基于神经网络的半主动悬架系统参数最优控制

J. Smit, K. Cheok, N. Huang
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引用次数: 2

摘要

近年来,人们对主动和半主动汽车悬架系统的控制越来越感兴趣,目的是提高乘坐舒适性和车辆操控性。许多这样的结果方法使用了系统动力学的线性化模型,允许使用线性(最优)控制理论。实际上,这些系统及其最优控制都是非线性的。在本文中,我们提出了一种新颖的,但高度实用的替代这种线性化设计方法。该替代优化设计方法由改进的a *最优路径、高效的前向搜索算法与神经网络相结合而成。通过A*搜索,利用合理精确的系统模型和给定的代价函数,建立了悬架的非线性最优参数控制。神经网络,正如我们将展示的,学习了这个非线性最优控制函数,并且在许多方面优于它所学习的搜索。
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Optimal Parametric Control of a Semi-Active Suspension System using Neural Networks
In recent years, there has been a growing interest in controlling both active and semi-active automotive suspension systems with a goal of improving ride comfort and vehicle handling. Many such resulting approaches have used linearized models Of the syspension's dynamics, allowing th use of linear (optimal) control theory. In actuality through, these systems and their optimal control are quite nonlinear. In this paper we propose a novel, yet highly practical alternative to such linearized design methods. This alternate optimal design method consists of a modified A* optimal-path, farward-search algorithm which is highly efficient, together with neural networks. The A* search, using a reasonably accurate system model and a given cost function, establishes te nonlinear optimal parametric control Of the suspension. The neural network, as will be shown, learns this nonlinear optimal control function, and in many ways outperforms the search from which it was taught.
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