This paper aims to improve the reliability of optimal control using models constructed by machine learning methods. Optimal control problems based on such models are generally non-convex and difficult to solve online. In this paper, we propose a model that combines the Hammerstein-Wiener model with input convex neural networks, which have recently been proposed in the field of machine learning. An important feature of the proposed model is that resulting optimal control problems are effectively solvable exploiting their convexity and partial linearity while retaining flexible modeling ability. The practical usefulness of the method is examined through its application to the modeling and control of an engine airpath system.
翻译:本文的目的是利用机器学习方法所建模型提高最佳控制可靠性。基于这些模型的最佳控制问题一般是非硬盘,难以在网上解决。在本文件中,我们提出了一个模型,将Hammerstein-Wiener模型与最近在机器学习领域提出的投入convex神经网络结合起来。拟议模型的一个重要特征是,由此产生的最佳控制问题实际上是可以有效解决的,在保持灵活建模能力的同时,利用其精密性和局部的直线性。该方法的实际效用通过在发动机气管系统的建模和控制中加以研究。