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A Hierarchical Differential Evolution Algorithm with Multiple Sub-population Parallel Search Mechanism

机译:具有多个子群体并行搜索机制的分层差分演进算法

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Differential evolution (DE) algorithm is a simple yet powerful population-based stochastic search technique for solving optimization problems in the continuous search domain. However, the performance of the canonical DE algorithm crucially depends on appropriately choosing mutation strategies and their associated parameter settings. Unsuitable choice of trial vector generation manners and control parameter values may deteriorate the search process. In this paper, a new version of the differential evolution algorithm is reported, in which both diverse mutation operators and mutation rates are heuristically assigned to various individuals. During the iteration process, the whole populations are classified into subgroups by sufficiently analyzed the individuals' state. Multiple population parallel search policy can effectively expedite the convergence of the proposed algorithm. Diverse mutation operators with distinct characters are assigned to relative subgroups, which are considered to be a better balance between exploration and exploitation. The empirical values and negative feedback technique are used in parameters selection, which relieve the burden of specifying the parameters values. The experimental study of the new approach is test on a set of standard benchmark functions and compares with traditional differential evolution which has a better performance.
机译:差分演进(DE)算法是一种简单而强大的基于人口的随机搜索技术,用于解决连续搜索域中的优化问题。 However, the performance of the canonical DE algorithm crucially depends on appropriately choosing mutation strategies and their associated parameter settings.不适合的试验载体方式和控制参数值可能会恶化搜索过程。在本文中,报告了一种新版本的差分演进算法,其中各种突变运算符和突变率都是启动到各个人的突变率。在迭代过程中,通过充分分析个人状态,整个人群分为子组。多种人口并行搜索策略可以有效地加快所提出的算法的收敛性。具有不同字符的不同突变算子被分配给相对亚组,这些副组被认为是勘探和剥削之间的更好平衡。经验值和负反馈技术用于参数选择,可缓解指定参数值的负担。新方法的实验研究是在一组标准基准函数上进行测试,并与传统差分演变进行比较,具有更好的性能。

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