVs/PHEVs, and Wong et al. [57] for BEVs/FCEVs. This holistic view is essential for capturing the full environmental profile, especially for BEVs, where manufacturing and EOL impacts are significant. However, some cradle-to-grave studies explicitly exclude EOL stages due to a lack of reliable data [33,37], which can be a significant limitation.
- Well-to-Wheel (WTW): This boundary focuses only on the vehicle’s operational life, encompassing fuel/electricity production and vehicle operation. This is often divided into Well-to-Tank (WTT) or Well-to-Plug for electric vehicles, covering fuel/electricity production and delivery, and Tank-to-Wheel (TTW) or Plug-to-Wheel, covering vehicle operation efficiency and direct emissions [58,59]. Many fuel cell electric vehicle LCAs tend to concentrate on the WTW scope, emphasizing fuel production pathways, as seen in the studies by Petrauskienė et al. [42] and Wu et al. [34] for evaluating fuel production pathways. Bekel et al. [60] conducted a well-to-wheel LCA for BEVs and FCEVs, crucially and explicitly incorporating the often-neglected fuel supply infrastructure, including charging stations for BEVs and hydrogen production and distribution networks for FCEVs. Yang et al. [29] defined the total life cycle as including both the vehicle life cycle (material extraction, component production, vehicle assembly, distribution, and disposal/recycling) and the fuel life cycle (fuel production and consumption during use). Burchart-Korol et al. [61] accurately described WTW as a subset of LCA, focusing on the fuel production (WTT) and vehicle operation (TTW) stages, typically emphasizing energy consumption and greenhouse gas emissions, while excluding vehicle manufacturing, maintenance, and end-of-life impacts. This distinction highlights the importance of choosing system boundaries that suit the specific research question; WTW analysis alone is inadequate for developing a complete environmental profile of vehicle technology but can be useful for comparing fuel pathways.
3.1.3. Attributional vs. Consequential LCA
3.2. Life Cycle Inventory (LCI)
3.2.1. LCI Databases
- Ecoinvent: As the most widely used database, appearing in 64.3% of studies, Ecoinvent is often considered the gold standard for LCI data due to its global applicability and comprehensive coverage of all life cycle stages [7,73]. Most academic studies rely on Ecoinvent for processes such as battery cell manufacturing, material production (steel and aluminum), and vehicle components. Its prominence is reinforced by its availability on all major LCA software platforms. Different versions are cited in the literature, reflecting its continuous updates (e.g., v2.2, v3.2, v3.8) [61,73,74]. Ecoinvent is a cornerstone of EV LCA modeling, providing the high-quality background data necessary for robust assessments.
- GREET Model: Although also a software tool, the Greenhouse gases, Regulated Emissions, and Energy use in Technologies (GREET) model functions as a critical LCI database, particularly for transportation-focused studies. Developed by the U.S. Department of Energy’s Argonne National Laboratory, which serves as a benchmark for well-to-wheel analyses in North America [64], GREET contains embedded data for battery manufacturing, electricity generation pathways, and material production. It is frequently used to model the use phase and fuel cycle [23,57,75].
- GaBi Databases: The GaBi databases, developed by Sphera, are another major LCI source, known for being industry-driven and containing detailed proprietary process data from corporate partnerships. These databases offer strong coverage of industrial processes, such as plastics production and specific automotive manufacturing steps, making them a common choice for confidential industry reports [76].
- Regional Databases: Researchers often supplement global databases with localized ones to improve regional accuracy. The European Life Cycle Database (ELCD) provides open-access data for processes within the European Union [64]. Similarly, studies focused on China frequently use the China Life Cycle Inventory Database (CLCD) to access more precise data for Chinese industrial processes and regional electricity grids [53].
3.2.2. LCA Software
- SimaPro: This software was the preferred tool for comprehensive process-based LCAs and was used in 32% of the reviewed studies. It offers compatibility with leading databases like Ecoinvent and a broad suite of impact assessment methods. Its ability to handle multi-stage, multi-impact analyses and Monte Carlo-based uncertainty assessments is often highlighted [19,45,88].
- Specialized or Custom Tools: Several studies employed specialized software for specific tasks, such as Autonomie and BLAST for vehicle and battery dynamic modeling [53,89], or statistical software to supplement LCA calculations with scenario modeling and probabilistic uncertainty estimation [3,28,84,89].
3.3. Life Cycle Impact Assessment (LCIA)
- ReCiPe: Among the reviewed studies, ReCiPe—particularly ReCiPe 2016—was the most widely adopted LCIA model, used in approximately 50% of the papers. It supports both midpoint and endpoint assessments and provides detailed indicators for global warming potential (GWP), acidification, eutrophication, human toxicity (cancer and non-cancer), and resource depletion. ReCiPe is notably favored in studies due to this harmonized and comprehensive framework [41,91,92].
- CML: The CML 2001/2002 method accounts for around 20% of applications and is especially prevalent in older or region-specific LCAs. It is valued for its focus on scientifically robust midpoint categories such as abiotic depletion (ADP), acidification, and eutrophication. Notably, Dér et al. [31] and Zhang et al. [58] relied on this method for resource-oriented analyses.
- IPCC GWP 100a: Studies that prioritized climate change frequently employed IPCC GWP (100-year horizon) factors alone—comprising about 15% of the sample. This was especially common in assessments focused on specific fuel pathways (e.g., hydrogen) where broader impact categories were deemed less relevant [84,88]. While this approach is simple and transparent, it may underrepresent environmental trade-offs by excluding pollutants beyond CO2, CH4, and N2O.
3.4. Interpretation
3.4.1. Uncertainty and Sensitivity Analysis
- Sensitivity Analysis: This was the most accessible and frequently applied method. It is designed to gauge the extent to which variations in key factors affect the aggregate results. The key parameters that were most frequently analyzed include the carbon intensity of the electricity grid [82,84,97], the lifetime and degradation rates of the battery [49,53,81], and the operational characteristics of the vehicle, such as annual mileage and energy consumption [29]. Figure 5 shows the frequency of the range of parameters found in the reviewed studies, which reflects the multi-dimensional nature of EV sustainability. However, sensitivity analysis typically employs one-at-a-time methods and does not capture interactions among parameters, limiting its scope for complex systems [98].
- Scenario Analysis: This approach is designed to address deeper, structural uncertainties through the modeling plausible future conditions, such as changes in the energy mix, technological advancements, or behavioral shifts. Scenario-based studies typically explore discrete “what-if” conditions, particularly focusing on future energy system transitions and policy pathways [92]. Various studies have applied scenario analysis to evaluate the potential effects of evolving electricity grids, extended BEVs lifespans, and different charging behaviors on GHG emissions [58,62,71,72,99,100]. Although this method supports strategic planning for different future scenarios, it relies heavily on expert assumptions and lacks probabilistic rigor.
- Monte Carlo Simulation: This is recognized as the most statistically robust approach as it propagates input uncertainties through the LCA model by utilizing defined probability distributions, thereby yielding confidence intervals and probabilistic results [60,61]. For EV LCAs, Monte Carlo has been used to iterate battery composition uncertainty [79] and compare alternative fuels for EVs [101,102]. Despite the deeper insights afforded by this method, its considerable demands with respect to data and computational resources have limited its widespread adoption [61].
3.4.2. Synthesis of Key Findings by Technology
- Battery Electric Vehicles: BEVs operate exclusively on electric motors and rechargeable batteries, resulting in zero tailpipe emissions. Their life cycle impacts are distinguished by a significant upfront environmental burden from the energy- and carbon-intensive manufacturing of their components, particularly the lithium-ion battery, which creates a substantial “embodied” carbon footprint [25,75]. However, multiple life cycle assessments have demonstrated that this initial production impact is ultimately offset by the high operational efficiency of the vehicle, provided that the electricity used for charging is derived from low-carbon sources [25,76]. The extent of the life cycle benefit is, therefore, critically contingent upon the carbon intensity of the regional electricity grid; in regions with predominantly renewable energy, GHG emission reductions may be as high as 90% relative to conventional vehicles [13,77], whereas in coal-dependent grids, the life cycle emissions of a BEV can be comparable to those of a gasoline vehicle [63,77,78,79]. The initial manufacturing impacts are being progressively mitigated through advancements in battery technology and the adoption of circular economy principles, such as the extensive recycling of battery materials, which has been shown to significantly reduce both cumulative carbon emissions and the demand for virgin raw materials [12,38,39,65,79].
- Plug-in Hybrid Electric Vehicles: PHEVs are constituted by a powertrain that integrates a battery-powered electric drivetrain with a conventional internal combustion engine. Due to their dual reliance on both electricity and liquid fuel, PHEVs occupy an intermediate position in life cycle assessment terms; their environmental performance is generally superior to that of conventional ICEVs, yet they do not typically achieve the low-emission profile characteristic of pure BEVs under most scenarios [43,53]. The comparatively smaller battery capacity in a PHEV, relative to that of a BEV, serves to reduce the environmental impacts associated with the manufacturing phase [48,54]. The environmental performance of PHEVs is exceptionally sensitive to their operational parameters, particularly their use and charging patterns. A critical determinant in this regard is the carbon intensity of the electricity grid, in conjunction with the proportion of total distance traversed utilizing electric power as opposed to the internal combustion engine. The greatest CO2 savings are realized when PHEVs are operated predominantly on electricity from a clean grid [32,53,56]. Conversely, in regions characterized by a carbon-intensive electricity grid, or where gasoline engines are frequently used, the relative environmental benefit is markedly diminished [24,40,57]. Although certain exceptional scenarios have been noted wherein an efficient PHEV engine coupled with high-carbon electricity could result in emissions comparable to a BEV, such cases underscore the principle that electricity from carbon-intensive sources can neutralize the advantages of electric operation [34]. Consequently, the optimal application for PHEVs is frequently posited as a transitional technology, particularly when powered by low-carbon electricity and sustainable biofuels [53,56,58]. While studies have reported that PHEVs achieved lower lifetime fuel consumption and emissions than comparable non-plug-in vehicles [40,48,57], their ultimate impact remains contingent upon charging behavior and energy sources.
- Hybrid Electric Vehicles: HEVs, which are distinguished as non-plug-in hybrids, are equipped with a comparatively small battery and electric motor that function in concert with an ICEV. The state of charge of battery is maintained exclusively through regenerative braking and the operation of the engine, as these vehicles are not designed to be charged from an external electrical grid [44]. From a life cycle assessment perspective, the manufacturing impacts associated with HEVs are found to be marginally greater than those of a conventional vehicle, an increase attributable to the inclusion of supplementary components such as battery, electric motor, and power electronics [48]. The principal environmental advantage of HEVs is realized during the use phase and is manifested as a reduction in fuel consumption. Through the strategic alternation between electric drive assistance and engine operation, in conjunction with the capture of energy via regenerative braking, HEVs can achieve a substantial reduction in the consumption of gasoline or diesel per kilometer, which corresponds to a direct and proportional decrease in tailpipe CO2 and pollutant emissions [41]. Within a cradle-to-grave assessment, it is consistently observed that the well-to-wheel fuel cycle is accountable for approximately 80 to 90 percent of the total energy consumption and greenhouse gas emissions, with the manufacturing and end-of-life phases contributing only a minor fraction [41,44,48]. Therefore, although HEVs may contribute to an enhancement of urban air quality and a reduction in GHG emissions relative to conventional vehicles, they do not effectuate the complete elimination of said emissions; rather, they are to be understood as a mitigating technology as opposed to a zero-emission solution [41]. Although the end-of-life management of the battery is crucial for recovering valuable materials [45,51,52], projections indicate that HEVs will likely need to be superseded by 2050 to achieve stringent long-term climate objectives [45].
- Fuel Cell Electric Vehicles (FCEVs): FCEVs are propelled by an electric motor, a characteristic shared with BEVs; however, their mode of energy storage is distinct, as they generate electricity in situ using a hydrogen fuel cell rather than relying on a large-capacity battery. The manufacturing of an FCEV entails the fabrication of several specialized and energy-intensive components, including the fuel cell stack, which frequently incorporates precious metals such as platinum as catalytic agents, and high-pressure hydrogen storage tanks, which are typically reinforced with carbon fibers [34,59]. The preponderant environmental impacts associated with FCEVs are not localized to the vehicle’s operational phase of zero tailpipe emissions but are primarily situated within the “well-to-tank” stage, which encompasses the production and distribution of hydrogen fuel [61,62]. It is a matter of critical significance that the environmental performance of an FCEV is overwhelmingly contingent upon the method by which its hydrogen fuel is produced [45,59]. Currently, the predominant method for hydrogen generation is steam methane reforming of natural gas, a process heavily reliant on fossil fuels that yields what is commonly termed “gray” hydrogen. The use of such hydrogen precludes FCEVs from achieving their optimal environmental potential due to substantial upstream emissions [63,64]. Conversely, a remarkable degree of environmental performance can be achieved through the utilization of low-carbon hydrogen. In scenarios where hydrogen is derived from 100 percent renewable electricity, the cradle-to-grave GHG emissions of an FCEV can approach a value of zero, which is analogous to that of a BEV charged with renewable energy [63,64]. The end-of-life phase, which involves the recycling of fuel cell stacks and recovery of precious metals, can further augment the life cycle benefits of FCEVs [62]. The literature consistently underscores that the decarbonization of the hydrogen supply chain is of pivotal importance for rendering FCEVs environmentally competitive [45,62].
- Solar-Powered Vehicles (SPVs)/Vehicle-Integrated Photovoltaics (VIPV): A novel technological development in the domain of sustainable transportation is the integration of solar photovoltaic (PV) panels directly onto vehicle surfaces to provide onboard renewable electricity [63]. VIPV entails the incorporation of PV modules into the body of a vehicle, which enables the generation of a portion of its own requisite energy. The addition of PV cells to a vehicle augments the manufacturing footprint because of the energy consumption and associated emissions involved in solar panel production [65,66]. The determinative trade-off within the life cycle assessment is a function of the quantity of solar energy that the system produces over its operational lifetime, thereby offsetting grid electricity or fuel consumption, in comparison to the manufacturing and added weight penalties of the PV system itself. If the vehicle-integrated PV system generates a substantial amount of electricity, it has the potential to compensate for the production emissions of the solar hardware by displacing energy that would otherwise be sourced from the grid. Conversely, if a minimal quantity of electricity is generated, the embodied impacts may outweigh the operational benefits [67,68]. Studies have indicated that the benefits of VIPV are maximized under conditions of high solar irradiance and in regions served by carbon-intensive electricity grids [66,69,70,71]. The CO2 payback period for a vehicular PV system may be on the order of a decade under typical conditions but can be significantly shorter in sunnier locales with carbon-intensive grids [66,70]. As of 2025, SPVs and VIPV systems are predominantly in the pilot or prototype stages, however, they represent an innovative supplement that may enhance the ecological profile of EVs, particularly in regions with high solar insolation. Table 8 provides a summary of LCA finding by vehicle technology.
4. Conclusions
- Database timeliness and transparency: Rapid changes in battery technology and electricity systems can outpace inventory updates; future work should make temporal assumptions explicit, use dynamic use-phase modeling where relevant, and blend curated secondary data with traceable primary data to reduce bias.
- Regional specificity and interoperability: Limited regional coverage and inconsistent data models hinder comparability; expanding region-resolved datasets and adopting conventions for cross-platform exchange and version control will improve alignment across studies.
- Reporting consistency: Variation in functional units, system boundaries, LCIA choices, and software/database versions complicates synthesis; standardized reporting templates should be used to enable reproducible comparisons and support policy use.
- Uncertainty practice: Many studies rely on one-at-a-time sensitivity or qualitative scenarios; broader use of probabilistic, multi-parameter methods (with transparent sensitivity and scenario analyses) is needed to bound decision-relevant ranges.
- Evidence gaps on VIPV/SPV and circular pathways: Comprehensive LCAs should capture irradiance, duty cycles, added mass, durability, logistics, second-life uses, and recycling under dynamic grid scenarios to inform design and deployment choices.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
| EU | European Union |
| EVs | Electric Vehicles |
| ICEVs | Internal combustion engine vehicles |
| FCEVs | Fuel Cell Electric Vehicles |
| VIPV | Vehicle-Integrated Photovoltaics |
| LCA | Life Cycle Assessment |
| BEVs | Battery Electric Vehicles |
| HEVs | Hybrid Electric Vehicles |
| SPV | Solar-Powered Vehicles |
| GWP | Global Warming Potential |
| ELCD | European Life Cycle Database |
| CLCA | Consequential Life Cycle Assessment |
| ALCA | Attributional Life Cycle Assessment |
| EOL | End of Life |
| WTW | Well-to-Wheel |
| CLCD | Chinese Life Cycle Inventory Database |
| WTT | Well-to-Tank |
| PHEVs | Plug-in Hybrid Electric Vehicles |
| LCI | Life Cycle Inventory |
| LCIA | Life Cycle Impact Assessment |
| MaaS | Mobility as a Service |
| ISO | International Standard Organization |
| NMC | Nickel Manganese Cobalt |
| TTW | Tank-to-Wheel |
| LFP | Lithium Iron Phosphate |
| GREET | Greenhouse gases Regulated Emissions & Energies use in Technologies |
| USA | United States of America |
| GHG | Greenhouse Gases |
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| References | Title | Type of Vehicles Reviewed | Review Focus |
|---|---|---|---|
| [13] | Review of Environmental Life Cycle Assessment for Fuel Cell Electric Vehicles in Road Transport | FCEVs, hydrogen-powered electric vehicles | It discusses the importance of hydrogen refueling infrastructure and the efficiency of fuel storage and transportation systems |
| [15] | Carbon Footprint of Electric Vehicles—Review of Methodologies and Determinants | Battery Electric Vehicles (BEVs), Fuel Cell Electric Vehicles (FCEVs), Hybrid Electric Vehicles (HEVs), and Plug-in Hybrid Electric Vehicles (PHEVs) | An overview of methodologies for assessing the carbon footprint of electric vehicles, including a review of concepts, methods, standards, and calculation models based on the life cycle of the carbon footprint. |
| [16] | A systematic Review on Sustainability Assessment of Electric Vehicles: Knowledge gaps and future perspectives | Electric vehicles, autonomous vehicles, BEVs | This study aims to reveal research gaps in the sustainability assessment of electric vehicles and provide an outlook of the current state of knowledge, perspectives on research gaps, and potential ways for the adoption of integrated life-cycle modeling approaches. |
| [17] | A Review of Life Cycle Assessment Studies of Electric Vehicles with a Focus on Resource use | EVs, BEVs, HEVs, PHEVs, ICEVs | The goal of this study was to determine whether resource use aspects are adequately reflected in life cycle assessment case studies of electric vehicles. |
| [18] | Life Cycle Assessment of Electric Vehicle batteries: An overview of recent literature | Electric vehicle batteries, electric and hybrid vehicles, BEVs | This review focuses on understanding the magnitude and variability of the main impacts of automotive battery life cycles, with particular attention to climate change impacts, and to support researchers with methodological suggestions in the field of LCA. |
| [14] | Review of Economic, Technical, and Environmental Aspects of Electric Vehicles. | EVs | Focuses on Economic, technical and environmental aspects of Electric vehicles |
| Specific Unit | Description and Rationale | Advantages | Limitations & Biases | Reference Studies |
|---|---|---|---|---|
| Vehicle-kilometer (v.km) | Normalizes the total life cycle impacts to one kilometer driven by the vehicle. The rationale is to compare the environmental efficiency of the vehicle as a product. | It is simple to calculate and communicate. It is directly comparable to vehicle efficiency metrics. | Vehicle occupancy, which is the primary driver of system-level transport efficiency, is ignored. This can be misleading when comparing personal vehicles to public or shared transportation. | [1,3,24,26,41,42,43,44] |
| Passenger-kilometer (p.km) | Normalizes total life cycle impacts to the transport of one passenger over one kilometer. The rationale is to assess the efficiency of providing mobility services. | It accounts for occupancy, providing a more meaningful measure of transport system efficiency. Essential for comparing different modes (car, bus, train) and mobility models (private vs. shared). | Accurate data or assumptions on average occupancy rates are required, which can vary significantly by region, trip purpose, and time of day. | [23,25,32,35,36,45,46,47] |
| Per kWh of battery capacity | Normalizes cradle-to-gate impacts to one kilowatt-hour of battery storage capacity. Rationale is to compare the manufacturing footprint of different battery technologies | Useful for focused, cradle-to-gate comparisons of battery chemistries, manufacturing processes, or production locations | It ignores critical in-use performance metrics, such as cycle life, energy density, and efficiency, which are crucial for the overall vehicle life cycle performance. This can be highly misleading if used for whole-vehicle comparisons. | [4,11,34,39,40,48,49,50,51,52] |
| Boundary Type | Scope | Advantages | Limitations | Reference Studies |
|---|---|---|---|---|
| Cradle-to-Grave | Raw materials extraction to end of life | Comprehensive assessment; captures all life cycle stages | Data intensive; higher uncertainties | [27,53,55,56,63] |
| Well-to-Wheel | Focuses on fuel/electricity production and vehicle operation | Highlights the environmental impact of energy carriers | Vehicle manufacturing and end-of-life impacts were excluded. | [24,58,59,60,61,64] |
| Other System boundaries | Cradle-to-Gate, end of life analysis | Focuses on manufacturing or recycling impacts; also requires less data | Excludes use phase impacts during modeling of end-of-life scenarios. | [50,57,62] |
| Database | Geography Coverage | Access Type | Key Strength | Limitation | Use in EV | Representative Study |
|---|---|---|---|---|---|---|
| Ecoinvent | Global coverage (datasets for key countries) | Commercial (paid license; academic and professional options) | Large, transparent LCI database (>18 k datasets) covering diverse sectors; regularly updated (v3 series); offers multiple system models (Attributional “cut-off” and Consequential) | Ecoinvent data can be slightly Euro-centric in certain processes (owing to its roots). | Most widely used database in EVs LCA. It provides background data on battery materials, energy supply, and manufacturing processes. Valued for consistency and detail; cited as having strong completeness and documentation. Underpins the majority of academic EV LCAs (usually via SimaPro or OpenLCA). | [24,26,43,61,79,80,81] |
| GREET | North America | Free (data comes with GREET model download) | Detailed pathways for petroleum fuels, biofuels, electricity generation, and some vehicle material production; focused on energy use, GHGs, and air pollutants | Not a standalone database for full impact LCA (limited impact categories), but a crucial source for transport energy LCI. | Provides well-to-wheel GHG values that are used as benchmarks in policy discussions. Frequently tapped for EV LCA use-phase and production-phase energy/GHG data. | [48,57,80] |
| GaBi database (Sphera) | Global with regional specificity (many datasets tailored to EU, US, China, etc., plus global averages) | Commercial (bundled with GaBi software; subsets available for purchase in OpenLCA) | Extensive LCI database (~15 k datasets) developed with industry input; strong coverage of industrial processes, materials, and region-specific data; updated regularly, aligned with ISO/PEF requirements. | It is less frequently seen in literature due to proprietary nature but recognized as a key data source for EV manufacturing. | Widely used in industry EV LCAs (automotive companies, suppliers) for detailed modeling of vehicle components. Contains auto-specific data (e.g., painting, machining) often not in other | [53,62,76,82,83] |
| Regional Customization (ELCD, CLCD) | Europe, China | Open Access | Region-specific datasets are designed to address regional or local conditions, such as grid mixes and usage patterns. | Its strength is also its weakness. Not widely used for global study. | Provides regional average data (e.g., electricity grid, fuel production, basic materials) which can improve regional accuracy for region-based EV LCAs. | [11,20,84,85,86,87] |
| Name | Main Features | Regional Coverage | Licensing Model | Applications in EV LCA | Reference Study |
|---|---|---|---|---|---|
| SimaPro | Commercial LCA software with comprehensive process modeling and scenario analysis; includes extensive built-in LCIA methods (ReCiPe, CML, TRACI, etc.); supports import of multiple databases (Ecoinvent, Agri-footprint, etc.) | Global use (widely in Europe, North America, Asia); database content primarily global/EU but user can model any region | Proprietary (commercial license) by Pre-Sustainability | Widely used in academic and industry EV studies for full cradle-to-grave analysis; often paired with Ecoinvent to assess EV vs. ICEV impacts (production, use-phase emissions, EoL). | [19,45,88] |
| GaBi | Commercial LCA software and integrated LCI database; strong industry focus with detailed datasets (~15 k); robust scenario and parameter features; supports major impact methods | Global use (common in Europe & industry worldwide); database with region-specific processes (Europe, US, Asia, etc.) | Proprietary (commercial license) by Sphera | Standard tool in automotive industry LCAs used for vehicle component and material LCAs with GaBi database (high detail on manufacturing). It is typically used to model the entire vehicle supply chain and compare design alternatives. | [74,82] |
| OpenLCA | Open-source LCA software; flexible and extensible (scripting, plugin support); no built-in data but can import many databases (ecoinvent, GaBi, etc.); transparent calculation logs | Global (users worldwide; relies on imported data for region-specificity) | Free (GPL open-source) by GreenDelta | It has been used in numerous EVs LCA case studies. Enabled low-cost studies of EVs vs. ICE (e.g., using Ecoinvent data). It is often chosen for its transparency and modifiability in studies examining battery production, charging scenarios, etc. The second most used software in some reviews. | [7,42,43] |
| GREET | Specialized LCA tool for transportation energy and emissions; provides parameterized models of fuel production, vehicle operation, and vehicle manufacturing energy use; outputs GHG, regulated pollutants, energy consumption | Primarily U.S.-focused data (models for US grid, fuels; some international versions like CA-GREET) | Free (publicly available; not fully open-source but free Excel/Standalone) by Argonne National Laboratory | It is commonly used for EV well-to-wheel GHG analysis and policy studies in North America. Frequently integrated into EV LCA for use-phase, such as calculating electricity generation emissions or fuel cycle impacts. | [57,76,85] |
| Custom Models/Spreadsheets | Varies | Customized | GAMS with CPLEX solver; LEAP-OSeMOSYS; COPERT; TISC platform | These tools are used for specific tasks like modeling operations or analyzing policy scenarios. | [3,28,53,88,89,90] |
| LCIA Method | Model Type | Usage Frequency | Key Impact Categories | Geographical Focus | Strengths | Limitations | Representative Studies |
|---|---|---|---|---|---|---|---|
| ReCiPe 2016 (Midpoint & Endpoint) | Midpoint & Endpoint | ~50% | GWP, Acidification, Eutrophication, Human Toxicity, Particular Matter, Land Use, Water Use | Global | Comprehensive; supports midpoint and endpoint views; widely used | Complex; endpoint results involve subjective value choices; gaps for certain critical metals | [11,34,60,80,91] |
| CML 2001/2002 | Midpoint | ~20% | GWP, Acidification, Eutrophication, Human Toxicity, | Global | Robust midpoint framework; well-established in academia | No endpoint modeling: resource indicators may not reflect criticality | [31,94] |
| IPCC GWP 100a | Midpoint (Climate Only) | ~15% | Global Warming Potential (CO2, CH4, N2O) | Global | Transparent and focused; ideal for single-impact studies | Narrow scope; excludes non-GHG pollutants like NOx, PM | [24,29,42,95] |
| Custom Midpoints | User-defined | ~15% | GWP, Water Scarcity, Sulfuric Acid Emissions, Heavy Metal Toxicity | Context-specific | Addresses region- or process-specific concerns not captured by standard methods | Lacks comparability unless normalized and transparently defined | [68,96] |
| Method | Description | Strengths | Limitations | Representative Studies |
|---|---|---|---|---|
| Parameter-Specific Sensitivity | Varies key input variables individually to assess impact on results | Easy to implement; identifies key influencing variables | Ignore parameter interactions; not probabilistic | [39,49,53,81,84,97] |
| Scenario Analysis | Evaluates future pathways or regional changes (e.g., electricity mix, battery tech, vehicle use) | Captures systemic and structural uncertainties; policy-relevant | Depends on expert assumptions; lacks statistical quantification | [58,62,71,72,99,100] |
| Monte Carlo Simulation | Uses random sampling from input distributions to estimate output uncertainty | Provides probabilistic results; captures interactions | Data- and computation-intensive; requires defined distributions | [60,61,79,101,102] |
| Other/Implicit Methods | Includes pedigree matrices, expert elicitation, or qualitative discussions | Specific to a domain or use case | Usually not reproducible | [78,87,103] |
| Vehicle Technology | LCA Summary | Cited References |
|---|---|---|
| Battery Electric Vehicle | Characterized by high manufacturing emissions (embodied carbon), particularly from the battery, but very low use-phase emissions. The overall life cycle benefit is critically dependent on the carbon intensity of the electricity grid used for charging. Circular economy principles, such as battery recycling, are crucial for mitigating initial impacts. | [12,13,25,38,39,65,75,76,77,78,79] |
| Plug-in Hybrid Electric Vehicle | It occupies an intermediate position between BEVs and ICEVs. Performance is highly sensitive to user charging behavior and the carbon intensity of the regional electricity grid. They have lower manufacturing impacts than BEVs due to their smaller batteries, but retain tailpipe emissions from ICE. It is often considered a transitional technology. | [24,32,34,40,43,48,53,56,57,58] |
| Hybrid Electric Vehicle | The principal environmental benefit is a 15–30% reduction in fuel consumption during the use phase. The well-to-wheel fuel cycle dominates its life cycle impact (80–90%). It is a mitigating, not a zero-emission, technology and is projected to be phased out to meet long-term climate goals. | [41,44,45,48,51,52] |
| Fuel Cell Electric Vehicle | It exhibits zero tailpipe emissions, but its life cycle performance is overwhelmingly dependent on the hydrogen production pathway (“well-to-tank” stage). The use of “green” hydrogen can result in near-zero life-cycle emissions, whereas “gray” hydrogen from fossil fuels offers limited benefits over efficient ICEVs. | [34,45,59,61,62,63,64] |
| Solar Powered Vehicle/Vehicle Integrated Photovoltaic | This nascent technology balances the LCA trade-off with the added manufacturing footprint of PV panels against the avoided emissions from displaced grid electricity. The benefits are maximized in regions with high solar irradiance and carbon-intensive electricity grids. | [63,65,66,67,68,70,71] |
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Oluwalana, O.J.; Grzesik, K. A Systematic Review of Life Cycle Assessment of Electric Vehicles Studies: Goals, Methodologies, Results and Uncertainties. Energies 2025, 18, 5867. https://doi.org/10.3390/en18225867
Oluwalana OJ, Grzesik K. A Systematic Review of Life Cycle Assessment of Electric Vehicles Studies: Goals, Methodologies, Results and Uncertainties. Energies. 2025; 18(22):5867. https://doi.org/10.3390/en18225867
Chicago/Turabian StyleOluwalana, Oluwapelumi John, and Katarzyna Grzesik. 2025. "A Systematic Review of Life Cycle Assessment of Electric Vehicles Studies: Goals, Methodologies, Results and Uncertainties" Energies 18, no. 22: 5867. https://doi.org/10.3390/en18225867
APA StyleOluwalana, O. J., & Grzesik, K. (2025). A Systematic Review of Life Cycle Assessment of Electric Vehicles Studies: Goals, Methodologies, Results and Uncertainties. Energies, 18(22), 5867. https://doi.org/10.3390/en18225867

