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Predictive control based on neural network models with I/O feedback linearization

机译:基于具有I / O反馈线性化的神经网络模型的预测控制

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This paper presents an approach for the constrained nonlinear predictive control problem based on the input-output feedback linearization (IOFL) of a general non-linear system modelled by a discrete-time affine neural network model. Using the resulting linear system in the formulation of the original non-linear predictive control problem enables to restate the optimization problem as the minimization of a quadratic function, which solution can be found using reliable and fast quadratic programming (QP) routines. However, the presence of a non-linear feedback linearizing controller maps the original linear input constraints onto non-linear and state dependent constraints on the controller output, which invalidates a direct application of QP routines. In order to cope with this problem and still be able to use QP routines, an approximate method is proposed which simultaneously guarantees a feasible solution without constraints violation over the complete prediction horizon within a finite number of steps, while allowing only for a small performance degradation.
机译:本文提出了一种基于离散仿射神经网络模型的通用非线性系统的输入输出反馈线性化(IOFL)的约束非线性预测控制问题的方法。在原始非线性预测控制问题的公式中使用所得的线性系统可以使优化问题重新陈述为二次函数的最小值,可以使用可靠且快速的二次编程(QP)例程找到该解决方案。但是,非线性反馈线性化控制器的存在将原始线性输入约束映射到控制器输出上的非线性约束和与状态有关的约束,这使QP例程的直接应用无效。为了解决此问题,并且仍然能够使用QP例程,提出了一种近似方法,该方法可同时确保可行的解决方案,而在有限的步骤内不会对整个预测范围造成约束约束,同时仅允许较小的性能下降。

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