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ANN-based thermal control models for residential buildings

机译:基于ANN的住宅建筑热控制模型

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This study aimed to develop an Artificial Neural Network (ANN)-based advanced thermal control method for creating more comfortable thermal environments in residential buildings. The proposed control method consisted of a thermal control logic framework with four thermal control logics therein, including two predictive and adaptive logics using ANN models, and a system hardware framework. The models were designed to achieve thermal comfort for living areas, taking into account not only air temperature, but also humidity or PMV as a control variable; and to reduce overshoots and undershoots of a control variable using ANN-based predictive and adaptive control. Incorporating IBPT (International Building Physics Toolbox) and MATLAB, a typical two-story single-family home in the US. was modelled for testing the performance of developed thermal control methods. Analysis revealed that ANN-based predictive and adaptive control strategies created more comfortable thermal conditions than did typical thermostat systems in terms of increased comfort period of air temperature, humidity, and PMV, and reduced over and undershoots. Thus, the proposed control methods using ANN can be concluded to have the potential for enhancing thermal comfort in residential buildings.
机译:这项研究旨在开发一种基于人工神经网络(ANN)的高级热控制方法,以在住宅建筑中创建更舒适的热环境。所提出的控制方法包括其中具有四个热控制逻辑的热控制逻辑框架,包括使用ANN模型的两个预测和自适应逻辑,以及一个系统硬件框架。这些模型的设计旨在为居住区提供热舒适性,不仅考虑气温,而且考虑湿度或PMV作为控制变量。并使用基于ANN的预测和自适应控制来减少控制变量的过冲和下冲。结合了IBPT(国际建筑物理工具箱)和MATLAB,这是美国典型的两层独栋住宅。为测试已开发的热控制方法的性能而建模。分析表明,基于ANN的预测和自适应控制策略在增加空气温度,湿度和PMV的舒适期,并减少过冲和下冲方面,比典型的恒温器系统创造了更舒适的热工条件。因此,可以推断出使用人工神经网络的控制方法具有增强居住建筑热舒适性的潜力。

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