Emergence of adaptive behaviors by redundant robots - robustness to changes environment and failures

Kazuyuki Ito, A. Gofuku
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引用次数: 6

Abstract

Acquiring adaptive behaviors of robots automatically is one of the most interesting topics of the evolutionary systems. In previous works, we have developed an adaptive autonomous control method for redundant robots. The QDSEGA is one of the methods that we have proposed for them. The QDSEGA is realized by combining Q-learning and GA, and it can acquire suitable behaviors by adapting a movement of a robot for a task. In this paper, we focus on the adaptability of the QDSEGA and discuss the robustness of the autonomous redundant robot that is controlled by the QDSEGA. To demonstrate the effectiveness of the QDSEGA, simulations of obstacle avoidance by a 10-link manipulator in the changeable environment and locomotion by a 12-legged robot with failures have been carried out, and as a result, adaptive behaviors for each environment and each broken body have emerged.
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冗余机器人自适应行为的出现——对环境变化和故障的鲁棒性
机器人自适应行为的自动获取是进化系统研究的热点之一。在以前的工作中,我们已经开发了一种冗余机器人的自适应自主控制方法。QDSEGA是我们为他们提出的方法之一。QDSEGA将Q-learning和遗传算法相结合,通过调整机器人的运动来获得适合任务的行为。本文重点研究了QDSEGA的自适应性,并讨论了由QDSEGA控制的自主冗余机器人的鲁棒性。为了验证QDSEGA算法的有效性,分别对10连杆机械臂在多变环境下的避障和12足机器人在故障情况下的运动进行了仿真,得到了机器人在不同环境和不同断裂体下的自适应行为。
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