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Construction of flood loss function for cities lacking disaster data based on three-dimensional (object-function-array) data processing

机译:基于三维(对象函数阵列)数据处理缺乏灾难数据的城市洪水损失函数的构建

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Reliable loss estimation is crucial for flood risk management.As the current standard form of flood loss assessment,it is difficult to fit the Flood Inundated Depth-Loss Rate Function (FILF) due to the lack of historical data in most inland arid and semi-arid plain cities.To address the current trend of increasing flood risk,it has become increasingly important to develop a scientific and reasonable loss assessment function or model for these cities.Therefore,the flood loss rate data of several cities were transferred through amplified characteristic indices to form a loss rate transfer vector of cities lacking disaster data based on the analogy principle.Three-dimensional data processing rules were then set,including the priority sequence of object dimensional variance and the greatest correlation coefficient (CC) of the joint dimension of function and array.Finally,a FILF of cities lacking disaster data was constructed after three-level optimization.The FILF of eight property types was calculated taking Zhengzhou City,China,as the study area.The optimal function and array dimensions were F_6 (Biquadratic) and D_4-D_6,respectively.All CCs exceeded 0.9935,with an average of 0.9971.The joint fitting results also showed that the function dimension was more sensitive to the FILF than the array dimension.The simulated total flood loss of the Jinshui District in 20 years was 2.46 billion yuan,and there was clear spatial disparity in economic loss.This study is expected to resolve the problem of the absence of a loss function in cities or regions lacking data to support urban flood risk management.
机译:可靠的损失估计对于洪水风险管理至关重要。目前的洪水损失评估标准形式,由于大多数内陆干旱和半的历史数据缺乏历史数据,难以遵守洪水淹没的深度损失率函数(FILF)干旱普遍的城市。解决当前洪水风险的目前趋势,为这些城市制定科学合理的损失评估函数或模型而越来越重要。因此,通过放大的特征指数转移了几个城市的洪水损失数据形成基于类比原理的缺乏灾难数据的城市的损失率传递向量。然后将三维数据处理规则设置,包括对象尺寸方差的优先序列和功能的关节尺寸的最大相关系数(CC)和阵列。最后,三级优化后缺乏灾难数据的城市的Filf。八种物业类型的Filf如所计算的郑州市作为研究区。最佳功能和阵列尺寸分别为F_6(双层)和D_4-D_6。所有CCS超过0.9935,平均为0.9971.联合拟合结果也表明了功能维度比阵列维度更敏感。20年内金水区的模拟总洪水损失为24.6亿元,经济损失存在明显的空间差异。预计研究预计将解决问题缺乏缺乏数据以支持城市洪水风险管理的城市或地区的损失函数。

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