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Spatiotemporal variation analysis of regional flood disaster resilience capability using an improved projection pursuit model based on the wind-driven optimization algorithm

机译:基于风动优化算法的改进投影寻踪模型的区域洪水抗灾能力时空变化分析

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Due to the weak methods available for evaluation of the resilience of regional flood disaster systems and the lack of research on the driving mechanism of resilience, by exploring the principles of regional flood disaster resilience and constructing a suitable evaluation index system, the wind driven optimization (WDO) algorithm was introduced, and an improved projection pursuit (PP) evaluation model of flood disaster resilience was proposed. Twelve farms under the Heilongjiang Agricultural Reclamation Hongxinglong Administration Bureau were included in the research area. A total of 43 primary indicators were selected from four criteria to describe the natural environment, culture, society, economic development and flood control technologies. The R clustering factor analysis method was used to determine 15 optimal indexes. The improved PP model based on the WDO algorithm (WDO-PP) was used to evaluate the flood disaster resilience of 12 farms. The results showed that the number of farms with a level IV rating on flood resilience decreased from 25% to 8.3% from 2002 to 2009. In 2009-2016, with the exception of the Bawuer and Shuguang farms, the flood disaster resilience index decreased, and that of the remaining farms increased. In 2002-2016, the Wujiuqi, Shuangyashan, Shuguang and Hongqiling farms in the central region of the Hongxinglong Administration Bureau were less resilient to disasters, and the farms that responded better to flood disasters were mainly located in the eastern or western Hongxinglong Administration Bureau near a river. Further analysis shows that the forest coverage rate, paddy field coverage ratio, shelter forest area ratio, proportion of primary industry, agricultural water use efficiency, and irrigation and drainage capacity were the key drivers of the flood disaster resilience in the Hongxinglong Management Bureau. Based on the Rastrigin and Schaffer functions, the results show that the success rate of the WDO algorithm is 100% over 10 iterations of the optimization calculation of the test function, while the success rate of the other two algorithms is relatively inadequate; however, in terms of value and standard deviation, both are better than adaptive particle swarm optimization (APSO) and adaptive genetic algorithm (AGA) algorithms. Moreover, in the convergence curve, the WDO algorithm converges fast, the number of iterations can achieve the optimal effect on average 3-5 times, and the AGA and APSO algorithms need more than 40 iterations to achieve the best-seeking effect. Taking the index of agricultural water use efficiency in Bawuer farm as an example, the index weight is greater than 60% and the utilization rate of agricultural water is more than 98%, which is closer to reality. Therefore, the evaluation results of the flood disaster resilience evaluation model proposed in this study are more accurate: WDO-PP>(adaptive genetic algorithm) AGA-PP>(adaptive particle swarm optimization algorithm)APSO-PP. In conclusion, the WDO-PP model has certain reference value for flood disaster recovery, monitoring and early warning. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于区域洪水灾害系统的复原力评估方法比较薄弱,并且缺乏对复原力驱动机制的研究,因此,通过探索区域洪水灾害复原力的原理并构建合适的评估指标体系,进行了风动力优化(引入了WDO算法,提出了一种改进的洪水抗灾力投影追踪评价模型。研究区包括黑龙江省农垦红星龙管理局的十二个农场。从四个标准中选择了总共43个主要指标来描述自然环境,文化,社会,经济发展和防洪技术。 R聚类因子分析方法用于确定15个最佳指标。基于WDO算法(WDO-PP)的改进PP模型被用于评估12个农场的洪灾抗灾能力。结果显示,从2002年到2009年,抗洪等级四级的农场数量从25%下降到8.3%。2009-2016年,除巴乌尔和曙光农场外,洪灾抗灾指数下降,其余农场的面积则增加了。在2002年至2016年期间,红星隆管理局的中部地区的五九旗,双鸭山,曙光和红旗岭农场对灾害的抵抗力较弱,对洪灾响应较好的农场主要位于红星隆管理局的东部或西部一条河。进一步的分析表明,森林覆盖率,水田覆盖率,防护林面积率,第一产业比重,农业用水效率,灌溉排水能力是红星龙管理局抗洪能力的关键驱动力。基于Rastrigin和Schaffer函数,结果表明WDO算法在测试函数优化计算的10次迭代中的成功率为100%,而其他两种算法的成功率则相对不足;但是,在值和标准差方面,两者均优于自适应粒子群优化(APSO)和自适应遗传算法(AGA)算法。此外,在收敛曲线上,WDO算法收敛速度很快,迭代次数平均可以达到3-5次的最佳效果,而AGA和APSO算法需要进行40次以上的迭代才能达到最佳效果。以巴吾尔农场的农业用水效率指标为例,该指标权重大于60%,农业用水利用率大于98%,更加接近实际。因此,本研究提出的洪水灾害抗灾力评估模型的评估结果更加准确:WDO-PP>(自适应遗传算法)AGA-PP>(自适应粒子群优化算法)APSO-PP。综上所述,WDO-PP模型对洪水灾害的恢复,监测和预警具有一定的参考价值。 (C)2019 Elsevier Ltd.保留所有权利。

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