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A machine learning and deep learning based approach to predict the thermal performance of phase change material integrated building envelope

机译:基于机器学习和深度学习的方法预测相变材料综合建筑信封的热性能

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摘要

This study aims to develop a machine learning and deep learning-based model for thermal performance prediction of PCM integrated roof building. Performance prediction is carried out using the newly proposed MKR index. Five machine learning and one deep learning technique are explored in order to predict the thermal performance of PCM integrated roof considering variations in thermophysical properties of PCM. Total 500 data points are generated using numerical simulations considering variations in thermophysical properties of PCM. The five machine learning models used in this study are Random forest regression, Extra trees regression, Gradient boosting regression, Extreme Gradient boosting regression, and Catboost regression. The results indicate that Gradient boosting regression is the best-performing model compared to other machine learning models. An artificial neural network is used as a deep learning approach for predicting the MKR index. The ANN-based model performed best among all five machine learning models and proved its efficacy in training, testing, and sensitivity analysis with the independent dataset.
机译:本研究旨在开发一种机器学习和基于深度学习的PCM集成屋顶建筑的热性能预测模型。使用新提议的MKR指数进行性能预测。探索了五种机器学习和一种深度学习技术,以预测PCM集成屋顶的热性能考虑PCM热神族性能的变化。使用数值模拟,考虑PCM的热物理性质的变化来产生总500个数据点。本研究中使用的五种机器学习模型是随机森林回归,额外的树木回归,渐变升压回归,极端梯度提高回归,以及Catboost回归。结果表明,与其他机器学习模型相比,梯度升压回归是最佳性能的模型。人工神经网络被用作预测MKR指数的深度学习方法。基于ANN的模型在所有五种机器学习模型中表现最佳,并在与独立数据集中证明了其在训练,测试和敏感性分析中的功效。

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