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Economic Stochastic Model Predictive Control Using the Unscented Kalman Filter

机译:使用Unscented Kalman滤波器的经济随机模型预测控制

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Economic model predictive control is a popular method to maximize the efficiency of a dynamic system. Often, however, uncertainties are present, which can lead to lower performance and constraint violations. In this paper, an approach is proposed that incorporates the square root Unscented Kalman filter directly into the optimal control problem to estimate the states and to propagate the mean and covariance of the states to consider noise from disturbances, parametric uncertainties and state estimation errors. The covariance is propagated up to a predefined "robust horizon" to limit open-loop covariances, and chance constraints are introduced to maintain feasibility. Often variables in chemical engineering are non-negative, which however can be violated by the Unscented Kalman filter leading to erroneous predictions. This problem is solved by log-transforming these variables to ensure consistency. The approach was verified and compared to a nominal nonlinear model predictive control algorithm on a semi-batch reactor case study with an economic objective via Monte Carlo simulations.
机译:经济模型预测控制是一种最大化动态系统效率的流行方法。然而,通常存在不确定性,这可能导致性能和约束违规。在本文中,提出了一种方法,该方法将广场根未选择的卡尔曼滤波器直接进入最佳控制问题,以估计各种的状态,并传播各种的均值和协方差,以考虑来自干扰,参数不确定性和状态估计错误的噪声。协方差达到预定义的“鲁棒地平线”以限制开环协方差,并引入了机会限制以保持可行性。化学工程中的变量通常是非负面的,然而可以被未入的卡尔曼滤波器侵犯导致错误的预测。通过记录这些变量来解决此问题以确保一致性解决。通过蒙特卡罗模拟,验证了该方法并与半批量反应堆案例研究中的标称非线性模型预测控制算法进行了验证。

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