Risk-driven composition decoupling analysis for urban flooding prediction in high-density urban areas using Bayesian-Optimized LightGBM
Shiqi Zhou(Tongji University), Zhiqiang Wu(Tianjin Medical University Cancer Institute and Hospital), Zhiyu Liu(Tongji University), Shuaishuai Xue(Nanjing Audit University), Wei Gan(Tongji University), Zichen Zhao(Tongji University), Xingqiang Ni(Flower Hospital), Dongqing Zhang(Guangdong University of Petrochemical Technology), Mo Wang(Guangzhou University), Mimi Zhou(Tongji University), Bernhard Müller(Technische Universität Dresden)
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