刘海知,徐辉,包红军,宋巧云,鲁恒,闫旭峰,狄靖月,杨寅. 2024. 基于数据驱动的山区暴雨山洪水沙灾害易发区早期识别方法研究. 气象学报,82(2):257-273. DOI: 10.11676/qxxb2024.20230075
引用本文: 刘海知,徐辉,包红军,宋巧云,鲁恒,闫旭峰,狄靖月,杨寅. 2024. 基于数据驱动的山区暴雨山洪水沙灾害易发区早期识别方法研究. 气象学报,82(2):257-273. DOI: 10.11676/qxxb2024.20230075
Liu Haizhi, Xu Hui, Bao Hongjun, Song Qiaoyun, Lu Heng, Yan Xufeng, Di Jingyue, Yang Yin. 2024. Early recognition of the mountainous areas susceptible to flash flood and sediment disasters during rainstorms: Data-driven methods. Acta Meteorologica Sinica, 82(2):257-273. DOI: 10.11676/qxxb2024.20230075
Citation: Liu Haizhi, Xu Hui, Bao Hongjun, Song Qiaoyun, Lu Heng, Yan Xufeng, Di Jingyue, Yang Yin. 2024. Early recognition of the mountainous areas susceptible to flash flood and sediment disasters during rainstorms: Data-driven methods. Acta Meteorologica Sinica, 82(2):257-273. DOI: 10.11676/qxxb2024.20230075

基于数据驱动的山区暴雨山洪水沙灾害易发区早期识别方法研究

Early recognition of the mountainous areas susceptible to flash flood and sediment disasters during rainstorms: Data-driven methods

  • 摘要: 针对山洪灾害防治研究工作中只关注暴雨-洪水的作用,忽视泥沙淤积导致的洪水-泥沙耦合致灾的问题,重建考虑松散固体物源储量空间异质性的影响因子体系,面向山区小流域复杂下垫面环境进行敏感性分析,利用地理信息空间分析、多重共线性检验计算影响因子贡献度指标,通过不同类型的贡献度-集成学习耦合算法对阿坝州5250条小流域山洪水沙灾害易发度进行识别,构建基于数据驱动的山区暴雨山洪水沙灾害早期识别方法。结果表明:山洪水沙灾害在空间上表现出一定的聚集性,影响因子特定区间对于灾害发生具有更高敏感性,部分影响因子对于灾害发生的敏感性规律具有相似性。阿坝州东部、中南部部分地区以及西北部少部分地区为高易发区,与固体物源累积高频区较为接近,洪水-泥沙耦合致灾概率相对较大,较低和低易发区主要分布在阿坝州西部和西南部地区,与固体物源累积高频区重叠度较小,洪水在致灾过程中起主导作用可能性相对较大。相对于山洪风险调查评估研究结果,基于数据驱动的山洪水沙灾害易发性早期识别结果的高易发区灾害密度更大,高风险覆盖度提高23.2—45.4个百分点。

     

    Abstract: In the field of flash flood disaster prevention study, great attention has been paid on the role of heavy rainfall and flooding, yet the coupling of flooding and sediment caused by silt deposition is largely neglected. This study revises the impact factor system by considering spatial heterogeneity of loose materials deposit, performs sensitivity analysis on complex underlying surface environment in mountainous watersheds, and utilizes the spatial analysis in geographic information systems and multicollinearity test to calculate the contribution indexes of various impact factors. A method for early identification of flash flood disaster is constructed by coupling different types of contribution-integrated learning algorithms, which is applied to identify the proneness to flash flood disaster in 5250 small watersheds in Aba prefecture. The results show that flash flood disasters exhibit certain aggregation in space, and the impact factors within specific ranges are more sensitive to disaster occurrence. Some impact factors share similar sensitivity patterns towards disaster occurrence. The eastern and central-southern areas and a small part of the northwestern area of Aba prefecture are highly prone areas, which are relatively close to the high-frequency area of solid material source, where relatively larger probability of flooding-sediment coupling disaster can be found. Lower prone areas are primarily distributed in the western and southwestern regions of Aba prefecture, where the overlap with the high-frequency area of solid matter source is relatively small and the flood tends to play a dominant role in the disaster process. Compared with the results of flash flood risk survey and assessment, the disaster density in high-prone area derived from results of data-driven early identification method is larger, and the high-risk coverage is increased by 23.2—45.4 percent.

     

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