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Real-time prediction model for indoor temperature in a commercial building

机译:商业建筑室内温度实时预测模型

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摘要

Indoor environmental parameters have significant influence on commercial building energy consumption and indoor thermal comfort. Prediction of these parameters, especially that of indoor air temperature, along with continuous monitoring and control of real world parameters can aid in the management of energy consumption and thermal comfort levels in existing buildings. An accurate indoor temperature prediction model assists in achieving an effective energy management strategy such as resetting air temperature set-points in commercial buildings. This study examines the real indoor environmental data for multiple adjacent zones in a commercial building in the context of thermal comfort and identifies the possibility of resetting air temperature set-point without compromising the occupant comfort level. Also, the value of predicting the indoor temperature accurately in such a building is established through this case study. This study presents a nonlinear autoregressive network with exogenous inputs-based system identification method to predict indoor temperature. During model development efforts have been paid to optimize the performance of the model in terms of complexity, prediction results and ease of application to a real system. The performance of single-zone and multi-zone prediction models is evaluated using different combinations and sizes of training data-sets. This study confirms that evaluating the performance of the model in the context of major contributing aspects such as optimal input parameters and network size, optimum size of training data, etc. offers optimized model performance. Thus, when the developed model is used for long-term prediction, it provides better prediction performance for an extended time span compared to existing studies. Therefore, it is anticipated that implementation of this long-term prediction model will offer greater energy savings and improved indoor environmental conditions through optimizing the set-point temperatures.
机译:室内环境参数对商业建筑的能耗和室内热舒适度有重要影响。这些参数的预测,尤其是室内空气温度的预测,以及对现实世界参数的连续监视和控制,可以帮助管理现有建筑物的能耗和热舒适度。准确的室内温度预测模型有助于实现有效的能源管理策略,例如重置商业建筑中的空气温度设定点。这项研究在热舒适度的背景下检查了商业建筑中多个相邻区域的实际室内环境数据,并确定了在不损害乘员舒适度的前提下重置空气温度设定点的可能性。此外,通过此案例研究,可以确定在这种建筑物中准确预测室内温度的价值。这项研究提出了一种基于自输入的基于系统识别方法的非线性自回归网络预测室内温度。在模型开发过程中,已经付出了很多努力来优化模型的性能,包括复杂性,预测结果和易于应用于实际系统。使用训练数据集的不同组合和大小来评估单区域和多区域预测模型的性能。这项研究证实,在主要贡献方面(例如最佳输入参数和网络大小,训练数据的最佳大小等)的情况下评估模型的性能可提供优化的模型性能。因此,当将开发的模型用于长期预测时,与现有研究相比,它在更长的时间范围内提供了更好的预测性能。因此,可以预料,通过优化设定点温度,该长期预测模型的实施将提供更多的能源节省和改善的室内环境条件。

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