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首页> 外文期刊>The International Journal of Intelligent Control and Systems >Modified Particle Swarm Robotic Odor Source Localization in Dynamic
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Modified Particle Swarm Robotic Odor Source Localization in Dynamic

机译:动态条件下的改进粒子群机器人气味源定位

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This paper presents a problem of odor source localization in a dynamic environment, which means the odor distribution is changing over time. Odor source localization is an interesting application in dynamic problems. Modified Particle Swarm Optimization?is a well-known algorithm, which can continuously track a changing optimum over time.?PSO can be improved or adapted by incorporating the change detection and responding mechanisms for solving dynamic problems. Charged PSO which is another extension of the PSO has also been applied to solve dynamic problems. We will adopt two types of PSO modification concepts to develop a new algorithm in order to control autonomous vehicles in more realistic environment where a speed limitation of the robot behavior and collision avoidance mechanism should be taken into consideration as well as the effect of noise and threshold value for the odor sensor response, also positioning error of GPS sensor of robot. Simulations illustrate that the new approach can solve such dynamic environment in Gaussian and Advection-Diffusion odor model problems.
机译:本文提出了在动态环境中气味源定位的问题,这意味着气味分布随时间变化。气味源本地化在动态问题中是一个有趣的应用。改进的粒子群优化算法是一种众所周知的算法,可以随着时间的推移连续跟踪变化的最优值。通过结合变化检测和响应机制来解决动态问题,可以改进或调整PSO。作为PSO的另一个扩展,带电PSO也已用于解决动态问题。我们将采用两种类型的PSO修改概念来开发新算法,以便在更现实的环境中控制自动驾驶汽车,在这种环境中,应考虑机器人行为的速度限制和避免碰撞的机制以及噪声和阈值的影响气味传感器响应的值,以及机器人GPS传感器的定位误差。仿真表明,该新方法可以解决高斯和对流扩散气味模型问题中的这种动态环境。

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