Structural and Parametric Synthesis of Neural Network Controllers for Control Objects with Limiters

Q4 Engineering
S. V. Feofilov, A. V. Kozyr, D. L. Khapkin
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引用次数: 0

Abstract

The article presents a methodology for the synthesis of digital control systems for nonlinear objects with limiters under conditions of incomplete information. Closed-loop tracking systems with negative feedback are considered. Artificial neural networks are proposed to build a controller, which is included in series with the control object. This approach is effective when known classical methods do not allow to synthesize control. This is the case, for example, if the mathematical model is essentially nonlinear and is not fully defined. The developed methods allow us to expand the class of technical systems, for which the direct (without using various kinds of simplifications) synthesis of control laws that are close to optimal is possible. In addition, neural network controllers possess the properties of robustness, adaptivity, and are initially digital, i.e. those qualities, which are very much in demand in practice. In article main attention is given to such problems, as a choice of neural network structure for neural simulator and neural controller, construction of training sample, ensuring convergence of the process of weights correction. For training neural networks the method of back propagation of error is used as a basic one. The effectiveness of the proposed technique is demonstrated by the example of the synthesis of a neuroregulator for a specific technical object and its comparison with classical control systems. It should be noted that today neural network technologies are widespread enough in various spheres of activity. The successes demonstrated in sound processing, image processing, automatic translation, in navigation systems, in big data processing are impressive. However, their application in automatic control systems is not so widespread. The authors of this article believe that the potential of artificial neural networks can be used in this direction. It should be understood that the use of neural networks is effective only under certain conditions and properties of the control object.
带限制器控制对象的神经网络控制器的结构与参数综合
本文提出了一种在不完全信息条件下具有限制条件的非线性对象数字控制系统的综合方法。研究了具有负反馈的闭环跟踪系统。采用人工神经网络构建控制器,将控制器与控制对象串联起来。当已知的经典方法不允许综合控制时,这种方法是有效的。例如,如果数学模型本质上是非线性的并且没有完全定义,就会出现这种情况。所开发的方法使我们能够扩展技术系统的类别,从而可以直接(不使用各种简化)综合接近最优的控制律。此外,神经网络控制器具有鲁棒性、自适应性和初始数字化的特性,即在实践中非常需要的那些品质。本文主要研究了神经模拟器和神经控制器的神经网络结构选择、训练样本的构造、权值修正过程的收敛性等问题。对于神经网络的训练,误差的反向传播方法是一种基本方法。通过对特定技术对象的神经调节器的合成示例及其与经典控制系统的比较,证明了所提出技术的有效性。应该指出的是,今天神经网络技术在各个活动领域已经足够广泛。在声音处理、图像处理、自动翻译、导航系统、大数据处理等方面取得的成功令人印象深刻。然而,它们在自动控制系统中的应用并不广泛。本文的作者认为,人工神经网络的潜力可以在这个方向上使用。应该理解的是,使用神经网络是有效的,只有在一定的条件和控制对象的性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mekhatronika, Avtomatizatsiya, Upravlenie
Mekhatronika, Avtomatizatsiya, Upravlenie Engineering-Electrical and Electronic Engineering
CiteScore
0.90
自引率
0.00%
发文量
68
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