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Data-driven model reduction-based nonlinear MPC for large-scale distributed parameter systems

机译:大规模分布式参数系统基于数据驱动模型约简的非线性MPC

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Model predictive control (MPC) has been effectively applied in process industries since the 1990s. Models in the form of closed equation sets are normally needed for MPC, but it is often difficult to obtain such formulations for large nonlinear systems. To extend nonlinear MPC (NMPC) application to nonlinear distributed parameter systems (DPS) with unknown dynamics, a data-driven model reduction-based approach is followed. The proper orthogonal decomposition (POD) method is first applied off-line to compute a set of basis functions. Then a series of artificial neural networks (ANNs) are trained to effectively compute POD time coefficients. NMPC, using sequential quadratic programming is then applied. The novelty of our methodology lies in the application of POD's highly efficient linear decomposition for the consequent conversion of any distributed multi-dimensional space-state model to a reduced 1-dimensional model, dependent only on time, which can be handled effectively as a black-box through ANNs. Hence we construct a paradigm, which allows the application of NMPC to complex nonlinear high-dimensional systems, even input/output systems, handled by black-box solvers, with significant computational efficiency. This paradigm combines elements of gain scheduling, NMPC, model reduction and ANN for effective control of nonlinear DPS. The stabilization/destabilization of a tubular reactor with recycle is used as an illustrative example to demonstrate the efficiency of our methodology. Case studies with inequality constraints are also presented. (C) 2015 Elsevier Ltd. All rights reserved.
机译:自1990年代以来,模型预测控制(MPC)已有效地应用于过程工业。 MPC通常需要采用封闭方程组形式的模型,但是对于大型非线性系统,通常很难获得这样的公式。为了将非线性MPC(NMPC)应用扩展到动力学未知的非线性分布参数系统(DPS),遵循了一种基于数据驱动的模型约简的方法。首先,离线应用适当的正交分解(POD)方法来计算一组基函数。然后训练一系列人工神经网络(ANN),以有效地计算POD时间系数。然后应用使用顺序二次编程的NMPC。我们方法的新颖之处在于POD高效线性分解的应用,从而将任何分布式多维空间状态模型转换为简化的一维模型(仅取决于时间),可以将其有效地处理为黑色框通过ANN。因此,我们构建了一个范式,它允许将NMPC应用到由黑盒求解器处理的复杂非线性高维系统,甚至输入/输出系统,并具有显着的计算效率。该范例结合了增益调度,NMPC,模型简化和ANN等要素,可有效控制非线性DPS。带有循环的管式反应器的稳定化/去稳定作用被用作说明性示例,以证明我们的方法的效率。还介绍了具有不平等约束的案例研究。 (C)2015 Elsevier Ltd.保留所有权利。

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