METHODOLOGY FOR AUTOMOTIVE AIR-CONDITIONING CONTROL OPTIMIZATION USING ARTIFICIAL NEURAL NETWORKS

R. P. Mendes, K. Cançado, L. S. Martins, J. Pabon, L. Machado
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Abstract

The transient nature of automotive air conditioning systems control is generally achieved through proportional–integral–derivative controllers (PID’s) parameters tunning. Due to the vast database available from decades of automotive manufacturers design and expertise, Artificial Neural Networks (ANN) might be able to identify underlying patterns to predict and properly tune the air-conditioning PID control systems under different thermal requirements. Recently, advances in computational capability have enabled compact embarked systems to rapidly solve complex, multi-variable sets of equations, thus allowing for ANN to promptly calculate tunning parameters and act upon PID controllers. As any new application, technical literature is still scarce. On this research, a coupled PID and 6-layers perceptron ANN system was devised, programmed and used to simulate how an air-conditioning system performance can be optimized through proportional–integral–derivative controllers tuning. This proposed setup response was then compared to a conventional heuristic PID tunning method (Ziegler Nichols) to demonstrate how ANN’s can more rapidly stabilize the system output.
基于人工神经网络的汽车空调控制优化方法
汽车空调系统的暂态控制一般是通过比例-积分-导数控制器(PID)的参数整定来实现的。由于拥有数十年汽车制造商设计和专业知识的庞大数据库,人工神经网络(ANN)可能能够识别潜在模式,以预测和适当调整不同热需求下的空调PID控制系统。最近,计算能力的进步使紧凑的机载系统能够快速解决复杂的多变量方程组,从而允许人工神经网络迅速计算调谐参数并作用于PID控制器。与任何新应用程序一样,技术文献仍然很少。在本研究中,设计了一个耦合PID和6层感知器人工神经网络系统,并对其进行了编程,用于模拟如何通过比例-积分-导数控制器调谐来优化空调系统性能。然后将提出的设置响应与传统的启发式PID整定方法(Ziegler Nichols)进行比较,以证明人工神经网络如何能够更快地稳定系统输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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