Smart City Gnosys

Smart city article details

Title Evaluating Fuzzy Machine Learning For Smart Grid Instability Detection
ID_Doc 24580
Authors Martinelli F.; Mercaldo F.; Santone A.
Year 2023
Published IEEE International Conference on Fuzzy Systems
DOI http://dx.doi.org/10.1109/FUZZ52849.2023.10309772
Abstract Smart grid is an advanced concept of power systems devoted to harmonize electricity and communication in system networks. It is able to provide real-time information to producers, operators and consumers. There is an urgent demand to efficiently route supplied energy to consumer domains such as for instance, households, organisations, industries, and also smart cities. In this context, a smart grid with a stable system is required to supply the dynamic energy demand. In this paper, we propose a method aimed to detect whether a smart grid is in an unstable state. For this task, we consider fuzzy supervised machine learning. We evaluate a dataset composed by 60000 smart grid observations and we obtain interesting results, by demonstrating the effectiveness of a fuzzy machine learning model for the detection of smart grid states. © 2023 IEEE.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
27599 View0.988Martinelli F.; Mercaldo F.; Santone A.Fuzzy Machine Learning For Smart Grid Instability DetectionArtificial Intelligence for Security: Enhancing Protection in a Changing World (2024)
36056 View0.895Tiwari S.; Jain A.; Ahmed N.M.O.S.; Charu; Alkwai L.M.; Dafhalla A.K.Y.; Hamad S.A.S.Machine Learning-Based Model For Prediction Of Power Consumption In Smart Grid- Smart Way Towards Smart CityExpert Systems, 39, 5 (2022)
35861 View0.892Gunjal G.P.; Teke M.M.; Deulkar A.M.; Pardeshi D.B.Machine - Learning Based Prediction Of Stability Of Smart GridProceedings - 2024 International Conference on Expert Clouds and Applications, ICOECA 2024 (2024)
19282 View0.891Martinelli F.; Mercaldo F.; Santone A.Detection Of Smart Grids Instability With Convolutional Neural Networks And Global Explainability2023 8th International Conference on Smart and Sustainable Technologies, SpliTech 2023 (2023)
10158 View0.884Salam A.; El Hibaoui A.Applying Deep Learning Model To Predict Smart Grid StabilityProceedings of 2021 9th International Renewable and Sustainable Energy Conference, IRSEC 2021 (2021)
35082 View0.873Mendhiratta A.; Fernandes C.; Hindlatti D.; Vinayak D.; Pomu Chavan C.Leveraging Graph Digital Twin For Fault Detection And Improved Power Grid Stability In Smart CitiesLecture Notes in Computer Science, 15912 LNCS (2025)
25019 View0.866Bomfim T.S.Evolution Of Machine Learning In Smart Grids2020 8th International Conference on Smart Energy Grid Engineering, SEGE 2020 (2020)
25413 View0.862Ali A.; Khan L.; Javaid N.; Aslam M.; Aldegheishem A.; Alrajeh N.Exploiting Machine Learning To Tackle Peculiar Consumption Of Electricity In Power Grids: A Step Towards Building Green Smart CitiesIET Generation, Transmission and Distribution, 18, 3 (2024)
35996 View0.861Haque A.; Malik A.Machine Learning In Renewable Energy Systems For Smart CitiesSmart Cities: Power Electronics, Renewable Energy, and Internet of Things (2024)
42836 View0.86Sarkar 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)