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A new zone temperature predictive modeling for energy saving in buildings

机译:建筑物节能的新区温度预测模型

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Currently in most buildings, the heating, ventilation and air conditioning (HVAC) systems are controlled by the present temperature in the building. If the predictions for future temperature in the building or a zone were available, the building management system (BMS) could use both present and future temperatures to control HVAC systems, the energy consumed by HAVC systems could then be minimised. Therefore, a lot of research effort has been devoted to develop accurate temperature prediction models using various approaches, e.g. traditional thermodynamic, artificial neural networks (ANN), generic algorithms (GA) and fuzzy logic approaches. When the historical data of the building is available, the ANN approach is thought to be the most cost-effective method. Most of previous studies of ANN modelling of building temperature, have either focused on single-zone examination or assumed that zones' temperatures were the same throughout the building. In this study, a more realistic multi-zone scenario in a large building is proposed in the developing of the ANN temperature predictive model. The coupled effects between zones caused by the temperature difference are considered in the model. The results of a case study show that the new ANN model that considers the temperatures of the neighbouring zones, achieves more accurate results. The proposed modelling methodology can be extended to include other inputs, besides neighboring zones' temperatures, usage pattern of the building, so that the better intelligent control strategies can be developed for energy saving purposes, based on the more accurate predicted temperatures form the new model.
机译:目前在大多数建筑物中,加热,通风和空调(HVAC)系统由建筑物中的当前温度控制。如果建筑物或区域的未来温度的预测可用,建筑物管理系统(BMS)可以使用目前和未来的温度来控制HVAC系统,然后可以最小化HAVC系统消耗的能量。因此,许多研究努力使用各种方法开发精确的温度预测模型,例如,传统的热力学,人工神经网络(ANN),通用算法(GA)和模糊逻辑方法。当建筑物的历史数据可用时,ANN方法被认为是最具成本效益的方法。以前的大多数ANN建模的建筑温度研究,要么专注于单区域检查,或者假设在整个建筑物中的温度相同。在这项研究中,在Ann温度预测模型的发展中提出了在大型建筑中更现实的多区情景。在模型中考虑由温差引起的区域之间的耦合效应。案例研究的结果表明,考虑邻区温度的新ANN模型,实现了更准确的结果。所提出的建模方法可以扩展到包括其他投入,除了周边区的温度,建筑物的使用模式,从而更好的智能控制策略可以用于节能目的开发的基础上,更准确的预测温度形成的新模式。

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