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Data-driven prediction of vehicle cabin thermal comfort: using machine learning and high-fidelity simulation results

机译:数据驱动的车厢热舒适性:使用机器学习和高保真仿真结果

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摘要

Predicting thermal comfort in an automotive vehicle cabin's highly asymmetric and dynamic thermal environment is critical for developing energy efficient heating, ventilation and air conditioning (HVAC) systems. In this study we have coupled high-fidelity Computational Fluid Dynamics (CFD) simulations and machine learning algorithms to predict vehicle occupant thermal comfort for any combination of glazing properties for any window surface, environmental conditions and HVAC settings (flow-rate and discharge air temperature). A vehicle cabin CFD model, validated against climatic wind tunnel measurements, was used to systematically generate training data that spanned the entire range of boundary conditions, which impact occupant thermal comfort. Three machine learning algorithms: linear regression with stochastic gradient descent, random forests and artificial neural networks (ANN) were applied to the simulation data to predict the Equivalent Homogeneous Temperature (EHT) for each passenger and the volume averaged cabin air temperature. The trained machine learning models were tested on unseen data also generated by the CFD model. Our best machine learning model was able to achieve a test error of less than 5% in predicting EHT and cabin air temperature. Predicted EHT can also yield thermal comfort metrics such as Predicted Mean Vote (PMV) and Predicted Percentage of Dissatisfied (PPD), which can account for different passenger profiles (metabolic rates and clothing levels). Machine learning models developed in this work enable predictions of thermal comfort for any combination of boundary conditions in real-time without having to rely on computationally expensive CFD simulations.
机译:预测汽车车厢高度不对称和动态热环境中的热舒适性对于开发节能加热,通风和空调(HVAC)系统至关重要。在这项研究中,我们已经耦合高保真计算流体动力学(CFD)模拟和机器学习算法,以预测任何窗口表面,环境条件和HVAC设置的玻璃特性的任何组合的车辆乘员热舒适度(流量和放电空气温度)。用于防止气候风洞测量的车厢CFD模型,用于系统地生成跨越边界条件范围的培训数据,影响乘员热舒适度。三种机器学习算法:用随机梯度下降,随机森林和人工神经网络(ANN)的线性回归应用于模拟数据以预测每个乘客的等效均匀温度(EHT),并且体积平均舱室气温。培训的机器学习模型在CFD模型中也产生了未经调节的数据上。我们最好的机器学习模式能够在预测EHT和机舱空气温度方面达到小于5%的测试误差。预测的EHT还可以产生热舒适度量,例如预测的平均投票(PMV)和预测的不满意(PPD)的百分比,其可以考虑不同的乘客型材(代谢率和服装水平)。在这项工作中开发的机器学习模型使得能够实时地为边界条件的任何组合进行热舒适性,而无需依赖于计算昂贵的CFD仿真。

著录项

  • 来源
    《International Journal of Heat and Mass Transfer》 |2020年第2期|119083.1-119083.12|共12页
  • 作者单位

    General Motors Global Research and Development 30500 Mound Road Warren Ml 48090 United States;

    General Motors Global Research and Development 30500 Mound Road Warren Ml 48090 United States;

    General Motors Global Research and Development 30500 Mound Road Warren Ml 48090 United States;

    Siemens Product Lifecycle Management Software Inc. United States;

    Siemens Product Lifecycle Management Software Inc. United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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