Artificial Neural Network Estimation of Thermal Insulation Value of Children's School Wear in Kuwait Classroom

Khaled Al-Rashidi, R. Alazmi, M. Alazmi
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引用次数: 2

Abstract

Artificial neural network (ANN) was utilized to predict the thermal insulation values of children's school wear in Kuwait. The input thermal insulation data of the different children's school wear used in Kuwait classrooms were obtained from study using thermal manikins. The lowest mean squared error (MSE) value for the validation data was 1.5 × 10-5 using one hidden layer of six neurons and one output layer. The R2 values for the training, validation, and testing data were almost equal to 1. The values from ANN prediction were compared with McCullough's equation and the standard tables' methods. Results suggested that the ANN is able to give more accurate prediction of the clothing thermal insulation values than the regression equation and the standard tables methods. The effect of the different input variables on the thermal insulation value was examined using Garson algorithm and sensitivity analysis and it was found that the cloths weight, the body surface area nude (BSA0), and body surface area covered by one layer of clothing (BSAC1) have the highest effect on the thermal insulation value with about 29%, 27%, and 23%, respectively.
科威特教室儿童校服保温值的人工神经网络估算
利用人工神经网络(ANN)对科威特儿童校服的保温率进行了预测。科威特教室使用的不同儿童校服的输入隔热数据是通过热人体模型研究获得的。在6个神经元的隐藏层和1个输出层的情况下,验证数据的最小均方误差(MSE)为1.5 × 10-5。训练、验证和测试数据的R2值几乎等于1。将人工神经网络预测值与McCullough方程和标准表方法进行比较。结果表明,与回归方程和标准表法相比,人工神经网络能更准确地预测服装的隔热值。采用Garson算法和敏感性分析考察了不同输入变量对保温值的影响,发现衣物重量、裸露体表面积(BSA0)和一层衣物覆盖体表面积(BSAC1)对保温值的影响最大,分别约为29%、27%和23%。
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