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Neural network model for short-term and very-short-term load forecasting in district buildings

机译:区域建筑物中短期和超短期负荷预测的神经网络模型

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Load forecasting plays an important role in energy management in smart buildings. It is expected that precise prediction of loads can bring significant economic benefits to smart buildings by enabling accurate demand response strategies for peak load reduction, reducing electricity use and integrating distributed energy resources. The complexity increases for load prediction in case of a district of buildings having much functional diversity and including several heterogenous buildings-blocks. The main goal of this paper is to present a comprehensive and detailed study for very-short term and short-term load forecasting in a district building using artificial neural network (ANN). The main objectives of this paper are: (a) Evaluate the performance of the ANN considering two back-propagation learning algorithms, namely Bayesian regularization (BR) and Levenberg-Marquardt (LM); (b) Analyse the relative performance of the model for hour-ahead and day-ahead load forecasting for different types of buildings; (c) Investigate how the network design parameters such as number of hidden layers, hidden neurons, number of inputs and training data affect the model's ability to accurately forecast loads. In order to demonstrate the efficiency of the proposed approach, it is examined on real-world data of a Campus in downtown Montreal that includes many types of buildings. (C) 2019 Elsevier B.V. All rights reserved.
机译:负荷预测在智能建筑的能源管理中起着重要作用。可以预期,通过实现精确的需求响应策略来减少峰值负载,减少用电量并整合分布式能源,精确的负载预测可以为智能建筑带来巨大的经济利益。在具有大量功能多样性并包括几个异构建筑块的建筑物区域的情况下,负荷预测的复杂性增加。本文的主要目的是针对使用人工神经网络(ANN)的区域建筑物中的短期和短期负荷预测进行全面而详细的研究。本文的主要目标是:(a)考虑两种反向传播学习算法,即贝叶斯正则化(BR)和Levenberg-Marquardt(LM),评估ANN的性能; (b)分析该模型对不同类型建筑物的提前小时和提前一天负荷预测的相对性能; (c)研究网络设计参数(例如隐藏层数,隐藏神经元,输入数和训练数据)如何影响模型准确预测负荷的能力。为了证明所提出方法的有效性,我们对蒙特利尔市中心一个校园的真实数据进行了检验,该校园包括许多类型的建筑物。 (C)2019 Elsevier B.V.保留所有权利。

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