Predicting land use changes in northern China using logistic regression, cellular automata, and a Markov model

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ORIGINAL PAPER

Predicting land use changes in northern China using logistic regression, cellular automata, and a Markov model Min Wang 1 & Longyan Cai 2 & Hui Xu 3 & Shengli Zhao 3

Received: 4 July 2018 / Accepted: 18 November 2019 # Saudi Society for Geosciences 2019

Abstract Land use changes are complex processes affected by both natural and human-induced driving factors. This research is focused on simulating land use changes in southern Shenyang in northern China using an integration of logistic regression, cellular automata, and a Markov model and the use of fine resolution land use data to assess potential environmental impacts and provide a scientific basis for environmental management. A set of environmental and socio-economic driving factors was used to generate transition potential maps for land use change simulations in 2010 and 2020 using logistic regression. An average relative operating characteristic value of 0.824 was obtained, indicating the validity of the logistic regression model. The logistic–cellular automata (CA)–Markov model was calibrated by comparing the actual and simulated land use maps of 2010. A match of 83.7% was achieved between the predicted and actual maps of 2010, which represented a satisfactory calibration. This indicated that the integration of the logistic regression, CA, and Markov model has a high potential for simulating land use change in northern China. The calibrated hybrid model was implemented to obtain a land use map for 2020. The results showed a new wave of suburban development in the southwestern, west, and northwestern parts of the study area during 2010–2020. In addition, urban expansion has been accelerating, which is very likely to exacerbate the extensive environmental pollution currently existing in this area. Moreover, rapid urban expansion has resulted in significant decreases in forest areas and agricultural lands. Keywords Land use change . Logistic regression . Markov model . Cellular automata . Environmental influence

Introduction Land use change is a complex process that is affected by human activities and natural environmental changes (Arsanjani et al. 2011; Etemadi et al. 2018; Liu et al. 2017b; Memarian et al. 2012; Meyer and Turner 1994; Wang et al. 2019a; Watson 2000; Yang et al. 2014). After China’s reform and opening policies were implemented in 1978, this country has experienced rapid land use change. Rapid industrialization Responsible Editor: Nilanchal Patel * Longyan Cai [email protected] 1

College of the Environment and Ecology, Xiamen University, Xiamen 361102, China

2

Institute of Urban Environment, Chinese Academy of Sciences, Xiamen 361021, China

3

China Mobile Group Liaoning Company Limited, Shenyang 110179, China

and urbanization have resulted in significant environmental impacts, such as water and air pollution (Lin and Zhu 2018; Peng et al. 2016; Shao et al. 2006; Wang et al. 2019b). This is especially true in many cities, such as Shenyang city in northern China, which is a key internal trading center and has a reputation as