非线性系统的标准连续分段线性神经网络逼近与逆控制

Yongli Wang, Shuning Wang, J. Khan, Yudong Chen
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引用次数: 0

摘要

标准连续分段线性神经网络(SCPLNN)逼近的主要难点是如何将定义域划分为几个简单点,即三角剖分。在本文中,我们首先提出了一种三角剖分的方法来执行SCPLNN逼近。我们的方案从给定数据的初始粗三角剖分开始,然后细分单纯形,直到SCPLNN近似的误差小于一定的公差。然后对基于三角剖分的SCPLNN进行识别。该方法包含三角剖分和SCPLNN辨识,可用于逼近非线性系统。此外,对于每个单纯形,SCPLNN的每个局部模型都是线性的,因此可以很容易地计算出局部逆模型。从控制的角度出发,利用SCPLNN的分段线性特性,对每个近似模型设计控制器。利用NARX模型验证了该局部线性模型逆控制方案的有效性。
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Approximation and Inverse Control of Nonlinear System using Standard Continuous Piecewise Linear Neural Networks
The main difficulty for standard continuous piecewise linear neural networks (SCPLNN) approximation is how to partition the definitional domain into several simplices, which is called a triangulation. In this paper, we firstly propose a method of triangulation to perform SCPLNN approximation. Our scheme starts with an initial, coarse triangulation of the given data and subdivides simplex until the error of the SCPLNN approximation is smaller than some tolerance. Then SCPLNN based on triangulation is identified. The proposed method involving triangulation and identification of SCPLNN is shown to be useful in approximating nonlinear systems. In addition, for each simplex, the local inverse model can easily be calculated for each local model of SCPLNN is linear. From control perspective, we exploit the advantage of the piecewise linear property of SCPLNN and design controllers for each approximate model. The validity of this control scheme using inverse of the local linear model is tested by using a NARX model.
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