Smart City Gnosys

Smart city article details

Title A Novel Strategy To Estimate And Manage The Power Consumption Of Household Appliances
ID_Doc 3549
Authors Mano Jemila M.R.; Pushpalatha K.S.; Mithuna H.R.; Supriya C.; Maheswari K.T.; Rajendiran M.
Year 2024
Published 7th International Conference on Inventive Computation Technologies, ICICT 2024
DOI http://dx.doi.org/10.1109/ICICT60155.2024.10544992
Abstract Residential and commercial buildings account for approximately 26.6% and 21.2% of worldwide electrical power consumption, respectively. Because of the increasing need for energy and the lack of present energy sources, there will be a significant challenge in the future. As a result, with the rise of Smart Cities and Smart Grids, it is becoming increasingly vital to have effective strategies for controlling and reducing the consumption of electricity. One method of achieving consumption management is to predict the power usage of household equipment. This study focuses on power usage prediction using data from the UCI repository. In the preprocessing step Checking for null values, eliminating outliers, and modifying data are performed. Following that, the essential features are selected for dimension reduction using the Principal Component Analysis (PCA) technique. The Deep Sequential Prediction Model (DSPM) is the suggested deep learning method for predicting power consumption. Finally the significance of feature extraction and the effectiveness of the proposed model is evaluated using the R2 score and MSE. The proposed model is compared with the standard Artificial Neural Network (ANN) model. To examine the importance of the PCA method, feature-extracted data (from a correlation plot) and pre-processed data (without feature extraction) are used. The simulation shows that power consumption prediction utilizing the PCA feature extraction module along with the proposed DSPM model provides an excellent R2 score. © 2024 IEEE.
Author Keywords Artificial Neural Network; Error Metrics; Power Consumption; Principal Component Analysis; UCI Repository


Similar Articles


Id Similarity Authors Title Published
23183 View0.888Binbusayyis A.; Sha M.Energy Consumption Prediction Using Modified Deep Cnn-Bi Lstm With Attention MechanismHeliyon, 11, 1 (2025)
17543 View0.873Aurangzeb K.Dbscan-Based Energy Users Clustering For Performance Enhancement Of Deep Learning ModelJournal of Intelligent and Fuzzy Systems, 46, 3 (2024)
3739 View0.872Noaman S.A.; Ahmed A.M.S.; Salman A.D.A Prediction Model Of Power Consumption In Smart City Using Hybrid Deep Learning AlgorithmInternational Journal on Informatics Visualization, 7, 4 (2023)
1342 View0.867Xin Q.; Alazab M.; Díaz V.G.; Montenegro-Marin C.E.; Crespo R.G.A Deep Learning Architecture For Power Management In Smart CitiesEnergy Reports, 8 (2022)
42836 View0.867Sarkar P.K.; Sarkar P.K.; Bin Atique M.M.A.Prediction Of Power Consumption In Smart Grid: A Reliable Path To A Smart City Based On Various Machine Learning ModelsInternational Conference on Recent Progresses in Science, Engineering and Technology, ICRPSET 2022 (2022)
31214 View0.863Aurangzeb K.; Haider S.I.; Alhussein M.Individual Household Load Forecasting Using Bi-Directional Lstm Network With Time-Based EmbeddingEnergy Reports, 11 (2024)
22062 View0.862Mo Y.; Zhao D.; Syal M.Effective Features To Predict Residential Energy Consumption Using Machine LearningComputing in Civil Engineering 2019: Smart Cities, Sustainability, and Resilience - Selected Papers from the ASCE International Conference on Computing in Civil Engineering 2019 (2019)
45985 View0.862Alomoush W.; Khan T.A.; Nadeem M.; Janjua J.I.; Saeed A.; Athar A.Residential Power Load Prediction In Smart Cities Using Machine Learning Approaches2022 International Conference on Business Analytics for Technology and Security, ICBATS 2022 (2022)
48668 View0.86Aurangzeb K.Short Term Power Load Forecasting Using Machine Learning Models For Energy Management In A Smart Community2019 International Conference on Computer and Information Sciences, ICCIS 2019 (2019)
9463 View0.86Singh T.; Solanki A.; Sharma S.K.Analytical Study Of Machine Learning Techniques On The Smart Home Energy ConsumptionAIP Conference Proceedings, 2938, 1 (2023)