Control system with evolving Gaussian process models

D. Petelin, J. Kocijan
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引用次数: 29

Abstract

Control system based on evolving Gaussian process (GP) models is an example of self-learning closed-loop control system. It is meant for closed-loop control of dynamic systems where not much prior knowledge exists or where systems dynamics varies with time or operating region. GP models are non-parametric black-box models which represent a new method for system identification. GP models differ from most other frequently used black-box identification approaches as they do not try to approximate the modeled system by fitting the parameters of the selected basis functions, but rather search for the relationships among measured data. While GP models are Bayesian models, their output is normal distribution, expressed in terms of mean and variance. Latter can be interpreted as a confidence in prediction and used in many fields, especially in control system. Successful control system needs as much as possible data about process to be controlled. If the prior knowledge about the system to be controlled is scarce or the system varies with time or operating region, this control problem can be solved with an iterative method which adapts model with information obtained with streaming data and concurrently optimizes hyperparameter values. While that kind of method for GP models does not yet exist, concepts for evolving GP models and control system based on evolving GP models are proposed in this paper. It is flexible approach within which various ways of model adaptations can be used. One of those possibilities is illustrated with a control of a benchmark problem.
演化高斯过程模型控制系统
基于演化高斯过程(GP)模型的控制系统是自学习闭环控制系统的一个例子。它适用于不存在太多先验知识或系统动力学随时间或工作区域变化的动态系统的闭环控制。GP模型是非参数黑箱模型,代表了一种新的系统辨识方法。GP模型不同于大多数其他常用的黑箱识别方法,因为它们不试图通过拟合所选基函数的参数来近似建模系统,而是寻找测量数据之间的关系。而GP模型是贝叶斯模型,其输出是正态分布,用均值和方差表示。后者可以解释为对预测的信心,并用于许多领域,特别是在控制系统中。成功的控制系统需要尽可能多的被控过程数据。如果被控系统的先验知识很少,或者系统随时间或运行区域的变化而变化,则可以采用迭代方法来解决该控制问题,该方法利用流数据获得的信息来适应模型,并同时优化超参数值。本文提出了演化GP模型和基于演化GP模型的控制系统的概念。这是一种灵活的方法,可以使用各种模型调整方法。其中一种可能性通过对基准问题的控制来说明。
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