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Article

Ranking Decision Making for Eco-Efficiency Using Operational, Energy, and Environmental Efficiency

Division of Business Administration, Kyonggi University, Suwon 16227, Korea
Sustainability 2022, 14(6), 3489; https://doi.org/10.3390/su14063489
Submission received: 9 February 2022 / Revised: 10 March 2022 / Accepted: 12 March 2022 / Published: 16 March 2022

Abstract

:
The objective of this paper is to propose a method for evaluating the eco-efficiency of business organizations. In order to adequately capture the inherent properties of eco-efficiency, we present a decision support model that can evaluate an organization based on ranking the derived efficiencies at the operational, energy, and environmental dimensions and taking these factors into account comprehensively. The proposed model was designed in the form of a combination of data envelopment analysis (DEA) and TOPSIS, and we tried to make use of the advantages of each method and offset the disadvantages. Specifically, the operational, energy, and environmental efficiencies were derived through DEA. Then, each efficiency was set as the criteria, and the eco-efficiency ranking was determined through TOPSIS. This study shows that it has the advantage of not requiring preference information from the decision maker and, at the same time, can improve the discriminatory power between efficient and inefficient decision-making units. To apply the proposed model, the analysis results are presented through an illustrative example, and the theoretical significance is described. It is also explained that the proposed model can provide a more realistic and convincing evaluation.

1. Introduction

Over the past 30 years, the discussion of efficiency measures related to the environment has continued. In the 1990s, Schalteger and Sturm [1] introduced and defined eco-efficiency as “business connections to sustainable development.” Since then, scholars have paid attention to measuring and evaluating eco-efficiency. Specifically, measurement and evaluation models have been developed by operations research scholars [2,3,4,5,6,7], and the developed models have been applied to various fields [8,9,10,11,12,13,14,15]. The concept of eco-efficiency is analyzed at the national level, used in the evaluation of industries or regions within a country and used to measure and evaluate efficiency at the organizational level. Regardless of the level of evaluation, obviously, the main concern of measuring eco-efficiency is to improve economic performance by simultaneously reducing environmental impact and energy use. In addition, the definition of eco-efficiency differs somewhat among the scholars who present this concept, but fundamentally, they shed light on the common core of “producing appropriate pollutants and energy efficiently”. There has been growing interest in eco-efficiency in many business sectors, and it is believed that eco-efficiency evaluation can supplement the traditional evaluation system that is obsessed with technological and economic evaluation and support the decision-making process [16].
Data Envelopment Analysis (DEA) has been widely used since it was first proposed by Charnes et al. [17] as an effective tool to evaluate the productivity and efficiency of organizations. DEA has the advantage of considering many inputs and outputs. In addition, DEA does not require a parameter specification of a particular function, nor does it require a predetermination of the weights of each input and output. For these reasons, since the original model was carried out, many researchers have contributed to the refinement and extension of DEA for their various fields of interest.
Traditional DEA models allow the users to evaluate the economic performance of individual decision-making units (DMUs) depending on a profitability perspective. However, addressing the environmental performance and energy utilization has become one of the important issues for analyzing the performance of organizations. Therefore, extended DEA methods that take into account those issues are required. For the past 20 years, DEA has been widely used as a methodology for measuring efficiency while considering environmental factors (e.g., [2,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34]) and energy factors (e.g., [20,29,32,35,36,37,38,39]). Although somewhat different, scholars have presented measures for environmental and energy efficiency while taking into account the above two factors. In DEA studies, environmental efficiency has been measured by incorporating environmentally detrimental factors, which can be considered undesirable outputs. Theoretically, DEA methods taking into account undesirable outputs were developed by Färe and Grosskopf [40], Korhonen and Luptacik [2], Seiford and Zhu [41], and Liu et al. [42]. Since Färe et al. [43] studied energy efficiency, numerous studies have proposed the method for evaluating energy efficiency by employing DEA. As such, efforts have been made to evaluate the organization’s performance through environmental efficiency and energy efficiency, but they have not reached the point of deriving eco-efficiency by integrating these measures. Recalling the meaning of eco-efficiency defined above, it would be the most reasonable approach to consider both environmental efficiency and energy efficiency as well as operational efficiency, which is fundamental for business organizations.
Nevertheless, the reason why there are not many studies trying to integrate these three efficiencies is that the preference information indicating the relative importance of each is not known. In other words, when these three efficiencies are integrated through DEA, decision makers are required to judge their relative importance in relation to operation, the environment, and energy. As in Lee and Park [44], demanding relative importance from decision makers can be an advantage in that it can increase the degree of freedom, but on the contrary, it can be pointed out as a disadvantage in that it can burden decision makers. In addition, it may be difficult to use weights because the distribution of efficiency scores is not homogeneous due to the characteristics of the variables used in each efficiency calculation.
How can an eco-efficiency evaluation be performed that reasonably synthesizes operational, energy, and environmental efficiency? In this context, can the evaluation of eco-efficiency be sound mathematically and make a sufficiently discriminatory evaluation? While answering the above questions, we would like to suggest a method that practitioners can easily understand and apply. Overall, this study proposes a model for evaluating organizational efficiency in terms of operation, environment, and energy and proposes a method of assessing eco-efficiency without information on the preference of decision makers. The relationship between each efficiency derived through DEA and overall efficiency will be identified, and a ranking method for eco-efficiency by combining with TOPSIS, a representative Multi-Criteria Decision Making (MCDM) technique, will be presented. The reasons for using TOPSIS in this study can be summarized in three ways. First, TOPSIS is intuitive and simple [45]. Second, it does not require the decision makers’ preference information [46]. Third, the performance measures of all alternatives to the attributes can be easily visualized. Finally, it allows for a compromise between criteria, where a poor outcome of one criterion may be overruled by a good outcome for another criterion [47]. These characteristics show that TOPSIS can be one of the most suitable methods for deriving a ranking without decision makers’ preference information in consideration of the fragmentation of multiple efficiency scores derived through DEA. It should be noted that this does not mean that TOPSIS is the only technique that should be used in combination with DEA, and other ranking-based MCDM techniques that share the above advantages can also be utilized.
The rest of the paper is organized as follows. Section 2 describes the models for deriving the overall efficiency and partial efficiency and examines the relationship between the efficiency measures. In addition, a description of the application of the methodology is presented along with a theoretical review. Section 3 explains how to derive eco-efficiency rankings by synthesizing the operational, energy and environmental efficiencies through the example of an agricultural production system. Section 4 discusses the theoretical and practical implications of the study. Section 5 concludes the study by discussing the limitations of the study and seeking paths for future research.

2. Methods

2.1. Overall Efficiency

In DEA terminology, the organization under evaluation is called a decision-making unit (DMU). The efficiency of a DMU is expressed as a ratio of the weighted sum of its outputs to the weighted sum of its inputs. Thus, it is necessary to classify all variables according to their functional uses in order to define the overall efficiency. In this study, we decompose the input variables into three types: operational inputs, energy inputs, and environmental inputs. The output variables are also divided into two types: (general) outputs and environmental outputs. Given these types of variables, we can define the operational, energy, and environmental efficiencies as follows:
r = 1 s u r y r o + / i = 1 m v i x i o
r = 1 s u r y r o + / k = 1 p w k z k o
r = 1 s u r y r o + / h = 1 q μ h y h o
Generally, the outputs have the characteristic of being better when having larger values. For this reason, these outputs are also called desirable outputs. In this study, we set the (general) outputs y r + as desirable outputs. We define the input variables x i as operational inputs, typically used in the production process for ensuring greater efficiency as they are reduced (e.g., labor, machinery, and resources). Now, the operational efficiency of DMU o is expressed as in Equation (1), where v i and u r are unknown non-negative weights for the operational inputs and outputs, respectively. The energy efficiency is measured by separating the energy-related components from the general production resources. Thus, energy inputs z k are considered input variables, and accordingly, the energy efficiency of DMU o can be calculated by Equation (2), where w k is the unknown non-negative weights for the energy inputs. Equation (3) expresses the environmental efficiency. Simply, environmental efficiency explains how to efficiently produce the outputs relative to the environmental inputs, and environmental efficiency is calculated as the ratio of the outputs to the environmental inputs. However, in this study, we define y h as a set of variables consisting of environmental inputs and environmental outputs, because the environmental outputs are also treated as behaving inputs in a fractional form for efficiency calculation. This idea was also proposed and utilized by Korhonen and Luptacik [2], Zhang et al. [29], Lee and Park [44], and Cecchini et al. [48].
The conventional DEA method is followed the assumption that all input variables affected all the output variables. This model implicitly assumes that all DMUs operate a constant returns to scale (CRS) transformation of the inputs into outputs. We adopt the CRS assumption in this study. When there are total of m + p + q inputs and s outputs for each DMU j (j = 1,2,…,n), the overall efficiency of a particular DMU o can be formulated as in the following fractional programming model:
max r = 1 s u r y r o + i = 1 m v i x i o + k = 1 p w k z k o + h = 1 q μ h y h o s . t . r = 1 s u r y r j + i = 1 m v i x i j + k = 1 p w k z k j + h = 1 q μ h y h j 1 v i 0 w k 0 μ h 0 u r 0
Additionally, Equation (4) can be transformed into a linear model by using the Charnes–Cooper transformation [49]:
max   θ = r = 1 s u r y r o + s . t . r = 1 s u r y r j + i = 1 m v i x i j k = 1 p w k z k j h = 1 q μ h y r j 0 i = 1 m v i x i o + k = 1 p w k z k o + h = 1 q μ h y r o = 1 v i 0 w k 0 μ h 0 u r 0

2.2. Partial Efficiency

In Equation (5), the optimal objective function value becomes the efficiency score of DMU o. If the efficiency score equals one, DMU o is regarded as efficient and is also on the efficient frontier; otherwise, it is inefficient. Equations (4) and (5) allow the DMU o to assign the most favorable weights in calculating the ratio of the aggregated output to the aggregated input. However, the weighting scheme of the traditional DEA model is not applicable for some cases, since one or very few variables may be heavily weighted, and the effect of the other variables may be completely ignored. In addition, not all inputs in the production process necessarily affect all of the output factors. Namely, some inputs may not influence certain outputs in many settings measured for efficiency. Therefore, it is necessary to convert the aggregated form of the input-output setting into a form that can measure the partial efficiency. In addition, we can point out the difficulties that arise when evaluating performance across multiple dimensions through a measure of efficiency in DEA. In this case, for a detailed analysis of the efficiency of the DMUs, it was necessary to determine the efficiency of each individual dimension. The partial efficiency measures provide deeper insight into how an organization operates and can have significant business implications [50]. This is also consistent with the DEA’s general purpose of finding areas where certain inefficiencies are occurring and supporting performance improvement actions.
We propose a model that disaggregates efficiency by considering the nature of the variables. From Equations (1–3), the partial efficiency models for measuring the operational, energy, and environmental efficiencies can be formulated as follows:
max    θ 1 = r = 1 s u r y r o + s . t . r = 1 s u r y r j + i = 1 m v i x i j 0 i = 1 m v i x i o = 1 v i 0 u r 0
If the optimal value of the objective function in Equation (6) equals one, then the specific DMU o is on the operationally efficient frontier:
max    θ 2 = r = 1 s u r y r o + s . t . r = 1 s u r y r j + k = 1 p w k z k j 0 k = 1 p w k z k o = 1 w k 0 u r 0
If the optimal value of the objective function in Equation (7) equals one, then the specific DMU o is on the energy efficient frontier:
max    θ 3 = r = 1 s u r y r o + s . t . r = 1 s u r y r j + h = 1 q μ h y h j 0 h = 1 q μ h y h o = 1 μ h 0 u r 0
If the optimal value of the objective function in Equation (8) equals one, then the specific DMU o is on the environmentally efficient frontier.
Definition 1.
A DMU o is said to be operationally efficient if its partial efficiency score θ 1 = 1 .
Definition 2.
A DMU o is said to be energy efficient if its partial efficiency score θ 2 = 1 .
Definition 3.
A DMU o is said to be environmentally efficient if its partial efficiency score θ 3 = 1 .
Theorem 1.
If a DMU is partially efficient, it is efficient overall.
Obviously, the overall efficiency score is larger than or equal to the maximum value of the three partial efficiency scores. As shown in Equation (5), the overall efficiency evaluation model includes all the variables used in each of the partial efficiency evaluations, and thus it has more choices for having the most favorable weight.
Theorem 2.
For any DMU j, θ j * max { θ j 1 , θ j 2 , θ j 3 } .
Proof. 
(1) When assuming that max { θ j 1 , θ j 2 , θ j 3 } = θ j 1 < 1 , the first constraint in Equation (6) is a more restricted version than that in Equation (5). Thus, Equation (5) permits multipliers which identify other input variables. The more variables considered, the greater the chance some inefficient DMUs will dominate the added dimension. (2) When assuming that max { θ j 1 , θ j 2 , θ j 3 } = θ j 1 = 1 , by Theorem 1, θ j * = 1 . By combining (1) and (2), the theorem is proven. □
Furthermore, DMUs that were not efficient through partial efficiency evaluation could be classified as efficient units in overall terms. From the above discussion, we can conclude that the overall efficiency model overestimates the efficiency of DMUs, although it contains variables related to operation, energy, and environment.

2.3. No Preference Information

The original DEA model minimizes decision maker intervention in that it measures the relative efficiency without including judgment on the decision maker’s preferences. Various DEA techniques that can utilize a decision maker’s preference information have been proposed. Examples include Golany’s method of setting targets [51], Athanassopoulis’s method of using weight restrictions [52], and Charnes et al.’s method of using the cone ratio [53]. However, all of the above-mentioned methods require the decision maker’s preference information, and in most cases, it is subjective and can be difficult to obtain. In addition, these methods focus on capturing preference information for the variables used in DEA. In such a situation, if the number of variables increases, it becomes difficult to reflect the preference information, which increases the burden on decision makers. Furthermore, if preference information for each variable is considered in the form of weights, there is a possibility that the merits of DEA, which is based on optimistic self-evaluation, may be diluted. Therefore, it can be said that a method that can reflect the common characteristics of variables while maintaining the advantage of DEA that does not utilize the decision maker’s preference information is required.
In this study, using the concept of partial efficiency presented in the above subsection, we derive efficiency measures that convey the common characteristics of the inputs and outputs and propose a method to evaluate the overall performance based on this. If the operational, energy, and environmental efficiencies, which are the main interest of this study, are defined as partial efficiency, and each efficiency score is derived, the distribution of each efficiency score will not be homogeneous. In a situation where there are multiple partial efficiency scores, how to make a comprehensive judgment without the decision maker’s preference information becomes a critical problem. MCDM techniques can help solve this problem. In this study, we propose a method for evaluating performance based on ranking by synthesizing multiple partial efficiencies using TOPSIS, one of the most popular MCDM techniques.

2.4. TOPSIS

TOPSIS (a technique for order preference by similarity to an ideal solution) is one of the major classical MCDM methods that was originally developed by Hwang and Yoon in 1981 [54]. The mechanism of this approach is based on the relative distance measure by calculating the distance from each alternative to the ideal solution (PIS) and negative ideal solution (NIS), where n is the number of criteria in the decision problem. With TOPSIS, the best alternative is determined with the greatest relative closeness to the ideal. In this study, the partial efficiency scores are recognized as criteria, and the DMUs are regarded as the alternatives to determine the ranking order of all DMUs. The procedure of TOPSIS is presented below in five steps. In Step 1, the alternative data are normalized via Equation (9), where θ i j is the appraisal matrix R of alternative (DMU) i under the appraisal criterion (partial efficiency) j and r i j is the normalized appraisal matrix R:
r i j = θ i j / j = 1 n θ i j 2 ,   i = 1 , 2 , , m
In Step 2, these normalized values r i j are weighted via Equation (10), where v i j is the weighted normalized values of DMU i under partial efficiency j:
v i j = w i r i j ,   i = 1 , 2 , , m ;   j = 1 , 2 , , n
In Step 3, the PIS and NIS are determined via Equations (11) and (12), respectively:
A + = { v 1 + , , v n + } = { ( max i   v i j ) | i = 1 , 2 , , m }
A = { v 1 , , v n } = { ( min i   v i j ) | i = 1 , 2 , , m }
The original TOPSIS method can also obtain the PIS and NIS for the lager-the-better criteria as well as the smaller-the-better criteria. However, since the criteria used in this study are efficiency scores, the lager-the-better criteria applies, and Step 3 is more simplified. Step 4 calculates the separation of each alternative from the PIS and NIS for each partial efficiency using the n-dimensional Euclidean distance:
S i + = j = 1 n ( v i j v j + ) 2 ,   i = 1 , 2 , , m
S i = j = 1 n ( v i j v j ) 2 ,   i = 1 , 2 , , m
Lastly, Step 5 calculates the relative closeness to the ideal solution ( C i * ):
C i * = S i S i + + S i ,   i = 1 , 2 , , m
This indicates that the smaller the difference between the partial efficiency and ideal values, the better the performance the DMU will have.

3. Illustrative Example

In this section, we describe how we used our approach to evaluate the operational, energy, and environmental efficiencies. The LCI data of the agricultural production systems for 94 soybean farms were first presented by Mohammadi et al. [55]. The data presented herein were collected for a combinational use of LCI and DEA in the work of Mohammadi et al. [55]. In addition, Lee and Park [44] modified this dataset to be suitable for DEA. The reader is referred to Mohammadi et al. [55] for the original data source.
It is very important to select the input and output variables prior to performing DEA (Table 1). Correlation analysis was performed to validate the isotonic relationship between the input and output variables, and three inputs were eliminated that were negative to the output variable (correlation coefficients: −0.04 (water), −0.15 (seed), and −0.03 (CH4)). All remaining inputs were positively correlated with the output variable; that is, an increase in any input would not result in a decrease in the output [56,57,58]. In addition, K2O, an environmental input, was consumed by only 12 out of 94 farms, so it was also removed. Therefore, in this illustration, 94 soybean farms were defined as DMUs, and each DMU had two operational inputs, two energy inputs, five environmental inputs, one environmental output, and one (general) output. The data are shown in Table A1 of Appendix A.
To verify the relationship between the number of variables and the number of DMUs used in this case, it is noted that the rule of thumb by Golany and Roll [57] and Cooper et al. [59] was satisfied, because the number of DMUs was over three times higher than the total number of input and output variables.

3.1. Overall Efficiency and Partial Efficiency Scores

The operational, energy, and environmental efficiency scores were derived through Equations (6)–(8), respectively, and the overall efficiency via Equation (5) was derived to compare the results. Through this result, it was possible to identify the flaws of utilizing the overall efficiency. First, the discriminant power was very low. Among the 94 DMUs, 57 were efficient. The parsimonious variable setting was particularly important. As more variables are included in a DEA model, the ability to distinguish between efficient and inefficient DMUs decreases, as more DMUs appear to be efficient due to increased dimensionality. In the overall efficiency evaluation model set up for comparison with the partial efficiencies we would utilize, all inputs were included, making the efficiency difficult to judge. Second, the overall efficiency model did not address the characteristics of the variables (whether an operational variable, an energy variable, or an environmental variable). Through this model, it was possible to figure out which variables were contributing to the efficiency score through multipliers, but since a large number of variables was included in the model, it was difficult to determine what role the common characteristics of the input variables played in deriving the efficiency.
The concept of partial efficiency, defined as the partitioning of input variables, leads to specific implications for the efficiency evaluation of DMUs. The partial efficiency model increased the discriminant power by reducing the number of efficient DMUs. This was a natural result because we reduced the number of variables in each model by decomposing the input variables into three groups. Through Equations (6–8), 12, 2, and 34 DMUs were derived as efficient DMUs in terms of operation, energy, and the environment, respectively. The distribution of efficiency scores gives an idea of how partial efficiencies can be used for a comprehensive assessment.
Table 2 shows that, overall, the environmental efficiency was higher than the operational and energy efficiencies. This phenomenon was due to the number of variables for calculating the efficiency scores; that is, a large number of environmental inputs made the environmental efficiency score higher. Thus, the overall efficiency highly depended on the environmental efficiency. The correlation coefficients presented in Table 3 are helpful in understanding this phenomenon. The values in parentheses shown in Table 3 indicate p-values.
It can be found that there was a significant difference in the dispersion as well as the locations of the efficiency scores. In particular, in the case of energy efficiency, it can be observed from Table 2 and Figure 1 that the degree of dispersion was significantly larger than those of the other efficiencies. Here, since the order of the DMUs was nominal, there was no need to give meaning to the pattern along the horizontal axis. If eco-efficiency is derived by simply integrating the three partial efficiencies with different distributions in this way, it is inevitably biased to a specific efficiency value. In this analysis, a high degree of bias for the environmental efficiency may have occurred.

3.2. Ranking Evaluation

Because it was impossible to show the calculation results of all 94 DMUs due to space limitations, only the efficiency scores, the indicators used in the final calculation of TOPSIS, and the derived rankings were reported. These results are presented in Table 4. In addition, to help the reader understand, the calculation process and its results are explained with the example of DMU 11. The partial efficiency of DMU 11 showed the scores of 0.885 (operational efficiency), 0.647 (energy efficiency), and 0.897 (environmental efficiency) through Equations (6)–(8), respectively. It is noteworthy that the overall efficiency score of this DMU was one, and Equation (5) classified this DMU as an efficient unit. The efficiency results of DMU 11 show that the DMU, which was inefficient through partial efficiency evaluation, could be classified as an efficient unit in the overall aspect (Theorem 2). It can be confirmed that this phenomenon also appeared in other DMUs such as DMU 6, 9, 10, 36, 42, 44, 50, 67, 87, 88, 91, 93, and 94. In sum, a total of 13 DMUs demonstrated this phenomenon.
The first step of TOPSIS is normalization. The partial efficiency scores θ j were normalized by Equation (9). Thus, the normalized vector for DMU 11 was calculated as r j = (0.129, 0.172, 0.103). Next, a process was required to apply weights for the operational, energy, and environmental factors. However, in this study, an equal weight was applied to each partial efficiency to reflect the situation in which the preference information of the decision maker was not considered; that is, all w j became one, and hence v j was considered equal to the normalized vector r j . This process was executed for all DMUs to derive all v i j , and the PIS and NIS for each partial efficiency were found to be A + = (0.129, 0.183, 0.117) and A = (0.033, 0.011, 0.033), respectively; that is, the PIS and NIS of the operational efficiency were 0.129 and 0.033. The separation measures were derived by substituting the ideal solutions of each partial efficiency and the weighted normalized vector into Equations (13) and (14). The calculated separation indices were S + = 0.018 and S = 0.200. Finally, the relative closeness to the ideal solution was calculated to be C * = 0.200 / ( 0.018 + 0.200 ) = 0.918 . All the relative closeness indices were derived for all DMUs, and the ranks were derived in descending order. The ranking of DMU 11 used in the example was analyzed as the 21st-ranked DMU.
The analysis of the ranking of eco-efficiency obtained by the proposed method showed different results from the analysis using aggregated measures. First, the analysis results indicate that all DMUs from the 1st to 41st in the derived eco-efficiency ranking were organizations with an overall efficiency that satisfied one. In other words, the DMUs analyzed as being efficient overall through DEA using an aggregated measure were ranked high in the eco-efficiency evaluation. However, our analysis shows that these 41 DMUs were specifically identified by presenting their ranks. Second, this analysis showed a ranking reversal. The overall efficiency of DMU 58, ranked 42nd in eco-efficiency, was 0.920, which was analyzed to be an inefficient DMU. However, 16 DMUs which ranked lower in eco-efficiency than DMU 58 were overall efficient DMUs. For example, DMU 10 was evaluated as an overall efficient DMU, but the eco-efficiency ranking was 80th, a fairly low ranking.
This was because the environmental efficiency score of DMU 10 was higher than the other partial efficiency scores, and it seems that it was because the environmental efficiency had the lowest discriminant power in the partial efficiency analysis. More comprehensively, it can be said that the overall efficiency was highly dependent on the environmental efficiency, and on the contrary, it was the result of a lack of correlation with the operational and energy efficiencies. In this paper, we discussed in Section 3.1 that the reason for these results was related to the number of variables involved in DEA. In order to support the empirical results of this discussion, Spearman and Kendall’s rank correlation analysis was performed. The rank correlation coefficient was derived according to how each partial efficiency showed a correlation to the overall efficiency and eco-efficiency, and the results are summarized in Table 5.

4. Discussion

4.1. Theoretical Contribution

In the case of evaluating the eco-efficiency using aggregated measures through DEA, it was shown that, theoretically, even if only one of the partial efficiencies was analyzed to be efficient, it was determined to be an overall efficient DMU (Theorem 1). In addition, it was shown that the overall efficiency could be expressed as one even if it was not classified as an efficient DMU in any partial efficiency (Theorem 2). It was also empirically demonstrated that a significant number of DMUs exhibited this phenomenon through a case study. This study explained that when evaluating the eco-efficiency inherent in the concept of multiple partial efficiencies such as operational, energy, and environmental, a method that can supplement DEA is required, and TOPSIS is presented as one of the complementary methods.
Another contribution relates to the use of preference information. Prior studies have evaluated eco-efficiency by applying weights according to subjective judgment by asking the decision makers for their preference information or using equal weights [16,29,57,58]. However, since the use of these weighting schemes involves the subjectivity of the decision maker, it may be difficult for stakeholders to trust the results. Therefore, based on the independent evaluation of each partial efficiency, we proposed a decision support tool that could evaluate the partial efficiencies in a balanced manner without incorporating the preference information. The key to balancing here is that it reflects the distribution of the derived partial efficiency scores, which can add credibility to the evaluation of the eco-efficiency.

4.2. Practical Implication

This study presented a method for explicitly classifying the state of each DMU, even when evaluating the eco-efficiency of a large number of DMUs. When practitioners evaluate a number of input and output variables through DEA, discriminant power often decreases, making practical application difficult and often meaningless. In addition, the results are only explained by relying on specific variables, failing to derive practical implications for how the eco-efficiency score is good or poor in terms of operation, energy, or the environment. This study pointed out the problems of previous studies using integrated measures that offset the characteristics of each variable, even though it is possible to develop partial efficiency indicators suitable for each aspect when variables can be classified in terms of operation, energy, and the environment. In other words, it helps practitioners understand by structuring the factors involved in measuring eco-efficiency into operational, energy, and environmental dimensions and presenting a way to illuminate the nature of each dimension. In addition, through the combined use of DEA and TOPSIS, the evaluation results for eco-efficiency can be presented in a discriminative ranking, which means that it is easy for practitioners to actually use them.
In addition, it conveys to practitioners and stakeholders that environmental efficiency and eco-efficiency cannot be regarded as the same concept. Practitioners must remember that in order to consider the operational perspective of the organization and to properly follow the definition of eco-efficiency, measurements and evaluation must be carried out in a form that encompasses operation, energy, and the environment, as in this study.

5. Conclusions

In this paper, a performance evaluation model based on the concept of eco-efficiency was proposed, which was constructed by combining DEA and TOPSIS. The analysis was performed through calculations of the operational, energy, and environmental efficiencies, and the eco-efficiency ranking was finally derived. The model proposed in this paper can provide a more realistic and persuasive evaluation, and its value can be summarized in three aspects as follows:
  • Considering the characteristics of DEA, it was shown that the derivation of the overall efficiency could not actually capture the eco-efficiency. Theoretically, this part was pointed out, and this phenomenon was confirmed and explained through an illustrative example.
  • An analysis technique that can make a ranking evaluation considering the distribution of partial efficiencies, even in a situation where preference information is not requested from the decision makers, is presented.
  • Another research value is that a decision-making support tool that could balance the operational, energy, and environmental aspects at the same time was presented.
The analysis presented in this study provides clues to future research along with several limitations. Although the rank-based DEA methods have the advantage of specifying the ranking of efficient DMUs, this study did not directly derive the eco-efficiency measure for the rankings. This phenomenon occurs when evaluating alternatives by ranking and may make numerical comparison difficult when comparing the performance with other alternatives. Specifically, for example, it is difficult to determine at a glance how much the eco-efficiency of a specific DMU is better than those of other DMUs. Therefore, it may be difficult to utilize this in research where the measurement of the eco-efficiency is important in itself. When it is necessary to directly derive the eco-efficiency, the preference information of the decision makers is inevitably required. If the decision maker can sufficiently present preference information, it may be possible to derive the eco-efficiency by aggregated partial efficiency using weights. It is expected that future studies will find ways to capture the eco-efficiency by designing aggregated measures without increasing the burden on decision makers.
Another remark relates to the use of MCDM techniques, which consider multiple efficiency measures as the criteria. However, this study is meaningful in that it showed that the shortcomings of the comprehensive evaluation through DEA can be supplemented through other mathematical analysis techniques. Although this study utilized TOPSIS, it should be noted that this is not necessarily the only tool that can overcome the shortcomings of DEA. In this study, it was explained that TOPSIS, as one of the intuitive and simple MCDM techniques, does not require decision maker preference information and allows a compromise that does not depend on a single criterion. However, other MCDM techniques (especially VIKOR) that have the above advantages can also be used in combination with DEA. Comparing the results using MCDM techniques other than TOPSIS to evaluate the eco-efficiency ranking will also be a task to be addressed in future research. Furthermore, even if the methods do not have the above advantages, it is possible to develop methodologies through appropriate modifications according to the decision-making situation. For example, it is expected that techniques such as the analytic hierarchy process and best-worst method can be used if sufficient resources are available for pairwise comparison.

Funding

This work was supported by Kyonggi University Research Grant 2019.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The LCI data of agricultural production systems were first presented by Mohammadi et al. (2013) in the Journal of Cleaner Production. The reader is referred to this article for the original data source at https://doi.org/10.1016/j.jclepro.2013.05.019 (accessed on 2 February 2022).

Conflicts of Interest

The author declares no conflict of interest.

Appendix A

Table A1. Data.
Table A1. Data.
DMULabor
(h)
Machinery
(h)
Diesel
(L)
Electricity
(kWh)
Herbicides
(kg)
Insecticides
(kg)
Urea
(kg)
P2O5
(kg)
FYM
(kg)
Soybean
(kg)
Straw
(kg)
11691670041.511046035004312
21421565030.55523250030003889
319722881953219669250030003889
42543512212863211046750036004397
513832111143222.57823222230003889
6152289803211046200031504016
714828109703331104656341504862
821327109140612137115125035004312
915918760027646023003296
101372896033.57646023003296
112722610503210311575035004312
1218531126140634.58292150034004227
1322835119781358292750030003889
14264229103210072023153309
1520045150175801.592016,66737504524
1628932115217931.5114115750032504100
1728235130175832.510592450035004312
182092483152431920600026003550
192683311929013892012,50030003889
2021055168153801644610,00035,0074312
211392710873234.5114115937535004312
2217923109115450.5690400040004735
232004013182033.5114115111131153986
2424529106117231.58746375035004312
2522231931289380011,00042004904
2626354175217533.592012,50031003974
2728564203217532.592025,00030003889
281241769030.57823032004058
2921515883282018746035004312
301341476140601.5690020003043
311371764131833782383333004143
32201176887930.511046036004397
3315938128205132.511046750035004312
342695016073235.56446042004904
352231065281334.56446150030003889
36145241012075036446025003466
37176291081172326446208335004312
38183291001450310.6483520828003720
391672393307632.55069030003889
40238269587932.56446033304168
412903411735163619792035004312
42206249320513512892300040004735
433502112015384515992300034004227
4413331100115436.59669035004312
451692592102533.500625040004735
46157341088203311046375028003720
4723935120164133.61564615,00040004735
48170218985531.51150035004312
49220501461582341358110,00035004312
502772911728131.254.511046038004566
511864816517911.5392021,42937004481
52189208178101.56446026663606
5310435124211033832312,00026003550
541701975146532920027003635
5511220101211023920034004227
561442510610743.50.311046150035704371
571791586197801.5920030003889
58215301097693312313822,50035004312
5914634134184632.5874615,00038004566
6016240147236932.5874615,00035004312
612453411914103392010,00030003889
6219696151332.5322341725003466
631871979193422.5137115028003720
6416321881465331150250035704371
65243218682433123138500037004481
6619622103217532.5137115028003720
671782610003.50.311046150030003889
682143313213673.5311046750035004312
69169279212823.50.5920750036004397
702082810414323312313820,00028003720
711653712417583277015,00035004312
7226132124217931.5114115750029003804
7328338138175831.5690500035504354
7416737136190431920750026003550
752113112214770146010,00034004227
7615536129103032.569010,00038004566
77154309610073211046750033004143
7817628119234432.5920026003550
7919518891846361196910,00033004143
801442193164123137115039004651
8110829988203.51.56446750037004481
822792711691644.516011515,00033004143
8330912558201112892036004397
8495126603.52.5874610,00034004227
8514125105021.517492032004058
8615227103002.59111512,50031504016
871271982034.5114115937530503931
88121218411723246010,00031003974
89213647107421.510592020003043
901711769234431920025003466
91192188732831644618,66730003889
92217648107431.510592020003043
9319919722110326446030003889
942111658100731.511046032004058

References

  1. Schaltegger, S.; Sturm, A. Ökologische Rationalität-Ansatzpunkte zur Ausgestaltung von ökologieorientierten Management instrumenten. Die Unternehmung. 1990, 44, 273–290. [Google Scholar]
  2. Korhonen, P.J.; Luptacik, M. Eco-efficiency analysis of power plants: An extension of data envelopment analysis. Eur. J. Oper. Res. 2004, 154, 437–446. [Google Scholar] [CrossRef]
  3. Picazo-Tadeo, A.J.; Beltrán-Esteve, M.; Gómez-Limón, J.A. Assessing eco-efficiency with directional distance functions. Eur. J. Oper. Res. 2012, 220, 798–809. [Google Scholar] [CrossRef]
  4. Hua, Z.; Bian, Y.; Liang, L. Eco-efficiency analysis of paper mills along the Huai River: An extended DEA approach. Omega 2007, 35, 578–587. [Google Scholar] [CrossRef]
  5. Chen, C.M. Evaluating eco-efficiency with data envelopment analysis: An analytical reexamination. Ann. Oper. Res. 2014, 214. [Google Scholar] [CrossRef]
  6. Mahlberg, B.; Luptacik, M. Eco-efficiency and eco-productivity change over time in a multisectoral economic system. Eur. J. Oper. Res. 2014, 234, 885–897. [Google Scholar] [CrossRef] [Green Version]
  7. Kounetas, K.E.; Polemis, M.L.; Tzeremes, N.G. Measurement of eco-efficiency and convergence: Evidence from a non-parametric frontier analysis. Eur. J. Oper. Res. 2021, 291, 365–378. [Google Scholar] [CrossRef]
  8. Brady, K.; Henson, P.; Fava, J.A. Sustainability, eco-efficiency, life-cycle management, and business strategy. Environ. Qual. Manag. 1999, 8, 33–41. [Google Scholar] [CrossRef]
  9. DeSimone, L.D.; Popoff, F. Eco-Efficiency: The Business Link to Sustainable Development; MIT Press: Cambridge, MA, USA, 2000. [Google Scholar]
  10. Schaltegger, S.; Synnestvedt, T. The link between ‘green’ and economic success: Environmental management as the crucial trigger between environmental and economic performance. J. Environ. Manag. 2002, 65, 339–346. [Google Scholar] [CrossRef]
  11. Reith, C.C.; Guidry, M.J. Eco-efficiency analysis of an agricultural research complex. J. Environ. Manag. 2003, 68, 219–229. [Google Scholar] [CrossRef]
  12. Neto, J.Q.F.; Walther, G.; Bloemhof, J.J.; Van Nunen, A.E.E.; Spengler, T. A methodology for assessing eco-efficiency in logistics networks. Eur. J. Oper. Res. 2009, 193, 670–682. [Google Scholar] [CrossRef] [Green Version]
  13. Avadí, Á.; Vázquez-Rowe, I.; Fréon, P. Eco-efficiency assessment of the Peruvian anchoveta steel and wooden fleets using the LCA+ DEA framework. J. Clean. Prod. 2014, 70, 118–131. [Google Scholar] [CrossRef]
  14. Liu, X.; Chu, J.; Yin, P.; Sun, J. DEA cross-efficiency evaluation considering undesirable output and ranking priority: A case study of eco-efficiency analysis of coal-fired power plants. J. Clean. Prod. 2017, 142, 877–885. [Google Scholar] [CrossRef]
  15. Caiado, R.G.G.; Heymann, M.C.; da Silveira, C.L.R.; Meza, L.A.; Quelhas, O.L.G. Measuring the Eco-efficiency of Brazilian Energy Companies using DEA and Directional Distance Function. IEEE Lat. Am. Trans. 2020, 18, 1844–1852. [Google Scholar] [CrossRef]
  16. Caiado, R.G.G.; de Freitas Dias, R.; Mattos, L.V.; Quelhas, O.L.G.; Leal Filho, W. Towards sustainable development through the perspective of eco-efficiency-A systematic literature review. J. Clean. Prod. 2017, 165, 890–904. [Google Scholar] [CrossRef] [Green Version]
  17. Charnes, A.; Cooper, W.W.; Rhodes, E. Measuring the efficiency of decision making units. Eur. J. Oper. Res. 1978, 2, 429–444. [Google Scholar] [CrossRef]
  18. Bevilacqua, M.; Braglia, M. Environmental efficiency analysis for ENI oil refineries. J. Clean. Prod. 2002, 10, 85–92. [Google Scholar] [CrossRef]
  19. Dyckhoff, H.; Allen, K. Measuring ecological efficiency with data envelopment analysis (DEA). Eur. J. Oper. Res. 2001, 132, 312–325. [Google Scholar] [CrossRef]
  20. Mahdiloo, M.; Saen, R.F.; Lee, K.H. Technical, environmental and eco-efficiency measurement for supplier selection: An extension and application of data envelopment analysis. Int. J. Prod. Econ. 2015, 168, 279–289. [Google Scholar] [CrossRef]
  21. Murty, M.; Kumar, S.; Paul, M. Environmental regulation, productive efficiency and cost of pollution abatement: A case study of the sugar industry in India. J. Environ. Manag. 2006, 79, 1–9. [Google Scholar] [CrossRef]
  22. Pasurka, C.A. Decomposing electric power plant emissions within a joint production framework. Energy Econ. 2006, 28, 26–43. [Google Scholar] [CrossRef]
  23. Picazo-Tadeo, A.J.; Prior, D. Environmental externalities and efficiency measurement. J. Environ. Manag. 2009, 90, 3332–3339. [Google Scholar] [CrossRef] [PubMed]
  24. Song, M.; Zhang, L.; An, Q.; Wang, Z.; Li, Z. Statistical analysis and combination forecasting of environmental efficiency and its influential factors since China entered the WTO: 2002–2010–2012. J. Clean. Prod. 2013, 42, 42–51. [Google Scholar] [CrossRef]
  25. Sueyoshi, T.; Goto, M.; Ueno, T. Performance analysis of US coal-fired power plants by measuring three DEA efficiencies. Energy Policy 2010, 38, 1675–1688. [Google Scholar] [CrossRef]
  26. Watanabe, M.; Tanaka, K. Efficiency analysis of Chinese industry: A directional distance function approach. Energy Policy 2007, 35, 6323–6331. [Google Scholar] [CrossRef]
  27. Wu, J.; An, Q.; Yao, X.; Wang, B. Environmental efficiency evaluation of industry in China based on a new fixed sum undesirable output data envelopment analysis. J. Clean. Prod. 2014, 74, 96–104. [Google Scholar] [CrossRef]
  28. Yang, H.; Pollitt, M. Incorporating both undesirable outputs and uncontrollable variables into DEA: The performance of Chinese coal-fired power plants. Eur. J. Oper. Res. 2009, 197, 1095–1105. [Google Scholar] [CrossRef] [Green Version]
  29. Zhang, B.; Bi, J.; Fan, Z.; Yuan, Z.; Ge, J. Eco-efficiecy analysis of industrial system in China: A data envelopment analysis approach. Ecol. Econ. 2008, 68, 306–316. [Google Scholar] [CrossRef]
  30. Zhou, P.; Ang, B.W. Linear programming models for measuring economy-wide energy efficiency performance. Energy Policy 2008, 36, 2911–2916. [Google Scholar] [CrossRef]
  31. Zhou, P.; Ang, B.W.; Poh, K.L. Measuring environmental performance under different environmental DEA technologies. Energy Econ. 2008, 30, 1–14. [Google Scholar] [CrossRef]
  32. Mahapatra, S.; Pal, R.; Hult, T.; Talluri, S. Assessment of proactive environmental initiatives: Evaluation of efficiency based on interval-scale data. IEEE Trans. Eng. Manag. 2015, 62, 280–293. [Google Scholar] [CrossRef]
  33. Gómez-Calvet, R.; Conesa, D.; Gómez-Calvet, A.R.; Tortosa-Ausina, E. On the dynamics of eco-efficiency performance in the European Union. Comput. Oper. Res. 2016, 66, 336–350. [Google Scholar] [CrossRef]
  34. Liu, Q.; Wang, S.; Li, B.; Zhang, W. Dynamics, differences, influencing factors of eco-efficiency in China: A spatiotemporal perspective analysis. J. Environ. Manag. 2020, 264, 110442. [Google Scholar] [CrossRef] [PubMed]
  35. Egilmez, G.; Park, Y.S. Transportation related carbon, energy and water footprint analysis of US manufacturing: An eco-efficiency assessment. Transp. Res. D Transp. Environ. 2014, 32, 143–159. [Google Scholar] [CrossRef]
  36. Chen, X.; Lin, B. Assessment of eco-efficiency change considering energy and environment: A study of China’s non-ferrous metals industry. J. Clean. Prod. 2020, 277, 123388. [Google Scholar] [CrossRef]
  37. Hu, J.-L.; Kao, C.-H. Efficient energy-saving targets for APEC economies. Energy Policy 2007, 35, 373–382. [Google Scholar] [CrossRef]
  38. Hu, J.-L.; Wang, S.-C. Total-factor energy efficiency of regions in China. Energy Policy 2006, 34, 3206–3217. [Google Scholar] [CrossRef]
  39. Ramanathan, R. A holistic approach to compare energy efficiencies of different transport modes. Energy Policy 2000, 28, 743–747. [Google Scholar] [CrossRef]
  40. Färe, R.; Grosskopf, S. Modeling undesirable factors in efficiency evaluation: Comment. Eur. J. Oper. Res. 2004, 157, 242–245. [Google Scholar] [CrossRef]
  41. Seiford, L.M.; Zhu, J. Modeling undesirable factors in efficiency evaluation. Eur. J. Oper. Res. 2002, 142, 16–20. [Google Scholar] [CrossRef]
  42. Liu, W.; Meng, W.; Li, X.; Zhang, D. DEA models with undesirable inputs and outputs. Ann. Oper. Res. 2010, 173, 177–194. [Google Scholar] [CrossRef]
  43. Färe, R.; Grosskopf, S.; Logan, J. The relative efficiency of Illinois electric utilities. Resour. Energy 1983, 5, 349–367. [Google Scholar] [CrossRef]
  44. Lee, P.; Park, Y.J. Eco-efficiency evaluation considering environmental stringency. Sustainability 2017, 9, 661. [Google Scholar] [CrossRef] [Green Version]
  45. Zeydan, M.; Çolpan, C. A new decision support system for performance measurement using combined fuzzy TOPSIS/DEA approach. Int. J. Prod. Res. 2009, 47, 4327–4349. [Google Scholar] [CrossRef]
  46. Chen, P. Effects of the entropy weight on TOPSIS. Expert Syst. Appl. 2021, 168, 114186. [Google Scholar] [CrossRef]
  47. Shih, H.S.; Shyur, H.J.; Lee, E.S. An extension of TOPSIS for group decision making. Math. Comput. Model. 2007, 45, 801–813. [Google Scholar] [CrossRef]
  48. Cecchini, L.; Venanzi, S.; Pierri, A.; Chiorri, M. Environmental efficiency analysis and estimation of CO2 abatement costs in dairy cattle farms in Umbria (Italy): A SBM-DEA model with undesirable output. J. Clean. Prod. 2018, 197, 895–907. [Google Scholar] [CrossRef]
  49. Charnes, A.; Cooper, W.W. Programming with linear fractional functionals. Nav. Res. Logist. Q. 1962, 9, 181–186. [Google Scholar] [CrossRef]
  50. Roll, Y.; Cook, W.D. Partial efficiencies in data envelopment analysis. Socio-Econ. Plan. Sci. 1993, 27, 171–179. [Google Scholar] [CrossRef]
  51. Golany, B. An interactive MOLP procedure for the extension of DEA to effectiveness analysis. J. Oper. Res. Soc. 1988, 39, 725–734. [Google Scholar] [CrossRef]
  52. Athanassopoulos, A.D. Decision support for target-based resource allocation of public services in multiunit and multilevel systems. Manag. Sci. 1998, 44, 173–187. [Google Scholar] [CrossRef]
  53. Charnes, A.; Cooper, W.W.; Huang, Z.M.; Sun, D.B. Polyhedral cone-ratio DEA models with an illustrative application to large commercial banks. J. Econom. 1990, 46, 73–91. [Google Scholar] [CrossRef]
  54. Hwang, C.L.; Yoon, K. Multiple Attribute Decision Making, Methods and Applications; Springer: New York, NY, USA, 1981. [Google Scholar]
  55. Mohammadi, A.; Rafiee, S.; Jafari, A.; Dalgaard, T.; Knudsen, M.T.; Keyhani, A.; Mousavi-Avval, S.H.; Hermansen, J.E. Potential greenhouse gas emission reductions in soybean farming: A combined use of life cycle assessment and data envelopment analysis. J. Clean. Prod. 2013, 54, 89–100. [Google Scholar] [CrossRef]
  56. Charnes, A.; Cooper, W.W.; Golany, B.; Seiford, L.; Stutz, J. Foundations of data envelopment analysis for Pareto-Koopmans efficient empirical production functions. J. Econom. 1985, 30, 91–107. [Google Scholar] [CrossRef]
  57. Golany, B.; Roll, Y. An application procedure for DEA. Omega 1989, 17, 237–250. [Google Scholar] [CrossRef]
  58. Talluri, S.; Huq, F.; Pinney, W.E. Application of data envelopment analysis for cell performance evaluation and process improvement in cellular manufacturing. Int. J. Prod. Res. 1997, 35, 2157–2170. [Google Scholar] [CrossRef]
  59. Cooper, W.W.; Li, S.; Seiford, L.; Tone, L.K.; Thrall, R.M.; Zhu, J. Sensitivity and stability analysis in DEA: Some recent developments. J. Product. Anal. 2001, 15, 217–246. [Google Scholar] [CrossRef]
Figure 1. Scattered distribution of efficiency scores. The horizontal axis indicates the DMU (DMUs 1–94 from the left), and the corresponding efficiency scores of each DMU are shown in different colors.
Figure 1. Scattered distribution of efficiency scores. The horizontal axis indicates the DMU (DMUs 1–94 from the left), and the corresponding efficiency scores of each DMU are shown in different colors.
Sustainability 14 03489 g001
Table 1. Input and output variables.
Table 1. Input and output variables.
CategoryVariables
Operational InputsLabor, Machinery
Energy InputsDiesel, Electricity
Environmental InputsHerbicides, Insecticides, Urea, FYM, P2O5
Environmental OutputStraw
General OutputSoybeans
Table 2. Descriptive statistics of efficiency scores.
Table 2. Descriptive statistics of efficiency scores.
Operational
Efficiency
Energy
Efficiency
Environmental
Efficiency
Overall
Efficiency
Mean0.7870.5430.8720.934
Median0.7950.5290.8911.000
S. D.0.1440.1550.1290.099
Range0.4910.7600.4650.344
Minimum0.5090.2400.5350.656
Maximum1.0001.0001.0001.000
Table 3. Spearman’s correlation coefficients.
Table 3. Spearman’s correlation coefficients.
Energy EfficiencyEnvironmental
Efficiency
Overall Efficiency
Operational Efficiency0.666 (0.00) *0.216 (0.03)0.565 (0.00)
Energy Efficiency 0.350 (0.00)0.628 (0.00)
Environmental
Efficiency
0.722 (0.00)
* Values in parentheses indicate p-values.
Table 4. Efficiency scores and eco-efficiency ranks.
Table 4. Efficiency scores and eco-efficiency ranks.
DMUOperational
Efficiency
Energy
Efficiency
Environmental
Efficiency
Overall
Efficiency
S+SCEco-Efficiency
Rank
11.0000.9710.9371.0000.0180.2000.9182
20.9310.8961.0001.0000.0400.1780.8175
30.6930.5210.8230.8360.1540.0670.30269
40.7480.4810.8740.8880.1540.0750.32864
50.6650.4251.0001.0000.1660.0900.35156
60.7590.6240.7721.0000.1330.0820.38050
71.0000.6621.0001.0000.1030.1450.58511
80.6130.5050.8920.9700.1600.0710.30968
90.5980.5870.8611.0000.1490.0760.33861
100.5350.4650.7601.0000.1770.0450.20280
110.8850.6470.8971.0000.1120.1120.50021
120.8180.4360.8520.8950.1570.0780.33062
130.8040.4370.6690.9030.1680.0590.25973
140.6060.4940.6070.7830.1770.0380.17786
150.6780.4001.0001.0000.1690.0890.34757
160.6350.4320.8230.8230.1720.0550.24275
170.8400.4200.8600.8720.1580.0810.33960
180.5550.4790.7640.9230.1740.0470.21479
190.5550.3850.7010.7040.1890.0300.13690
200.8380.3471.0001.0000.1650.1020.38149
211.0000.5600.7511.0000.1350.1110.45137
220.8270.5981.0001.0000.1240.1140.47828
230.6420.4140.7450.7450.1770.0430.19483
240.7770.5340.9170.9830.1420.0890.38647
250.8050.7001.0001.0000.1040.1260.54817
260.6350.2810.7770.7970.1910.0420.17985
270.6140.2400.6990.7800.1990.0280.12494
280.9820.9001.0001.0000.0350.1850.8414
290.8700.6081.0001.0000.1190.1200.50020
300.5170.4021.0001.0000.1800.0860.32366
311.0000.7881.0001.0000.0690.1630.7028
320.9920.8321.0001.0000.0560.1710.7536
330.7470.4180.8280.8410.1650.0640.27971
341.0000.4701.0001.0000.1420.1300.47827
351.0000.7050.7451.0000.1060.1290.54916
360.6290.3780.9481.0000.1750.0750.30170
370.7470.5260.9530.9640.1440.0910.38846
380.6740.4301.0001.0000.1650.0900.35455
390.7600.4931.0001.0000.1490.0990.40044
400.8750.5831.0001.0000.1240.1180.48724
410.5890.4570.7960.8340.1730.0510.22678
420.9930.6570.9111.0000.1060.1320.55615
430.8660.4460.7500.8810.1580.0760.32365
440.7680.5620.8321.0000.1400.0790.36153
450.8940.7021.0001.0000.0960.1350.58312
460.6000.4420.6610.6660.1810.0330.15689
470.8250.5180.8240.9010.1450.0810.35954
480.9070.6501.0001.0000.1080.1290.54518
490.6340.3890.7700.7700.1800.0440.19682
500.9150.4960.9881.0000.1390.1150.45235
510.8210.3641.0001.0000.1640.1000.37951
520.7060.5441.0001.0000.1440.0990.40841
530.7210.3200.6230.8300.1890.0370.16288
540.7310.5501.0001.0000.1410.1010.41839
550.9320.5141.0001.0000.1350.1210.47131
560.9240.5521.0001.0000.1280.1220.48723
570.8580.5331.0001.0000.1350.1120.45234
580.9180.5530.7610.9200.1380.0940.40642
590.8370.4400.8620.9320.1550.0820.34658
600.7410.3640.8190.8370.1730.0600.25874
610.6190.4030.7750.7800.1790.0440.19981
620.9800.6901.0001.0000.0960.1450.6029
630.6780.5410.7050.7810.1580.0560.26172
640.8710.6201.0001.0000.1170.1210.50919
651.0000.7110.8481.0000.0960.1360.58610
660.6470.4150.7010.7500.1790.0380.17587
670.7620.5820.8591.0000.1360.0850.38448
680.7330.4330.7400.7660.1680.0530.23976
690.8180.6061.0001.0000.1230.1140.48026
700.6250.4180.5870.6560.1870.0280.13192
710.7360.4360.9190.9580.1600.0790.32963
720.6010.3570.6950.6950.1890.0290.13591
730.7310.4061.0001.0000.1640.0930.36252
740.5440.2960.7260.7980.1980.0290.12893
750.8180.4441.0001.0000.1530.1020.40043
760.8180.4991.0001.0000.1440.1050.42238
770.7390.5610.8200.8550.1440.0750.34359
780.5090.3340.8830.8830.1900.0590.23677
790.7620.5660.7160.8530.1470.0690.31967
800.9650.6411.0001.0000.1080.1370.55813
811.0000.6360.9621.0000.1090.1370.55614
820.6060.4830.6780.7150.1740.0400.18884
831.0001.0000.9921.0000.0020.2130.9911
841.0001.0000.8291.0000.0370.2020.8473
850.8240.5921.0001.0000.1260.1130.47330
860.7990.5941.0001.0000.1270.1110.46532
870.8710.7220.6661.0000.1130.1080.48822
880.9090.5720.8821.0000.1280.1050.45236
891.0000.6500.6531.0000.1250.1180.48525
900.6130.5541.0001.0000.1500.0960.39145
910.6780.6270.9261.0000.1320.0940.41640
921.0000.6370.5351.0000.1370.1150.45533
930.7910.6370.9571.0000.1190.1080.47529
940.9060.8430.8891.0000.0630.1520.7077
Table 5. Spearman and Kendall’s Tau correlation coefficients.
Table 5. Spearman and Kendall’s Tau correlation coefficients.
Overall Efficiency RankEco-Efficiency Rank
SpearmanKendallSpearmanKendall
Operational Efficiency Rank0.5900.4720.8580.658
Energy Efficiency Rank0.6180.4850.6830.686
Environmental Efficiency Rank0.7120.6160.6180.473
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Lee, P. Ranking Decision Making for Eco-Efficiency Using Operational, Energy, and Environmental Efficiency. Sustainability 2022, 14, 3489. https://doi.org/10.3390/su14063489

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Lee, Pyoungsoo. 2022. "Ranking Decision Making for Eco-Efficiency Using Operational, Energy, and Environmental Efficiency" Sustainability 14, no. 6: 3489. https://doi.org/10.3390/su14063489

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Lee, P. (2022). Ranking Decision Making for Eco-Efficiency Using Operational, Energy, and Environmental Efficiency. Sustainability, 14(6), 3489. https://doi.org/10.3390/su14063489

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