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Plant-model mismatch evaluation for unconstrained MPC with state estimation

机译:具有状态估计的无约束MPC的工厂模型失配评估

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In this paper, we develop an autocovariance-based method for estimating plant-model mismatch in unconstrained linear model predictive control systems that use a Kalman filter state estimator. Assuming knowledge of the noise structure, we derive an expression for the autocovariance of the process outputs as a function of (an additive) plant-model mismatch. We then formulate the mismatch estimation problem as an optimization problem aiming to minimize the discrepancy between the theoretical autocovariance and the sample estimator of the autocovariance, obtained from closed-loop operating data collected during steady-state operation. Case studies are provided to demonstrate the performance of the approach.
机译:在本文中,我们开发了一种基于自协方差的方法,用于在使用卡尔曼滤波器状态估计器的无约束线性模型预测控制系统中估计工厂模型不匹配。假设了解噪声结构,我们就可以得出过程输出的自协方差的表达式,该表达式是(加性)工厂模型不匹配的函数。然后,我们将失配估计问题公式化为一个优化问题,旨在最大程度地减少理论自协方差与自协方差的样本估计量之间的差异,该自协方差是从稳态操作期间收集的闭环操作数据中获得的。提供案例研究以证明该方法的性能。

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