Application of Fuzzy-RBF-CNN Ensemble Model for Short-Term Load Forecasting

M. Yadav, M. Jamil, M. Rizwan, Richa Kapoor
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引用次数: 1

Abstract

Accurate load forecasting (LF) plays an important role in the operation and decision-making process of the power grid. Although the stochastic and nonlinear behavior of loads is highly dependent on consumer energy requirements, that demands a high level of accuracy in LF. In spite of several research studies being performed in this field, accurate load forecasting remains an important consideration. In this article, the design of a hybrid short-term load forecasting model (STLF) is proposed. This work combines the features of an artificial neural network (ANN), ensemble forecasting, and a deep learning network. RBFNNs and CNNs are trained in two phases using the functional link artificial neural network (FLANN) optimization method with a deep learning structure. The predictions made from RBFNNs have been computed and produced as the forecast of each activated cluster. This framework is known as fuzzy-RBFNN. This proposed framework is outlined to anticipate one-week ahead load demand on an hourly basis, and its accuracy is determined using two case studies, i.e., Hellenic and Cretan power systems. Its results are validated while comparing with four benchmark models like multiple linear regression (MLR), support vector machine (SVM), ML-SVM, and fuzzy-RBFNN in terms of accuracy. To demonstrate the performance of RBF-CNN, SVMs replace the RBF-CNN regressor, and this model is identified as an ML-SVM having 3 layers.
模糊- rbf - cnn集成模型在短期负荷预测中的应用
准确的负荷预测在电网运行和决策过程中起着重要的作用。虽然负载的随机和非线性行为高度依赖于消费者的能量需求,但这就要求LF具有很高的精度。尽管在这一领域进行了一些研究,但准确的负荷预测仍然是一个重要的考虑因素。本文提出了一种混合短期负荷预测模型的设计方法。这项工作结合了人工神经网络(ANN)、集成预测和深度学习网络的特点。采用具有深度学习结构的功能链接人工神经网络(FLANN)优化方法,分两阶段对rbfnn和cnn进行训练。对rbfnn的预测结果进行了计算,并生成了每个激活簇的预测结果。这个框架被称为fuzzy-RBFNN。这一拟议的框架概述是为了以每小时为基础预测未来一周的负荷需求,其准确性是通过两个案例研究确定的,即希腊和克里特岛的电力系统。通过与多元线性回归(MLR)、支持向量机(SVM)、ML-SVM、fuzzy-RBFNN四种基准模型的准确率比较,验证了其结果。为了证明RBF-CNN的性能,svm取代了RBF-CNN回归量,该模型被识别为具有3层的ML-SVM。
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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