A Non-Linear Auto-Regressive With Exogenous Inputs (NARX) Artificial Neural Network (ANN) Model for Building Thermal Load Prediction

B. Yu, Dongsu Kim, Heejin Cho, P. Mago
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Abstract

Thermal load prediction is a key part of energy system management and control in buildings, and its accuracy plays a critical role to improve and maintain building energy performance and efficiency. To address this issue, various types of prediction model have been considered and studied, such as physics-based, statistical, and machine learning models. Physical models can be accurate but require extended lead time for model development. Statistical models are relatively simple to develop and require less computation time than other models, but they may not provide accurate results for complex energy systems with an intricate nonlinear dynamic behavior. This study proposes an Artificial Neural Network (ANN) model, one of the prevalent machine learning methods to predict building thermal load, combining with the concept of Non-linear Auto-Regression with Exogenous inputs (NARX). NARX-ANN prediction model is distinguished from typical ANN models due to the fact that the NARX concept can address nonlinear system behaviors effectively based on recurrent architectures and time indexing features. To examine the suitability and validity of NARX-ANN model for building thermal load prediction, a case study is carried out using field data of an academic campus building at Mississippi State University. Results show that the proposed NARX-ANN model can provide an accurate prediction performance and effectively address nonlinear system behaviors in the prediction.
建筑热负荷预测的非线性自回归外源输入(NARX)人工神经网络(ANN)模型
热负荷预测是建筑能源系统管理与控制的重要组成部分,其准确性对提高和保持建筑能源性能和效率起着至关重要的作用。为了解决这个问题,人们考虑和研究了各种类型的预测模型,如基于物理的、统计的和机器学习的模型。物理模型可以是准确的,但是需要延长模型开发的前置时间。与其他模型相比,统计模型的建立相对简单,计算时间也较少,但对于具有复杂非线性动力学行为的复杂能源系统,统计模型可能无法提供准确的结果。本文结合外生输入非线性自回归(NARX)的概念,提出了一种预测建筑热负荷的人工神经网络(ANN)模型,这是一种流行的机器学习方法之一。NARX-ANN预测模型不同于典型的人工神经网络模型,因为NARX概念可以基于循环结构和时间索引特征有效地处理非线性系统行为。为了验证NARX-ANN模型在建筑热负荷预测中的适用性和有效性,以密西西比州立大学某学术校园建筑为例进行了现场数据分析。结果表明,所提出的NARX-ANN模型能够提供准确的预测性能,并能有效地处理预测中的非线性系统行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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