Predicting Peak Energy Demand for an Office Building Using Artificial Intelligence (AI) Approaches

Yuxuan Chen, P. Phelan
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Abstract

Due to the technological advancement in smart buildings and the smart grid, there is increasing desire of managing energy demand in buildings to achieve energy efficiency. In this context, building energy prediction has become an essential approach for measuring building energy performance, assessing energy system efficiency, and developing energy management strategies. In this study, two artificial intelligence techniques (i.e., ANN = artificial neural networks and SVR = support vector regression) are examined and used to predict the peak energy demand to estimate the energy usage for an office building on a university campus based on meteorological and historical energy data. Two-year energy and meteorological data are used, with one year for training and the following year for testing. To investigate the seasonal load trend and the prediction capabilities of the two approaches, two experiments are conducted relying on different scales of training data. In total, 10 prediction models are built, with 8 models implemented on seasonal training datasets and 2 models employed using year-round training data. It is observed that a backpropagation neural network (BPNN) performs better than SVR when dealing with more data, leading to stable generalization and low prediction error. When dealing with less data, it is found that there is no dominance of one approach over another.
使用人工智能(AI)方法预测办公大楼的峰值能源需求
由于智能建筑和智能电网的技术进步,人们越来越希望管理建筑中的能源需求以实现能源效率。在此背景下,建筑能源预测已成为衡量建筑能源性能、评估能源系统效率和制定能源管理策略的重要方法。在本研究中,研究了两种人工智能技术(即ANN =人工神经网络和SVR =支持向量回归),并将其用于预测峰值能源需求,以估计基于气象和历史能源数据的大学校园办公楼的能源使用量。使用两年的能源和气象数据,一年用于培训,次年用于测试。为了研究两种方法的季节性负荷趋势和预测能力,分别在不同规模的训练数据上进行了两项实验。共构建了10个预测模型,其中8个模型在季节训练数据集上实现,2个模型在全年训练数据集上实现。研究发现,当处理更多数据时,反向传播神经网络(BPNN)的性能优于支持向量回归(SVR),具有稳定的泛化和低的预测误差。当处理较少的数据时,发现没有一种方法优于另一种方法。
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