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Integrating neural networks and knowledge-based systems for intelligent robotic control

机译:集成神经网络和基于知识的系统以实现智能机器人控制

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摘要

A methodology is presented for integrating artificial neural networks and knowledge-based systems for the purpose of robotic control. The integration is patterned after models of human motor skill acquisition. The initial control task chosen to demonstrate the integration technique involves teaching a two-link manipulator how to make a specific type of swing. A three-level task hierarchy is defined consisting of low-level reflexes, reflex modulators, and an execution monitor. The rule-based execution monitor first determines how to make a successful swing using rules alone. It then teaches cerebellar model articulation controller (CMAC) neural networks how to accomplish the task by having them observe rule-based task execution. Following initial training, the execution monitor continuously evaluates neural network performance and re-engages swing-maneuver rules whenever changes in the manipulator or its operating environment necessitate retraining of the networks. Simulation results show the interaction between rule-based and network-based system components during various phases of training and supervision.
机译:提出了一种方法,用于集成人工神经网络和基于知识的系统,以实现机器人控制。整合是根据人类运动技能获取模型进行的。选择用于演示集成技术的初始控制任务包括教导两连杆机械手如何进行特定类型的摆动。定义了一个三级任务层次结构,该层次结构由低级反射,反射调制器和执行监视器组成。基于规则的执行监视器首先确定如何仅使用规则进行成功的挥杆。然后讲授小脑模型关节控制器(CMAC)神经网络如何通过让它们观察基于规则的任务执行来完成任务。经过初步培训后,每当操纵器或其操作环境发生变化而需要对网络进行重新训练时,执行监控器就会连续评估神经网络的性能,并重新参与摇摆操作规则。仿真结果表明,在培训和监督的各个阶段中,基于规则的系统组件和基于网络的系统组件之间的交互作用。

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