Improved Nonlinear Estimation in Thermal Networks Using Machine Learning

Markus Schumann, S. Ebersberger, K. Graichen
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引用次数: 1

Abstract

Emerging new technologies as found in modern electric cars must compete with existing technology in terms of quality and price. The pressure on the price is especially high in the automotive section. Research in the field of state estimation is of high potential for reducing the number of sensors, thus enabling cost savings in production. The methods of machine learning are also increasingly influencing this field of research. This article focuses on the thermal behavior of fluid cooled automotive IGBT (insulated gate bi-polar transistor) inverters and the application of machine learning methods in estimation tasks in nonlinear thermal networks. For this purpose, a parameterized grey-box model is designed using a linear thermal Cauer network in combination with numerical parameter fitting. Special emphasis is put on regression methods that are used to fit nonlinear thermal resistances to measurement data. An unscented Kalman filter (UKF) is applied to estimate states of the thermal network. In addition, a feed-forward artificial neural network (ANN) is trained on the estimation error using sensor signals as predictors to improve the estimation. Results on measurement data from a test bench show a significant improvement by the methods.
基于机器学习的热网络改进非线性估计
在现代电动汽车中发现的新兴技术必须在质量和价格方面与现有技术竞争。汽车领域的价格压力尤其大。状态估计领域的研究对于减少传感器数量,从而节省生产成本具有很大的潜力。机器学习的方法也越来越多地影响着这一研究领域。本文重点研究了液冷汽车IGBT(绝缘栅双极晶体管)逆变器的热行为以及机器学习方法在非线性热网络估计任务中的应用。为此,采用线性热考尔网络与数值参数拟合相结合的方法,设计了参数化灰盒模型。特别强调回归方法,用于拟合非线性热电阻的测量数据。采用无气味卡尔曼滤波(UKF)估计热网络的状态。此外,利用传感器信号作为预测因子,对前馈人工神经网络(ANN)进行估计误差训练,提高估计精度。试验台实测数据的结果表明,该方法有明显的改进。
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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