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首页> 外文期刊>International Journal of Applied Mathematics and Computer Science >INPUT CONSTRAINTS HANDLING IN AN MPC/FEEDBACK LINEARIZATION SCHEME
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INPUT CONSTRAINTS HANDLING IN AN MPC/FEEDBACK LINEARIZATION SCHEME

机译:输入约束MPC /反馈线性化方案中的处理

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The combination of model predictive control based on linear models (MPC) with feedback linearization (FL) has attracted interest for a number of years, giving rise to MPC+FL control schemes. An important advantage of such schemes is that feedback linearizable plants can be controlled with a linear predictive controller with a fixed model. Handling input constraints within such schemes is difficult since simple bound contraints on the input become state dependent because of the nonlinear transformation introduced by feedback linearization. This paper introduces a technique for handling input constraints within a real time MPC/FL scheme, where the plant model employed is a class of dynamic neural networks. The technique is based on a simple affine transformation of the feasible area. A simulated case study is presented to illustrate the use and benefits of the technique.
机译:基于线性模型(MPC)的模型预测控制与反馈线性化(FL)的结合引起了人们的兴趣,多年来,出现了MPC + FL控制方案。这种方案的一个重要优点是,可以使用具有固定模型的线性预测控制器来控制反馈线性化工厂。在这样的方案中处理输入约束是困难的,因为由于反馈线性化引入的非线性变换,所以输入上的简单边界约束变得取决于状态。本文介绍了一种在实时MPC / FL方案中处理输入约束的技术,其中采用的工厂模型是一类动态神经网络。该技术基于可行区域的简单仿射变换。进行了模拟案例研究,以说明该技术的使用和好处。

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