4.6 Article

A Spatial Improved-kNN-Based Flood Inundation Risk Framework for Urban Tourism under Two Rainfall Scenarios

Journal

SUSTAINABILITY
Volume 13, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/su13052859

Keywords

GIS; Landsat TM; likelihood; sensitivity analysis; uncertainty

Funding

  1. Research on Practical Teaching Mode of Tourism Major in Higher Vocational Education Based on CBE Mode [FG2019131]
  2. Research on the Design and Application of Smart Classroom Mode under the Background of Internet + Education [186140055]
  3. Seeing Beautiful China in Huzhou: Evolution and Development of Villages in Tourist Attractions in Huzhou [20hzghy026]

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This study proposes an innovative spatial framework integrating improved kNN, RS, and GIS to evaluate flood inundation risk for tourism sites. The framework provides baseline information for urban planners and policymakers to address challenges posed by climate extremes, offering a cost-effective approach for assessing risk in the tourism industry under climate change.
Urban tourism has been suffering socio-economic challenges from flood inundation risk (FIR) triggered by extraordinary rainfall under climate extremes. The evaluation of FIR is essential for mitigating economic losses, and even casualties. This study proposes an innovative spatial framework integrating improved k-nearest neighbor (kNN), remote sensing (RS), and geographic information system (GIS) to analyze FIR for tourism sites. Shanghai, China, was selected as a case study. Tempo-spatial factors, including climate, topography, drainage, vegetation, and soil, were selected to generate several flood-related gridded indicators as inputs into the evaluation framework. A likelihood of FIR was mapped to represent possible inundation for tourist sites under a moderate-heavy rainfall scenario and extreme rainfall scenario. The resultant map was verified by the maximum inundation extent merged by RS images and water bodies. The evaluation outcomes deliver the baseline and scientific information for urban planners and policymakers to take cost-effective measures for decreasing and evading the pressure of FIR on the sustainable development of urban tourism. The spatial improved-kNN-based framework provides an innovative, effective, and easy-to-use approach to evaluate the risk for the tourism industry under climate change.

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