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Location-allocation modeling for emergency evacuation planning with GIS and remote sensing: A case study of Northeast Bangladesh

机译:GIS及遥感应急疏散规划的位置分配建模 - 以孟加拉国东北部为例

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This work developed models to identify optimal spatial distribution of emergency evacuation centers (EECs) such as schools, colleges, hospitals, and fire stations to improve flood emergency planning in the Sylhet region of northeastern Bangladesh. The use of location-allocation models (LAMs) for evacuation in regard to flood victims is essential to minimize disaster risk. In the first step, flood susceptibility maps were developed using machine learning models (MLMs), including: Levenberg–Marquardt back propagation (LM-BP) neural network and decision trees (DT) and multi-criteria decision making (MCDM) method. Performance of the MLMs and MCDM techniques were assessed considering the area under the receiver operating characteristic (AUROC) curve. Mathematical approaches in a geographic information system (GIS) for four well-known LAM problems affecting emergency rescue time are proposed: maximal covering location problem (MCLP), the maximize attendance (MA), p-median problem (PMP), and the location set covering problem (LSCP). The results showed that existing EECs were not optimally distributed, and that some areas were not adequately served by EECs (i.e., not all demand points could be reached within a 60-min travel time). We concluded that the proposed models can be used to improve planning of the distribution of EECs, and that application of the models could contribute to reducing human casualties, property losses, and improve emergency operation.
机译:这项工作开发了模型,以确定学校,学院,医院和消防站等紧急疏散中心(EEC)的最佳空间分布,以改善孟加拉国东北部Sylhet地区的洪水应急计划。在洪水受害者方面使用地点分配模型(LAMS)对于最大限度地减少灾害风险至关重要。在第一步中,使用机器学习模型(MLMS)开发了洪水敏感性图,包括:Levenberg-Marquardt回到传播(LM-BP)神经网络和决策树(DT)和多标准决策(MCDM)方法。考虑到接收器操作特征(Auroc)曲线下的区域评估MLMS和MCDM技术的性能。提出了一种影响紧急救援时间的四个众所周知的LAN问题的地理信息系统(GIS)中的数学方法:最大覆盖位置问题(MCLP),最大化考勤(MA),P-MIDIAN问题(PMP)和位置设置涵盖问题(LSCP)。结果表明,现有的EEC没有最佳分布,并且某些区域没有得到EECS(即,并非所有需求点都可以在60分钟的旅行时间内达成)。我们得出结论,拟议的模型可用于改善eecs分布的规划,并且该模型的应用可能有助于减少人类伤亡,财产损失,提高紧急操作。

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