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Multiple Model Predictive Control: A State Estimation based Approach

机译:多模型预测控制:一种基于状态估计的方法

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An augmented state formulation for multiple model predictive control (MMPC) is developed to improve the regulation of nonlinear and uncertain process systems. By augmenting disturbances as states that are estimated using a Kalman filter, improved disturbance rejection is achieved compared to an additive output disturbance assumption. The approach is applied to a quadratic tank example, which has challenging dynamic behavior, switching from minimum phase to nonminimum phase behavior as the operating conditions are changed.
机译:开发了用于多模型预测控制(MMPC)的增强状态公式,以改善非线性和不确定过程系统的调节。通过将干扰增加为使用卡尔曼滤波器估计的状态,与加性输出干扰假设相比,可以改善干扰抑制能力。该方法应用于具有挑战性的动态行为的二次储罐示例,随着运行条件的改变,该行为从最小相位变为非最小相位。

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