Abstract
Short-term load forecasting models play a critical role in distribution companies in making effective decisions in their planning and scheduling for production and load balancing. Unlike aggregated load forecasting at the distribution level or substations, forecasting load profiles of many end-users at the customer-level, thanks to smart meters, is a complicated problem due to the high variability and uncertainty of load consumptions as well as customer privacy issues. In terms of customers’ short-term load forecasting, these models include a high level of nonlinearity between input data and output predictions, demanding more robustness, higher prediction accuracy, and generalizability. In this paper, we develop an advanced preprocessing technique coupled with a hybrid sequential learning-based energy forecasting model that employs a convolution neural network (CNN) and bidirectional long short-term memory (BLSTM) within a unified framework for accurate energy consumption prediction. The energy consumption outliers and feature clustering are extracted at the advanced preprocessing stage. The novel hybrid deep learning approach based on data features coding and decoding is implemented in the prediction stage. The proposed approach is tested and validated using real-world datasets in Turkey, and the results outperformed the traditional prediction models compared in this paper.
Highlights
This study proposes advanced preprocessing techniques for load profile clustering and a hybrid deep learning (DL) algorithm, which is convolution neural network (CNN)—bidirectional long short-term memory (BLSTM), for short-term load forecasting of real big data sets in Turkey
The input of the prediction model is the historical energy consumption values of customers in Turkey collected by the smart meters of the customers
This paper proposes advanced preprocessing tools and hybrid deep learning models that applied to one-hundred electricity consumers in 2018
Summary
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Short-term load forecasting has a vital role in making fast and reliable decisions for distribution systems. Recent improvements in the smart grid, especially with the introduction of smart meters, have led to a significant increase in the amount of data. Analyzing these big data produced by smart meters and understanding diverse patterns of electricity consumption by customers can help to create more accurate load prediction models
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