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Development of a cooling load prediction model for air-conditioning system control of office buildings

机译:办公大楼空调系统控制的冷负荷预测模型的开发

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摘要

Building cooling load prediction is of critical importance for achieving energy saving of air-conditioning system in office buildings. It not only benefits the energy-efficiency of the air-conditioning system, but is also important for the system stability. Many techniques have been developed for building cooling load prediction. These methods are normally arranged into three categories: regression analysis, energy simulation and artificial intelligence. Among them, the regression analysis methods are simple in mechanism and much practical for real application. However, traditional regression models are not sufficient to manage multi-parameter dynamic changes, and the outliers in prediction has not been well considered, making the accuracy of cooling load prediction not satisfactory. To promote the feasibility of regression methods for cooling load prediction of office buildings, an efficient regression model based on sensitivity analysis and the traditional autoregressive with exogenous (ARX) model (named as improved ARX model) is proposed in this paper. The improved ARX model keeps the constitution of ARX model, but uses specified variables that selected by sensitivity analysis. The quadratic terms of vital variables are included to reduce the impact of system non-linearity. A least square method is used to get the weight coefficient matrix for model training. Comparison studies are used to evaluate the prediction accuracy of the improved ARX model. The proposed model will largely improve prediction accuracy and more adaptive for real applications in the perspective of optimal control for HVAC systems.
机译:建筑物冷负荷的预测对于实现办公楼空调系统的节能至关重要。它不仅有益于空调系统的能源效率,而且对于系统的稳定性也很重要。已经开发了许多用于建筑物冷却负荷预测的技术。这些方法通常分为三类:回归分析,能量模拟和人工智能。其中,回归分析方法机制简单,对实际应用非常实用。然而,传统的回归模型不足以管理多参数动态变化,并且尚未很好地考虑预测中的异常值,这使得冷却负荷预测的准确性无法令人满意。为了提高回归分析方法在办公楼冷负荷预测中的可行性,提出了一种基于灵敏度分析和传统外生自回归模型的改进回归模型(称为改进的ARX模型)。改进的ARX模型保留了ARX模型的构造,但是使用通过敏感性分析选择的指定变量。包括生命变量的二次项以减少系统非线性的影响。使用最小二乘法来获得用于模型训练的权重系数矩阵。比较研究用于评估改进的ARX模型的预测准确性。从HVAC系统的最佳控制角度来看,所提出的模型将大大提高预测准确性,并更适合实际应用。

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