山区泥石流区域预警降水降尺度框架

IF 3.3 3区 工程技术 Q2 GEOSCIENCES, MULTIDISCIPLINARY Natural Hazards Pub Date : 2023-11-08 DOI:10.1007/s11069-023-06279-1
Chenchen Qiu, Lijun Su, Xueyu Geng
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引用次数: 0

摘要

摘要山区泥石流减灾预警系统对减少人员伤亡至关重要。然而,降雨监测站的缺乏和卫星观测的粗分辨率给在数据匮乏地区建立这样的泥石流预警模型带来了挑战。为了提供一种有效的生成精细分辨率降水的方法,提出了一种基于机器学习(ML)的方法来建立降水与区域环境因子(REVs)之间的关系,包括归一化植被指数(NDVI)、数字高程模型(DEM)、地理位置(经纬度)和地表温度(LST)。该方法实现了3B42 TRMM降水数据的降尺度,提供了精细的时空分辨率降水数据。利用persiann -云分类系统-气候数据记录(PERSIANN-CCS-CDR)数据,利用地理差异分析(GDA)对缩小后的结果进行校正,然后将校正后的结果应用于吉荣藏布盆地的案例研究。在此基础上,计算了有效前期降水(P e) -日内降水(P o)的降雨阈值,并将这些阈值整合到敏感性图中,建立了泥石流预警模型。结果表明:(1)基于ml的方法可以有效地实现TRMM数据的降尺度;(2)校正后的TRMM数据优于原始TRMM和缩小后的TRMM数据,偏差分别减少了55%和57%;(3)纳入降雨阈值的综合模型在提供泥石流预警方面优于单一敏感性图。所建立的预警模型可以在区域尺度上对原有预警系统可能遗漏的泥石流进行动态预警。
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A precipitation downscaling framework for regional warning of debris flows in mountainous areas
Abstract A timely warning system for debris-flow mitigation in mountainous areas is vital to decrease casualties. However, the lack of rainfall monitoring stations and coarse resolution of satellite-based observations pose challenges for developing such a debris-flow warning model in data-scarce areas. To offer an effective method for the generation of precipitation with fine resolution, a machine learning (ML)-based approach is proposed to establish the relationship between precipitation and regional environmental factors (REVs), including normalized difference vegetation index (NDVI), digital elevation model (DEM), geolocations (longitude and latitude) and land surface temperature (LST). This approach enables the downscaling of 3B42 TRMM precipitation data, providing fine temporal and spatial resolution precipitation data. We use PERSIANN-Cloud Classification System-Climate Data Record (PERSIANN-CCS-CDR) data to calibrate the downscaled results using geographical differential analysis (GDA) before applying the calibrated results in a case study in the Gyirong Zangbo Basin. After that, we calculate the rainfall thresholds of effective antecedent rainfall ( P e )—intraday rainfall ( P o ) based on the calibrated precipitation and integrate these thresholds into a susceptibility map to develop a debris-flow warning model. The results show that (1) this ML-based approach can effectively achieve the downscaling of TRMM data; (2) calibrated TRMM data outperforms the original TRMM and downscaled TRMM data, reducing deviations by 55% and 57%; (3) the integrated model, incorporating rainfall thresholds, outperforms a single susceptibility map in providing debris-flow warnings. The developed warning model can offer dynamic warnings for debris flows that may have been missed by the original warning system at a regional scale.
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来源期刊
Natural Hazards
Natural Hazards 环境科学-地球科学综合
CiteScore
6.60
自引率
8.10%
发文量
568
审稿时长
3.5 months
期刊介绍: Natural Hazards is devoted to original research work on all aspects of natural hazards, the forecasting of catastrophic events, their risk management, and the nature of precursors of natural and/or technological hazards. Although the origin of hazards can be different sources and systems (atmospheric, hydrologic, oceanographic, volcanologic, seismic, neotectonic), the environmental impacts are equally catastrophic. This circumstance warrants a tight interaction between the different scientific and operational disciplines, which should enhance the mitigation of hazards. Hazards of interest to the journal are included in the following sections: general, atmospheric, climatological, oceanographic, storm surges, tsunamis, floods, snow, avalanches, landslides, erosion, earthquakes, volcanoes, man-made, technological, and risk assessment. The interactions between these hazards and society are also addressed in the journal and include risk governance, disaster response and preventive actions such as spatial planning and remedial measures.
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