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Continuous Function Optimization Using Hybrid Ant Colony Approach with Orthogonal Design Scheme

机译:正交设计的混合蚁群算法连续函数优化

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A hybrid Orthogonal Scheme Ant Colony Optimization (OSACO) algorithm for continuous function optimization (CFO) is presented in this paper. The methodology integrates the advantages of Ant Colony Optimization (ACO) and Orthogonal Design Scheme (ODS). OSACO is based on the following principles: a) each independent variable space (IVS) of CFO is dispersed into a number of random and movable nodes; b) the carriers of pheromone of ACO are shifted to the nodes; c) solution path can be obtained by choosing one appropriate node from each IVS by ant; d) with the ODS, the best solved path is further improved. The proposed algorithm has been successfully applied to 10 benchmark test functions. The performance and a comparison with CACO and FEP have been studied.
机译:提出了一种用于连续函数优化(CFO)的混合正交方案蚁群优化(OSACO)算法。该方法融合了蚁群优化(ACO)和正交设计方案(ODS)的优势。 OSACO基于以下原则:a)CFO的每个独立变量空间(IVS)分散到多个随机和可移动节点中; b)将ACO信息素的载体转移到节点; c)可以通过蚂蚁从每个IVS中选择一个合适的节点来获得解决方案路径; d)使用ODS,可以进一步改善最佳求解路径。该算法已成功应用于10种基准测试功能。研究了其性能并与CACO和FEP进行了比较。

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