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On-line adaptive neural network in very remote control system

机译:远程控制系统中的在线自适应神经网络

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Remote control involves several issues that degrade seriously the performance of the plant to be controlled. This paper presents a strategy improving the characteristics of the remote control system, using an on-line adaptive neural net, in order to learn the variations of the remote system parameters to minimize the errors. This strategy is successfully applied to a client-server remote control system for a two link robot arm. Tests show that an error position in a remote control brushless motor can be highly reduced since its first "reference command" using a prevision of that error to modify the original reference. The neural net, used only by the client, is previously trained using local test data and then it is trained using on-line feedback data from the remote plant.
机译:远程控制涉及多个问题,这些问题严重降低了要控制的工厂的性能。本文提出了一种使用在线自适应神经网络改善远程控制系统特性的策略,以了解远程系统参数的变化,以最大程度地减少误差。该策略已成功应用于两链接机械臂的客户端-服务器远程控制系统。测试表明,远程无刷电动机中的错误位置可以大大减少,因为它的第一个“参考命令”使用该错误的预言来修改原始参考。仅由客户使用的神经网络以前使用本地测试数据进行了训练,然后使用来自远程工厂的在线反馈数据进行了训练。

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