首页> 外文期刊>International Journal of Advanced Robotic Systems >Ant Colony Optimization Combined With Immunosuppression and Parameters Switching Strategy for Solving Path Planning Problem of Landfill Inspection Robots
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Ant Colony Optimization Combined With Immunosuppression and Parameters Switching Strategy for Solving Path Planning Problem of Landfill Inspection Robots

机译:蚁群优化结合免疫抑制和参数交换策略,用于解决垃圾填埋机器机器人路径规划问题

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摘要

An improved ant colony optimization (ACO) combined with immunosuppression and parameters switching strategy is proposed in this paper. In this algorithm, a novel judgment criterion for immunosuppression is introduced, that is, if the optimum solution has not changed for default iteration number, the immunosuppressive strategy is carried out. Moreover, two groups of parameters in ACO are switched back and forth according to the change of optimum solution as well. Therefore, the search space is expanded greatly and the problem of the traditional ACO such as falling into local minima easily is avoided effectively. The comparative simulation studies for path planning of landfill inspection robots in Asahikawa, Japan are executed, and the results show that the proposed algorithm has better performance characterized by higher search quality and faster search speed.
机译:本文提出了一种改进的蚁群优化(ACO)与免疫抑制和参数切换策略结合。 在该算法中,引入了一种用于免疫抑制的新颖判断标准,即,如果最佳解决方案没有改变默认迭代号,则进行免疫抑制策略。 此外,根据最佳解决方案的变化,ACO中的两组参数也可以来回切换。 因此,搜索空间大大扩展,有效地避免了诸如落入局部最小值的传统ACO的问题。 日本Asahikawa垃圾填埋场机器人路径规划的比较仿真研究,结果表明,该算法具有更高的搜索质量和更快的搜索速度的性能。

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