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首页> 外文期刊>International Journal on Smart Sensing and Intelligent Systems >RANGED SUBGROUP PARTICLE SWARM OPTIMIZATION FOR LOCALIZING MULTIPLE ODOR SOURCES
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RANGED SUBGROUP PARTICLE SWARM OPTIMIZATION FOR LOCALIZING MULTIPLE ODOR SOURCES

机译:局部散乱粒子群优化算法,用于寻找多个气味源

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摘要

A new algorithm based on Modified Particle Swarm Optimization (MPSO) that follows is a local gradient of a chemical concentration within a plume and follows the direction of the wind velocity is investigated. Moreover, the niche or parallel search characteristic is adopted on MPSO to solve the multi-peak and multi-source problem. When using parallel MPSO, subgroup of robot is introduced then each subgroup can locate the odor source. Unfortunately, there is a possibility that more that one subgroup locates one odor sources. This is inefficient because other subgroups locate other source, then we proposed a ranged subgroup method for coping for that problem, then the searching performance will increase. Finally ODE (Open Dynamics Engine) library is used for physical modeling of the robot like friction, balancing moment and others so that the simulation adequate to accurately address the real life scenario.
机译:基于改进粒子群优化算法(MPSO)的新算法是研究羽流中化学物质浓度的局部梯度并遵循风速的方向。此外,在MPSO上采用利基或并行搜索特性来解决多峰和多源问题。当使用并行MPSO时,会引入机器人子组,然后每个子组可以定位气味源。不幸的是,有可能一个小组中的一种气味源更多。这是低效率的,因为其他子组会定位其他源,然后我们提出了一种解决该问题的远程子组方法,然后搜索性能将会提高。最后,ODE(开放动力引擎)库用于机器人的物理建模,例如摩擦,平衡力矩等,因此仿真足以准确地解决现实生活中的情况。

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