喷射制冷循环中增压空气冷却概念控制策略的基于模型的方法

Tobias Beran, Jan Gärtner, Thomas Koch
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引用次数: 1

摘要

车辆中的有效热管理可以减少燃料消耗或提高电气续航里程。适应各种负载情况的优化控制策略可以降低冷却系统的能耗,并使部件保持在有效的工作温度范围内。目前的冷却控制策略使用性能图或规则,由于手动工作量大和车辆原型的必要性,开发这些图或规则需要时间和成本。本文提出了一种高度自动化的过程,用机器学习方法和仿真模型来创建控制策略。介绍了一种新的工具,它可以将Python代码与Dymola耦合,通过校准和优化功能来扩展模拟模型。使用多变量线性和多项式回归以及决策树和随机森林分类的机器学习实现,利用优化控制设置的数据集创建简化的控制模型。在联合仿真中,在动态驱动循环上比较了不同控制模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A model-based approach for a control strategy of a charge air cooling concept in an ejector refrigeration cycle

A model-based approach for a control strategy of a charge air cooling concept in an ejector refrigeration cycle

An efficient thermal management in vehicles can reduce fuel consumption or improve the electrical range. Optimized control strategies adapting to various load cases can reduce the energy consumption of the cooling system and keep components in efficient operating temperature ranges. Current cooling control strategies use performance maps or rules, which are time- and cost-consuming to develop due to a high manual workload and the necessity of vehicle prototypes. In this paper, a highly automatized process is proposed to create control strategies with machine learning methods and simulation models. A new tool is introduced, which can couple Python code with Dymola to extend simulation models by calibration and optimization features. Simplified control models are created with the dataset of optimized control settings using machine learning implementations for a multivariant linear and polynomial regression as well as a decision tree and a random forest classification. The performance of the different control models is compared on a dynamic drive cycle in a co-simulation.

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