An online gait adaptation with SuperBot in sloped terrains

ROBIO(2012)

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摘要
Among the different types of robots, modular and self-reconfigurable robots such as SuperBot have less limitations than their counterparts due to their versatility of gaits and increased dynamic adaptability. This results in a highly dexterous and adjustable robot suitable for many environments. This however, usually comes at the expense of a necessary human observer required to monitor and control the robot manually resulting in a waste of power and time. Thus, an intelligent system would be indispensable in optimzing the behavior and control of modular and self-reconfigurable robots. This paper presents an Intelligent Online Reconfiguration System (IORS) which through a combination of learning and reasoning, increases the efficiency in control and movement of the modular and self-reconfigurable robot called Superbot. Using this system, Superbot is able to learn and choose the best gait automatically by sensing its current environment (e.g., friction or slope). As a result, the IORS implementation in SuperBot achieves: 1) correct slope gradient sensing, 2) best gait learning to traverse different slopes, and 3) rational decision making for choosing the best gait.
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关键词
highly dexterous robot,online gait adaptation,adjustable robot,gait learning,sloped terrains,iors,decision making,inference mechanisms,learning (artificial intelligence),dynamic adaptability,slope gradient sensing,mobile robots,modular robots,reasoning,self-reconfigurable robots,intelligent online reconfiguration system,intelligent system,superbot,superbot achieves,rational decision making
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