Research on Evaluation Method of Freight Transportation Environmental Sustainability

: As an important part of daily economic activities, freight transportation produces various pollutions during the transportation process, which will have a negative effect on the sustainable development of the environment. In this paper, the entropy weight technique for order of preference by similarity to ideal solution (TOPSIS) combination method was used for speciﬁc calculations, in order to judge whether transportation is environmentally sustainable. On the basis of selecting and classifying several the important factors of freight transportation, the entropy weight method was used to calculate and analyze the data of inland river transportation over 8 recent years. The weight of each inﬂuencing factor was determined, then the TOPSIS method was used to compare the environmental data of 8 years, and the environmental sustainability of the target river transport section was calculated by comparing the results. The method proposed in this paper is the ﬁrst example of using the entropy weight–TOPSIS combination method to evaluate environmental sustainability in the ﬁeld of freight transportation, also solving the problems of the impact of subjective factors in existing methods and the difﬁculty of dealing with multiple factors.


Introduction
Climate change is a global issue of general concern to the international community. In recent years, the impact of global climate change has become increasingly apparent. Joint response to climate change and joint promotion of green and low-carbon development have become mainstream in the world today. The transportation industry is a field with serious pollution emissions, and the environmental sustainability of transportation is an important foundation for ecological sustainability. The sustainable development of freight transportation has basic, leading, and service characteristics in global sustainable development. Therefore, research on the environmental sustainability of freight transportation is of great significance in the transportation field. Furthermore, it is also indispensable for global sustainability. In order to conduct an objective and quantitative analysis of the sustainability of freight transportation, and provide a basis for the choice of transportation methods and the formulation of transportation policies. The environmental sustainability of freight transportation was researched in this paper.
As an important part of freight transportation, inland water transportation discharges a large number of pollutants into the atmosphere during transportation. This paper uses inland water transportation as an example to verify the proposed sustainability evaluation method. Firstly, the freight volume, turnover volume of the freight, carbon oxides emissions, hydrocarbons emissions, nitrogen oxides emissions, and particulate matter emissions of the river transport segment are selected as consideration factors. Secondly, the entropy method is used to determine the weight of each factor, and the technique for order of preference by similarity to ideal solution (TOPSIS) method is used to determine the environmental sustainability of each year based on the weight of the factors. Finally, an analysis of the sustainable development of this river transport segment is carried out. In the research of this article, authors determine the weight of each factor in the sustainability of freight

Literature Review
In the field of environmental sustainability research on transportation, some scholars have conducted research on the impact of the use of biofuels in transportation on environmental sustainability [1]. The socially sustainable development of the freight system was under research [2]. An indicator-based algorithm to measure transportation sustainability was proposed by American researchers [3]. Scholars found a positive reciprocal influence between event sustainability and sustainable transportation [4]. Some research paid attention to developing the life cycle sustainability assessment methodology for fossil transportation fuels [5]. There were scholars who tried to explore the use of bioenergy in transportation [6]. An Indian researcher proposed a framework for freight transportation social sustainability. The importance weight of the indicators are computed with a novel multi-criteria decision-making (MCDM) method-fuzzy best-worst method (FBWM) [7]. The scholars from Poland carried out a series of computational experiments with the application of selected a MCDM ranking method to solve a joint decision problem of selecting a supplier and designing the supply chain/logistic corridor [8]. The conclusion can be given that there are many and mature researches on evaluation indicators in the transportation field. Additionally, the research methods and ideas can be used as references for our article.
At present, scholars from various countries have a lot of research on the use of the entropy weight method. In recent years, its application fields and scenarios have become wider, and it has been widely used in fields such as agriculture, industry, the economy, computers, energy, transportation, and others. Among those, researchers have used the entropy weight method to study a series of environmental issues, mainly focusing on many evaluations, such as the impact of floods [9][10][11], the water quality of groundwater and surface water [12,13], the impact of environmental pollution, the vulnerability of building landslides [14], the impact of climate disasters [15], and the analysis of the interaction between population and environment [16]. The entropy weight method also had many applied types of research in economics. In recent years, the research were mainly focused on the selection of suppliers and order distribution [17], enterprise product quality evaluation [18], soft power analysis [19], community sustainability assessments of public rental housing [20], user behavior analysis [21], social development analysis [22], and social impact evaluation [23]. In the research of energy and related fields, scholars used the entropy weight method to optimize the design of the hybrid energy system [24], comprehensively evaluate power grid planning [25], evaluate park energy utilization [26], a comprehensive risk assessment of electricity [27], calculation of petroleum standard indicators [28], and in a diesel engine emission evaluation [29]. In traffic and transportation, scholars have used the entropy weight method to evaluate the transportation of dangerous goods [30], and analyze road traffic conditions [31]. In other practical application fields, scholars also used the entropy weight method to determine weight coefficients in ionospheric combination prediction [32], construction project management evaluation [33], decision support for heavy machine re-manufacturing [34], and so on. There have been many studies on the entropy weight method itself, such as the study on Shannon entropy [35], the study on the combination of Analytical Hierarchy Process (AHP) and entropy weight method [36,37], the study on the combination of entropy weight method and fuzzy algorithm [38], and research on the combination of the ideal point method and entropy weight method [39,40]. At the same time, Kumar Raman et al. systematically reviewed and sorted the development process of the entropy weight method [41]. Gündogdu et al. introduced a new hybrid model based on picture fuzzy sets and linear assignment and its first real-world application on a public transport development problem [42]. Moslem and Çelikbilek proposed an integrated grey AHP and grey Multi Objective Optimization Method by Ratio Analysis (MOORA) model in their study to evaluate the public transport service quality [43], and the researchers also have several papers related to BWM in the transportation field [44][45][46].
In the application of the TOPSIS method, many scholars have used it in the research of logistical supply chains, such as logistic center location [47], supplier selection [48], supply chain risk management [49], and research on logistics solutions and budget issues [50,51]. In the research of management, the TOPSIS method is often used, such as the analysis of corporate driving factors [52], the selection of device location [53], the selection of personnel [54], the selection of information technology solutions [55], and the problem of location selection [56]. The main research achievements in the environment are earthquake disaster analysis [57], environmental indicator evaluation [58], solid waste management [59], and drought assessment [60]. In recent years, the improvement of the TOPSIS method has progressed. Yoon introduced the behavioral tendency of decision-makers to improve the TOPSIS method [61]. Akram explored the application of the TOPSIS method in group decision making [62], Zhang introduced grey relational analysis [63], Hanif introduced the Case Based Reasoning (CBR) method [64], and Sangaiahde integrated fuzzy Decision Making Trial and Evaluation Laboratory (DEMATEL), TOPSIS, and Elimination Et Choix Traduisant la REaite (ELECTRE) methods [65]. Gündogdu gave a comparative analysis with intuitionistic fuzzy TOPSIS (IF-TOPSIS) [66]. Sarkar researched an integrated approach consisting of AHP (analytical hierarchy process) and TOPSIS to solve MCDM problems with completely unknown weights of criteria [67].
This section introduces the current research status of the entropy weight method and the TOPSIS method. The entropy weight-TOPSIS method has not been combined and applied in research and practical applications of environmental sustainability of transportation, and this paper undertake an exploration and discussion of this.

Influence Factor Analysis
There are many types of attributes, including benefit attributes, cost attributes, and interval attributes. The benefit attribute has a positive influence on the result, the cost attribute has a negative influence on the result, and the interval attribute can be accepted in a certain interval. The sustainable development of freight transportation includes its own sustainable development and environmental sustainability. The pollution factors are the factors that characterize the environmental sustainability of transportation. Besides the pollution factors, in order to take into account the sustainability of other freight transportation aspects, the development of freight volume and turnover volume of freight are the representations of other freight transportation sustainability characteristics, that two factors are sustainable if other transportation aspects are sustainable.
From the perspective of sustainable development, the smaller the emission of various pollution factors, the better. In practice, under the influence of various factors, each pollutant emission cannot reach their minimums at the same time. Therefore, each influence factor needs to be weighed separately in order to obtain a reasonable and practical comprehensive environmental sustainability level in the calculation results.
(1) Freight volume Freight volume is an important indicator to measure the transportation capacity of a transport segment, reflecting the transportation capacity of the target transport segment. It is an important factor used to measure the development level of the transport segment. The larger the freight volume, the greater the capacity of the transport segment. At the same time, this factor also reflects the freight demand of the transport segment and whether there is a stable source of demand for freight transportation. It is an important factor for judging whether the transport segment can develop sustainably. The larger the freight volume, the higher the sustainability of the transport segment, so it is defined as a benefit attribute. The freight volume is denoted as FV, the unit is 10 kilotons. The increase of freight volume will lead to an increase in the use of vehicles, thereby increasing the pollution emissions of vehicles. (2) Turnover volume of freight The turnover volume of freight not only includes the number of transport cargos, but also includes the transport distance, so it can fully reflect the transport capacity. The two factors need to be evaluated comprehensively, in order to fully and correctly reflect the transportation situation and economic benefits. If the research emphasizes one of the factors while ignoring the other, it will cause one-sidedness. Generally speaking, if the transportation is reasonable and the quality meets the requirements, the greater the freight volume and the turnover volume, the greater the capability of transportation, so it is defined as a benefit attribute. The turnover volume of freight is denoted as TV, the unit is billion-tons-km. Increases in the turnover volume of the freight will lead to an increase in the use of vehicles, thereby increasing the pollution emissions of vehicles.
(3) Carbon oxides emissions Carbon oxides are colorless, odorless, toxic gases, and the largest emissions of air pollutants. Fossil fuel combustion, petroleum refining, steel smelting, and solid waste incineration all emit large amounts of carbon oxides. In the process of transportation, a large amount of carbon oxides emissions will be generated. Once the emission of carbon oxides gases exceeds the atmospheric standard, it will cause the greenhouse effect, increasing the global temperature, threatening human survival, and having a negative impact on the sustainability of environmental development. Carbon oxides emissions is defined as a cost attribute and it is denoted as CO, the unit is tons.

(4) Hydrocarbon emissions
In the process of transportation, incomplete combustion of hydrocarbon compounds will be produced. In the combustion chamber of vehicles, there are some fuel vapors that have not been ignited, which are discharged into the atmosphere along with the exhaust gas (or gasoline vapor leakage from other parts of the engine, such as a gasoline tank vapor leakage, etc.). Among them, aldehydes (such as formaldehyde) and polycyclic aromatic hydrocarbons are harmful to the human body. Hydrocarbons and nitrogen oxides undergo photochemical reactions under sunlight and have a negative impact on the sustainability of environmental development. Hydrocarbon emissions is defined as a cost attribute and is denoted as HC, the unit is tons.

(5) Nitrogen oxides emissions
Nitrogen oxides refer to compounds composed of only two elements: nitrogen and oxygen, including a variety of compounds such as nitrous oxide (N 2 O), nitric oxide (NO), nitrogen dioxide (NO 2 ), nitrous oxide (N 2 O 3 ), dinitrogen tetroxide (N 2 O 4 ), and dinitrogen pentoxide (N 2 O 5 ), and are mostly produced by the combustion of fossil fuels in transportation. Nitrogen oxides in the atmosphere easily react with oxygen in the air to produce NO 2 , so nitrogen oxides in the atmosphere generally exist in the form of NO 2 . When the temperature is high or there are clouds and fog, NO 2 further interacts with water molecules to form the second most important acid in acid rain, nitric acid (HNO 3 ). Nitrogen oxides emissions is defined as a cost attribute and is denoted as NO, the unit is tons.  Table 1.

Standardize
First, the data are standardized and non-quantitatively toughened, and the sustainability factor measured by data is scaled to make it fall into a small specific interval. To remove the unit restriction of the data, the original data is transformed into a dimensionless value, so that the factors of different units can be compared and weighed. The original data matrix is set as: In this paper, the Z-score method is used to standardize the original data, and the conversion formula of the Z-score method standardization is shown as follows: where y indicates the original data, y indicates the mean value of the original data, σ indicates the standard deviation of the original data, z indicates the standardized value of the original data. After the standardized calculation, descriptive statistics of the original data are shown in Table 2. After standardization, each data retains two decimal places, and the matrix is recorded as:

Determining the Weight of Influencing Factors
In this paper, the entropy weight method is used to determine the weight of each influencing factor. According to the explanation of the basic principles of information theory, information is a measure of system order, and entropy is a measure of system disorder. According to the definition of information entropy, for a certain item factor, the entropy value can be used to measure the degree of a certain factor's discreteness. The smaller the information entropy value of the factor, the greater the degree of the factor's discreteness, the greater impact of the factor on the comprehensive evaluation (i.e., weight), if the value of a factor is all equal, the factor does not play a role in the comprehensive evaluation. Therefore, the tool of information entropy can be used to calculate the weight of each factor and provide a basis for a comprehensive evaluation of multiple factors.
Based on standardized data, a factor data matrix is constructed based on the information entropy of sustainability factor data. Set the information entropy of each factor to E j , and the calculation formula is: where n indicates the number of years, and in this paper, it is 8. If p ij = 0, then defined lim p ij →0 p ij ln p ij = 0. According to the calculation formula of information entropy, the information entropy of six factors is calculated as E 1 , E 2 , E 3 , E 4 , E 5 , E 6 . Based on the information entropy, calculate the weights of six factors as: The result of the calculation is shown in Table 3.

Step 1
The same trend processing can make any scheme with the better standardized attribute value have a larger attribute value after processing.
Normalize benefit attributes and cost attributes are established in a corresponding matrix. Convert the values in the table to the interval [0, 1].
The standardized decision matrix is recorded as: Z = z ij 8×6 . The transformed decision matrix is recorded as: A = a ij 8×6 . Set z max j as the maximum value in j column of the decision matrix, and z min j as the minimum value in j column of the decision matrix.
If z j is a benefit attribute, then: In this paper, freight volume and turnover volume of freight transport are benefit attributes.
If z j is a cost attribute, then: In this paper, the emissions of CO, HC, NO x , and PM are cost attributes. Although this paper does not involve interval attributes, for completeness of theoretical system, supplementary explanations on interval attributes are provided.
If there are interval attributes, set the optimal attribute interval be [z 0 j , z d j ], z u j is the intolerable lower bound, and z v j is the intolerable upper bound, then: The worst attribute value after transformation is 0, and the best attribute value is 1. After the same trend processing, each data retains two decimal places, and the matrix is recorded as:

Step 2
Normalize the data matrix after the same trend processing and establish the corresponding matrix. The data is subjected to secondary standardization processing and set the matrix after secondary standardization processing as: X = x ij 8×6 . In this matrix, Then, construct a weighted normalization matrix: After weighted normalization, the factor data characteristics of the 8 years are shown as Figure 1: sponding matrix. The data is subjected to secondary standardization processing and set the matrix after secondary standardization processing as: In this matrix, After weighted normalization, the factor data characteristics of the 8 years are shown as Figure 1:

Step 3
Determine the positive and negative ideal solution.
= (0, 0, 0.12, 0.12, 0.12, 0.12) where J + is the benefit attribute, and J − is the cost attribute. The positive ideal solution plane and the negative ideal solution plane as shown in Figure 2 can be obtained.
where J + is the benefit attribute, and J − is the cost attribute. The positive ideal solution plane and the negative ideal solution plane as shown in Figure 2 can be obtained.

Step 4
For all 8 years, the higher level of sustainability is closer to the positive ideal point plane and further away from the negative ideal point plane. The calculation method is: where i S + indicates the distance between each comprehensive evaluation value and the positive ideal solution plane. i S − indicates the distance between each comprehensive evaluation value and the negative ideal solution plane.
The calculated results are shown as Table 4:

Step 4
For all 8 years, the higher level of sustainability is closer to the positive ideal point plane and further away from the negative ideal point plane. The calculation method is: where S + i indicates the distance between each comprehensive evaluation value and the positive ideal solution plane. S − i indicates the distance between each comprehensive evaluation value and the negative ideal solution plane.
The calculated results are shown as Table 4:

Step 5
Calculate the relative proximity and make a judgment, the year with the higher relative proximity is the year with the higher sustainability level.

Discussion
From the calculation results, it can be seen that in the 8 years from 2012 to 2019, the lowest sustainability level is in 2012 and the highest sustainability level is in 2016. The reason for the result of 2012 is that the main factors of freight volume and the turnover volume of freight are much lower than those of other years. Although this makes the pollution emission factors of 2012 very low, it is difficult to compensate for the impact of low volumes.
In 2016, various factors were relatively balanced. Due to the promotion of clean energy and other reasons, the pollution level was partially controlled while ensuring a steady increase in transportation volume that year.
The sustainability levels in 2017 and 2018 were not as high as in 2016 and 2019 because the relationship between freight volume and the turnover volume of freight in these two years have fluctuated greatly, which could be the impact of the adjustment of the transportation structure. In 2019, the sustainability level of the transportation and environment system of this segment gradually increased.

Discussion
From the calculation results, it can be seen that in the 8 years from 2012 to 2019, the lowest sustainability level is in 2012 and the highest sustainability level is in 2016. The reason for the result of 2012 is that the main factors of freight volume and the turnover volume of freight are much lower than those of other years. Although this makes the pollution emission factors of 2012 very low, it is difficult to compensate for the impact of low volumes.
In 2016, various factors were relatively balanced. Due to the promotion of clean energy and other reasons, the pollution level was partially controlled while ensuring a steady increase in transportation volume that year.
The sustainability levels in 2017 and 2018 were not as high as in 2016 and 2019 because the relationship between freight volume and the turnover volume of freight in these two years have fluctuated greatly, which could be the impact of the adjustment of the transportation structure. In 2019, the sustainability level of the transportation and environment system of this segment gradually increased.
Measuring from the overall trend of the past 8 years, under the perspective of freight transportation and environmental friendliness, it can be concluded that sustainability is steadily improving and meeting the current needs of environmental protection and freight transportation.
With more widespread use of clean energy, and the government's treatment of pollutant emissions from transportation vehicles, in the next few years the environmental sustainability level of transportation will further increase, and the corresponding trend can also be seen in the calculation results of this paper. However, due to the impact of COVID-19, freight demand after 2020 will drop significantly, and it will still take some time to return to the previous level. Therefore, if the method proposed in this paper is used to calculate the data after 2020, the sustainability level will have a negative impact.

Conclusions
Based on the entropy weight-TOPSIS method, this paper constructed a calculation method for measuring the environmental sustainability level of freight transportation, which is the first use of this method in the field of sustainability research in freight transportation. The entropy method was used to objectively weigh the six main factors that affect the sustainable development of freight transportation. Using actual data from the last 8 years of inland water transport along a segment of Chongqing for empirical observation and calculation, reasonable calculation results were obtained.
This method avoided the influence of subjective evaluations on the weighting of influence factors to a great extent. Furthermore, because the environmental sustainability of freight transportation problem is a multi-target plan, the accuracy and scientific evaluation of the results are guaranteed by introducing the TOPSIS method to distinguish the attributes