Identification for automotive air-conditioning system using Particle Swarm Optimization

Md Norazlan Md Lazin, I. Darus, B. C. Ng, H. Kamar
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引用次数: 2

Abstract

This paper present the representation of the dynamic model of the temperature an automotive air conditioning system (AAC) as the speed of the air conditioning compressor is varied. The performance of system identification of an AAC system using Recursive Least Squares (RLS) and Particle Swarm Optimization (PSO) techniques measured and discussed. The input - output data are collected through an experimental study using an AAC system integrated with air duct system experimental rig complete with data acquisition and instrumentation system. The single input single output dynamic model was established by using Autoregressive with exogenous input (ARX) model. Recursive Least Squares and Genetic Algorithms were validated using one step-ahead prediction (OSA), mean squared error (MSE) and correlation tests. The comparison results between these parameter estimation optimization techniques were highlighted. It was found that the estimated models using these two methods proposed are comparable, acceptable and possible to be used as a platform of new controller development and evaluation the performance of AAC system in the future work. Amongst all, it was found that the Particle Swarm optimization method produce the best ARX model with the lowest prediction MSE value of 8.5472×10-5 as compared to the Recursive Least Squares performance.
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基于粒子群算法的汽车空调系统辨识
本文给出了汽车空调系统温度随空调压缩机转速变化的动态模型。对递推最小二乘(RLS)和粒子群优化(PSO)技术在AAC系统辨识中的性能进行了测试和讨论。通过实验研究,利用AAC系统与风管系统集成的实验平台,完成了输入输出数据的采集和仪表系统。采用带有外生输入的自回归(ARX)模型建立了单输入单输出动态模型。递归最小二乘法和遗传算法通过一步预测(OSA)、均方误差(MSE)和相关检验进行验证。重点介绍了这些参数估计优化技术之间的比较结果。结果表明,两种方法的估计模型具有可比性和可接受性,可作为未来工作中新型控制器开发和AAC系统性能评估的平台。其中,与递归最小二乘法相比,粒子群优化方法产生的ARX模型预测MSE值8.5472×10-5最低。
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