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Multiple environmental factors analysis of flash flood risk in Upper Hanjiang River, southern China

机译:中国南方上汉江潮洪水风险的多元环境因素分析

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Identifying the environmental factors and analyzing the causal mechanism of flash floods help to manage the risk. Maximum 24-h precipitation (MP), digital elevation (DE), slope degree (SD), soil type (ST), drainage density (DD), and vegetation cover (VC) are selected as the risk factors of flash floods in this study. Precipitation is the important meteorological components in flash floods; thus spatial characteristics of precipitation trend have been analyzed by using Mann-Kendall tests, and a positive trend of precipitation in Upper Hanjiang River is detected. Then, association rule mining approach is proposed to investigate the multiple environmental factors of flash floods, in which both single and multiple dimension data mining have been conducted by Apriori algorithm. Considering the high rate of 5-year return period floods in the flash flood inventory, further association rule mining after sampling has been conducted in order to deeply mine the causal patterns of flash floods in different risk magnitudes. Results show that soil type, slope degree, and digital elevation are the dominant environmental factors of flash floods in the study area, and precipitation is one of the important causal factors in severe flash flood hazards. It is also highlighted that flash floods might easily occur even with a slight rainfall present due to the instability of sand clay and saturated soil moisture. The proposed novel use of field data and data mining has the potential for providing procedures and solutions for an effective interpretation of flash flood mechanism. The results are expected to be applicable for decision-making and sustainable management in flooding risk.
机译:识别环境因素和分析山洪的因果机制有助于管理风险。最大24小时的沉淀(MP),数字高程(DE),坡度(SD),土壤类型(ST),排水密度(DD),和植被(VC)被选择作为洪水的在此的危险因素学习。降水是在山洪的重要气象部分;的沉淀趋势从而空间特性已经通过使用曼 - 肯德尔检验进行分析,并且当检测到降水的汉水上游的积极趋势。然后,关联规则挖掘的方法,提出了调查山洪暴发,其中单个或多个维度的数据挖掘已经被Apriori算法进行的多种环境因素。考虑到在山洪库存5年一遇洪水率高,采样经过进一步的关联规则挖掘已经为了进行深入矿井在不同的风险大小山洪暴发的因果模式。结果表明,土壤类型,坡度和数字高程是山洪暴发的主要环境因素在研究区,降水量严重山洪灾害的重要诱发因素之一。它也强调,山洪暴发可能很容易有轻微的降雨存在,即使出现因砂土的不稳定性和饱和的土壤湿度。所提出的新的使用领域的数据和数据挖掘的具有提供程序和解决方案的山洪机制的有效解释的潜力。结果预计将适用于洪水风险决策和可持续管理。

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