基于高斯过程回归的总体基线负荷预测

Kadir Amasyali, M. Olama
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引用次数: 0

摘要

需求响应是维持电力系统可靠性和提高电力系统灵活性的最有效手段之一。对基线负荷的准确预测对灾备计划至关重要。在大数据时代,基于机器学习的方法为基线负荷预测提供了独特的机会。因此,本文提出了一种基于机器学习的方法,使用一种相对较少探索的算法,高斯过程回归(GPR),来预测总基线负载。因此,使用一组EnergyPlus模拟生成了一个数据集。利用生成的数据集,建立了基于gpr的预测模型。此外,还开发了支持向量回归(SVR)-、人工神经网络(ANN)-和基于平均的模型作为基线模型进行比较。这些模型在准确性、简单性和完整性方面进行了比较。模型的预测性能表明,基于gpr的模型比其他模型更准确、可靠。如此优异的性能显示了GPR在基线负荷预测方面的潜力。因此,GPR技术可以用于容灾。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian Process Regression for Aggregate Baseline Load Forecasting
Demand response (DR) is one of the most effective ways to maintain the reliability and improve the flexibility of power systems. Accurate forecasts of baseline loads are essential for DR programs. In the era of big data, machine learning-based approaches present a unique opportunity for baseline load forecasting. Thus, this paper presents a machine learning-based approach using a relatively less explored algorithm, Gaussian process regression (GPR), to forecast aggregate baseline loads. As such, a dataset was generated using a set of EnergyPlus simulations. Using the generated dataset, a GPR-based forecasting model was developed. In addition, support vector regression (SVR)-, artificial neural network (ANN)-, and averaging-based models were developed as baseline models for comparison. These models were compared in terms of accuracy, simplicity, and integrity. The prediction performance of the models showed that the GPR-based model is more accurate and reliable than the others. Such high performance shows the potential of the GPR in baseline load forecasting. GPR, therefore, can be used for DR applications.
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