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Off-line model reduction for on-line linear MPC of nonlinear large-scale distributed systems

机译:非线性大规模分布式系统在线线性MPC的离线模型约简

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摘要

Model predictive control (MPC) is an efficient method for the controller design of a large number of processes. However, linear MPC is often inappropriate for controlling nonlinear large-scale systems, while non-linear MPC can be computationally costly. The resulting optimization-based procedure can lead to local minima due to the, non-convexities that non-linear systems can exhibit. To overcome the excessive computational cost of MPC application for large-scale nonlinear systems, model reduction methodology in conjunction with efficient system linearizations have been exploited to enable the efficient application of linear MPC for nonlinear distributed parameter systems (DPS). An off-line model reduction technique, the proper orthogonal decomposition (POD) method, combined with a finite element Galerkin projection is first used to extract accurate non-linear low-order models from the large-scale ones. Trajectory Piecewise-Linear (TPWL) methodologies are subsequently developed to construct a piecewise linear representation of the reduced nonlinear model, both in a static and in a dynamic fashion. Linear MPC, based on quadratic programming, can then be efficiently performed on the resulting low-order, piece-wise affine system. Our combined methodology is readily applicable in combination with advanced MPC methodologies such as multi-parametric MPC (MP-MPC) (Pistikopoulos, 2009). The stabilisation of the oscillatory behaviour of a tubular reactor with recycle is used as an illustrative example to demonstrate our methodology.
机译:模型预测控制(MPC)是用于大量过程的控制器设计的有效方法。但是,线性MPC通常不适合控制非线性大型系统,而非线性MPC可能在计算上昂贵。由于非线性系统可能表现出的非凸性,因此基于优化的结果可能导致局部最小值。为了克服MPC应用在大型非线性系统中过多的计算成本,已经开发了模型简化方法以及有效的系统线性化方法,以使线性MPC有效地应用于非线性分布参数系统(DPS)。首先,将离线模型简化技术,适当的正交分解(POD)方法与有限元Galerkin投影相结合,从大规模模型中提取出准确的非线性低阶模型。随后开发了轨迹分段线性(TPWL)方法,以静态和动态方式构造简化非线性模型的分段线性表示。然后,可以在生成的低阶分段仿射系统上高效地执行基于二次编程的线性MPC。我们的组合方法很容易与高级MPC方法结合使用,例如多参数MPC(MP-MPC)(Pistikopoulos,2009)。循环使用的管式反应器振荡行为的稳定被用作说明我们的方法的说明性例子。

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