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Adaptive neuro‐fuzzy inference system approach for urban sustainability assessment: A China case study

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  • Yongtao Tan
  • Chenyang Shuai
  • Liudan Jiao
  • Liyin Shen

Abstract

Urbanization, especially in developing countries, has led to numerous concerns, such as air pollution, traffic congestion and habitat destruction. Within this context, it is important to evaluate urban development as sustainable, and various sustainability assessment methods have been developed, including fuzzy logic approaches. However, predefined fuzzy rules and simple linear membership functions were used, which are largely based on the knowledge of subject experts. Therefore, this paper aims to introduce an adaptive neuro‐fuzzy inference systems (ANFIS) approach for urban sustainability assessment. With collected training samples from the Urban China Initiative, and the ANFIS approach was used to rank 185 selected cities in China. The results show that the ANFIS approach is appropriate for assessing urban sustainability, and the nonlinear membership functions fit the training samples better than the linear membership functions. Further discussion indicates that future research on sustainability assessment should be more integrated.

Suggested Citation

  • Yongtao Tan & Chenyang Shuai & Liudan Jiao & Liyin Shen, 2018. "Adaptive neuro‐fuzzy inference system approach for urban sustainability assessment: A China case study," Sustainable Development, John Wiley & Sons, Ltd., vol. 26(6), pages 749-764, November.
  • Handle: RePEc:wly:sustdv:v:26:y:2018:i:6:p:749-764
    DOI: 10.1002/sd.1744
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    Cited by:

    1. Saeed Nosratabadi & Amir Mosavi & Ramin Keivani & Sina Ardabili & Farshid Aram, 2020. "State of the Art Survey of Deep Learning and Machine Learning Models for Smart Cities and Urban Sustainability," Papers 2010.02670, arXiv.org.
    2. Fang‐Li Ruan & Liang Yan, 2022. "Challenges facing indicators to become a universal language for sustainable urban development," Sustainable Development, John Wiley & Sons, Ltd., vol. 30(1), pages 41-57, February.

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