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首页> 外文期刊>International Journal of Uncertainty, Fuzziness, and Knowledge-based Systems >THE KNOWLEDGE-BASED FUZZY RULES EMULATED NETWORK AND ITS APPLICATIONS ON DIRECT ADAPTIVE ON NONLINEAR CONTROL SYSTEMS
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THE KNOWLEDGE-BASED FUZZY RULES EMULATED NETWORK AND ITS APPLICATIONS ON DIRECT ADAPTIVE ON NONLINEAR CONTROL SYSTEMS

机译:基于知识的模糊规则仿真网络及其在非线性控制系统直接自适应中的应用

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摘要

This paper proposes an adaptive network architecture, which can emulate the human knowledge as the fuzzy logic rule, and its applications as the controller for nonlinear systems. The structure of this proposed network, multi-input Fuzzy Rule Emulated Network or Fren, is derived based on human knowledge in the form of fuzzy IF-THEN rules. The initial setting of its parameters can be intuitively chosen from expert's experience. During the learning phase based on the gradient search, the learning rate can be adapted itself to remain the stability with the Lyapunov method. The performance of our network is presented by using this network as controller for the single invert pendulum plant and the water bath temperature control system. The comparison results with other conventional control algorithms such as artificial neural networks and PID controllers can be illustrated in each example.
机译:本文提出了一种自适应网络体系结构,可以将人类知识模拟为模糊逻辑规则,并将其作为非线性系统的控制器。该拟议网络的结构,即多输入模糊规则仿真网络或Fren,是根据人类知识以模糊IF-THEN规则的形式得出的。可以根据专家的经验直观地选择其参数的初始设置。在基于梯度搜索的学习阶段,可以使用Lyapunov方法调整学习率本身以保持稳定性。通过使用该网络作为单个倒立摆设备和水浴温度控制系统的控制器,可以展示我们网络的性能。在每个示例中都可以说明与其他常规控制算法(例如人工神经网络和PID控制器)的比较结果。

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