Deep learning in smart grid technology: A review of recent advancements and future prospects

M Massaoudi, H Abu-Rub, SS Refaat, I Chihi… - IEEE …, 2021 - ieeexplore.ieee.org
The current electric power system witnesses a significant transition into Smart Grids (SG) as
a promising landscape for high grid reliability and efficient energy management. This …

A comprehensive review on deep learning approaches for short-term load forecasting

Y Eren, İ Küçükdemiral - Renewable and Sustainable Energy Reviews, 2024 - Elsevier
The balance between supplied and demanded power is a crucial issue in the economic
dispatching of electricity energy. With the emergence of renewable sources and data-driven …

An effective hybrid NARX-LSTM model for point and interval PV power forecasting

M Massaoudi, I Chihi, L Sidhom, M Trabelsi… - Ieee …, 2021 - ieeexplore.ieee.org
This paper proposes an effective Photovoltaic (PV) Power Forecasting (PVPF) technique
based on hierarchical learning combining Nonlinear Auto-Regressive Neural Networks with …

Optimized short-term load forecasting in residential buildings based on deep learning methods for different time horizons

A Irankhah, MH Yaghmaee, S Ershadi-Nasab - Journal of Building …, 2024 - Elsevier
The aim of this paper is to develop machine learning based framework to short-term load
forecasting with high accuracy for residential building. The purpose is to develop a …

Accurate smart-grid stability forecasting based on deep learning: Point and interval estimation method

M Massaoudi, H Abu-Rub, SS Refaat… - 2021 IEEE Kansas …, 2021 - ieeexplore.ieee.org
The power grid stability is highly impacted by the fluctuating nature of renewable energy
sources. This paper proposes a deep learning method-based bidirectional gated recurrent …

[PDF][PDF] Optimizing Cloud Load Forecasting with a CNN-BiLSTM Hybrid Model

V Ramamoorthi - … Journal of Intelligent Automation and Computing, 2022 - researchgate.net
Cloud computing has emerged as a cornerstone for modern industries, offering scalable and
flexible resources to meet growing computational demands. However, managing fluctuating …

Learning approach for energy consumption forecasting in residential microgrid

VK Saini, R Singh, DK Mahto, R Kumar… - 2022 IEEE Kansas …, 2022 - ieeexplore.ieee.org
Residential energy consumption plays an important role in the social and economic
development of the country. Highly accurate forecasting can aid in decision making and …

[HTML][HTML] BiGRU-CNN neural network applied to short-term electric load forecasting

LD Soares, EMC Franco - Production, 2021 - SciELO Brasil
Paper aims This study analyzed the feasibility of the BiGRU-CNN artificial neural network as
a forecasting tool for short-term electric load. This forecasting model can serve as a support …

Application of Artificial Neural Networks for Power Load Prediction in Critical Infrastructure: A Comparative Case Study

M Aliyari, YZ Ayele - Applied System Innovation, 2023 - mdpi.com
This article aims to assess the effectiveness of state-of-the-art artificial neural network (ANN)
models in time series analysis, specifically focusing on their application in prediction tasks of …

Harnessing AI for solar energy: Emergence of transformer models

MF Hanif, J Mi - Applied Energy, 2024 - Elsevier
This review emphasizes the critical need for accurate integration of solar energy into power
grids. It meticulously examines the advancements in transformer models for solar …