Javascript must be enabled to continue!
Electricity Price and Load Forecasting using Enhanced Convolutional Neural Network and Enhanced Support Vector Regression in Smart Grids
View through CrossRef
Short-Term Electricity Load Forecasting (STELF) through Data Analytics (DA) is an emerging and active research area. Forecasting about electricity load and price provides future trends and patterns of consumption. There is a loss in generation and use of electricity. So, multiple strategies are used to solve the aforementioned problems. Day-ahead electricity price and load forecasting are beneficial for both suppliers and consumers. In this paper, Deep Learning (DL) and data mining techniques are used for electricity load and price forecasting. XG-Boost (XGB), Decision Tree (DT), Recursive Feature Elimination (RFE) and Random Forest (RF) are used for feature selection and feature extraction. Enhanced Convolutional Neural Network (ECNN) and Enhanced Support Vector Regression (ESVR) are used as classifiers. Grid Search (GS) is used for tuning of the parameters of classifiers to increase their performance. The risk of over-fitting is mitigated by adding multiple layers in ECNN. Finally, the proposed models are compared with different benchmark schemes for stability analysis. The performance metrics MSE, RMSE, MAE, and MAPE are used to evaluate the performance of the proposed models. The experimental results show that the proposed models outperformed other benchmark schemes. ECNN performed well with threshold 0.08 for load forecasting. While ESVR performed better with threshold value 0.15 for price forecasting. ECNN achieved almost 2% better accuracy than CNN. Furthermore, ESVR achieved almost 1% better accuracy than the existing scheme (SVR).
Title: Electricity Price and Load Forecasting using Enhanced Convolutional Neural Network and Enhanced Support Vector Regression in Smart Grids
Description:
Short-Term Electricity Load Forecasting (STELF) through Data Analytics (DA) is an emerging and active research area.
Forecasting about electricity load and price provides future trends and patterns of consumption.
There is a loss in generation and use of electricity.
So, multiple strategies are used to solve the aforementioned problems.
Day-ahead electricity price and load forecasting are beneficial for both suppliers and consumers.
In this paper, Deep Learning (DL) and data mining techniques are used for electricity load and price forecasting.
XG-Boost (XGB), Decision Tree (DT), Recursive Feature Elimination (RFE) and Random Forest (RF) are used for feature selection and feature extraction.
Enhanced Convolutional Neural Network (ECNN) and Enhanced Support Vector Regression (ESVR) are used as classifiers.
Grid Search (GS) is used for tuning of the parameters of classifiers to increase their performance.
The risk of over-fitting is mitigated by adding multiple layers in ECNN.
Finally, the proposed models are compared with different benchmark schemes for stability analysis.
The performance metrics MSE, RMSE, MAE, and MAPE are used to evaluate the performance of the proposed models.
The experimental results show that the proposed models outperformed other benchmark schemes.
ECNN performed well with threshold 0.
08 for load forecasting.
While ESVR performed better with threshold value 0.
15 for price forecasting.
ECNN achieved almost 2% better accuracy than CNN.
Furthermore, ESVR achieved almost 1% better accuracy than the existing scheme (SVR).
Related Results
Enhanced K-NN with Bayesian Optimization Algorithm for Predicting Energy Efficiency of Smart Grids in IoT
Enhanced K-NN with Bayesian Optimization Algorithm for Predicting Energy Efficiency of Smart Grids in IoT
Abstract
With the increasing number of end users using electricity in modern cities, smart grids have some critical problems for energy efficiency and managing renewable en...
THE IMPACT OF SMART GRIDS ON ENERGY EFFICIENCY: A COMPREHENSIVE REVIEW
THE IMPACT OF SMART GRIDS ON ENERGY EFFICIENCY: A COMPREHENSIVE REVIEW
Smart grids have emerged as a key technology in the quest for energy efficiency and sustainability. This review provides a comprehensive analysis of the impact of smart grids on en...
HIRA Model for Short-Term Electricity Price Forecasting
HIRA Model for Short-Term Electricity Price Forecasting
In competitive power markets, electric utilities, power producers, and traders are exposed to increased risks caused by electricity price volatility. The growing reliance on renewa...
Electric Load Forecasting Based on Deep Ensemble Learning
Electric Load Forecasting Based on Deep Ensemble Learning
Short-to-medium-term electric load forecasting is crucial for grid planning, transformation, and load scheduling for power supply departments. Various complex and ever-changing fac...
Point-Interval Forecasting for Electricity Load Based on Regular Fluctuation Component Extraction
Point-Interval Forecasting for Electricity Load Based on Regular Fluctuation Component Extraction
The fluctuation and uncertainty of the electricity load bring challenges to load forecasting. Traditional point forecasting struggles to avoid errors, and pure interval forecasting...
Dynamic Hybrid Model for Short-Term Electricity Price Forecasting
Dynamic Hybrid Model for Short-Term Electricity Price Forecasting
Accurate forecasting tools are essential in the operation of electric power systems, especially in deregulated electricity markets. Electricity price forecasting is necessary for a...
[RETRACTED] Keanu Reeves CBD Gummies v1
[RETRACTED] Keanu Reeves CBD Gummies v1
[RETRACTED]Keanu Reeves CBD Gummies ==❱❱ Huge Discounts:[HURRY UP ] Absolute Keanu Reeves CBD Gummies (Available)Order Online Only!! ❰❰= https://www.facebook.com/Keanu-Reeves-CBD-G...
Security with Wireless Sensor Networks in Smart Grids: A Review
Security with Wireless Sensor Networks in Smart Grids: A Review
Smart Grids are an area where next-generation technologies, applications, architectures, and approaches are utilized. These grids involve equipping and managing electrical systems ...

