Gaussian Process Based Modeling and Control of Affine Systems with Control Saturation Constraints

Shulong Zhao;Qipeng Wang;Jiayi Zheng;Xiangke Wang
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Abstract

Model-based methods require an accurate dynamic model to design the controller. However, the hydraulic parameters of nonlinear systems, complex friction, or actuator dynamics make it challenging to obtain accurate models. In this case, using the input-output data of the system to learn a dynamic model is an alternative approach. Therefore, we propose a dynamic model based on the Gaussian process (GP) to construct systems with control constraints. Since GP provides a measure of model confidence, it can deal with uncertainty. Unfortunately, most GP-based literature considers model uncertainty but does not consider the effect of constraints on inputs in closed-loop systems. An auxiliary system is developed to deal with the influence of the saturation constraints of input. Meanwhile, we relax the nonsingular assumption of the control coefficients to construct the controller. Some numerical results verify the rationality of the proposed approach and compare it with similar methods.
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具有控制饱和约束的仿射系统的高斯过程建模与控制
基于模型的方法需要精确的动态模型来设计控制器。然而,非线性系统的液压参数、复杂的摩擦或作动器动力学使得获得精确的模型具有挑战性。在这种情况下,使用系统的输入输出数据来学习动态模型是一种替代方法。因此,我们提出了一种基于高斯过程(GP)的动态模型来构造具有控制约束的系统。由于GP提供了模型置信度的度量,它可以处理不确定性。不幸的是,大多数基于gp的文献考虑了模型的不确定性,但没有考虑闭环系统中约束对输入的影响。为解决输入饱和约束的影响,设计了辅助系统。同时,我们放宽了控制系数的非奇异假设来构造控制器。数值结果验证了所提方法的合理性,并与同类方法进行了比较。
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