key: cord-0052444-tkfj1f7j authors: Wang, Xiangyu; Gao, Peichao; Song, Changqing; Cheng, Changxiu title: Use of Entropy in Developing SDG-based Indices for Assessing Regional Sustainable Development: A Provincial Case Study of China date: 2020-04-02 journal: Entropy (Basel) DOI: 10.3390/e22040406 sha: 77cf128c3959db2608bfdc59218bc15e43244c9a doc_id: 52444 cord_uid: tkfj1f7j Sustainable development appears to be the theme of our time. To assess the progress of sustainable development, a simple but comprehensive index is of great use. To this end, a multivariate index of sustainable development was developed in this study based on indicators of the United Nations Sustainable Development Goals (SDGs). To demonstrate the usability of this developed index, we applied it to Fujian Province, China. According to the China SDGs indicators and the Fujian situation, we divided the SDGs into three dimensions and selected indicators based on these dimensions. We calculated the weights and two indices with the entropy weight coefficient method based on collecting and processing of data from 2007 to 2017. We assessed and analyzed the sustainable development of Fujian with two indices and we drew three main conclusions. From 2007 to 2017, the development index of Fujian showed an increasing trend and the coordination index of Fujian showed a fluctuating trend. It is difficult to smoothly improve the coordination index of Fujian because the development speeds of Goal 3 (Good Health and Well-being) and Goal 16 (Peace, Justice, and Strong Institutions) were low. The coordination index of Fujian changed from strong coordination to medium coordination from 2011 to 2012 because the development speed of the environmental dimension suddenly improved. It changed from strong coordination to medium coordination from 2015 to 2016 because the values of the development index of the social dimension were decreasing. To the best of our knowledge, these are the first SDGs-based multivariate indices of sustainable development for a region of China. These indices are applicable to different regions. Since the Reform and Opening-up, China has experienced rapid development for approximately forty years. The Chinese people have had great achievements. China's urbanization increased from 17.92% in 1978 to 59.58% in 2018 [1] . Simultaneously, with the development of industrialization and globalization, China has been suffering from problems such as deforestation, urban expansion, biodiversity conservation, and environmental pollution [2] [3] [4] [5] . To solve these problems, people developed the concept of sustainable development [6, 7] . Gradually, the concept of sustainable development has become widely agreed upon by stakeholders and scholars [8] . Stakeholders take measures to implement development under the guidance of the concept of sustainable development. During the development of a nation or region, stakeholders and scholars need to assess the degree of sustainable development. To this end, one popular method is to construct a composite index based on a number of meaningful indicators. For example, to assess sustainable livelihood, Donohue and Biggs [9] modified the multidimensional livelihood index by selecting 23 indicators. To assess social sustainability, the Sustainable Society Foundation proposed a regional sustainable society index with 21 indicators [10] . Nhemachena, et al. [11] developed a composite baseline index for agriculture by selecting 13 indicators. Costanza, et al. [12] measured wellbeing in connection with the Sustainable Development Goals. There are other indices, namely, the FEEM sustainability index, which includes 19 indicators [13] , and the index of essential health services, which includes 16 indicators [14] . Indicators form the basis of a composite index. However, we argue that more integration is needed between the composite index for assessing regional sustainable development and the indicators of Sustainable Development Goals (SDGs). Therefore, in the present study, we aimed to evaluate SDG-based indices for assessing regional sustainable development. The SDGs were launched by the United Nations in 2015 [15] , containing a total of 17 goals, 169 targets, and 232 indicators. This constructs a development blueprint for the future, such as for education, equality, biodiversity, hunger, and pollution. Scholars believe that the SDG indicators are the most comprehensive for assessing sustainable development [16, 17] . There are two dominant methods for assessing sustainable development based on SDGs. First, the "SDG Index and Dashboards Report", prepared by the Bertelsmann Stiftung and Sustainable Development Solutions Network (SDSN) since 2016 [18] , developed a method for constructing the SDG Index. The core of this method bears equal weight to every SDG and has a lot of applications at different scales. Specific editions exist at continental, national, and regional levels, such as Africa [19] , the European Union [20] , the European Cities [21] , China [22] , and the United States [23] . This method developed the aggregate SDG Index to evaluate the current state of sustainable development. Second, to measure the distance to the SDG targets, the Organization for Economic Co-operation and Development (OECD) developed a unique methodology across goals and targets since 2017 [24, 25] . This method could assess trends over time and transboundary effects compared with the former method, but it does not result in a composite index. In the present study, we not only tried to assess the trend of goals over time but also to assess the performances of coordination between every SDGs. We developed two multivariate indices based on SDG indicators, namely a development index and a coordination index. The former index can be used to access the degree (or speed) of sustainable development of a region whereas the latter index was designed to measure the coordination among the degrees of sustainable development accessed different categories of indicators. Such coordination can be interpreted as the quality of sustainable development. The core in developing these two indices lies in the entropy weight coefficient method [26, 27] , by which the weights of SDG indicators were objectively determined. To help us select the study area, we proposed two principles. First, the study area should be representative or extraordinary. Assessing sustainable development means that we evaluated the degree of coordination among society, the economy, and the environment. We should select a study area that has better or worse development because the development in the study area was extraordinary. Second, the data should be accessible for a long time for the study area. Data were essential if we wanted to construct an index based on indicators. In addition, there should be a large quantity of data. We believe that high-quality data is defined as those that are high-precision, cover the full study area, and have a long time series. According to the two principles, we selected the Fujian Province in China. First, Fujian Province is one of the Ecological Civilization Pilot Zones in China. The government of Fujian Province launched policies to implement sustainable development. Therefore, Fujian is representative. Secondly, since the Digital Fujian project was launched in 2000, Fujian Province has made great progress in statistical work. In particular, the geographic information industry has a high level of development, and the statistical data are open. Therefore, it was significant to assess the degree of sustainable development for Fujian Province. Constructing a composite index needs to base on composite indicators. Before we constructed an index, we needed to conduct some preparatory work on the indicators, data, and weights. The three steps for constructing indices based on indicators are as follows: (1) Selecting indicators, collecting data, and processing data. (2) Determining the weights of different indicators based on entropy. (3) Calculating two multivariate indices based on SDGs indicators. In the first step, we selected indicators by certain principles and collected data from certain materials. We also needed to process data according to certain criteria. In the second step, we applied the entropy weight coefficient method to determine the exact weights of the indicators. In the third step, we calculated the development index and coordination index to assess the sustainable development performance based on the weights and indicators. Sustainable development is a complex system that contains many subsystems or dimensions. To simplify inherently complex relationships of this system, scholars often focus on subsystems or dimensions. Previous studies have expressed that indicators should be selected based on different dimensions [28] . For example, the United Nations Development Programme proposed the human development index to assess sustainability in three categories: income, longevity, and education [29] . Kaivo-oja, et al. [30] indicated that the framework of the sustainable society index included human well-being, environmental well-being, and economic well-being. To account for the correlation between land urbanization and population urbanization [31] , Shen and Zhou [32] proposed sustainable urbanization indicators from four dimensions, namely, the economy, society, the environment, and governance. Zhou, et al. [33] introduced the framework of the responsibility-based method by using 20 responsibility departments. To better analyze sustainable development, scholars tried to divide 17 SDGs into multivariate dimensions. Sustainable development generally relates to social harmony, ecological friendliness, and economic development. The United Nations SDGs include 17 goals, and these goals cover all aspects of society, the economy, and the environment. The pursuits of these three dimensions and these 17 goals are the same. "Transforming our World: the 2030 Agenda for Sustainable Development" [34] presented the 5Ps, that is, People (Goal 1-5), Planet (Goal 6, 12-15), Prosperity (Goal 7-11), Peace (Goal 16) and Partnership (Goal 17). Fu, et al. [35] regarded SDGs as an attribute that is a product of society and divided the 17 SDGs into three categories, namely, essential needs (Goal 2, 6, 7, 14, and 15), expected objectives (Goal 1, 3, 4, 5, 8, 10, and 16), and governance ( Goal 9, 11, 12, 13, and 17) . According to the concept that environment support economic and social development, Stockholm Resilience Centre developed a model called "the wedding cake" [36] . This model divided the 17 SDGs into three levels, namely biosphere as the bottom level (Goal 6, 13, 14, 15), society as the middle level (Goal 1, 2, 3, 4, 5, 7, 11, and 16), and economy as top level (Goal 8, 9, 10, 12, and 17) . To explore the degree of regional sustainable development, we divided the indicator system into three dimensions by following the most popular classification [12, 37, 38] , namely, the social, economic, and environmental dimensions. These three dimensions are widely referred to as the "three pillars" of sustainable development or "triple bottom line" [39] . To organize goals into different dimensions, we proposed that the social dimension should include the goals of dignity, health, equality, and security related to humans. The economic dimension should include the goals of prosperity and industry. The environmental dimension should include the goals of resource, creature, and climate. Therefore, the social dimension included Zero Hunger (Goal 2), Good Health and Well-being We proposed two principles to help us select indicators. First, we selected indicators from China's SDGs indicators. China's SDGs indicators were authoritative and comprehensive for the region of China [40] , which launched localization sustainable development indicators in 2018. Second, the indicators should be accessible for a long time. Regardless of whether the type of indicator is a raster or observed data, it should be accessible for a long time. According to these principles, we selected about 59 indicators to belong to the 17 goals. First, according to China's SDGs indicators, we selected 123 indicators. There are 163 China's SDGs indicators, but 123 of the 163 indicators can be quantified. Second, according to the accessibility of the indicators over a long period, we selected 59 indicators from 123 China's SDGs indicators. When we assessed regional sustainable development, we modified the indicators based on China SDGs indicators because China SDGs are only suitable for the national level. Finally, we selected 59 indicators, 15 categories, and three dimensions, as shown in Table 1 . The period of data for all indicators was set from 2007 to 2017. One of the principles for selecting the indicators was the accessibility of the indicators for a long time period. According to this principle, the data were the most complete for the indicators from 2007 to 2017. The length of time conformed to the demands of the calculation. The collected data come from different statistical materials. Specifically, "En15-2" come from the Statistical Yearbook of China. "En6-3" and "En6-4" come from the Water Resources Bulletin of Fujian Province. "E1-1" and "E1-2" come from the Poverty Monitoring Report of Rural China. "En15-1" comes from the Statistical Bulletin of Fujian Province. The other indicators come from the Statistical Yearbook of Fujian Province. The indicator system for Fujian sustainable development has 15 of the 17 SDGs, excluding Goal 5 (Gender Equality) and Goal 14 (Life below Water). This is not to say that these goals were not related to the sustainable development of Fujian; rather, the suitable indicator selection was impacted by data limitations. S11-1 Railway mileage per capita + S11-2 Highway mileage per capita + S11-3 Urban-rural and community expenditure (% finance expenditure) + S11-4 Urban green areas per inhabitant + S11-5 Percentage of living waste processed + S11-6 Recycling rate of industrial solid waste + Goal 16 S16-1 Civil litigation − S16-2 Administrative litigation − Goal 17 S17-1 Local finance revenue (% GDP) + S17-2 Local tax revenue (% finance revenue) + S17-3 Energy conservation and environment protection expenditures (% finance expenditure) + E9-1 Volume in passenger transport + E9-2 Volume in freight transport + E9-3 Proportion of R&D expenditure in the GDP + Goal 10 E12-1 Contribution ratio of the tertiary industry to the GDP + Environmental Goal 6 En6-1 Percentage of population with safe and adequate drinking water in urban areas + En6-2 Proportion of rural households with sanitary toilets + En6-3 Proportion of surface water quality reaching or better than Class III water + En6-4 Proportion of surface water quality worse Class V water − En6-5 Urban anthropogenic wastewater that receives treatment (%) + En6-6 Water resources per capita + Goal 7 En7-1 Reduced energy consumption per unit of GDP + En13-1 Deaths due to natural disasters (per 100,000) − En13-2 Total damages attributed to disasters as % of GDP − En15-1 Forest area as a proportion of the total land area + En15-2 Proportion of protected and conserved terrestrial areas + We performed three processes for data based on the China SDGs indicators. • First, we converted the ratio of the change to observed values, such as "GDP per capita growth rate" to "GDP per capita", and "GDP growth rate" to "GDP". The types of China SDGs indicators included observed values, ratios, and ratios of change. According to the theory of the entropy method, it will impact the weight of the indicator if the indicator is a ratio of change. • Second, according to the data accessibility, we modified indicators based on China SDGs indicators. For example, "fertilizer consumption" replaced "ratio of fertilizer consumption" in Goal 2. "Death due to road traffic injuries" replaced "death ratio due to road traffic injuries" in Goal 3. The "Engel coefficient" and "urban-rural income distribution" replaced the "Gini coefficient" in Goal 10. The "contribution ratio of the tertiary industry to the GDP" replaced the "contribution ratio of tourism to the GDP" in Goal 12. "Civil litigation" and "Administrative litigation" replaced "Crime rate" in Goal 16. We needed to calculate the weights of the indicators by using a particular method before we developed an index. To assess the spatio-temporal progress of sustainable development, systematic methods are vital, and the weights of indicators are a problem that each method must solve. The current body of literature has indicated that there are many methods for calculating the weights. Equal weight [41] is the simplest and most convenient method, but the results are not objective. To calculate the objective weights, scholars have developed the principal component analysis [42] and TOPSIS [43] . The entropy weight coefficient method is also one of the major methods (e.g., [44] [45] [46] [47] ). To determine the weights of different indicators, we selected the entropy weight coefficient method for three reasons. First, stakeholders may be unwilling to obtain equal weight or have using preference. Second, subjective weight can lead to error caused by the bias of decision-makers. Third, the entropy weight coefficient method has been widely recognized because it calculates the weights of indicators based on the data set itself and the calculation is easier to operate. Entropy can explain information or uncertainty in the field of information theory [48] [49] [50] [51] . It has wide applications, such as water quality assessment, engineering, and economy [52] . The development of the entropy weight coefficient method has extended to regional development [27] . Current studies have validated that the entropy weight coefficient method can be used to calculate the weights of a group of indicators and assess the performance of development [44] . There are four steps for applying the entropy weight coefficient method [26, 27, 53] . It is assumed in this paper, that i represents the indicator, namely, i=1, 2, 3 . . . n; j represents the sample, namely, j=1, 2, 3 . . . m; and x ij represents the original value of the ith indicator and the jth sample. First, to eliminate the magnitudes of the indicators, it was necessary to normalize the indicators. According to the attribution of the indicators, we divided them into positive and negative effects. When the indicator had positive effects, the following equation was used: When the indicator had negative effects, the following equation was used: where R ij represents the normalized value of x ij . max j x ij and min j x ij show the largest and smallest values among all x ij . Second, after normalization, it was necessary to calculate the proportion of R ij , divided by the sum of R ij , as follows: Third, according to the value of f ij , the formula of the entropy value was written as follows: where h i represents the value of the entropy of each indicator. Fourth, according to the value of entropy among the indicators, we needed to determine the weights. The weights of different indicators were calculated as follows: where w i . represents the weight of each indicator. To assess the degree of sustainable development, we calculated two multivariate indices based on the weight of indicators, namely, the development index and the coordination index. For the process of regional sustainable development, the two multivariate indices can explain the speed and quality of development. In other words, the development index assesses the speed of sustainable development. The coordination index represents the quality of coordination in the development among society, economy, and environment. The calculation formulas are in the following sections. According to the weights of the indicators in Equation (6) and the standardized values in Equation (3), we calculated the development index. The development index meant that we used the weighted sum method between the weights and standardized values. The formula for calculating the development index was as follows [27, 53] : where E j represents the development index of sample j. According to the indicator system in Table 1 , the indicators were divided into three dimensions: social, economic, and environmental. Following Equation (7), we calculated the performance of the development index for the different dimensions. The development index of the social dimension is as follows: The development index of the economic dimension is as follows: The development index of the environmental dimension is as follows: where E j(e) , E j(s) , and E j(en) represents the development index of three dimensions, namely, the social, economic, and environmental dimensions, respectively. n e , n s , and n en represent the number of indicators for the three dimensions. To assess the degree (speed) of sustainable development, we classified the values of the development index into three levels according to previous studies [27, 54] , namely strong, medium, and weak, as shown in Table 2 . Table 2 . The classification of the development index (E). The Level of Development Weak development The coordination index assesses the quality of sustainable development by considering the coordination among society, economy, and environment. The formula for calculating the coordination index was as follows and was based on the development index of the three dimensions [27, 53] : where G j represents the coordination index of sample j. S j represents the standard deviation of the development index for three dimensions. E represents the arithmetic mean of the development index for the three dimensions. To assess the degree (quality) of coordination in the development, we classified the coordination index. The degree of the sustainable coordination index could be classified into three levels, namely, strong, medium, and weak [27, 54] , as shown in Table 3 . Table 3 . The classification of coordination index (G). The Level of Coordination 0.8 ≤ G ≤ 1 Strong coordination 0.5 ≤ G < 0. 8 Medium coordination 0 ≤ G < 0.5 Weak coordination According to Sections 5 and 6, we calculated the weights of the indicators, development index, and coordination index ( Table 4 ). Table 4 also includes the development index of social, economic, and environmental dimensions. Note: E j represents the development index. w i represents weights. G j represents the coordination index. S j represents the standard deviation of the development index for three dimensions (i.e., E j(s), E j(e), and E j(en) ). E represents the arithmetic mean of the development index for the three dimensions. The sustainable development index based on the indicators could also be used to calculate the development index of six categories in the social dimension, that is, Goal 2, Goal 3, Goal 4, Goal 11, Goal 16, and Goal 17 (Table 5) . Table 5 . Results on the development index of six social categories (E j(s2), E j(s3), E j(s4), E j(s11), E j(s16), and E j(s17) ). Development Index To analyze the results of Section 6.1, we used the McKinsey Matrix method, which was developed based on the Boston Consulting Group matrix and was modified by McKinsey [55] . This method can help stakeholders or companies to develop marketing strategies. The McKinsey Matrix assesses the performance in the competitiveness and attractiveness dimensions of a company [56] . According to the levels of the two dimensions, the marketing strategies of the company were divided into three categories: high, medium, and low [57] . Similar applications of the McKinsey Matrix method can be found in Shen et al. [27] . Using the McKinsey Matrix method, we visualized the results in Section 6.1, as shown in Figure 1 . It can be seen in this figure that in 2017, the performance of sustainable development was in Area V. This result indicates that Fujian had a medium development speed and medium development quality. With the development of economic globalization, the development speed of Fujian has improved. The government of China asked that local governments must take measures to protect the environment by proposing the Ecological Civilization. Fujian Province is trying to positively improve the living environment and coordinate between social, economic, and environmental development. To achieve the level of strong development according to the development index and coordination index, we proposed the following: (1) Fujian should improve the level of urbanization and (2) Fujian should increase the proportion of high-tech industries and tourism. To analyze the results of Section 6.1, we used the McKinsey Matrix method, which was developed based on the Boston Consulting Group matrix and was modified by McKinsey [55] . This method can help stakeholders or companies to develop marketing strategies. The McKinsey Matrix assesses the performance in the competitiveness and attractiveness dimensions of a company [56] . According to the levels of the two dimensions, the marketing strategies of the company were divided into three categories: high, medium, and low [57] . Similar applications of the McKinsey Matrix method can be found in Shen et al. [27] . Using the McKinsey Matrix method, we visualized the results in Section 6.1, as shown in Figure 1 . It can be seen in this figure that in 2017, the performance of sustainable development was in Area V. This result indicates that Fujian had a medium development speed and medium development quality. With the development of economic globalization, the development speed of Fujian has improved. The government of China asked that local governments must take measures to protect the environment by proposing the Ecological Civilization. Fujian Province is trying to positively improve the living environment and coordinate between social, economic, and environmental development. To achieve the level of strong development according to the development index and coordination index, we proposed the following: (1) Fujian should improve the level of urbanization and (2) Fujian should increase the proportion of high-tech industries and tourism. It is also noted in Figure 2 that that the social performance of Fujian fell slightly in the past 11 years. Simultaneously, the development index values for the economic and environmental dimensions greatly increased. On the one hand, we proposed that the social dimension was the main reason why the coordination index of Fujian showed medium coordination in 2017. Therefore, we recommend that the government of Fujian should improve the performance of the social dimension in the process of sustainable development. On the other hand, we cannot explain why the development index of the social dimension was declining. To explain the reason, we further analyzed the development index of six goals for the social dimension. The social dimension includes six goals, namely, Goal 2 (s2), Goal 3 (s3), Goal 4 (s4), Goal 11 (s11), Goal 16 (s16), and Goal 17 (s17). There were 31 indicators in the six goals. We showed the changing trends of the development index for these six goals, as shown in Figure 3 . It can be seen in Figure 3 that the changing trends of Goal 2, Goal 4, Goal 11, and Goal 17 slightly improved from 2007 to 2017. On the contrary, the changing trends of Goal 3 and Goal 16 declined. During the past 11 years, the development index values of Goal 3 (Good Health and Well-being) and Goal 16 (Peace, Justice, and Strong Institutions) declined. Thus, the performance on Goals 3 and 16 might be the main reason why the values of the development index for the social dimension decreased. In addition, the indicators related to Goal 3 and Goal 16 include "death due to road traffic injuries", "health workers density", "prevalence", "civil proceedings", and "administrative litigation". Fujian has implemented measures to improve these indicators, but this was not a significant change. In other words, Fujian needed to input more resources to improve social services and social security. It is also noted in Figure 2 that that the social performance of Fujian fell slightly in the past 11 years. Simultaneously, the development index values for the economic and environmental dimensions greatly increased. On the one hand, we proposed that the social dimension was the main reason why the coordination index of Fujian showed medium coordination in 2017. Therefore, we recommend that the government of Fujian should improve the performance of the social dimension in the process of sustainable development. On the other hand, we cannot explain why the development index of the social dimension was declining. To explain the reason, we further analyzed the development index of six goals for the social dimension. The social dimension includes six goals, namely, Goal 2 (s2), Goal 3 (s3), Goal 4 (s4), Goal 11 (s11), Goal 16 (s16), and Goal 17 (s17). There were 31 indicators in the six goals. We showed the changing trends of the development index for these six goals, as shown in Figure 3 . It can be seen in Figure 3 that the changing trends of Goal 2, Goal 4, Goal 11, and Goal 17 slightly improved from 2007 to 2017. On the contrary, the changing trends of Goal 3 and Goal 16 declined. During the past 11 years, the development index values of Goal 3 (Good Health and Well-being) and Goal 16 (Peace, Justice, and Strong Institutions) declined. Thus, the performance on Goals 3 and 16 might be the main reason why the values of the development index for the social dimension decreased. In addition, the indicators related to Goal 3 and Goal 16 include "death due to road traffic injuries", "health workers density", "prevalence", "civil proceedings", and "administrative litigation". Fujian has implemented measures to improve these indicators, but this was not a significant change. In other words, Fujian needed to input more resources to improve social services and social security. To assess the degree of sustainable development, it is vital to construct a composite index based on comprehensive indicators. Much efforts have been made towards this end [58] [59] [60] [61] . In this study, we constructed composite indices based on the SDGs (Sustainable Development Goals) established by the United Nations. We selected a study area with two principles. Based on the study area, we selected the localization of indicators by two principles. We collected and processed indicator data from 2007 to 2017. We constructed two multivariate indices based on data by applying the entropy weight coefficient method. According to the results, we can draw three major conclusions: ( One limitation of this study lies in the classification of indicators. Here, we first classified the SDGs into three dimensions (society, economy, and environment) and then employed different sets of indicators to measure each SDG. However, the sets of indicators can be improved and in some cases, one indicator can be used for multiple SDGs. It is also important to note that the entropy employed in this study is essentially Shannon entropy, also called information entropy. Recently, Boltzmann entropy (or thermodynamic entropy, configurational entropy) has been revisited [62, 63] , and several computational methods have been developed [64] [65] [66] [67] [68] [69] [70] . According to the father of contemporary ecological thermodynamics [62] , Boltzmann entropy is actually more suitable to be applied in landscape ecology to explore the thermodynamic interpretations of landscape dynamics. In the future, we hope to apply Boltzmann To assess the degree of sustainable development, it is vital to construct a composite index based on comprehensive indicators. Much efforts have been made towards this end [58] [59] [60] [61] . In this study, we constructed composite indices based on the SDGs (Sustainable Development Goals) established by the United Nations. We selected a study area with two principles. Based on the study area, we selected the localization of indicators by two principles. We collected and processed indicator data from 2007 to 2017. We constructed two multivariate indices based on data by applying the entropy weight coefficient method. According to the results, we can draw three major conclusions: (1) In 2017, the sustainable development of Fujian showed medium development and medium coordination. From 2007 to 2017, the development speed improved from weak development to medium development. The changing trends in the development index improved. The coordination index changed from medium coordination to strong coordination before 2011, then changed to medium coordination from 2012 to 2014, and finally, changed from strong coordination to medium coordination from 2015-2017. The changing trends of the coordination index fluctuated. (2) The main reason why the coordination index of Fujian decreased in 2012 was that the value of the environmental development index suddenly improved. The main reason why the coordination index of Fujian decreased in 2016 was that the value of the social development index decreased. (3) The main reason why the coordination index of Fujian showed medium coordination was that the development index of Goal 3 (Good Health and Well-being) and Goal 16 (Peace, Justice, and Strong Institutions) was low. The decision-makers of Fujian should take measures to improve well-being and social security. One limitation of this study lies in the classification of indicators. Here, we first classified the SDGs into three dimensions (society, economy, and environment) and then employed different sets of indicators to measure each SDG. However, the sets of indicators can be improved and in some cases, one indicator can be used for multiple SDGs. It is also important to note that the entropy employed in this study is essentially Shannon entropy, also called information entropy. Recently, Boltzmann entropy (or thermodynamic entropy, configurational entropy) has been revisited [62, 63] , and several computational methods have been developed [64] [65] [66] [67] [68] [69] [70] . According to the father of contemporary ecological thermodynamics [62] , Boltzmann entropy is actually more suitable to be applied in landscape ecology to explore the thermodynamic interpretations of landscape dynamics. In the future, we hope to apply Boltzmann entropy to develop sustainability indices and explore the difference in performance between such indices and the two used in this study. It is also our hope that our results are of use to stakeholders (government, companies, and non-profit organizations) in promoting sustainable development. Evaluating the regional social sustainability contribution of public-private partnerships in China: The development of an indicator system. Sustain Satellite remote sensing for biodiversity conservation: Exemplary practices and lessons learned Visualising the expansion and spread of coronavirus disease 2019 by cartograms GIS-based analysis of population exposure to PM2.5 air pollution-A case study of Beijing The concept of SD its origins and ambivalence The concept of sustainable development and its use for sustainability scenarios Functional requirements of systems for visualization of Sustainable Development Goal (SDG) indicators Monitoring socio-environmental change for sustainable development: Developing a Multidimensional Livelihoods Index (MLI) Using ranked weights and Shannon entropy to modify regional sustainable society index. Sustain Measuring baseline agriculture-related Sustainable Development Goals index for Southern Modelling and measuring sustainable wellbeing in connection with the UN Sustainable Development Goals Constructing the FEEM sustainability index: A Choquet integral application Monitoring universal health coverage within the Sustainable Development Goals: Development and baseline data for an index of essential health services Global SDGs assessments: Helping or confusing indicators? Making the SDGs useful: A Herculean task A systematic study of sustainable development goal (SDG) interactions. Earth's Future Europe Sustainable Development Report; Sustainable Development Solutions Network and Institute for European Environmental Policy SDG Index and Dashboards Report for European Cities Sustainable Development Solutions Network (SDSN) and the Brabant Center for Sustainable Development Assessing progress towards sustainable development over space and time Measuring Distance to the SDG Targets 2017: An Assessment of Where OECD Countries Stand Measuring Distance to the SDG Targets 2019: An Assessment of Where OECD Countries Stand Viewpoint: A correction to the entropy weight coefficient method by Shen et al. for accessing urban sustainability Application of a hybrid Entropy-McKinsey Matrix method in evaluating sustainable urbanization: A China case study Usability of value-by-alpha maps compared to area cartograms and proportional symbol maps The human development index and sustainability-a constructive proposal Relationships of the dimensions of sustainability as measured by the sustainable society index framework Cognition and construction of the theoretical connotations of new urbanization with Chinese characteristics Examining the effectiveness of indicators for guiding sustainable urbanization in China Selection and modeling sustainable urbanization indicators: A responsibility-based method Transforming Our World: The 2030 Agenda for Sustainable Development Unravelling the complexity in achieving the 17 sustainable-development goals How food connects all the SDGs The Human Sustainable Development Index: New calculations and a first critical analysis Using ranked weights and acceptability analysis to construct composite indicators: A case study of regional sustainable society index Biodiesel-triple bottom line (TBL): A new hierarchical sustainability assessment framework of principles criteria & indicators (PC&I) for biodiesel production. Part II-validation A comprehensive index for a sustainable society: The SSI-The Sustainable Society Index Composite indicator for the assessment of sustainability: The case of Cuban nature-based tourism destinations Inter-company comparison using modified TOPSIS with objective weights A fuzzy VIKOR method for supplier selection based on entropy measure for objective weighting FracL: A tool for characterizing the fractality of landscape gradients from a new perspective Assessment of the sustainable development capacity with the entropy weight coefficient method A comprehensive evaluation of urban sustainable development in China based on the TOPSIS-Entropy method A mathematical theory of communication Entropy-based cartographic communication models: Evolution from special to general cartographic information theory Thermodynamics-based evaluation of various improved Shannon entropies for configurational information of gray-level images The Mathematical Theory of Communication Entropy method for determination of weight of evaluating indicators in fuzzy synthetic evaluation for water quality assessment An Improvement to multiple criteria ABC Inventory classification using Shannon entropy Comparison of two analytical approaches in the assessment of urban sustainable development Using the general electric Mckinsey Matrix in the process of selecting the central and east European markets The application of McKinsey Matrix in determination of route attractiveness and resource allocation in Kenya Airways Strategic analysis through the general electric/McKinsey Matrix: An application to the Italian fashion industry An integrated indicator system and evaluation model for regional sustainable development Landscape sustainability evaluation of ecologically fragile areas based on Boltzmann entropy An urban scaling estimation method in a heterogeneity variance perspective Permutation entropy-based analysis of temperature complexity spatial-temporal variation and its driving factors in China Thermodynamics in landscape ecology: The importance of integrating measurement and modeling of landscape entropy Calculating the configurational entropy of a landscape mosaic Calculation of configurational entropy in complex landscapes Editorial: Entropy in landscape ecology Calculating the Wasserstein metric-based Boltzmann entropy of a landscape mosaic Boltzmann entropy-based unsupervised band selection for hyperspectral image classification Aggregation-based method for computing absolute Boltzmann entropy of landscape gradient with full thermodynamic consistency Computation of the Boltzmann entropy of a landscape: A review and a generalization A hierarchy-based solution to calculate the configurational entropy of landscape gradients We would like to thank the high-performance computing support from the Center for Geodata and Analysis, Faculty of Geographical Science, Beijing Normal University [https://gda.bnu.edu.cn/]. The authors declare no conflict of interest.