Assessment of future urban flood risk of Thailand's bangkok metropolis using geoprocessing and machine learning algorithm

被引:0
|
作者
Garshasbi, Duangporn [1 ]
Kitiphaisannon, Jarunya [1 ]
Wongbumru, Tanaphoom [2 ]
Thanvisitthpon, Nawhath Thanwiset [2 ]
机构
[1] Chandrakasem Rajabhat Univ, Fac Sci, Environm & Safety Management Program, Bangkok, Thailand
[2] Rajamangala Univ Technol Thanyaburi RMUTT, Sustainable Community & Urban Hlth Unit, SC UNIT, Khlong Hok, Thailand
关键词
Climate adaptation; Urbanization impact; Flood resilience; Dynamic indicators; Water drainage systems; Green infrastructure; CLIMATE-CHANGE; MANAGEMENT; MITIGATION; SYSTEMS; MODEL; WATER; CITY;
D O I
10.1016/j.indic.2024.100559
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Thailand's capital Bangkok is no stranger to floods and the disruption caused by repetitive flooding. Rapid urbanization, inadequate infrastructure, and climate change exacerbate the situation as urban flooding becomes increasingly more frequent and severe. The aim of this study is to assess future urban flood risk of Bangkok metropolitan at the district level for three future periods: 2033, 2043, and 2053. In the assessment of flood risk, the future values of six dynamic urban flood indicators are first projected using an integrative geoprocessing and random forest machine learning algorithm. The projected future indicator values are subsequently used to assess urban flood risk across Bangkok's 50 districts. The six dynamic indicators of urban flood risk are average monthly rainfall, wet days, vegetation cover, population density, flood waste, and anti-flood infrastructure. The findings indicate a steady increase in average monthly rainfall and wet days, highlighting the need for improved floodwater drainage systems and flood resilience. Ongoing urbanization and decreasing vegetation cover exacerbate flood risks. Densely populated areas remain highly susceptible to flooding, underscoring the significance of effective population and waste management strategies. This study also proposes three-timescale urban flood mitigation plans (10-, 20- and 30-year plans) to mitigate future urban flood risk, focusing on short-, medium-, and long-term measures. This research is the first to integrate geoprocessing with machine learning to enhance the prediction performance and accuracy of future urban flood risk projections.
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页数:22
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