Modified invasive weed optimization-based path exploration for mobile robot

IF 0.8 Q4 ROBOTICS
Ipsit Kumar Dhal, Saroj Kumar, D. Parhi
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引用次数: 0

Abstract

PurposeThis study aims to modify a nature-based numerical method named the invasive weed optimization (IWO) method for mobile robot path planning in various complex environments.Design/methodology/approachThe existing IWO method is quick in converging to a feasible solution but in a complex environment; it takes more time as well as computational resources. So, in this paper, the computational part of this artificial intelligence technique is modified with the help of recently developed evolution algorithms like particle swarm optimization, genetic algorithm, etc. Some conditional logic statements were used while doing sensor-based mapping for exploring complex paths. Implementation of sensor-based exploration, mathematical IWO method and prioritizing them for better efficiency made this modified IWO method take complex dynamic decisions.FindingsThe proposed modified IWO is better for dynamic obstacle avoidance and navigating a long complex map. The deviation of results in simulation and experiments is less than 5.5%, which validates a good agreement between simulation and real-time testing platforms.Originality/valueAs per a deep literature review, it has found that the proposed approach has not been implemented on the Khepera-III robot for smooth motion planning. Here a dynamic obstacle mapping feature is implemented. A method to selectively distribute seeds instead of a random normal distribution is also implemented in this work. The modified version of IWO is coded in MATLAB and simulated through V-Rep simulation software. The integration of sensors was done through logical conditioning. The simulation results are validated using real-time experiments.
基于改进入侵杂草优化的移动机器人路径探索
目的本研究旨在修改一种基于自然的数值方法,即入侵杂草优化(IWO)方法,用于移动机器人在各种复杂环境中的路径规划。设计/方法论/方法现有的IWO方法在复杂的环境中快速收敛到可行的解决方案;它需要更多的时间和计算资源。因此,在本文中,借助最近开发的进化算法,如粒子群优化、遗传算法等,对这种人工智能技术的计算部分进行了修改。在进行基于传感器的映射以探索复杂路径时,使用了一些条件逻辑语句。基于传感器的探索、数学IWO方法的实现以及为提高效率而对它们进行优先级排序,使这种改进的IWO方法能够做出复杂的动态决策。发现所提出的改进IWO更适合动态避障和在复杂的长地图上导航。仿真与实验结果的偏差小于5.5%,验证了仿真与实时测试平台之间的良好一致性。独创性/价值根据深入的文献综述,发现所提出的方法尚未在Khepera III机器人上实现,用于平滑运动规划。这里实现了动态障碍物映射功能。本文还实现了一种选择性地分配种子而不是随机正态分布的方法。在MATLAB中对IWO的修改版本进行了编码,并通过V-Rep仿真软件进行了仿真。传感器的集成是通过逻辑条件进行的。通过实时实验验证了仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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