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Self-tuning adaptive control of multi-input, multi-output nonlinear systems using multilayer recurrent neural networks with application to synchronous power generators

机译:多层递归神经网络的多输入多输出非线性系统的自调整自适应控制及其在同步发电机中的应用

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A multilayer recurrent neural network-based approach for the identification and self-tuning adaptive control of multi-input multi-output nonlinear dynamical systems is developed. An efficient online implementation of the control strategy, by a fast updating of the control actions to track the dynamical variations in the system, is facilitated by the recurrent neural network, which is trained by a supervised training scheme that uses a simple updating rule. An application of this approach for the adaptive control of synchronous power generators under fault conditions is described, and a quantitative performance evaluation is given to bring out certain important characteristic features of the neural network used for control.
机译:开发了一种基于多层经常性的神经网络,用于多输入多输出非线性动力系统的识别和自调整自适应控制的基于识别和自调整自适应控制。通过快速更新控制策略的有效在线实现,通过经常性神经网络促进了控制动作以跟踪系统中的动态变化的控制动作,这是由使用简单更新规则的监督训练方案训练的。描述了这种方法对故障条件下同步发电机的自适应控制的应用,并且给出了定量性能评估,以引出用于控制的神经网络的某些重要特征特征。

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