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Article

Evaluation of a Low-Carbon City: Method and Application

1
State Key Joint Laboratory of Environment Simulation and Pollution Control, School of Environment/ No. 19, Xinjiekouwai St., Beijing Normal University, Beijing 100875, China
2
School of Foreign Languages, Wuhan Institute of Technology, Wuhan 430073, China
*
Author to whom correspondence should be addressed.
Entropy 2013, 15(4), 1171-1185; https://0-doi-org.brum.beds.ac.uk/10.3390/e15041171
Submission received: 24 January 2013 / Revised: 16 March 2013 / Accepted: 26 March 2013 / Published: 27 March 2013
(This article belongs to the Special Issue Entropy and Urban Sprawl)

Abstract

:
Many cities around the World have established the development objective of becoming a low-carbon city. Evaluation of such a city is important for its progress. A new evaluation framework of urban low-carbon development level is proposed in this paper, which integrates synthetic evaluation based on a bottom-up idea and analytical diagnosis based on a top-down idea. Further, set pair analysis is combined for synthetic evaluation and analytical diagnosis by comparing urban low-carbon development levels of different cities, through which the comprehensive state of urban low-carbon development level can be obtained and limiting factors identified. Based on the proposed framework and set pair analysis, low-carbon development levels of 12 Chinese cities are compared. Some suggestions are provided, based on results of overall situations of urban low-carbon development level and concrete performances of various factors and specific indicators. We conclude that both synthetic evaluation and analytical diagnosis are important for evaluation of urban low-carbon development level. The proposed framework and method can be widely applied in the evaluation of different cities over a long-term period.

1. Introduction

Since the concept of a “low-carbon economy” was put forward in the UK white paper “Our Energy Future: Creating a Low Carbon Economy” in 2003 [1], this concept has been considered and pursued as a hopeful development pattern for reducing carbon emissions and coping with the challenges of climate change [2]. As one of the biggest contributors to carbon emissions [3,4] and the basic unit of economic development and administrative management, cities always play important roles in the development of a low-carbon economy.
In fact, many cities have adopted measures to reduce carbon emissions, ranging from overall planning and macro policy aspects to concrete measures in specific fields. For example, Tokyo, London, New York and Wuxi have initiated comprehensive planning programs of a low-carbon city [5,6,7,8,9]. Berlin, Copenhagen, Barcelona and Hangzhou have established a series of policies of low-carbon city construction regarding energy usage structure, industrial structure, public transportation, building design, household consumption, and public awareness [7,9,10,11]. Malmo, Baoding, Jilin and Shanghai have established concrete measures in specific fields, such as exploiting new energy, adjusting energy supply modes, regulating industrial structure, and developing low-carbon demonstration areas [9,11,12,13,14].
It is reported that about 1,050 cities in the United States, 40 cities in India, and more than 100 cities in China have established an objective of low-carbon development and made efforts to reduce carbon emissions [12,15,16]. This indicates that the low-carbon city has become a new goal of urban development. With this background, problems of low-carbon city evaluation are important to confirm whether a city is indeed low-carbon or, if not, the approximate gap between its present state and the low-carbon objective, and whether low-carbon city construction is proceeding properly.
As the United Nations Human Settlements Programme claimed, there is no globally accepted definition of city, and there are no globally accepted standards for recording emissions from sub-national areas [17,18]. It is easily understandable that there is no globally accepted definition of a low-carbon city. Certain evaluation indictors of the low-carbon city have been established based on different understandings and emphases, such as macro-level economic indicators, macro-level per capita indicators, end-use sectoral indicators [19,20], as well as indicators of carbon emissions, carbon source control, carbon capture, and human development [2,21,22,23]. Although without unified definition and standards, it has become gradually acknowledged that multiple indicators should be considered for evaluation of a low-carbon city covering economic development, social progress, energy structure, living consumption, and environmental quality. Some scholars have used these indicators to comprehensively evaluate urban low-carbon development based on a weighted sum model [2,20,22], whereas others have analyzed urban low-carbon construction only at the scale of concrete indicators [23]. In fact, both comprehensive evaluation and concrete analysis are necessary for low-carbon city evaluation. Only in this way can overall low-carbon states be understood and corresponding detailed limiting factors be identified, which are both important for improved urban low-carbon development in the future. Therefore, a method that can perform both comprehensive evaluation and concrete analysis is needed. Moreover, it should fit the characteristics of low-carbon city evaluation indicators, i.e., with no fixed assessment standard because of new and dynamic features of the low-carbon city.
Based on these demands, we propose herein a new framework for evaluation of urban low-carbon development level, integrating comprehensive evaluation and concrete analysis. Furthermore, set pair analysis, a powerful tool when various factors of study objects must be integrated and relationships among different objects require analysis [24,25], is introduced into the evaluation of development level. Choosing 12 Chinese cities as case studies, the proposed framework and method are applied, based on which further suggestions for low-carbon city construction are put forth.

2. Methodology

2.1. Assessment Framework of Urban Low-Carbon Development Level

First, regarding the low-carbon city as a predicted development goal more than as a fixed, existing status [1], we focus on the concept of urban low-carbon development level, which emphasizes both the existing foundation and future potential of low-carbon city development. Second, assuming no fixed, acknowledged assessment standard for a low-carbon city, comparison among different cities is highlighted, which can give understandable results and improve the low-carbon level of multiple cities as a whole. To understand the overall low-carbon development level of cities and identify specific limiting factors, a novel relative assessment framework of urban low-carbon development level (Figure 1) is established upon integrating both bottom-up and top-down ideas.
Figure 1. Assessment framework of urban low-carbon development level.
Figure 1. Assessment framework of urban low-carbon development level.
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As shown in Figure 1, synthetic assessment based on the bottom-up idea is conducted first. During this process, information about multiple factors and indicators is integrated to determine the comprehensive performance of the urban low-carbon development level. It gives the relative position of the assessed city among other cities, in terms of urban low-carbon development level. Detailed analysis is done subsequently, especially for cities with relatively weak comprehensive performance of urban low-carbon development level. During this stage, the condition of various factors and indicators is investigated, based on which key problems of the cities are identified and corresponding regulatory measures suggested.
Aside from the bottom-up and top-down ideas, there are two key points for implementation of the assessment framework. These are methods that can compare at different scales (e.g., objective, factor, and indicator scales) and a multi-scale assessment indicator system (e.g., objective, factor, and indicator scales). These two aspects will be introduced in the following sections.

2.2. Assessment Model of Urban Low-Carbon Development Level

2.2.1. Set Pair Analysis

Ground on fuzzy set and vague set, set pair analysis was proposed by Zhao [24] and extensively applied in multi-attribute assessment [26,27,28]. With clear expressions, simple calculation and understandable biophysical implications, this analysis can be used on different scales of comprehensive evaluation and detailed analysis, which is consistent with the bottom-up and top-down ideas. Compared with the commonly used evaluation method named weighted sum model [2,20,22] that defines the evaluation standard by researchers, set pair analysis emphasizes intrinsic relationships among different objects and generates reference sets from different objects, thus it is well suited to dynamic relative evaluation when there is no fixed standard of urban low-carbon development level. Additionally, describing relationships among different objects from aspects of identity, contrary, and discrepancy, set pair analysis maintains relatively more information and is favorable to overcome the partial property in the process of evaluation [26,28].
For the problem of assessment for urban low-carbon development level, the problem space Q based on set pair analysis can be defined as:
Q = { S , M , H }
S = { s k } ( k = 1 , 2 , , q )
M = { m r }   ( r = 1 , 2 , , l )
H = ( h k r ) q × l
where S is the assessed interval set composed of the selected cities, and sk means the kth city. M is the indicator set of urban low-carbon development level, and mr denotes the rth indicator. If a larger value of mr expresses a better situation, mrM1 and is called a positive indicator; conversely mrM2 and is called a negative indicator. H is the decision-making matrix about problem Q, and hkr is the attribute value of indicator mr in the interval sk.
Then, the optimal evaluation set that equals the assessment standard, marked as u = {u1,u2,…ul}, is generated by collecting the best value of each indicator of urban low-carbon development level. The worst evaluation set is marked as v = {v1,v2,…vl}. ur and vr respectively denote the best and worst values of the indicator mr. For mrM1, the comparative interval is [vr,ur]. In the domain Xr = {hkr,ur,vr}, the identity and contrary degree of the set pair {hkr,ur} is defined as follows:
a k r = h k r u r + v r
c k r = h k r 1 u r 1 + v r 1 = u r v r ( u r + v r ) h k r ,
where akr is the identity degree indicating the approximate degree between hkr and ur, whereas ckr is the contrary degree denoting the approximate degree between hkr and vr. For mrM2, the identity and contrary degree of the set pair {hkr,ur} is obtained by exchanging the equations of akr and ckr in Equations (5) and (6).
Next, the average identity degree and contrary degree are calculated in the comparative interval sk, i.e., [U,V], via Equations (7) and (8):
a k = r = 1 n w r a k r
c k = r = 1 n w r c k r
where ak is the average identity degree representing the proximity between sk and U, ck is the average contrary degree that indicates the proximity between sk and V, and ωr is the weight of indicator mr.
Finally, the approximate degree between sk and U, marked as rk, is calculated by:
r k = a k a k + c k
Based on these procedures, a relative approximate degree of urban low-carbon development level to the optimal evaluation set is obtained by integrating information of multiple factors and indicators. Thus a synthetic evaluation based on the bottom-up idea is completed, through which the overall positions of different cities is defined. Set pair analysis can also be used as the scales of factor and concrete indicator to perform analytical diagnosis based on the top-down idea, when the indicator set M is different from that of the synthetic evaluation. This can identify the major problems of the cities in terms of urban low-carbon development level.

2.2.2. Information Entropy Weight

The main intention of introducing set pair analysis is to understand the relative low-carbon development level of different cities by integrating the relative situations of multiple indicators. It determines that those indices changing greatly with different assessment objects impact more notably on the final evaluation results and should possess larger weights. Therefore, the information entropy weight, which is usually confirmed by each indicator’s differentiation ability for various assessment objects, was adopted to calculate the weight of those indicators [27,29]:
ω r = ( 1 + 1 ln q k = 1 q g k r g r ln g k r g r ) / ( n + 1 ln q r = 1 l k = 1 q g k r g r ln g k r g r ) ( r = 1 l ω r = 1 , 0 ω r 1 )
g r = k = 1 q g k r
g k r = { h k r / h r *  (h r * =max(h kr ), m r M 1 h r * / h k r (h r * =min(h kr ), m r M 2 )
where ωr is the weight of indicator mr; gr is the integrated value of mr for interval set S; and gkr is the standardized value calculated from raw data of mr for interval sk.

2.3. Multi-layer Indicator System of Urban Low-Carbon Development Level

The indicator system of urban low-carbon development level was initially established according to principal characteristics and multiple objectives of the low-carbon city (new urban development pattern with higher resource productivity, less carbon emission and pollution, better quality of life, and more development opportunity than traditional patterns) [30] and related assessment indicators [2,19,20,21,22,23]. Based on correlation analysis and component analysis of indicators as well as data availability and accuracy, the indicator system was slightly adjusted. Ultimately, 15 indicators of urban low-carbon development level formed the indicator set M, based on which the foundation and potential of developing low-carbon cities was measured.
As shown in Table 1, the 15 indicators are organized from aspects of economic development and social progress (M1M5), energy structure and usage efficiency (M6M8), living consumption (M9M11) and development surroundings (M12M15), according to focused items of each aspect. We thereby formed a multi-layer indicator system of urban low-carbon development level, which includes objective, factor and indicator layers. This makes possible a simultaneous synthetic evaluation (integrating various indicators and factors into the comprehensive objective) and concrete diagnosis (related analysis at scales of factors and indicators, according to the synthetic evaluation results).
Table 1. Indicators of urban low-carbon development level and indicator weights.
Table 1. Indicators of urban low-carbon development level and indicator weights.
ObjectiveFactorConcernsIndicatorWeight
Urban low-carbon development levelEconomic development and social progressEconomic amount, structure, and development speed; urbanization and civilization levelM1 Per capita GDP/Yuan0.0480
M2 GDP growth rate/%0.0133
M3 Proportion of tertiary industry to GDP/%0.0123
M4 Urbanization rate/%0.0280
M5 R&D as a percentage of GDP/%0.0391
Energy structure and usage efficiencyUrban energy structure, relationship among energy use, economic growth, and carbon emissionM6 Proportion of non-coal energy/%0.1161
M7 Carbon productivity/(104 Yuan/t)0.0213
M8 Elasticity coefficient of energy consumption0.2270
Living consumptionResidents’ living consumption mode and related impact of carbon emissionM9 Angel’s coefficient/%0.0010
M10 Number of public transportations vehicles per 10,000 persons/Vehicle0.0852
M11 Per capita carbon emission/t0.0459
Development surroundingsSituations of carbon sink and investment for environmental protectionM12 Per capita public green areas/m20.2921
M13 Forest coverage/%0.0449
M14 Coverage rate of green area in built-up area/%0.0112
M15 Proportion of investment for environmental protection to GDP/%0.0148

2.4. Study Sites

Twelve cities—Shanghai, Baoding, Tianjin, Chongqing, Hangzhou, Shenzhen, Beijing, Guangzhou, Qingdao, Suzhou, Zhuhai, and Kunming—were selected to constitute the assessed interval set S, while considering factors such as efforts of low-carbon city construction, economic development level, social civilization degree, environmental quality and data availability. Indicator data were collected in 2009.

3. Results

The 2009 indicator data for the assessed cities were compiled from national and local yearbooks, statistical surveys, and official government websites. According to these data, the information entropy weight of each indicator was derived (Table 1). Subsequently, with the set pair analysis, we conducted the synthetic evaluation based on the bottom-up idea and detailed analysis based on the top-down idea, in terms of urban low-carbon development level.

3.1. Overall Situations of Urban Low-Carbon Development Level

As indicated in Figure 2, the 12 cities had different grades in terms of low-carbon development level in 2009. Shenzhen, Zhuhai and Hangzhou ranked in the highest grade when their relative approximate degrees of urban low-carbon development level to the optimal evaluation set (rk) exceeded 0.6. Tianjin, Baoding, Kunming, Suzhou and Chongqing ranked in the lowest grade when rk was less than 0.4. Guangzhou, Beijing, Shanghai and Qingdao ranked in the medium grade when rk was 0.4–0.6. It should be pointed out that 0.4 and 0.6 do not represent any fixed gradation standard for urban low-carbon development level, but are used according to the results of this case. The results of synthetic evaluation based on set pair analysis produced a clear order of different cities. This demonstrates that this evaluation can define overall city positions when accurate grading of the cities according to a specific standard is less important.
Figure 2. Relative urban low-carbon development levels of 12 cities in 2009.
Figure 2. Relative urban low-carbon development levels of 12 cities in 2009.
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3.2. Performance of Each Factor of Urban Low-Carbon Development Level

Based on a procedure similar to synthetic evaluation, the performance of various factors for the assessed cities was also obtained by set pair analysis (Figure 3). For the factor of economic development and social progress, Beijing, Shenzhen, Shanghai, Guangzhou and Zhuhai performed relatively well, whereas Baoding, Kunming and Chongqing performed relatively poorly. With respect to energy structure and usage efficiency, Zhuhai, Hangzhou, Shanghai and Shenzhen ranked at a relatively high level, Kunming, Suzhou and Baoding at a relatively low level, and the other cities ranked at a middle level. For the factor of living consumption, Shenzhen and Beijing performed slightly better than other cities, but most cities showed a medium performance. For the factor of development surroundings, the situations of Shenzhen and Guangzhou were strong, those of Tianjin and Shanghai were weak, and those of other cities were at a medium level.
Figure 3. Relative performance of each factor of urban low-carbon development level, for 12 cities in 2009 (ED, economic development and social progress; ES, energy structure and usage efficiency; LC, living consumption; and DS, development surroundings).
Figure 3. Relative performance of each factor of urban low-carbon development level, for 12 cities in 2009 (ED, economic development and social progress; ES, energy structure and usage efficiency; LC, living consumption; and DS, development surroundings).
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For cities with a high urban low-carbon development level, like Shenzhen, Zhuhai and Guangzhou, each factor of this level performs well in a balanced way. The situation is especially so for Shenzhen. For cities of low development level, like Tianjin, Baoding, Kunming and Suzhou, some factors performed weakly. For Tianjin city, which had the lowest development level, the factor of development surroundings had the worst performance of all assessed cities. Levels of energy structure and usage efficiency were lowest for Kunming and Suzhou.

3.3. Concrete Situations of Specific Indicators

According to the above results, we conclude that cities with relatively low urban low-carbon development levels mainly perform poorly in two factors, i.e., development surroundings and energy structure and usage efficiency. To further diagnose the problems of these cities, detailed analysis is conducted with a focus on the concrete indicators of the two factors, as indicated in Figure 4 and Figure 5. Regarding the four indicators of development surroundings, the levels of per capita public green areas, coverage rate of green area within built-up area, and forest coverage are relatively low, especially for the first two, taking Tianjin city as an example. Regarding the factor of energy structure and usage efficiency, the levels of carbon productivity and elasticity coefficient of energy consumption are relatively low, especially that of the latter, again taking Tianjin city as the example.
Figure 4. Relative situations of each indicator of development surroundings, for 12 cities in 2009. (a) Per capita public green areas, (b) forest coverage, (c) coverage rate of green area within built-up area, and (d) proportion of investment for environmental protection to GDP.
Figure 4. Relative situations of each indicator of development surroundings, for 12 cities in 2009. (a) Per capita public green areas, (b) forest coverage, (c) coverage rate of green area within built-up area, and (d) proportion of investment for environmental protection to GDP.
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Figure 5. Relative situations of each indicator of energy structure and usage efficiency, for 12 cities in 2009. (a) Proportion of non-coal energy, (b) carbon productivity, (c) elasticity coefficient of energy consumption.
Figure 5. Relative situations of each indicator of energy structure and usage efficiency, for 12 cities in 2009. (a) Proportion of non-coal energy, (b) carbon productivity, (c) elasticity coefficient of energy consumption.
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Based on these analyses, suggestions for improving urban low-carbon development level can be put forward. Taking Tianjin city, for instance, we suggest that more attention be paid to the construction of green areas to enlarge its carbon sink capacity and improve the development surroundings for low-carbon city realization. Meanwhile, measures such as improving energy usage efficiency by adopting clean energy, transforming production techniques, and recycling materials and energy should be taken. This would reduce the elasticity coefficient of energy consumption and achieve a harmonious relationship between energy use, economic growth, and carbon emission.

4. Discussion

4.1. Selection of Indicators of Urban Low-Carbon Development Level

Undoubtedly, the indicator selection has a direct impact on the final evaluation results of urban low-carbon development level. As described above, various factors, including characteristics of the low-carbon city, related existent indicators, data availability and accuracy, as well as correlation analysis and component analysis of indicators, are all considered during indicator selection. We should attempt to attain the most scientific result. However, we usually have to balance various considerations, especially for concepts closely linked to actual management.
Table 2 shows correlation analysis results of the 15 indicators of urban low-carbon development level. The first indicator (M1, per capita GDP) has relatively high correlation with several other indicators like M7 and M11, and the seventh indicator (M7, carbon productivity) has high correlation with several other indicators like M1, M5 and M6. These results cause us to reconsider the selection of M1 and M7. However, given the vital indicating role of M7 for the low-carbon city and the important meaning of M1 in actual urban management, we ultimately retained the two indicators.
Table 2. Correlation matrix for 15 indicators of urban low-carbon development level.
Table 2. Correlation matrix for 15 indicators of urban low-carbon development level.
M1M2M3M4M5M6M7M8M9M10M11M12M13M14M15
M11.000−0.0940.4950.6810.4700.6320.802−0.306−0.3170.3500.7250.4490.0960.397−0.069
M2−0.0941.000−0.278−0.103−0.158−0.029−0.1940.354−0.1490.1570.1260.118−0.0500.055−0.052
M30.495−0.2781.0000.5850.7040.6920.621−0.394−0.3150.1620.1280.1680.1800.019−0.008
M40.681−0.1030.5851.0000.5840.5860.704−0.200−0.2920.4550.2940.5220.0100.224−0.084
M50.470−0.1580.7040.5841.0000.5450.719−0.432−0.4090.3250.0650.2240.0690.384−0.074
M60.632−0.0290.6920.5860.5451.0000.736−0.312−0.4770.4320.2110.509−0.0220.212−0.112
M70.802−0.1940.6210.7040.7190.7361.000−0.413−0.5170.4950.2110.5660.2210.423−0.224
M8−0.3060.354−0.394−0.200−0.432−0.312−0.4131.0000.0960.022−0.0550.039−0.009−0.257−0.166
M9−0.317−0.149−0.315−0.292−0.409−0.477−0.5170.0961.000−0.2070.048−0.2620.141−0.2630.414
M100.3500.1570.1620.4550.3250.4320.4950.022−0.2071.0000.0390.9040.2560.226−0.012
M110.7250.1260.1280.2940.0650.2110.211−0.0550.0480.0391.0000.077−0.1050.2640.129
M120.4490.1180.1680.5220.2240.5090.5660.039−0.2620.9040.0771.0000.2590.271−0.130
M130.096−0.0500.1800.0100.069−0.0220.221−0.0090.1410.256−0.1050.2591.000−0.065−0.177
M140.3970.0550.0190.2240.3840.2120.423−0.257−0.2630.2260.2640.271−0.0651.000−0.032
M15−0.069−0.052−0.008−0.084−0.074−0.112−0.224−0.1660.414−0.0120.129−0.130−0.177−0.0321.000
The results of principal component analysis shown in Table 3 also aid this decision making. Good component extraction was not achieved from this analysis, which means that correlation between the 15 indicators is not significant, but acceptable. With the dynamic development of low-carbon city, certain modifications and supplements to the present indicators based on the academic progress in related subjects is still necessary to obtain a more scientific evaluation result in the future.
Table 3. Total variance explained for principal component analysis of the 15 indicators.
Table 3. Total variance explained for principal component analysis of the 15 indicators.
ComponentInitial Eigenvalues
Total% of VarianceCumulative %
15.52336.82236.822
21.95713.04349.865
31.57410.49360.358
41.3899.26369.621
51.0416.93776.558
60.9866.57283.131
70.7274.84587.976
80.5473.64891.624
90.3872.57994.202
100.3222.14996.351
110.2531.68698.037
120.1691.12999.166
130.0710.47699.642
140.0430.28799.929
150.0110.071100.000

4.2. Management Implication based on Evaluation of Urban Low-Carbon Development Level

The evaluation of urban low-carbon development level based on the bottom-up and top-down ideas provides management implications from various viewpoints, as indicated in Table 4. Both ideas are important for actual urban management, and they should refer to each other.
Since the optimal evaluation set based on set pair analysis is generated from the status quo of the selected cities, the evaluation results may change with time and selected cities. For example, though Shenzhen ranked at the highest level among the 12 cities in the study period, it may decline in the future if other cities develop vigorously. Moreover, although Shenzhen performed relatively well against the other Chinese cities, it may perform poorly relative to other cities internationally. The results of set pair analysis will impel every city to continuously improve their low-carbon levels. These qualifications suggest that set pair analysis-based studies of different city sets or over a long term will shed more light on the evaluation of urban low-carbon development level.
Table 4. Management implications based on evaluation of urban low-carbon development level.
Table 4. Management implications based on evaluation of urban low-carbon development level.
IdeasFocusResultsManagement implications
Bottom-upIntegrated urban low-carbon development levelGroup 1 with relative high level: Shenzhen, Zhuhai, and HangzhouThose cities with relative low levels of low-carbon development should realize the gap and learn from those with relative high levels.
The orders based on relative urban low-carbon development levels will change with time and assessed cities, which requires every city to develop continuously.
Group 2 with medium level: Guangzhou, Beijing, Shanghai, and Qingdao
Group 3 with relative low level: Tianjin, Baoding, Kunming, Suzhou, and Chongqing
Top-downConcrete limiting factors of urban low-carbon development levelMainly constrained by economic development and social progress: BaodingMeasures focused on different factors should be taken for different cities to improve the urban low-carbon development level.
In order to reach a relative high urban low-carbon development level, each factor should develop well in a balanced way.
Mainly constrained by energy structure and usage efficiency: Kunming and Suzhou
Mainly constrained by living consumption: Chongqing Mainly constrained by development surroundings: Tianjin

4.3. Possible Further Analysis of Urban Low-Carbon Development Level

As a development pattern of sustainable city, the low-carbon city should pursue not only the objective of carbon emission reduction but also other objectives for sustainable development, including economic development, reduction of conventional emissions, comfortable living environment, social justice, and low-carbon lifestyle [30]. However, the concrete focuses for different types of cities may differ with natural condition, resources endowment, and socio-economic situation. Based on the preliminary evaluation results among different cities, more detailed analysis could be conducted on certain specific type of cities (e.g., economy-limited city, resource-limited city, or environment-limited city) in the future to obtain more effective management options.
Since each method has its own advantages and disadvantages, how to reasonably define the indicator weights is always an open question. Further discussion is deserved to check the feasibility and uncertainty that exists in incorporating different methods such as information entropy, the correlation coefficient method, the Delphi method, and the analytic hierarchy process in confirming indicator weights. Moreover, regarding the inadequate recognition of various complexity and uncertainties within urban ecosystems, set pair analysis could be combined with other uncertainty methods like fuzzy-stochastic programming model [31] and mixed fuzzy interval-stochastic programming method [32] to incorporate more elements of uncertainty and quantify the uncertainty of evaluation more accurately.

5. Conclusions

Both comprehensive measure and concrete analyses are needed for evaluation of the low-carbon city. A new evaluation framework of urban low-carbon development level that integrates synthetic evaluation and analytical diagnosis by integrating bottom-up and top-down ideas was proposed. Set pair analysis was also used to do a synthetic evaluation and analytical diagnosis based on comparison among different cities. This produced understandable results and improves the low-carbon level of multiple cities as a whole. Through synthetic evaluation based on the bottom-up idea, various data were integrated to obtain a comprehensive state of urban low-carbon development level, which assigns an assessed city a ranking among different cities in terms of urban low-carbon development level. Through analytical diagnosis based on the top-down idea, situations of specific factors and indicators were investigated, which identified key problems of the cities.
The proposed framework and method was used to evaluate the low-carbon development level for 12 Chinese cities. Varying management implications were furnished by the synthetic evaluation and analytical diagnosis, which are both important for construction of the low-carbon city. The evaluation results may change with time and selected cities. However, the results give impetus to every city to learn from each other and continuously improve their low-carbon levels. Further studies of different cities or over a long term, based on set pair analysis, are helpful in comprehensive and dynamic evaluation of urban low-carbon development level.

Acknowledgments

Financial support was provided by the National Natural Science Foundation of China (No. 40901269), the Program for New Century Excellent Talents in University (NCET-09-0226), the National Science Foundation for Innovative Research Group (No. 51121003), and the China Postdoctoral Special Foundation (Grant No. 201003063).

Conflict of Interest

The authors declare no conflict of interest.

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MDPI and ACS Style

Su, M.; Li, R.; Lu, W.; Chen, C.; Chen, B.; Yang, Z. Evaluation of a Low-Carbon City: Method and Application. Entropy 2013, 15, 1171-1185. https://0-doi-org.brum.beds.ac.uk/10.3390/e15041171

AMA Style

Su M, Li R, Lu W, Chen C, Chen B, Yang Z. Evaluation of a Low-Carbon City: Method and Application. Entropy. 2013; 15(4):1171-1185. https://0-doi-org.brum.beds.ac.uk/10.3390/e15041171

Chicago/Turabian Style

Su, Meirong, Ronghua Li, Weiwei Lu, Chen Chen, Bin Chen, and Zhifeng Yang. 2013. "Evaluation of a Low-Carbon City: Method and Application" Entropy 15, no. 4: 1171-1185. https://0-doi-org.brum.beds.ac.uk/10.3390/e15041171

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