3.1. Determining Labor and Production Costs (FOT) Based on Production Functions of Complex Variables
Profit maximization should take the following into account:
- -
The volume of produced output;
- -
Capital investment costs, raw materials, and materials;
- -
The number and wages of employees.
A comprehensive analysis of the relationship between costs and output in economic theory is provided by the production function, which allows the determination of the maximum possible output given a specific amount of resources.
Variables | Variable Assignment |
Gt | gross profit |
Ct | production costs |
Kt | capital investment |
Lt | labor resources |
Qt | gross output |
A comparative analysis of existing production functions was carried out in [
17], where, based on the results of the analysis, it was decided to use the PF of a complex argument. It allows the number of process indicators to be increased and a more complete analysis of production to be conducted. Classical types of production functions reveal the dependence of output on capital investments and labor costs. However, in real economic practice, production results are indicated not only by gross output but also by economic efficiency indicators, such as gross profit
, production costs
, and, consequently, production profitability indicators [
18]. The sum of gross profit and production costs gives a value equal to the volume of produced and sold goods (gross output
). Therefore, it is necessary to determine the dependence of these indicators on the resources expended, which can be addressed by the production function of complex variables. The use of complex variables in this context is justified by their unique ability to simultaneously represent and analyze two interrelated, often opposing, economic characteristics within a single mathematical framework. Specifically, the real component can represent quantitative aspects (e.g., gross profit or volume of resources), while the imaginary component can capture qualitative or cost-related aspects (e.g., production costs, efficiency, or even the passive and active components of administrative activities). This duality is particularly pertinent to heat supply systems where efficiency gains often involve trade-offs between initial investment (capital) and operational expenditure (labor and fuel), and where both direct monetary values and less tangible ‘qualitative’ factors influence overall performance and sustainability. Traditional real-valued functions would require separate models or a more cumbersome multi-equation system to capture such multifaceted relationships, making the complex-valued approach a more elegant and integrated solution for dynamic analysis and forecasting. Then, the complex variable of the production result will look as follows:
where
—gross profit;
—production costs
In the framework of complex-valued economics, economic indicators are represented as complex numbers, allowing the simultaneous modeling of two interdependent characteristics. For this study, the complex variable of the production result, w, is defined such that its real part represents the gross profit (G), and its imaginary part represents the production costs (C). This formulation, w = G + iC, is crucial because profit and costs are intrinsically linked, often moving in opposing directions yet together determining overall economic efficiency. The modulus of this complex number, /w/ = G2 + C2, can be interpreted as the total economic outcome, while its argument, arg (w), provides insight into the efficiency or balance between profit and cost.
Similarly, the production resources—primarily capital (K) and labor (L)—are also represented as a complex variable, z = K + iL. Here, the real part, K, signifies capital investment, representing the ‘passive’ component of production resources that provides the infrastructure and tools. The imaginary part, L, denotes labor resources (or wage fund), representing the ‘active’ component involving human effort and operational expenditure. The modulus /z/ = K2 + L2 reflects the total resource input, and arg (z) indicates the capital/labor ratio or the balance in resource allocation.
This complex-valued approach provides a powerful tool for dynamic analysis and forecasting by capturing the dual nature of economic phenomena—for instance, balancing the quantitative output with the qualitative efficiency, or the initial investment with ongoing operational expenses. Traditional real-valued functions would require separate equations or a more cumbersome system to model these intertwined relationships. By using complex variables, a single, integrated function was obtained that was capable of reflecting both the ‘amount’ (e.g., profit) and ‘quality’ (e.g., cost-efficiency) of outcomes, as well as the ‘volume’ (e.g., capital) and ‘structure’ (e.g., labor contribution) of inputs. Thus, to determine the maximum production efficiency from the expended labor and capital resources, a production function was defined with complex variables that relate w to z.
Thus, to determine the maximum production efficiency from the expended labor and capital resources, it is necessary to define the function of complex variables.
where
—capital investment;
—labor resources.
While direct comparative validation against all existing real-valued multivariate production models is beyond the scope of this particular study, the efficacy of complex-valued economic modeling has been theoretically established and applied in various economic and financial analyses. Our validation here primarily focuses on demonstrating the model’s accuracy against empirical data for heat supply and its ability to provide comprehensive insights not readily available through real-valued functions alone.
3.2. Performing Correlation Analysis of the Production Function
The analysis of the relationship between variables, primarily the analysis of the presence of a linear relationship between two complex variables, can be determined using the complex pairwise correlation coefficient.
The initial data for determining the type of model (2) are presented in
Table 1. These data are empirical, derived from the operational records of a centralized heat supply enterprise in Taldykorgan, Kazakhstan, over the period of 2020–2024.
It is necessary to convert the initial data into dimensionless quantities, but without centering the values. Therefore, in the linear model, a free coefficient is used .
To convert to dimensionless quantities, we divide the resources by the first value
,
, while gross profit and production costs will be normalized relative to the gross revenue in the first year of observation (
Table 2), as this allows a consistent basis of comparison across different time periods.
where
—gross output.
The complex pairwise correlation coefficient is equal to:
According to the theory of complex-valued economics, the complex pairwise correlation coefficient for a linear functional dependence should be of the form
, that is, the modulus of the real part is equal to one, and the imaginary component is equal to zero. The obtained values of the pairwise correlation coefficient (5) differ from the linear one, indicating that the linear model of complex variables is not suitable for obtaining the production result. To verify the theory, let us consider a linear functional dependence of the form:
3.4. Power Model of the Production Function (PF)
The construction of a nonlinear model of the production function with a complex argument begins with the traditional power model. The simplest power function with complex variables is the function with real coefficients.
The widespread use of the power production function of complex variables with real arguments is due to the fact that even with a single observation of the production process, it is possible to determine the unknown coefficients using the following formulas:
where
.
We will find the values of the coefficients for each year that is currently being examined (
Table 4) and compare the model data with the initial data.
As can be seen from the table, the error between the model data and the initial data is small (less than 8%); therefore, a complete analysis of this model is carried out.
The coefficient
b characterizes the relationship between two economic indicators: cost-based profitability
and the capital/labor ratio
, and it provides an opportunity to consider it as one of the analytical characteristics (
Table 5). To do this, it is necessary to determine the value of the coefficient
under various conditions:
- -
The maximum gross profit
is achieved when
- -
Cost-based profitability
when
- -
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Production income
when
where
if
, and in all other cases
- -
Production costs
when
where
if
and in all other cases
- -
Let us verify the coefficients b by substituting them into the original model (10) for each year.
As can be seen from
Table 6 and
Figure 2, the production is efficient, despite the fact that the profit is decreasing while the costs continue to rise.
Since, during the analysis of the first year, the values were converted into dimensionless quantities by dividing by the first value, it is necessary to check what the other observations show.
As seen from
Table 7 and
Figure 3, the production is almost unprofitable, and although the value of
is close to the maximum income value
, production costs continue to rise, which, in principle, corresponds to the real situation in the heating market.
Let us consider the value
,
,
in different changes (
Figure 4 and
Figure 5 below) to determine a general model that allows the forecasting of profit, costs, and income based on the amount of capital expenditure and employee wages for the years under consideration:
As shown below in
Figure 4 and
Figure 5, the amount of profit and costs changes proportionally each year. That is, the model coefficients of the subsequent year relative to the previous year change by
,
times. Therefore, the general model of a simple power complex-valued function should be defined by comparing it with the previous year:
where
t is the year under consideration.
Model construction based on the previous year arises due to a number of features of the economic situation in district heating enterprises as a whole:
- -
The constant aging of the equipment in use, which leads to the need for continuous reconstruction—the rate of equipment replacement is lower than the rate of obsolescence; therefore, the amount of capital investment increases each year.
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The constant need to implement automated control systems, both at the upper and lower levels, also leads to an increase in capital expenditures and a decrease in labor compensation.
- -
Changes in coefficient values are also caused by external disturbances, such as inflation, new legislative requirements (implementation of quality management systems, energy-saving systems, and others).
Thus, based on model (17), it is possible to plan the amount of capital investment and the wage fund depending on the expected values of profit and costs according to the model:
Let us consider the resulting models through conformal mappings, i.e., a graphical understanding of how one complex variable is mapped onto another complex plane, modeling the value of the complex result variable [
17].
To do this, represent model (6) in the following form:
;
. In this representation, for the complex result variable
w =
G +
i C:Represents the total economic magnitude or overall scale of the production outcome, encompassing both gross profit and production costs. A larger modulus indicates a greater overall economic activity or value generated.
Polar Angle, :
Provides the economic efficiency ratio or balance between gross profit and production costs. A higher θ (closer to 90 degrees or π/2 radians, assuming positive profit and costs in the first quadrant) suggests a relatively larger proportion of costs compared to profit, indicating lower efficiency or higher expenditure relative to returns. Conversely, a lower θ suggests higher profitability relative to costs.
For the complex resource variable z = K + i L:
Represents the total magnitude of resource input, combining both capital investment and labor costs. A larger modulus indicates a greater overall investment in resources.
Polar Angle, :
Represents the capital/labor ratio or the structural allocation of resources. An increase in ϕ (moving towards 90 degrees or π/2 radians) implies a shift towards a relatively higher proportion of labor input compared to capital investment, suggesting a more labor-intensive strategy. Conversely, a decrease in ϕ indicates a more capital-intensive strategy. For instance, if the resource vector moves from point 1 to point 2 and its polar angle ϕ increases, it implies that the enterprise is becoming more reliant on labor resources relative to capital investment to achieve its production goals. This could reflect a strategy of utilizing existing infrastructure more intensively with increased workforce, or a lack of new capital investment compared to rising labor expenditures.
For example, let us consider the comparative data for 2023 and 2024 from
Table 2 and find the polar coordinates of the model (19) (
Table 8).
Based on the data from
Table 8, let us construct the conformal mapping of model (19).
Compared to the previous moment in time (
as shown in
Figure 6), the amount of attracted capital at the enterprise increases by a larger value than the decrease in labor resources. As a result, the magnitude of the production output decreases with the increase in resources, while the polar angle increases. However, on the complex result plane, the new polar angle at point 2 changes less relative to point 1 than the polar angle at point 2 on the resource plane compared to point 1. This, as shown in the right part of
Figure 6, indicates a significant increase in cost and a decrease in gross profit.
The rigorous application of conformal mappings for optimizing production or investment decisions lies in their unique property of preserving angles and local shapes, which allows a direct, geometric interpretation of the complex production function’s behavior. This visual representation serves as a powerful diagnostic and strategic tool:
Quantitative Interpretation of Distortion and Rotation: By analyzing the degree of ‘stretching’ or ‘compression’ (changes in modulus) and ‘rotation’ (changes in argument) that the mapping imposes on the resource plane (z-plane) when transformed to the result plane (w-plane), management can quantitatively assess the efficiency of resource allocation. For example, if a small change in the resource vector (on the z-plane) leads to a disproportionately large undesirable change in the result vector (on the w-plane, e.g., significant cost increase relative to profit), it signals an inefficient allocation strategy.
Identification of Optimal Trajectories: Conformal mappings help in visualizing ‘optimal trajectories’ of resource allocation. Management can hypothetically plot desired economic outcomes (e.g., specific profit/cost ratios or total economic value) on the w-plane. The inverse mapping then reveals the corresponding resource inputs required on the z-plane. This allows forward planning, where adjustments to capital and labor can be precisely guided by the visual ‘path’ towards an optimal economic state.
Sensitivity Analysis and Risk Assessment: The visual nature of conformal mapping facilitates a form of sensitivity analysis. By observing how small perturbations in input resources (e.g., a slight increase in labor or capital) affect the overall economic outcome’s magnitude and efficiency ratio, managers can gain insights into the system’s robustness and identify potential risks associated with certain resource allocation strategies. This goes beyond simple numerical outputs by providing an intuitive understanding of the system’s dynamic response to changes.
In essence, while the optimization is not performed by the mapping itself, the conformal mapping provides an invaluable geometric framework for understanding complex economic interdependencies, visually guiding management in assessing trade-offs, forecasting consequences of resource re-allocation, and ultimately making more informed strategic decisions for heat production efficiency.
3.5. Practical Application Example
To illustrate the practical utility of the developed complex-valued production function, let us consider a scenario for the heat supply enterprise for the year 2025. Suppose the management aims to achieve a specific gross profit (real part) and maintain production costs within a certain limit (imaginary part) to ensure economic and reliable heat supply. For instance, if the desired complex result (production output, w) for 2025 is projected as wdesired = 0.15 + 2.65i (representing a target gross profit of 0.15 normalized units and production costs of 2.65 normalized units), the inverse forecasting capability of our model can be used, as expressed in Equation (19).
Using the generalized model based on the previous year’s coefficients (Equations (18) and (19)), and assuming a projected change factor for 2025 based on historical trends (e.g., from
Table 4), we can calculate the optimal capital investment (K) and labor costs (L) required. For example, if the calculated b coefficient for 2025, based on the w
desired, is
b2025 =
X (where X would be a calculated value from the model), then by applying the reverse transformation of the model (18), we can determine the corresponding required complex input
z2025 =
K2025 +
iL2025. This would reveal the specific amounts of capital and labor resources (e.g., in Tenge and number of personnel/wage fund) necessary to achieve the desired profit and cost targets for that year, ensuring resource procurement aligns with economic and reliability goals for 1 Gcal of energy production.
This direct application allows decision-makers to quantitatively assess the resource implications of their economic targets. For instance, if the model suggests a significant increase in capital expenditure is needed to reduce labor costs while maintaining profitability, management can then plan for equipment modernization or automation projects. Conversely, if targets can be met with optimized labor deployment, training programs or staffing adjustments can be prioritized. This forecasting capability directly supports strategic planning for ensuring reliable and economical heat supply, as highlighted in our conclusions.