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Multi-objective Emergency Resource Dispatch Based on Coevolutionary Multiswarm Particle Swarm Optimization

机译:基于共拟合多野粒子群优化的多目标应急资源调度

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Emergency resource dispatch plays a significant role in the occurrence of emergency events. An efficient schedule solution not only can deliver he required resources in time, but also can reduce the loss in the disaster area. Recently, many scholars are dedicated to dealing with emergency resource dispatch problem (ERDP) by constructing a model with one objective (e.g., the cost to transport resources or the satisfaction degree of people in the disaster area) and solving the model with single objective optimization algorithms. In this paper, we build a multi-objective model that considers both the cost objective and the satisfaction objective, which takes into account multiple retrieval depots and multiple kinds of resources. We propose to solve this multi-objective ERDP optimization model via the recently famous coevolutionary multiswarm particle swarm optimization (CMPSO) algorithm. Based on multiple populations for multiple objectives (MPMO) framework, the CMPSO algorithm uses two populations to optimize the above two objectives respectively, and leads particles to find Pareto optimal solutions by storing information of different populations in a shared archive. We construct ERDP with various scales to validate the feasibility of the applied CMPSO algorithm. Moreover, by setting the satisfaction objective as the constraint, we also compare the results obtained by CMPSO with those obtained by constrained single objective particle swarm optimization (PSO) algorithm. Experimental results show that: 1) the nondominated solutions obtained by CMPSO perform well in both convergence and diversity on two objectives: 2) the results on the cost objective obtained by CMPSO are generally superior to those of PSO under same degree of satisfaction.
机译:紧急资源派遣在紧急事件发生中起着重要作用。有效的时间表解决方案不仅可以及时提供所需资源,但也可以减少灾区的损失。最近,许多学者致力于通过构建一个目标(例如,运输资源成本或灾区人员的满意度)并解决单观客观优化来处理紧急资源调度问题(ERDP)算法。在本文中,我们建立了一个多目标模型,考虑了成本目标和满足目标,这考虑了多种检索仓库和多种资源。我们建议通过最近着名的共同群体粒子群优化(CMPSO)算法来解决这一多目标ERDP优化模型。基于多个目标的多个群体(MPMO)框架,CMPSO算法使用两个群体分别优化上述两个目标,并通过在共享存档中存储不同群体的信息来引导粒子来找到帕累托最佳解决方案。我们使用各种缩放构建ERDP以验证应用的CMPSO算法的可行性。此外,通过将满意物的满意物设置为约束,我们还比较CMPSO获得的结果与由受约束的单个物镜粒子群优化(PSO)算法获得的结果。实验结果表明:1)通过CMPSO获得的NondOMINOT溶液在两个目标上的收敛和多样性中表现出色:2)CMPSO获得的成本目标的结果通常优于PSO在相同程度的满意度。

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