Deep learning in smart grid technology: A review of recent advancements and future prospects
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 promising landscape for high grid reliability and efficient energy management. This …
A comprehensive review on deep learning approaches for short-term load forecasting
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 …
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
This paper proposes an effective Photovoltaic (PV) Power Forecasting (PVPF) technique
based on hierarchical learning combining Nonlinear Auto-Regressive Neural Networks with …
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
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 …
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
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 …
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 …
flexible resources to meet growing computational demands. However, managing fluctuating …
Learning approach for energy consumption forecasting in residential microgrid
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 …
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
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 …
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
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 …
models in time series analysis, specifically focusing on their application in prediction tasks of …
Harnessing AI for solar energy: Emergence of transformer models
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 …
grids. It meticulously examines the advancements in transformer models for solar …