Journal ArticleOpen Access
HSIC Bottleneck Based Distributed Deep Learning Model for Load Forecasting in Smart Grid With a Comprehensive Survey
Authors
Author Affiliations
Asian University of Bangladesh, National University of Malaysia, Oregon Institute of Technology
Published InIEEE Access
Year2020
Citations96
Abstract
Load forecasting is a vital part of smart grids for predicting the required electrical power using artificial intelligence (AI). Deep learning is broadly used for load forecasting in the smart grid using the artificial neural network (ANN). Generally, computing the deep learning in the smart grid requires massive data aggregation or centralization and significant computational time. This paper presents a survey of deep learning-based load forecasting techniques from 2015 to 2020. This survey discusses the studies based on their deep learning techniques, Distributed Deep Learning (DDL) techniques, Back Propagation (BP) based works, and non-BP based works in the load forecasting process. Consequent to the survey, it was determined that data aggregation dependency would be beneficial for reducing computational time in…
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Fields & Keywords
Physical SciencesEngineeringElectrical and Electronic EngineeringEnergy Load and Power ForecastingTraffic Prediction and Management TechniquesSmart Grid Energy ManagementArtificial intelligenceMachine learningDistributed computingData miningEmbedded systemOperating systemElectrical engineeringGeometry