Smart City Gnosys

Smart city article details

Title Anomaly Detection In Smart Home Electrical Appliances Using Machine Learning With Statistical Algorithms And Optimized Time Series Algorithms
ID_Doc 9623
Authors Galeb B.; Saad H.; Bashar H.; Al-Majdi K.; Al-Hilali A.
Year 2024
Published Journal of Mechanics of Continua and Mathematical Sciences, 19, 5
DOI http://dx.doi.org/10.26782/jmcms.2024.05.00008
Abstract Over the last several years, there has been a significant increase in the amount of focus placed on the infrastructure development of smart cities. The primary issue that academics are attempting to address is the issue of energy efficiency. One of these issues was the identification of anomalies in energy usage, which was an essential component that needed to be taken into consideration when managing energy-saving systems that were efficient, hence lowering the total energy consumption and carbon emissions. Therefore, the proposal of a strong approach that is based on the Internet of Things (IoT) might provide more relevance for the identification of abnormal consumption in buildings and the provision of this information to customers and governments so that it can be handled in an appropriate manner to minimize payments. Consequently, the purpose of this work is to explore three different optimization methods, namely ADAM, AadMax, and Nadam, and to advocate for an optimization approach that makes use of the LSTM algorithm to identify anomalies. Statistical modelling techniques such as ARIMA and SARIMAX are used for the purpose of time series forecasting. The findings of the anomaly detection system reveal that the best results are obtained by using LSTM in conjunction with Nadar. The MSE and RMSE values reached were 0.15348 and 0.02356 respectively. Additionally, the ARIMA model yields the best overall results, with the AIC value being 0.13859 and the MSE value being 300.94365 correspondingly. Confirmation of the suggested model's dependability and flexibility in optimizing anomaly detection is provided by this particular fact. © 2024, Institute of Mechanics of Continua and Mathematical Sciences. All rights reserved.
Author Keywords Abnormal Consumption; Anomaly Detection System; Energy-saving Systems; Statistical Modelling Techniques; Time Series Forecasting


Similar Articles


Id Similarity Authors Title Published
35909 View0.925Malki A.; Atlam E.-S.; Gad I.Machine Learning Approach Of Detecting Anomalies And Forecasting Time-Series Of Iot DevicesAlexandria Engineering Journal, 61, 11 (2022)
33828 View0.892Gonzalez-Vidal A.; Cuenca-Jara J.; Skarmeta A.F.Iot For Water Management: Towards Intelligent Anomaly DetectionIEEE 5th World Forum on Internet of Things, WF-IoT 2019 - Conference Proceedings (2019)
23175 View0.889Solís-Villarreal J.-A.; Soto-Mendoza V.; Navarro-Acosta J.A.; Ruiz-y-Ruiz E.Energy Consumption Outlier Detection With Ai Models In Modern Cities: A Case Study From North-Eastern MexicoAlgorithms, 17, 8 (2024)
19180 View0.887Mund C.; Altherr L.C.Detecting Anomalous Energy Consumptions In Smart Buildings - An Overview Of Two Unsupervised TechniquesProceedings - 2022 International Conference on Computational Science and Computational Intelligence, CSCI 2022 (2022)
19250 View0.883Śmiałkowski T.; Czyżewski A.Detection Of Anomalies In The Operation Of A Road Lighting System Based On Data From Smart Electricity MetersEnergies, 15, 24 (2022)
43509 View0.864Hasani Z.; Krrabaj S.; Krasniqi M.Proposed Model For Real-Time Anomaly Detection In Big Iot Sensor Data For Smart CityInternational Journal of Interactive Mobile Technologies, 18, 3 (2024)
32368 View0.86Ulloa-Vasquez F.; Garcia-Santander L.; Carrizo D.; Heredia-Figueroa V.Intelligent Electrical Pattern Recognition Of Appliances Consumption For Home Energy Management Using High Resolution MeasurementIEEE Latin America Transactions, 20, 2 (2022)
9645 View0.86Zhou W.; Chen C.; Yan Q.; Li B.; Liu K.; Zheng Y.; Yang H.; Xiao H.; Su S.Anomaly Usage Behavior Detection Based On Multi-Source Water And Electricity Consumption InformationIEEE Access, 13 (2025)
33619 View0.856Chatterjee A.; Ahmed B.S.Iot Anomaly Detection Methods And Applications: A SurveyInternet of Things (Netherlands), 19 (2022)
33620 View0.852Villegas-Ch W.; Govea J.; Jaramillo-Alcazar A.Iot Anomaly Detection To Strengthen Cybersecurity In The Critical Infrastructure Of Smart CitiesApplied Sciences (Switzerland), 13, 19 (2023)