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AI-Driven Multiobjective Scheduling Algorithm of Flood Control Materials Based on Pareto Artificial Bee Colony

机译:基于帕累托人造蜜蜂殖民地的防洪材料抗旱性多目标调度算法

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摘要

Considering the competition between rescue points, we use artificial intelligence (AI) driven Internet of Thing (IoT) and regional material storage data to propose a multiobjective scheduling algorithm of flood control materials based on Pareto artificial bee colony (MSA_PABC). To address the scheduling of flood control materials, the multiple types of flood control materials, the multiple disaster sites, and entertain both emergency and fairness of rescue need to be considered comprehensively. The MSA_PABC has the constraints such as storage quantity constraint of warehouse materials, material demand constraint, and maximum transportation distance of flood control materials. We establish the scheduling optimization model of flood control materials for each disaster rescue point and the total scheduling optimization model for all flood control materials. Then, MSA_PABC uses the modified Pareto artificial bee colony algorithm to solve the multiobjective models. Three types of initialization strategies are proposed to calculate the fitness of each rescue point and the overall evaluation value of the food source. We propose the employ bee operations such as niche technology and local search of the variable neighborhood, the onlooker bee operations such as Pareto nondominated sorting and crossover operation, the scout bee operations such as maximum evolutionary threshold, and end elimination mechanism. Finally, our proposed solution obtains the nondominated solution set and its optimal solution. The experimental results show that no matter how the number of rescue points changes, MSA_PABC can find the nondominated solution set and optimal solution quickly. It improves the convergence rate of MSA_PABC and material satisfaction rate. Our solution also reduces the average maximum transportation distance, the standard deviation of maximum transportation distance, and the standard deviation of material satisfaction rate. The evaluation also demonstrates MSA_PABC outperforms the state-of-arts such as ABC (artificial bee colony), NSGA2 (nondominated sorting genetic algorithm 2), and MOPSO (multiobjective particle swarm optimization).
机译:考虑到救援点之间的竞争,我们使用人工智能(AI)驱动的东西(物联网)和区域材料存储数据,提出基于帕累托人造蜂菌落(MSA_PABC)的洪水控制材料的多目标调度算法。为了解决防洪材料的调度,多种洪水控制材料,多灾区和招待紧急和公平的救助需要全面地考虑。 MSA_PABC具有仓库材料,材料需求约束和防洪材料的最大运输距离等限制。我们为所有灾难救援点和所有防洪材料的总调度优化模型建立了调度优化模型。然后,MSA_PABC使用修改的帕累托人工蜂菌落算法来解决多目标型号。提出了三种类型的初始化策略来计算每个救援点的适应性和食物来源的整体评估值。我们提出了诸如利基技术和本地搜索变量邻域的蜂蜜蜂的操作,如帕累托NondoMinated排序和交叉操作,如诸如最大进化阈值等侦察蜜蜂的操作,以及最终消除机制。最后,我们提出的解决方案获得了NondoMinated解决方案集及其最佳解决方案。实验结果表明,无论救援点的数量如何变化,MSA_PABC都可以快速找到NondOMINED解决方案集和最佳解决方案。它提高了MSA_PABC的收敛速度和材料满意度。我们的解决方案还降低了平均最大运输距离,最大运输距离的标准偏差,以及材料满意度的标准偏差。评估还证明了MSA_PABC优于ABC(人造蜜蜂菌落),NSGA2(NondoMinate分类遗传算法2)和MOPSO(多目标粒子群)的最先进的现有语。

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