Neural network based integral sliding mode control of systems with time-varying state constraints

Nikolas Sacchi, Edoardo Vacchini, A. Ferrara
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Abstract

In this paper, we propose a novel neural network based state constrained integral sliding mode (NN-SCISM) control algorithm for nonlinear system with partially unknown dynamics in presence of time-varying constraints. In particular, the drift term characterizing the system dynamics is estimated by using a two-layer neural network, whose weights are adjusted according to adaptation laws designed relying on stability analysis. Thanks to a sliding variable which varies depending on the minimum distance between the system state and the current closest constraint, the control algorithm is able to drive the system state to a desired target state, while avoiding the forbidden states contained in the time-varying set delimited by the constraints. The proposal has been theoretical analysed and assessed in simulation.
时变状态约束系统的神经网络积分滑模控制
针对时变约束下的部分未知非线性系统,提出了一种基于神经网络的状态约束积分滑模控制算法。其中,利用双层神经网络估计表征系统动力学特性的漂移项,并根据稳定性分析设计的自适应律对其权值进行调整。由于该控制算法中存在一个滑动变量,该变量根据系统状态与当前最近约束之间的最小距离而变化,因此该控制算法能够将系统状态驱动到期望的目标状态,同时避免由约束所划分的时变集中包含的禁止状态。对该方案进行了理论分析和仿真评估。
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