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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Design optimization of a cable actuated parallel ankle rehabilitation robot: A fuzzy based multi-objective evolutionary approach
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Design optimization of a cable actuated parallel ankle rehabilitation robot: A fuzzy based multi-objective evolutionary approach

机译:电缆驱动的踝关节康复机器人的设计优化:基于模糊的多目标进化方法

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摘要

Robotic devices can be potentially used to assist physical therapy treatments in order to restore musculoskeletal system malfunctions owing to neurological disorders. Cable actuated parallel robots, despite their obvious benefits such as enhanced workspace, light weight, and flexibility, are not popularly used in ankle rehabilitation treatments, due to their complex mechanism and cable actuation issues. In order to address these issues, it is recommended to carry out robot design optimization. However, design synthesis of the cable actuated parallel ankle robot calls for multi-objective optimization (MOO), since there are multiple and conflicting objectives to achieve. To acquire more choices between actuator forces, overall stiffness of robot (which is crucial for a cable based ankle robot) and other vital design objectives, it is required to explore the extreme ends of the Pareto Front (PF) more carefully. Existing multi-objective evolutionary algorithms (MOEAs) normally focus on the convergence and may not provide solutions at the extremities of PF. Capitalizing on this improvement opportunity, this paper presents a fuzzy based MOEA, namely, biased fuzzy sorting genetic algorithm (BFSGA) which encourages solutions in the extreme zones of the PF. It is shown in this paper that using proposed method, diversity in the populations is supported and in the process wider trade-off choices of objectives can be obtained. During ankle robot design optimization, crisp objectives are defined as fuzzy objectives and competing solutions are provided an overall activation score (OAS). Subsequently OAS is used to assign a fuzzy dominance ranking to the design solutions. It is found that the BFSGA approach performs well in exploring the extreme zones of the Pareto front, which are normally overlooked by other MOEA such as NSGA-II due to their inherent mechanism.
机译:机器人设备可以潜在地用于辅助物理治疗,以恢复由于神经系统疾病引起的肌肉骨骼系统的功能失常。电缆驱动的并联机器人尽管具有明显的好处,例如工作空间增加,重量轻和灵活性强,但由于其复杂的机构和电缆驱动问题而并未广泛用于踝关节康复治疗中。为了解决这些问题,建议进行机器人设计优化。但是,电缆驱动的平行踝机器人的设计综合要求进行多目标优化(MOO),因为要实现的目标有多个且相互冲突。为了在执行器力,机器人的整体刚度(这对于基于电缆的踝关节机器人至关重要)和其他重要的设计目标之间获得更多选择,需要更仔细地研究Pareto Front(PF)的极端。现有的多目标进化算法(MOEA)通常专注于收敛,可能无法在PF的末端提供解决方案。利用这一改进机会,本文提出了一种基于模糊的MOEA,即有偏的模糊排序遗传算法(BFSGA),该算法鼓励在PF的极端区域中求解。本文表明,使用所提出的方法,可以支持种群的多样性,并且在此过程中,可以获得目标的更广泛的折衷选择。在脚踝机器人设计优化期间,将清晰的目标定义为模糊目标,并为竞争解决方案提供总体激活评分(OAS)。随后,OAS用于为设计解决方案分配模糊优势等级。已经发现,BFSGA方法在探索帕累托锋线的极端区域方面表现良好,而这些极端区域通常由于其固有机制而被其他MOEA(例如NSGA-II)所忽略。

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