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A Binary Differential Evolution with Adaptive Parameters Applied to the Multiple Knapsack Problem

机译:具有自适应参数的二进制微分进化算法在多背包问题中的应用。

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This paper introduces an adaptive Binary Differential Evolution (aBDE) that self adjusts two parameters of the algorithm: perturbation and mutation rates. The well-known 0-1 Multiple Knapsack Problem (MKP) is addressed to validate the performance of the method. The MKP is a NP-hard optimization problem and the aim is to maximize the total profit subjected to the total weight in each knapsack that must be less than or equal to a given limit. Results were obtained using 11 instances of the problem with different degrees of complexity. The results were compared using aBDE, BDE, a standard Genetic Algorithm (GA), and its adaptive version (aGA). The results show that aBDE obtained better results than the other algorithms. This indicates that the proposed approach is an interesting and promising strategy for control of parameters and for optimization of complex problems.
机译:本文介绍了一种自适应二进制差分进化(aBDE),它可以自行调整算法的两个参数:摄动和变异率。解决了众所周知的0-1多重背包问题(MKP),以验证该方法的性能。 MKP是一个NP困难的优化问题,其目标是使每个背包中的总重量必须小于或等于给定限制的总利润最大化。使用11个不同复杂程度的问题实例获得了结果。使用aBDE,BDE,标准遗传算法(GA)及其自适应版本(aGA)对结果进行了比较。结果表明,aBDE比其他算法获得了更好的结果。这表明所提出的方法是用于控制参数和优化复杂问题的有趣且有前途的策略。

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