Simulation Of An Expert Model-Based Adaptive Controller

M. Ma
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引用次数: 2

Abstract

Model-based adaptive controllers have been practiced with numerous successes. The controller is formed in a on line discrete optimal controller and implemented in control computer. Because of the fast and accurate calculation capability of microcomputer, this type of controller has reached their limits. To explore the potentiality of model based adaptive controller, we investigate the adaptive controller with an expert system for selection of identifiers. The model-based adaptive controller usually uses a recursive least squares identifier. This kind of identifier requires a lot of calculations. An alternative for adaptive function can be using an rule-based expert system to decide the need of updating process time series model. In addition, we can use a simplified recursive least squares identifier. This paper presents the formulation of this type of controller. Moreover, the simulations are carried out to test the practicality of such controller. The effect of such rule-based adaptation plus model-based optimization and controller formulation will be presented by accumulated loss versus sampling periods. The improvement of mean and standard deviation of controlled variable indicates the sophistication of combination of artificial intelligence and computation power of control computer.
基于专家模型的自适应控制器仿真
基于模型的自适应控制器在实践中取得了许多成功。该控制器采用在线离散最优控制器的形式,在控制计算机上实现。由于微机的快速、准确的计算能力,这种类型的控制器已经达到了极限。为了探索基于模型的自适应控制器的潜力,我们研究了带有标识符选择专家系统的自适应控制器。基于模型的自适应控制器通常使用递归最小二乘标识符。这种标识符需要进行大量的计算。自适应函数的另一种替代方法是使用基于规则的专家系统来确定过程时间序列模型是否需要更新。此外,我们可以使用简化的递归最小二乘标识符。本文给出了这类控制器的公式。并通过仿真验证了该控制器的实用性。这种基于规则的自适应加上基于模型的优化和控制器制定的效果将通过累积损失与采样周期的关系来表示。被控变量均值和标准差的提高表明人工智能与控制计算机计算能力相结合的复杂性。
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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