
- Journal of Geographical Sciences
- Vol. 30, Issue 2, 333 (2020)
Abstract
1 Introduction
Urbanization drives environmental change on many scales, fundamentally changing regional landscapes and their ecology (
Urbanization in China ignores resource and environmental constraints (
Dynamic simulation reproduces historical geographical processes and predicts trends in their future development (
2 Progress in theoretical research on dynamic simulation of urbanization and eco-environment coupling
Simulation is premised on the assumption that it can reveal the structure and underlying processes of a system. We draw on theories of systems science and cross-scale coupling to characterize the coupled urbanization and eco-environment system as an open complex system with multiple feedbacks to describe the system structure and evolution mechanism.
2.1 Human-environment interaction
Human-environment interaction is at the core of human geography. It originated as an object of study in the French school of geography represented by de la Blache and Brunhes (
Urbanization is a significant human activity; in a narrow sense, the eco-environment constitutes the geographical environment. A theory of human-environment interaction is foundational to the research for urbanization and eco-environment coupling; moreover, coordinated development between urbanization and the eco-environment is an embodiment of sustainable development. As human-environment interaction becomes more intricate than before, the boundary between urbanization and the eco-environment becomes fuzzier (
2.2 Urban social-ecological system theory
The coupled urbanization and eco-environment system is a dynamic, multidimensional and collaborative complex system; it is constituted by a set of systems which include the social-economic-natural complex ecosystem (SENCE), the composite economy-resources- environment (ERE) system, and the urban ecological-economic (UEE) system (
The urban social-ecological system (USES) has been internationally recognized.
Figure 1.
2.3 Complex system theory
Complex system theory is derived from systems science and complexity science. The terms such as self-adapta- bility, self-organization, uncertainty, emergence, and openness are used to describe system characteristics and to explain the processes that lead to change in the uncertain system (
A coupled urbanization and eco-environment system is a complex system with multiple feedback loops. The system is open and far from equilibrium (oscillating between an unsteady state and a steady state); it constantly exchanges matter, energy, and information with the outside world (
2.4 Coupled human and natural system theory
At the start of the 21st century, humans were more concerned about global environmental changes than ever before. Increased anthropogenic emissions of greenhouse gases such as CO2 had caused significant global warming; therefore, it damaged previously balanced ecosystems and endangered the safety of human social systems, leading to crises of water supply, food supply and health, and thereby posing significant challenges to sustainable development (
The processes that constitute interaction between humans and natural systems are not well understood (
2.5 Telecoupling framework
In previous studies, most attention has been paid to internal system interactions; but external influences were treated simply as external variables. However, in reality, remote interactions between systems have feedback effects. The telecoupling framework was developed to explain spatial coupling in open systems, especially remote interactions among economies, societies, and eco-environments (
A telecoupling framework is a multi-level framework composed of a series of CHANS. It contains five parts: system, flow, agent, cause, and effect (
2.6 Review of theoretical research
System science theory and cross-scale coupling theory provide underlying support for dynamic simulation. The former one includes human-environment interaction theory, urban social-ecological system theory, and complex system theory; the latter one includes coupled human and natural system theory and a telecoupling framework, forming the spatio-temporal coupling model.
The coupled urbanization and eco-environment system can be regarded as an open complex giant system with multiple feedback loops; therefore, we analyze it to find the processes that determine change. (1) There are complex nonlinear relations among various elements, including one-one, one-many and many-many relations. (2) The coupling includes the telecoupling framework and distance attenuation; it could be considered as strong within the system, and loose between systems. Therefore, strong coupling often determines the direction of system change, while loose coupling cannot be ignored. In this period of globalization, telecoupling is more intensive than it used to be. (3) We must be aware of the relationships between qualitative analysis and quantitative analysis to choose a suitable dynamic simulation method. The quantitative simulation could objectively explain some natural properties and coupling regularities. However, when policies develop, using a more subjective qualitative simulation could be more effective.
Because many systems theories are not fully developed, they are often standalone or incompatible with other theories. We must continue to develop complex system theory, cross-scale coupling theory, and other new theories. Moreover, the boundaries among disciplines should be blurred to encourage interdisciplinary studies; therefore, a network to research urbanization and eco-environment coupling should be formed to optimize efforts to solve the problem of uncertainty in dynamic simulation.
3 Progress in dynamic simulation methods of urbanization and eco-environment coupling
Breakthroughs in computer design, artificial intelligence, GIS, and other technologies have enabled the rapid development of dynamic simulation methods. Different methods have different disciplinary backgrounds, use different algorithms, as well as possess different advantages and disadvantages. Therefore, in terms of accuracy and applicability, the results have great differences. We now summarize the context of development, conditions of application and defects of different methods and analyze how to optimize them.
3.1 System dynamics
System dynamics (SD) is the oldest and most commonly used dynamic simulation method. SD blends systems science and computer simulation techniques to simulate geographic systems of human-environment interaction and urban complex systems, by combining qualitative and quantitative methods (
However, the flaw of SD is that the fixed structure of the model makes it difficult to simulate systems containing uncertainties, such as technological progress, government policy and human behavior; therefore, some variable relationships are limited to being defined by the use of regression. Additionally, simulated systems tend to be macroscopic, which puts SD at a disadvantage when dealing with microscopic systems.
3.2 Artificial intelligence
Artificial intelligence (AI), in the form of artificial neural networks (ANNs) and Bayesian networks (BNs), has developed rapidly; therefore, it can at least partially solve the problem to dynamic simulation for self-organizing, self-adapting, and self-learning systems. ANN and BN are similar in algorithmic complexity and network training methods; but they differ in topology, learning rules, and algorithmic principles. ANN includes the use of directed acyclic graphs and directed cyclic graphs, and uses an activation function to train the model and construct the learning rules. The directed acyclic graph is commonly used by the back-propagation neural network technique with a back-propagation algorithm to train a multi-layer neural network (
There is a black box in the dynamic simulation of urbanization and eco-environment coupling, but AI could open it by deep learning. However, AI is still in the developmental stage; therefore, there is a disagreement that it is genuine intelligence rather than pseudo-intelligence. The prospect of using AI to simulate uncertain systems is appealing, and we could extend the scope of AI by embedding it in other techniques.
3.3 Land use and land cover change model
Land use and land cover change (LUCC) models refine the interpretation of spatial usage. Spatial changes in urbanization and eco-environment coupling could be shown dynamically and could be analyzed to determine how urban boundaries would expand. LUCC models include conversion of land use and its effects at small region extent (CLUE-s), cellular automata (CA) and multi-agent systems (MAS) (
CLUE-s, CA and MAS simulate land urbanization and eco-environment coupling based respectively on empirical data, spatial information rules, and complex system theory; however, they are limited to the spatial perspective and must be coupled with other models to increase their applicability.
3.4 Integrated method
SD+, a recently-developed combinatory method, is a bottom-up method that uses combinations of various other methods, and it has widely used (
SD incorporates qualitative and quantitative characteristics, and it becomes an important interface for the combined systems. However, it is challenging to integrate technology and to verify the authenticity and effectiveness of existing achievements. In the future, we must combine system engineering, artificial intelligence, LUCC simulation and prediction, 3S, and other technical disciplines to build a linked dynamic simulation technology chain.
3.5 Interactive decision support system
To support decision-making for regional sustainable planning, researchers have developed many systems based on different objectives; researchers are longing to develop an interactive decision support system; however, the decision support systems are empirical. For example,
The development of an interactive interface between dynamic simulation and decision support is promoted by technology. Interactive decision support currently lacks developed products and relies on experience and judgment. In future, we must build an intelligent interactive decision support system.
3.6 Review of dynamic simulation methods
Dynamic simulation methods are diversified, refined, intelligent and integrated because of the use of computers, 3S and artificial intelligence. Different strengths and weaknesses of common techniques, such as SD, AI (ANN and BN) and LUCC modeling (CLUE/CLUE-s, CA and MAS), are shown in
Name | Discipline | Advantages | Disadvantages | Application |
---|---|---|---|---|
System dynamics | Systems science and computer simulation | Modeling process is simple and can be combined with an index system to identify system boundary and related variables | Difficult to reflect the characteristics of adaptive and spatial change in the system, and the feedbacks are in part regression relationships | Urban system change, urban sustainable development and urbanization and eco-environment element coupling |
Artificial neural network | Artificial intelligence | A typical human brain model with three advantages: self-learning, associative storage and high-speed optimization | Defective in learning, causal explanation and other aspects, especially in dealing with system uncertainty | Urban land expansion, environmental change, and resources demand |
Bayesian networks | Artificial intelligence, probability theory, statistics and graph theory | Good at causal and diagnostic reasoning, as empirical data can be incomplete | Difficult to deal with the large number of nodes and the learning ability is less than for ANN | Identification of urban ecological vulnerability and demand for resources |
CLUE-s | LUCC, systems science and computer simulation | Good at dealing with different spatial scales based on empirical data | Focus on local equilibrium analysis | Land use allocation on multiple spatial scales |
Cellular automata | LUCC, systems science and computer simulation | Simplifies complex problems by bottom-up modeling and can simulate complex discrete systems | Difficult to solve the problem of spatial heterogeneity and lacks explanation of the mechanism | Urban sprawl and land use change |
Multi-agent system | Artificial intelligence and complexity science | Compensates for the neglect of policy factors and explains land use change processes | Research space is abstracted as homogeneous and model validation is difficult | Policy-driven urban sprawl and land use change |
Table 1.
Comparison of techniques for dynamic simulation of urbanization and eco-environment coupling.
Dynamic simulation methods have many shortcomings: (1) Combining or integrating methodologies is difficult and it is hard to simulate the multi-scenario, multi-scale, multi-factor and multi-agent. (2) Many research results are limited to qualitative analysis because of a lack of systematic quantitative analysis and simulation methods for cross-scale coupling. (3) Because the development of interactive decision support systems is in the feasibility stage, there is a lack of developed products and few technical services in planning departments. (4) It is difficult to obtain urbanization and eco-environment coupling data, especially primary data.
We must unify simulation technology and encourage data sharing, develop linked dynamic simulation technology and interactive decision support systems, and build databases that support big data. These activities will accelerate the transition from theoretical research to practical dynamic simulation and thus provide decision support for regional sustainable urbanization.
4 Progress in applications of dynamic simulation of urbanization and eco- environment coupling
The case studying areas of different types, multiple elements, telecoupling and cross-scaling are involved in the applications; therefore, they determine how to represent regional differences, identify the main control elements, and emphasize cross-scale coupling.
4.1 Different types of areas
There have been many studies at national and provincial scales. For example,
(1) Urban area. Two methods are commonly used in studying urban areas. The first method is to study individual cities.
The second method is to study urban agglomerations. An urban agglomeration is an important region which competes internationally in terms of trade and industry, while it faces severe resource and environmental constraints (
(2) River basin. In the area of a river basin, water resources, the hydrologic environment and water ecology all bear importantly on the economic and social system; therefore, the interaction between the hydrological system and the urbanization pattern is significant (
(3) Arid area. An arid area is ecologically fragile; therefore, urbanization is strongly constrained by resources and the eco-environment.
(4) Mountainous area. Mountains are usually categorized as restricted or forbidden development zones in the major function-oriented zoning categories, exemplifying the dilemma between development and protection.
4.2 Multi-element coupling and control
The urbanization and eco-environment coupling are considered as a complex unity of many elements by us via systems science and complexity science.
(1) Water resources are important influence factors on urbanization. The demand for water resources from urbanization is direct and necessary; however, the population size and the scale of production should be maintained within the carrying capacity of available water resources. The hydrological system also affects urbanization patterns and processes (
(2) Land resources also constrain urbanization. Current studies tend to regard urbanization as requisitioning the landscape; it is mainly manifested in the transformation from natural, rural and other regional landscapes to urban landscapes, accompanied by dynamic changes in land use types and landscape fragmentation (
(3) Some researchers have investigated landform as a stressor of urbanization. Over 50% of Chinese cities and towns are situated in mountainous areas; therefore, mountain urbanization is a major concern (
(4) Some researchers have created comprehensive bearing capacity quantification models that incorporate the main drivers.
4.3 Local coupling and telecoupling
The introduction of a telecoupling framework extends the coupling scale into many dimensions such as time, space and organization.
Recently, cross-regional economic cooperation, cultural exchanges, trade, commuting and pollution have become increasingly prominent concerns; therefore, they lead the government, business and public sectors to pay more attention to regional collaborative development.
4.4 Applications review
The application of the results of simulation is mainly focused on three components: multiple-case regions; multiple elements, local coupling, and telecoupling; and regional synergy. (1) The types of areas used in cases are diversified, and much attention is given to urban agglomerations. The areas used as cases include urbanization areas, river basins, arid regions and mountainous areas. Research covers theoretical research, empirical demonstration and observation, process analysis, and decision support for urban agglomerations provided by urbanization and eco-environment coupling. (2) The trend for unifying multiple elements is significant; therefore, the main driving elements have been comprehensively identified. As systems science and complexity science continue to develop and their use grows, increasing numbers of studies have shown that urbanization and eco-environment coupling is a complex unification of many factors. (3) Local coupling and telecoupling are both of interest. International research has shifted to spatial scales, while domestic Chinese research has paid more attention to regional collaborative development.
We also found some drawbacks. (1) The identification of the main driving elements ignores system dynamics. Many studies only consider spatial differences, but it is necessary to understand regularity, trends, and dynamics. (2) The complete chain of relationships and processes in urbanization and eco-environment coupling has not been identified. Fragmented applications (those that consider some, not all) do not fully reveal the complete chain of relationships. (3) Telecoupling simulation focuses on micro cases such as cross-border tourism, energy trading, urban security, ecological risk, and species invasion; however, telecoupling simulation is not quantified, lacks systematic unity and is disconnected from regional application.
In the future, we must take national strategy and responses to global change as goals, and show the local coupling and telecoupling relationships identified by the simulations in key areas such as urban agglomeration. On the other hand, we must also emphasize the dynamic nature of the driving elements, as well as the scientific basis of the coordination strategy, and thus promote the application of research into aspects of systems behavior such as inflection point identification, threshold definition, dynamic simulation and monitoring, and risk warning and response.
5 Review and prospects
There is a complex nonlinear interactive coupling between urbanization and the eco-environment. Science is the key to accurately simulating this complex dynamic relation. Systems science and cross-scale coupling theory allow us to define the coupled urbanization and eco-environment system as an open complex giant system with multiple feedback loops.
We reviewed the current literature for dynamic simulation of urbanization and eco-environment coupling. (1) As dynamic simulation becomes more popular, theory and analysis have been improved. Studies of urbanization and eco-environment coupling refer to and improve the environmental Kuznets curve (EKC), showing relationships that can be represented by inverted U-shaped or S-shaped curves. (2) Dynamic simulation technologies have become more diversified, refined, intelligent, and integrated. Improved simulation technologies based on SD, artificial intelligence and land use and land cover change models are being rapidly developed, leading to increased use and development of simulation technology for unified systems. (3) Current simulations are used mainly for three aspects: multiple regions and multiple elements, local coupling and telecoupling, and regional synergy. However, we also found some shortcomings: (1) The development and unification of basic theories are inadequate; (2) The methods of unifying separate systems and transferring data among them are not as advanced as they might be; and (3) The coupling relations and the dynamic characteristics of the main driving elements have not been fully identified. Moreover, telecoupling simulation does not quantify and is not systemically unified; therefore, it cannot be used to model spatial synergy transference.
In the future, we should promote the development of complex systems theory, cross-scale coupling theory and other new theories; therefore, the benefits of cross-disciplinary research into the unified human-nature system should be realized; thus we should form a multi-disciplinary research network for urbanization and eco-environment coupling. We must also promote the unification of simulation technology and data transfer, develop unified dynamic simulation technology and interactive decision support systems, and build database support for big data. Eventually, we should identify the local coupling and telecoupling relationships; thus we promote the application of research into topics such as inflection point identification, threshold definition, dynamic simulation and monitoring, and risk identification and response.
References
[1] H Abdirahman, H Wahap, Z F Bian. The quantitative analysis of coupling system sustainable development of oasis water resources-ecological environment-economic society. Journal of Arid Land Resources and Environment, 24, 26-31(2010).
[2] T F H Allen, T B Starr. Hierarchy: Perspectives for Ecological Complexity(1982).
[3] M Antrop. Landscape change and the urbanization process in Europe. Landscape and Urban Planning, 67, 9-26(2004).
[4] K J Arrow, P Dasgupta, K Mäler. Evaluating projects and assessing sustainable development in imperfect economies. Environmental & Resource Economics, 26, 647-685(2003).
[5] S Balbi, F Villa, V Mojtahed et al. A spatial Bayesian network model to assess the benefits of early warning for urban flood risk to people. Natural Hazards & Earth System Sciences, 16, 1323-1337(2016).
[6] C Bao, X J Chen. The driving effects of urbanization on economic growth and water use change in China: A provincial-level analysis in 1997-2011. Journal of Geographical Sciences, 25, 530-544(2015).
[7] R V Bartlett. Protecting the ozone layer: Science and strategy. Journal of Politics, 67, 285-286(2010).
[8] W G Bo, F Chen. The coordinated development among Beijing, Tianjin and Hebei: Challenges and predicaments. Nankai Journal: Philosophy, Literature and Social Science Edition, 110-118(2015).
[9] M Cai, Y Yin, M Xie. Prediction of hourly air pollutant concentrations near urban arterials using artificial neural network approach. Transportation Research Part D: Transport & Environment, 14, 32-41(2009).
[10] K Cao, J Xiao. Road system planning based on topographic analysis: Case studies of mountainous cities in southwest China. Mountain Research, 31, 473-481(2013).
[11] H Chen, X Y Liang, H D Gao et al. A review on multi-agent system for the simulation of land-use and land-cover change. Journal of Natural Resources, 23, 345-352(2008).
[12] L D Chen, R H Sun, H L Liu. Eco-environmental effects of urban landscape pattern changes: Progresses, problems, and perspectives. Acta Ecologica Sinica, 33, 1042-1050(2013).
[13] L D Chen, W Q Zhou, L J Han et al. Developing key technologies for establishing ecological security patterns at the Beijing-Tianjin-Hebei urban megaregion. Acta Ecologica Sinica, 36, 7125-7129(2016).
[14] Y Chi, H H Shi, J K Sun et al. Evaluation on island resources and environment carrying capacity under the background of urbanization. Journal of Natural Resources, 32, 1374-1384(2017).
[15] X G Cui, C L Fang, H M Liu et al. Assessing sustainability of urbanization by a coordinated development index for an Urbanization-Resources-Environment complex system: A case study of Jing-Jin-Ji region, China. Ecological Indicators, 96, 383-391(2019).
[16] X G Cui, C X Wang, X Q Wang. Research on optimizing the new path of metropolises’ spatial structure under the fog and haze crisis. Shanghai Journal of Economics, 13-21(2016).
[17] J M Deines, X Liu, J Liu. Telecoupling in urban water systems: An examination of Beijing’s imported water supply. Water International, 41, 251-270(2016).
[18] X Z Deng, Y Z Lin, H Q Huang. Simulation of land system dynamics: A review. Chinese Journal of Ecology, 28, 2123-2129(2009).
[19] C Y Dong. Analyzing the meaning of order parameter and slaving principle for wholism. Chinese Journal of Systems Science, 19, 17-21(2011).
[20] W Dong, Y Yang, Y F Zhang. Coupling effect and spatio-temporal differentiation between oasis city development and water-land resources. Resources Science, 35, 1355-1362(2013).
[21] X H Du, T Zhang. The simulation to coupling development between water resource & environment and socio-economic system: Dongting Lake ecological economic zone as an example. Economic Geography, 34, 151-155(2014).
[22] H Eakin, R Defries, S Kerr et al. Significance of Telecoupling for Exploration of Land-Use Change(2014).
[23] B Entwisle, P C Stern. Population, Land Use, and Environment(2005).
[24] J Fan. Frontier approach of the sustainable process and pattern of human-environment system. Acta Geographica Sinica, 69, 1060-1068(2014).
[25] B L Fang, Y Tan, C B Li et al. Energy sustainability under the framework of telecoupling. Energy, 106, 253-259(2016).
[26] C L Fang. Dissipative structure theory and geography system. Arid Land Geography, 12, 53-58(1989).
[27] C L Fang. Report on China’s Urbanization and the Resources and Environment Security(2009).
[28] C L Fang. Theoretical foundation and patterns of coordinated development of the Beijing-Tianjin-Hebei urban agglomeration. Progress in Geography, 36, 15-24(2017).
[29] C L Fang, C Bao. The coupling model of water-ecology-economy coordinated development and its application in Heihe River Basin. Acta Geographica Sinica, 59, 781-790(2004).
[30] C L Fang, H M Liu, G D Li. International progress and evaluation on interactive coupling effects between urbanization and the eco-environment. Journal of Geographical Sciences, 26, 1081-1116(2016).
[31] C L Fang, Y F Ren. Analysis of emergy-based metabolic efficiency and environmental pressure on the local coupling and telecoupling between urbanization and the eco-environment in the Beijing-Tianjin-Hebei urban agglomeration. Science China Earth Sciences, 47, 833-846(2017).
[32] C L Fang, J T Song, X Q Lin et al. Theory and Practice on the Sustainable Development of China’s Urban Agglomeration(2010).
[33] C L Fang, Y M Yang. Basic laws of the interactive coupling system of urbanization and ecological environment. Arid Land Geography, 29, 1-8(2006).
[34] C L Fang, C H Zhou, C L Gu et al. A proposal for the theoretical analysis of the interactive coupled effects between urbanization and urbanization and the eco-environment in mega-urban agglomerations. Journal of Geographical Sciences, 27, 1431-1449(2017).
[35] W Fang, H An, H Li et al. Accessing on the sustainability of urban ecological-economic systems by means of a coupled emergy and system dynamics model: A case study of Beijing. Energy Policy, 100, 326-337(2017).
[36] Y Y Feng, S Q Chen, L X Zhang. System dynamics modeling for urban energy consumption and CO2 emissions: A case study of Beijing, China. Ecological Modelling, 252, 44-52(2013).
[37] W Froelich. Forecasting daily urban water semand using Dynamic Gaussian Bayesian Network. Communications in Computer & Information Science, 521, 333-342(2015).
[38] B J Fu. Geography: From knowledge, science to decision making support. Acta Geographica Sinica, 72, 1923-1932(2017).
[39] N B Grimm, S H Faeth, N E Golubiewski et al. Global change and the ecology of cities. Science, 319, 756-760(2008).
[40] C L Gu, Y Zhang, W Zhai et al. Progress in urban and regional quantitative research. Progress in Geography, 35, 1433-1446(2016).
[41] C N Guerrero, P Schwarz, J H Slinger. A recent overview of the integration of system dynamics and agent-based modelling and simulation//Proceedings of the 34th International Conference of the System Dynamics Society(2016).
[42] L H Gunderson, C S Holling, L H Gunderson et al. Panarchy: Understanding transformations in human and natural systems. Ecological Economics, 49, 488-491(2004).
[43] Y T Guo, J G Xu. Coupling coordination measurement of urbanization and eco-environment system in Huaihe River Basin of China based on fuzzy matter element theory. Chinese Journal of Applied Ecology, 24, 1244-1252(2013).
[44] X Han, N Zhang. Analysis on coupling coordination degree between urbanization and geo-hazards in China based on TOPSIS. Hydrogeology & Engineering Geology, 44, 167-171(2017).
[45] Y Hayashi, R Suparat, R Mackett et al. Urbanization, motorization and the environment nexus: An international comparative study of London, Tokyo, Nagoya and Bangkok. Xenotransplantation, 21, 254-266(1994).
[46] S S Haykin. Neural Networks and Learning Machines. Uper Saddle River: Pearson Prentice-Hall(2009).
[47] J He, S Wang, Y Liu et al. Examining the relationship between urbanization and the eco-environment using a coupling analysis: Case study of Shanghai, China. Ecological Indicators, 77, 185-193(2017).
[48] C S Holling. Resilience and stability of ecological systems. Annual Review of Ecology & Systematics, 4, 1-23(1973).
[49] J Hu, J H Sun. Early classification warning for regional energy security exogenous sources based on FI-GA-NN model. Resources Science, 39, 1048-1058(2017).
[50] J C Huang, C L Fang. Analysis of coupling mechanism and rules between urbanization and eco-environment. Geographical Research, 22, 211-220(2003).
[51] Y P Huang. Survey on Bayesian network development and application. Transactions of Beijing Institute of Technology, 33, 1211-1219(2013).
[52] J Hulina, C Bocetti, H C Iii et al. Telecoupling framework for research on migratory species in the Anthropocene. Elementa: Science of the Anthropocene, 5, 5-27(2017).
[53] Reberberation of change. IGBP Science Series, 4, 15-18(2001).
[54] B L T Ii, P A Matson, J J Mccarthy et al. Science and technology for sustainable development special feature: Illustrating the coupled human-environment system for vulnerability analysis: Three case studies. Proceedings of the National Academy of Sciences of the United States of America, 100, 8080(2003).
[55] . Climate Change 2007: The Physical Science Basis, Contribution of Working Group I to the Fourth Assessment Report of the Intergovernmental Panel on Climate Change(2007).
[56] Y Jabareen. The Risk City Resilience Trajectory. Berlin: Springer Netherlands(2015).
[57] R W Kates, W C Clark, R Corell et al. Environment and development: Sustainability science. Science, 292, 641-642(2001).
[58] A Lenschow, J Newig, E Challies. Globalization’s limits to the environmental state? Integrating telecoupling into global environmental governance. Environmental Politics, 25, 136-159(2016).
[59] H P Li. The philosophical debate in mountainous city planning. City Planning Review, 52-53(1998).
[60] L Li, Y Liu. The driving forces of regional economic synergistic development in China: Empirical study by stages based on Haken model. Geographical Research, 33, 1603-1616(2014).
[61] S C Li, Y Wang, Y L Cai. The paradigm transformation of geography from the perspective of complexity sciences. Acta Geographica Sinica, 65, 1315-1324(2010).
[62] S C Li, Z Q Zhao, Y L Wang. Urbanization process and effects of natural resource and environment in China: Research trends and future directions. Progress in Geography, 28, 63-70(2009).
[63] S H Li, J Zhang. Review of Bayesian networks structure learning. Application Research of Computers, 32, 641-646(2015).
[64] X Y Li, Y Yang, Y Liu. Research progress in man-land relationship evolution and its resource-environment base in China. Acta Geographica Sinica, 71, 2067-2088(2016).
[65] Y F Li, X D Zhu, Y Ma. Urbanization, global environmental change and IHDP. Environment and Sustainable Development, 42-44(2008).
[66] Z L Li. A study on the causes of population urbanization laging behind land urbanization. China Population, Resources and Environment, 23, 94-101(2013).
[67] C L Liu, Q Yan, J Luo. System dynamics simulation on the coupling of economy resources environment system in Wuhan Metropolitan Region. Geographical Research, 32, 857-869(2013).
[68] D S Liu. Global changes sustainability science. Earth Science Frontiers, 9, 1-9(2002).
[69] H M Liu, C L Fang, H Y Mao et al. Mechanism of oasis urbanization: A theoretical framework based on complexity theory. Geographical Research, 35, 242-255(2016).
[70] H M Liu, P J Shi, X M Yang et al. Self-organization evolution simulation and empirical study of human-water system. Journal of Natural Resources, 29, 709-718(2014).
[71] J G Liu, G C Daily, P R Ehrlich et al. Effects of household dynamics on resource consumption and biodiversity. Nature, 421, 530-533(2003).
[72] J G Liu, J Diamond. China’s environment in a globalizing world. Nature, 435, 1179-1186(2005).
[73] J G Liu, T Dietz, S R Carpenter et al. Complexity of coupled human and natural systems. Science, 317, 1513-1516(2007).
[74] J G Liu, T Dietz, S R Carpenter et al. Coupled human and natural systems. Ambio, 36, 639-649(2007).
[75] J G Liu, V Hull, M Batistella et al. Framing sustainability in a telecoupled world. Ecology & Society, 18, 344-365(2013).
[76] K Liu, J L Ren, L J Zhang et al. Urbanization’s resource environmental bearing capacity response from man-land relationship perspective: Take Shandong Province as an example. Economic Geography, 36, 77-84(2016).
[77] X P Liu, Y M Tang, L P Zheng. Survey of complex system and complex system simulation. Journal of System Simulation, 20, 6303-6315(2008).
[78] Y B Liu, R D Li, X F Song. Grey associative analysis of regional urbanization and eco-environment coupling in China. Acta Geographica Sinica, 60, 237-247(2005).
[79] Y Y Liu, S J Wang. Coupling coordinative degree and interactive coercing relationship between urbanization and eco-environment in Pearl River Delta. Human Geography, 30, 64-71(2015).
[80] Z Liu, C He, Y Zhou et al. How much of the world’s land has been urbanized, really? A hierarchical framework for avoiding confusion. Landscape Ecology, 29, 763-771(2014).
[81] D D Lu, L X Guo. Man-earth areal system—The core of geographical study: On the geographical thoughts and academic contributions of academician Wu Chuanjun. Acta Geographica Sinica, 53, 3-11(1998).
[82] T G Lv, C F Wu, H Y Li et al. The coordination and its optimization about population and land of urbanization: A case study of Nanchang City. Scientia Geographica Sinica, 36, 239-246(2016).
[83] S J Ma, R S Wang. The social-economic-natural complex ecosystem. Acta Ecologica Sinica, 4, 1-9(1984).
[84] R I Mcdonald, K Weber, J Padowski et al. Water on an urban planet: Urbanization and the reach of urban water infrastructure. Global Environmental Change, 27, 96-105(2014).
[85] D H Meadows, D L Meadows, J Randers et al. The Limits to Growth. New York: Universe Books(1972).
[86] . Ecosystems and Human Well-Being: Synthesis(2005).
[87] M O’meara. Reinventing cities for people and the planet//Worldwatch Paper. Washington, DC: Worldwatch Institute(1999).
[88] E Ostrom. A General Framework for analyzing sustainability of social-ecological systems. Science, 325, 419-422(2009).
[89] X S Qian, J Y Yu, R W Dai. A new discipline of science: The study of open complex giant system and its methodology. Chinese Journal of Nature, 3-10(1990).
[90] B Qiao, C L Fang, J C Huang. The coupling law and its validation of the interaction between urbanization and eco-environment in arid area. Acta Ecologica Sinica, 26, 2183-2190(2006).
[91] Y Quan, C Wang, Y Yan et al. Impact of inter-basin water transfer projects on regional ecological security from a telecoupling perspective. Sustainability, 8, 162-173(2016).
[92] W V Reid, D Chen, L Goldfarb et al. Earth system science for global sustainability: Grand challenges. Science, 330, 916-917(2010).
[93] E Rignot, P Kanagaratnam. Changes in the velocity structure of the Greenland Ice Sheet. Science, 311, 986-990(2006).
[94] B R Roberts. Urbanization and the environment in developing countries//Latin America in Comparative Perspective. Population and Environment: Rethinking the Debate(1994).
[95] R Sanchez-Rodriguez, K Seto, D Simon et al. Science Plan: Urbanization and Global Environmental Change. Bonn: International Human Dimensions Programme on Global Environmental Change(2014).
[96] A Schneider, C M Mertes, A J Tatem et al. A new urban landscape in East-Southeast Asia, 2000-2010. Environmental Research Letters, 10, 1-14(2015).
[97] C Q Song, C X Cheng, P J Shi. Geography complexity: New connotations of geography in the new era. Acta Geographica Sinica, 73, 1204-1213(2018).
[98] , , et al. The impact of urbanization on water vulnerability: A coupled human-environment system approach for Chennai, India. Global Environmental Change, 23, 229-239(2013).
[99] P Sta, M L Cadenasso, J M Grove. Biocomplexity in coupled natural-human systems: A multidimensional framework. Ecosystems, 8, 225-232(2005).
[100] H P Sun, Z F Huang, D D Xu et al. The spatial characteristics and drive mechanism of coupling relationship between urbanization and eco-environment in the Pan Yangtze River Delta. Economic Geography, 37, 163-170(2017).
[101] Y Z Sun, C X Lu, G D Xie et al. Water footprint in Beijing. Chinese Journal of Ecology, 34, 524-531(2015).
[102] F Sven, K Margreth, G Thomas. Editorial to the special issue on resilience and vulnerability assessments in natural hazard and risk analysis. Natural Hazard and Earth System Sciences, 17, 1203-1206(2017).
[103] J T Tan, P Y Zhang, J Li et al. Spatial-temporal evolution characteristic of coordination between urbanization and eco-environment in Jilin Province, Northeast China. Chinese Journal of Applied Ecology, 26, 3827-3834(2015).
[104] H J Tang, W B Wu, P Yang et al. Recent progresses of land use and land cover change (LUCC) models. Acta Geographica Sinica, 64, 456-468(2009).
[105] Z P Tang, J Zhang, W D Liu et al. A comparative study on the differences of physical process and human process modeling. Acta Geographica Sinica, 65, 1581-1590(2010).
[106] Z Q Tang, J Cao, J Dang. Interaction between urbanization and eco-environment in arid area of northwest China with constrained water resources: A case of Zhangye City. Arid Land Geography, 37, 520-531(2014).
[107] D S Tian, B T Fu, Y P Lv et al. Effect of regional land-use change on soil organic carbon storage based on SD and CLUE-s model. Resources and Environment in the Yangtze Basin, 25, 613-620(2016).
[108] J Tratalos, R A Fuller, P H Warren et al. Urban form, biodiversity potential and ecosystem services. Landscape & Urban Planning, 83, 308-317(2007).
[109] O Varis, . Global urbanization and urban water: Can sustainability be afforded?. Water Science & Technology, 35, 21-32(1997).
[110] B Walker, S R Carpenter, J M Anderies et al. Resilience management in social-ecological systems: A working hypothesis for a participatory approach. Ecology & Society, 6, 840-842(2002).
[111] L Wan, Y Zhang, S Qi et al. A study of regional sustainable development based on GIS/RS and SD model: Case of Hadaqi industrial corridor. Journal of Cleaner Production, 142, 654-662(2016).
[112] C X Wang. Structural Interpretation and Development Transformation: A Comprehensive Analysis on Chinese Urbanization(2017).
[113] C X Wang, X G Cui, X Q Wang. Analysis of Chinese “urban agglomerations disease” phenomenon under new urbanization background. Urban Development Studies, 21, 12-17(2014).
[114] J Wang, K L Wang, M Y Zhang. Temporal-spatial variation in NDVI and drivers in hilly terrain of Southern China. Resources Science, 36, 1712-1723(2014).
[115] S J Wang, H Ma, Y B Zhao. Exploring the relationship between urbanization and the eco-environment: A case study of Beijing-Tianjin-Hebei region. Ecological Indicators, 45, 171-183(2014).
[116] W J Wang, L Y Ye, K Yang et al. Ecological risk analysis of land use change on the gentle hillside mountain urbanization construction based on GIS. Research of Soil and Water Conservation, 23, 358-362(2016).
[117] X F Wang, Y J Wang, Y F Li. Analysis and assessment model of environmental cumulative effects based on the integration of SD, CA and GIS methods and its application. Acta Scientiae Circumstantiae, 33, 2078-2086(2013).
[118] X J Wen, X J Yang, Z Q Wang. Assessment on the vulnerability of social-ecological systems in a mountainous city depending on multi-targets adaption. Geographical Research, 35, 299-312(2016).
[119] Y Weng. Spatiotemporal changes of landscape pattern in response to urbanization. Landscape and Urban Planning, 81, 341-353(2007).
[120] R L Wilby, G L W Perry. Climate change, biodiversity and the urban environment: A critical review based on London, UK. Progress in Physical Geography, 30, 73-98(2006).
[121] C J Wu. The core of geographical study: Man-earth areal system. Economic Geography, 11, 1-6(1991).
[122] C J Wu. Human-Earth Relations and Economic Layout(2008).
[123] L J Xie, S H Zhou, X P Yan. A review of the recent researches on China’s urbanization and global environmental change. Progress in Geography, 29, 952-960(2010).
[124] M X Xie, J Y Wang, K Chen. Coordinated development analysis of the “Resources-Environment-1)Ecology-Economy-Society” complex system in China. Sustainability, 8, 582-604(2016).
[125] G H Xu, Q S Ge, P Gong et al. Societal response to challenges of global change and human sustainable development. Chinese Science Bulletin, 58, 2100-2106(2013).
[126] J H Xu. Geomodeling Methods(2010).
[127] D Yan, A Li, X Nan et al. The study of urban land scenario simulation in mountain area based on modified Dyna-CLUE Model and SDM: A case study of the upper reaches of Minjiang River. Journal of Geo-Information Science, 18, 514-525(2016).
[128] L H Yang, L J Tong. Dynamic coupling and spatial disparity of economic development and water environmental quality in Songhua River Basin of Jilin Province, Northeast China. Chinese Journal of Applied Ecology, 24, 503-510(2013).
[129] X Y Yuan, Y J Wu, X M Li. Progress on unity coupling problems of watershed system dynamic model. Environmental Science and Management, 37, 68-72(2012).
[130] R Zeng, Y M Wei, Y Fan et al. System analysis of harmonization development among population, resource, environment and economy. Systems Engineering: Theory & Practice, 1-6(2000).
[131] J Zhang, T S Li, W K Wang. Quantitative analysis of coupling status of man-land relationship areal system in Weihe River Basin. Progress in Geography, 29, 733-739(2010).
[132] L Zhang, B F Wu, C Yuan et al. Urban development and environment change before and after three gorges project construction in Three Gorges Reservoir Area. Resources and Environment in the Yangtze Basin, 20, 317-324(2011).
[133] L W Zhang, H P Guo. Introduction to Bayesian Networks(2006).
[134] R T Zhang, H F Jiao. Coupling and coordination between urbanization and ecological environment in China. Journal of Arid Land Resources and Environment, 29, 12-17(2015).
[135] S W Zhang, P J Shi, Z J Wang. Analysis of coupling between urbanization and water resource and environment of inland river basin in arid region: A case study of Shiyang River Basin. Economic Geography, 32, 142-148(2012).
[136] Y Zhang, Q Y Yang, J Min. An analysis of coupling between the bearing capacity of the ecological environment and the quality of new urbanization in Chongqing. Acta Geographica Sinica, 71, 817-828(2016).
[137] Y J Zhang, W C Yi, B W Li. The Impact of urbanization on carbon emission: Empirical evidence in Beijing. Energy Procedia, 75, 2963-2968(2015).
[138] L Zhao, J Yang, C Li. System dynamic model for sustainable development of Wuhai City. Journal of Arid Land Resources and Environment, 24, 55-60(2016).
[139] Y Zhao, S Wang, C Zhou. Understanding the relation between urbanization and the eco-environment in China’s Yangtze River Delta using an improved EKC model and coupling analysis. Science of the Total Environment, 571, 862-875(2016).
[140] Y G Zhong, X J Jia, Y Qian et al. System Dynamics. 2nd ed(2013).
[141] X Zhou, J Han, X Meng et al. Comprehensive analysis of spatio-temporal dynamic patterns and driving mechanisms of cropland loss in a rapidly urbanizing area. Resources Science, 36, 1191-1202(2014).
[142] Q T Zuo. The embedded system dynamic model used to human-water system modeling. Journal of Natural Resources, 22, 268-274(2007).

Set citation alerts for the article
Please enter your email address