Abstract

Different aggregation levels of the electric grid’s big data can be helpful to develop highly accurate deep learning models for Short-term Load Forecasting (STLF) in electrical networks. Whilst different models are proposed for STLF, they are based on small historical datasets and are not scalable to process large amounts of big data as energy consumption data grow exponentially in large electric distribution networks. This paper proposes a novel hybrid clustering-based deep learning approach for STLF at the distribution transformers’ level with enhanced scalability. It investigates the gain in training time and the performance in terms of accuracy when clustering-based deep learning modeling is employed for STLF. A k-Medoid based algorithm is employed for clustering whereas the forecasting models are generated for different clusters of load profiles. The clustering of the distribution transformers is based on the similarity in energy consumption profile. This approach reduces the training time since it minimizes the number of models required for many distribution transformers. The developed deep neural network consists of six layers and employs Adam optimization using the TensorFlow framework. The STLF is a day-ahead hourly horizon forecasting. The accuracy of the proposed modeling is tested on a 1,000-transformer substation subset of the Spanish distribution electrical network data containing more than 24 million load records. The results reveal that the proposed model has superior performance when compared to the state-of-the-art STLF methodologies. The proposed approach delivers an improvement of around 44% in training time while maintaining accuracy using single-core processing as compared to non-clustering models.

Highlights

  • The technological advancement in the smart grid has the goal to optimally serve the electric power generation, The associate editor coordinating the review of this manuscript and approving it for publication was Xiaochun Cheng.transmission, and distribution [1]

  • OF CLUSTERING-BASED MODELS The current work focuses on the application of clustering by energy consumption patterns at the transformer level to enhance the performance of forecasting

  • The methodology determines the clusters of similar transformers based on a similarity metric of aggregate daily energy consumption after which the data are sent to the machine learning models

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Summary

Introduction

The technological advancement in the smart grid has the goal to optimally serve the electric power generation, The associate editor coordinating the review of this manuscript and approving it for publication was Xiaochun Cheng.transmission, and distribution [1]. The technological advancement in the smart grid has the goal to optimally serve the electric power generation, The associate editor coordinating the review of this manuscript and approving it for publication was Xiaochun Cheng. The development of information technology, two-way communication system, and customer engagements will significantly increase the amount of generated and collected data of the grid [10]. The advancement of sensors has penetrated the electrical systems leading the way for smarter grids that use smart meters [11]. The massive amount of data collected by various sensors and smart meters are of high velocity, variety, veracity, value, and volume, satisfy all the big data characteristics [12], [13]

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