Smart City Gnosys

Smart city article details

Title Enhancing Smart Grid Electricity Prediction With The Fusion Of Intelligent Modeling And Xai Integration
ID_Doc 23972
Authors Janjua J.I.; Ahmad R.; Abbas S.; Mohammed A.S.; Khan M.S.; Daud A.; Abbas T.; Khan M.A.
Year 2024
Published International Journal of Advanced and Applied Sciences, 11, 5
DOI http://dx.doi.org/10.21833/ijaas.2024.05.025
Abstract This study examines the vital role of accurate load forecasting in the energy planning of smart cities. It introduces a hybrid approach that uses machine learning (ML) to forecast electricity usage in homes, improving accuracy through the extraction of correlated features. The accuracy of predictions is assessed using loss functions and the root mean square error (RMSE). In response to increasing interest in explainable artificial intelligence (XAI), this paper proposes a framework for predicting energy consumption in smart homes. This user-friendly approach helps users understand their energy consumption patterns by employing shapley additive explanations (SHAP) techniques to provide clear explanations. The research uses gradient boosting and long short-term memory neural networks to forecast energy usage. In the context of sustainable urban development, it emphasizes the importance of conserving energy in homes. The paper explores AI and ML methods for predicting residential energy use, aiming to make socially meaningful impacts. It highlights the need to understand the factors affecting predictions to improve the accountability, reliability, and justification of decisions in energy optimization. Explainable AI techniques are used to gain insights into the prediction models and identify factors influencing household energy consumption. This research aids in decision-making processes related to electricity forecasting, advancing discussions on intelligent decision-making in power management, especially in smart grids and sustainable urban development. © 2024 The Authors. Published by IASE.
Author Keywords Energy forecasting; Explainable artificial intelligence; Machine learning; Residential energy conservation; Smart cities


Similar Articles


Id Similarity Authors Title Published
25356 View0.923Mohanty P.K.; Roy D.S.; Reddy K.H.K.Explainable Ai For Predicting Daily Household Energy UsagesInternational Conference on Artificial Intelligence and Data Engineering, AIDE 2022 (2022)
57684 View0.913Moon J.; Rho S.; Baik S.W.Toward Explainable Electrical Load Forecasting Of Buildings: A Comparative Study Of Tree-Based Ensemble Methods With Shapley ValuesSustainable Energy Technologies and Assessments, 54 (2022)
45985 View0.901Alomoush 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)
22572 View0.893Peteleaza D.; Matei A.; Sorostinean R.; Gellert A.; Fiore U.; Zamfirescu B.-C.; Palmieri F.Electricity Consumption Forecasting For Sustainable Smart Cities Using Machine Learning MethodsInternet of Things (Netherlands), 27 (2024)
42690 View0.892Mohanty P.K.; Das P.; Roy D.S.Predicting Daily Household Energy Usages By Using Model Agnostic Language For Exploration And ExplanationProceedings - 2022 OITS International Conference on Information Technology, OCIT 2022 (2022)
35996 View0.89Haque A.; Malik A.Machine Learning In Renewable Energy Systems For Smart CitiesSmart Cities: Power Electronics, Renewable Energy, and Internet of Things (2024)
48664 View0.889Shaikh A.K.; Nazir A.; Khan I.; Shah A.S.Short Term Energy Consumption Forecasting Using Neural Basis Expansion Analysis For Interpretable Time SeriesScientific Reports, 12, 1 (2022)
8072 View0.885Kumar Reddy K.H.; Behera R.K.; Gururaj M.H.; Bailayar Singh R.K.An Ensemble Learning Based Energy Forecasting Model: A Sustainable Home Energy Management System For Smart CityProcedia Computer Science, 258 (2025)
32444 View0.885Nijim M.; Kanumuri V.; Albetaineh H.; Goyal A.Intelligent Monitoring And Management Of Smart Buildings Using Machine Learning: Optimizing User Behavior And Energy EfficiencyProceedings - 2023 Congress in Computer Science, Computer Engineering, and Applied Computing, CSCE 2023 (2023)
48668 View0.884Aurangzeb 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)