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Stochastic model predictive tracking of piecewise constant references for LPV systems

机译:LPV系统的分段常数参考的随机模型预测跟踪

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This study addresses a stochastic model predictive tracking problem for linear parameter-varying (LPV) systems described by affine parameter-dependent state-space representations and additive stochastic uncertainties. The reference trajectory is considered as a piecewise constant signal and assumed to be known at all time instants. To obtain prediction equations, the scheduling signal is usually assumed to be constant or its variation is assumed to belong to a convex set. In this study, the underlying scheduling signal is given a stochastic description during the prediction horizon, which aims to overcome the shortcomings of the two former characterisations, namely restrictiveness and conservativeness. Hence, the overall LPV system dynamics consists of additive and multiplicative noise terms up to second order. Due to the presence of stochastic disturbances, probabilistic state constraints are considered. Since the disturbances make the computation of prediction dynamics difficult, augmented state prediction dynamics are considered, by which, feasibility of probabilistic constraints and closed-loop stability are addressed. The overall approach is illustrated using a tank system model.
机译:这项研究解决了由仿射参数依赖状态空间表示和加法随机不确定性描述的线性参数变化(LPV)系统的随机模型预测跟踪问题。参考轨迹被视为分段恒定信号,并假定在所有时刻都是已知的。为了获得预测方程,通常假定调度信号是恒定的,或者假定其变化属于凸集。在这项研究中,在预测范围内对基础调度信号进行了随机描述,旨在克服前两个特征的局限性和保守性。因此,整个LPV系统的动力学特性包括加和乘的噪声项,直至二阶。由于存在随机干扰,因此考虑了概率状态约束。由于扰动使预测动力学的计算变得困难,因此考虑了增强状态预测动力学,从而解决了概率约束和闭环稳定性的可行性。使用储罐系统模型说明了整个方法。

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