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Model-free control of nonlinear stochastic systems in discrete time

机译:离散时间下非线性随机系统的无模型控制

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Consider the problem of developing a controller for general (nonlinear and stochastic) discrete-time systems, where the equations governing the system are unknown. This paper presents an approach based on estimating a controller without building or assuming a model for the system. Such an approach has potential advantages in, e.g. accommodating systems with time varying dynamics. The controller is constructed through use of a function approximator (FA) such as a neural network or polynomial (no FA is used for the unmodeled system equations). This involves the estimation of the unknown parameters within the FA. However, since no functional form is being assumed for the system equations, the gradient of the loss function for use in standard optimization algorithms is not available. Therefore, this paper considers the use of a stochastic approximation algorithm that is based on a simultaneous perturbation gradient approximation, which requires only system measurements (not a system model). Related to this, a convergence result for stochastic approximation algorithms with time-varying objective functions is established. It is shown that this algorithm can greatly enhance the efficiency over more standard stochastic approximation algorithms based on finite-difference gradient approximations
机译:考虑开发用于一般(非线性和随机)离散时间系统的控制器的问题,其中管理系统的方程是未知的。本文提出了一种基于估计控制器而无需构建或假设系统型号的方法。这样的方法具有潜在的优势,例如,随时间变化动态的容纳系统。通过使用诸如神经网络或多项式的函数近似器(FA)来构造控制器(没有FA用于未拼接的系统方程)。这涉及估计FA内的未知参数。然而,由于系统方程没有假设功能形式,因此不可用标准优化算法使用的损耗功能的梯度。因此,本文认为使用基于同时扰动梯度近似的随机近似算法,这仅需要系统测量(不是系统模型)。与此相关,建立了具有时变形函数的随机近似算法的收敛结果。结果表明,该算法可以基于有限差分梯度近似来大大提高更多标准随机近似算法的效率

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