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A study on several machine learning methods for estimating cabin occupant equivalent temperature

机译:估计机舱乘员等效温度的几种机器学习方法的研究

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Occupant comfort oriented Heating, Ventilation and Air Conditioning (HVAC) control rises to the challenge of delivering comfort and reducing the energy budget. Equivalent temperature represents a more accurate predictor for thermal comfort than air temperature in the car cabin environment, as it integrates radiant heat and airflow. Several machine learning methods were investigated with the purpose of estimating cabin occupant equivalent temperature from sensors throughout the cabin, namely Multiple Linear Regression, MultiLayer Perceptron, Multivariate Adaptive Regression Splines, Radial Basis Function Network, REPTree, K-Nearest Neighbour and Random Forest. Experimental equivalent temperature and cabin data at 25 points was gathered in a variety of environmental conditions. A total of 30 experimental hours were used for training and evaluating the estimators' performance. Most machine learning tehniques provided a Root Mean Square Error (RMSE) between 1.51 °C and 1.85 °C, while the Radial Basis Function Network performed the worst, with an average RMSE of 3.37 °C. The Multiple Linear Regression had an average RMSE of 1.60 °C over the eight body part equivalent temperatures and also had the fastest processing time, enabling a straightforward real-time implementation in a car's engine control unit.
机译:面向乘员舒适度的加热,通风和空调(HVAC)控制面临着提供舒适度和减少能源预算的挑战。等效温度代表了比车厢环境中的空气温度更精确的热舒适性预测指标,因为它综合了辐射热和气流。为了估计整个机舱中传感器的乘员等效温度,研究了几种机器学习方法,即多重线性回归,多层感知器,多元自适应回归样条,径向基函数网络,REPTree,K最近邻和随机森林。在各种环境条件下收集了25个点的实验等效温度和机舱数据。总共30个实验小时用于训练和评估估算器的性能。大多数机器学习技术提供的均方根误差(RMSE)在1.51°C至1.85°C之间,而径向基函数网络的均方根误差最差,平均均方根误差(RMSE)为3.37°C。多重线性回归在八个身体部位等效温度下的平均RMSE为1.60°C,并且具有最快的处理时间,可在汽车的发动机控制单元中直接实现实时实施。

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