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Influence of control logic on variation of indoor thermal environment for residential buildings

机译:控制逻辑对住宅建筑室内热环境变化的影响

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摘要

This study proposes an advanced thermal control method that employs artificial neural network (ANN) models for predictive and adaptive thermal control. Two predictive and adaptive control logic approaches were proposed to simultaneously control indoor temperature and humidity as well as predicted mean vote (PMV) in a residential building. Their thermal performance was analysed and compared with that of non-ANN-based counterparts to evaluate architectural variables such as envelope insulation and building orientation. A numerical computer simulation method was used for the tests after demonstration of its validity based on comparison with results of field measurement. Analysis results revealed that the proposed predictive and adaptive control methods conditioned the indoor temperature, humidity and PMV effectively. The periods during which each thermal factor was in a comfortable range increased, and overshoots and undershoots out of the targeted comfortable ranges were reduced when using the ANN model. The results demonstrate the functionality of the proposed method for variation in architectural variables and that the ANN model has the potential to be successfully applied to building thermal controls.
机译:这项研究提出了一种先进的热控制方法,该方法采用人工神经网络(ANN)模型进行预测和自适应热控制。提出了两种预测和自适应控制逻辑方法,以同时控制住宅建筑物中的室内温度和湿度以及预测平均投票(PMV)。对它们的热性能进行了分析,并将其与非基于ANN的同类产品进行比较,以评估建筑变量,例如围护结构的隔热性和建筑物的方向。在与现场测量结果进行比较的基础上证明了其有效性之后,使用了一种数字计算机仿真方法进行了测试。分析结果表明,所提出的预测和自适应控制方法有效地调节了室内温度,湿度和PMV。使用ANN模型时,增加每个热因子在舒适范围内的时间,并减少超出目标舒适范围的过冲和下冲。结果证明了所提出的方法可用于改变建筑变量的功能,并且ANN模型具有成功应用于建筑热控制的潜力。

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