Learning in an adaptive backthrough control structure

V. Kecman
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引用次数: 2

Abstract

The paper presents a neural network (NN) based adaptive backthrough control (ABC) scheme for both linear and nonlinear dynamic plants. Unlike other feedforward NN based control schemes the ABC comprises of one neural network which simultaneously acts as both plant model (emulator) and the controller (inverse of the emulator). For linear plants, without noise, the resulting feedforward controller, providing that the order of the plant and plant model are equal, is a perfect adaptive poles-zeros canceller. In the case of a nonlinear dynamic system, and for the monotonic nonlinearity, the proposed ABC control represents the nonlinear predictive controller. The ABC scheme is based on the discrete nonlinear (NARMAX) dynamic model. For such models and for monotonic nonlinearity, the calculation of the desired control signal is the result of the nonlinear optimization procedure with a guaranteed convex search function and consequently with a unique solution.
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在自适应反向控制结构中学习
提出了一种基于神经网络的线性和非线性动态对象自适应反向控制(ABC)方案。与其他基于前馈神经网络的控制方案不同,ABC由一个神经网络组成,该神经网络同时充当植物模型(模拟器)和控制器(模拟器的逆)。对于无噪声的线性对象,在对象阶数和对象模型阶数相等的情况下,所得到的前馈控制器是一种完美的自适应极点-零抵消器。在非线性动态系统中,对于单调非线性,所提出的ABC控制代表非线性预测控制器。ABC方案基于离散非线性(NARMAX)动态模型。对于这类模型和单调非线性,期望控制信号的计算是具有保证凸搜索函数的非线性优化过程的结果,因此具有唯一解。
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