Energy forecasting has a vital role to play in smart grid (SG) systems involving various applications such as demand-side management, load shedding, and optimum dispatch. Managing efficient forecasting while ensuring the least possible prediction error is one of the main challenges posed in the grid today, considering the uncertainty and granularity in SG data. This paper presents a comprehensive and application-oriented review of state-of-the-art forecasting methods for SG systems along with recent developments in probabilistic deep learning (PDL) considering different models and architectures. Traditional point forecasting methods including statistical, machine learning (ML), and deep learning (DL) are extensively investigated in terms of...
Forecasting energy demand of residential buildings plays an important role in the operation of smart...
Smart grids and smart homes are getting people\u27s attention in the modern era of smart cities. The...
The complexity and nonlinearities of the modern power grid render traditional physical modeling and ...
With the growth of forecasting models, energy forecasting is used for better planning, operation, an...
Load forecasting has become crucial in recent years and become popular in forecasting area. Many dif...
Management and efficient operations in critical infrastructures such as smart grids take huge advant...
Electric power consumption short-term forecasting for individual households is an important and chal...
Renewable energy is essential for planet sustainability. Renewable energy output forecasting has a s...
This paper investigates the use of deep learning techniques in order to perform energy demand forec...
This study explores the implementation of advanced machine learning techniques to enhance the integr...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
Smart grids are able to forecast customers’ consumption patterns, i.e., their energy demand, and con...
This paper focuses on analytics of an extremely large dataset of smart grid electricity price and lo...
In this paper, we propose an improved Bayesian bidirectional long-short term memory (BiLSTM) neural ...
Despite advancements in smart grid (SG) technology, effective load forecasting utilizing big data or...
Forecasting energy demand of residential buildings plays an important role in the operation of smart...
Smart grids and smart homes are getting people\u27s attention in the modern era of smart cities. The...
The complexity and nonlinearities of the modern power grid render traditional physical modeling and ...
With the growth of forecasting models, energy forecasting is used for better planning, operation, an...
Load forecasting has become crucial in recent years and become popular in forecasting area. Many dif...
Management and efficient operations in critical infrastructures such as smart grids take huge advant...
Electric power consumption short-term forecasting for individual households is an important and chal...
Renewable energy is essential for planet sustainability. Renewable energy output forecasting has a s...
This paper investigates the use of deep learning techniques in order to perform energy demand forec...
This study explores the implementation of advanced machine learning techniques to enhance the integr...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
Smart grids are able to forecast customers’ consumption patterns, i.e., their energy demand, and con...
This paper focuses on analytics of an extremely large dataset of smart grid electricity price and lo...
In this paper, we propose an improved Bayesian bidirectional long-short term memory (BiLSTM) neural ...
Despite advancements in smart grid (SG) technology, effective load forecasting utilizing big data or...
Forecasting energy demand of residential buildings plays an important role in the operation of smart...
Smart grids and smart homes are getting people\u27s attention in the modern era of smart cities. The...
The complexity and nonlinearities of the modern power grid render traditional physical modeling and ...