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Complete Path Planning for a Tetris-Inspired Self-Reconfigurable Robot by the Genetic Algorithm of the Traveling Salesman Problem

机译:通过旅行推销员问题的遗传算法完成TETRIS启发自我可重构机器人的完整路径规划

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摘要

The efficiency of autonomous systems that tackle tasks such as home cleaning, agriculture harvesting, and mineral mining depends heavily on the adopted area coverage strategy. Extensive navigation strategies have been studied and developed, but few focus on scenarios with reconfigurable robot agents. This paper proposes a navigation strategy that accomplishes complete path planning for a Tetris-inspired hinge-based self-reconfigurable robot (hTetro), which consists of two main phases. In the first phase, polyomino form-based tilesets are generated to cover the predefined area based on the tiling theory, which generates a series of unsequenced waypoints that guarantee complete coverage of the entire workspace. Each waypoint specifies the position of the robot and the robot morphology on the map. In the second phase, an energy consumption evaluation model is constructed in order to determine a valid strategy to generate the sequence of the waypoints. The cost value between waypoints is formulated under the consideration of the hTetro robot platform’s kinematic design, where we calculate the minimum sum of displacement of the four blocks in the hTetro robot. With the cost function determined, the waypoint sequencing problem is then formulated as a travelling salesman problem (TSP). In this paper, a genetic algorithm (GA) is proposed as a strong candidate to solve the TSP. The GA produces a viable navigation sequence for the hTetro robot to follow and to accomplish complete coverage tasks. We performed an analysis across several complete coverage algorithms including zigzag, spiral, and greedy search to demonstrate that TSP with GA is a valid and considerably consistent waypoint sequencing strategy that can be implemented in real-world hTetro robot navigations. The scalability of the proposed framework allows the algorithm to produce reliable results while navigating within larger workspaces in the real world, and the flexibility of the framework ensures easy implementation of the algorithm on other polynomial-based shape shifting robots.
机译:自治系统的效率,如家庭清洁,农业收获和矿物挖掘等任务在很大程度上取决于所采用的区域覆盖策略。已经研究和开发了广泛的导航策略,但很少专注于具有可重新配置机器人代理商的情景。本文提出了实现完整路径规划一个俄罗斯方块风格的基础铰链自重构机器人(hTetro),它由两个主要阶段的导航策略。在第一阶段中,生成基于多麦绿形式的TILESet以基于平铺理论覆盖预定义区域,这产生了一系列未激活的航点,以保证整个工作空间的完全覆盖。每个航点指定机器人的位置和地图上的机器人形态。在第二阶段中,构建能量消耗评估模型以确定生成航点序列的有效策略。在考虑HTETRO机器人平台的运动设计下,可以在WISPOINTS之间的成本价值,在那里我们计算HTETRO机器人中四个块的最小位移总和。通过确定成本函数,然后将航点排序问题作为旅行推销员问题(TSP)制定。在本文中,提出了一种遗传算法(GA)作为解决TSP的强候选者。 GA为HTETRO机器人产生可行的导航序列,以便进行完整的覆盖任务。我们对多个完整的覆盖算法进行了分析,包括Zigzag,螺旋和贪婪搜索,以证明具有GA的TSP是一种有效的和相当一致的航点排序策略,可以在现实世界的HTETRO机器人导航中实现。所提出的框架的可扩展性允许该算法在导航在现实世界中的较大工作区内导航的可靠结果,并且框架的灵活性确保了在其他基于多项式的形状移位机器人上的算法的易于实现。

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