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Multi-objective optimal design for flood risk management with resilience objectives

机译:具有复原力目标的洪水风险管理多目标优化设计

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摘要

In flood risk management, the divergent concept of resilience of a flood defense system cannot be fully defined quantitatively by one indicator and multiple indicators need to be considered simultaneously. In this paper, a multi-objective optimization (MOO) design framework is developed to determine the optimal protection level of a levee system based on different resilience indicators that depend on the probabilistic features of the flood damage cost arising under the uncertain nature of rainfalls. An evolutionary-based MOO algorithm is used to find a set of non-dominated solutions, known as Pareto optimal solutions for the optimal protection level. The objective functions, specifically resilience indicators of severity, variability and graduality, that account for the uncertainty of rainfall can be evaluated by stochastic sampling of rainfall amount together with the model simulations of incurred flood damage estimation for the levee system. However, these model simulations which usually require detailed flood inundation simulation are computationally demanding. This hinders the wide application of MOO in flood risk management and is circumvented here via a surrogate flood damage modeling technique that is integrated into the MOO algorithm. The proposed optimal design framework is applied to a levee system in a central basin of flood-prone Jakarta, Indonesia. The results suggest that the proposed framework enables the application of MOO with resilience objectives for flood defense system design under uncertainty and solves the decision making problems efficiently by drastically reducing the required computational time.
机译:在洪水风险管理中,一个指标不能完全定量地定义防洪系统的复原力的分歧概念,需要同时考虑多个指标。本文建立了一个多目标优化(MOO)设计框架,根据不同的弹性指标来确定堤防系统的最佳保护水平,这些指标取决于降雨不确定性导致的洪灾损失成本的概率特征。基于进化的MOO算法用于查找一组非支配解,称为最优保护级别的Pareto最优解。可以通过对降雨量进行随机抽样以及对堤防系统的洪灾破坏估算模型进行评估,来评估考虑降雨不确定性的目标函数,尤其是严重性,可变性和渐进性的弹性指标。但是,这些通常需要详细的洪水淹没模拟的模型模拟在计算上要求很高。这阻碍了MOO在洪水风险管理中的广泛应用,并且在此处通过集成到MOO算法中的替代洪水损害建模技术来规避。拟议的最佳设计框架已应用于印度尼西亚雅加达易发洪水的中央盆地的堤防系统。结果表明,所提出的框架使得具有弹性目标的MOO能够在不确定性下用于防洪系统设计,并通过大大减少所需的计算时间来有效地解决决策问题。

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