Smart City Gnosys

Smart city article details

Title Multivariate Time-Series Forecasting: A Review Of Deep Learning Methods In Internet Of Things Applications To Smart Cities
ID_Doc 38702
Authors Papastefanopoulos V.; Linardatos P.; Panagiotakopoulos T.; Kotsiantis S.
Year 2023
Published Smart Cities, 6, 5
DOI http://dx.doi.org/10.3390/smartcities6050114
Abstract Smart cities are urban areas that utilize digital solutions to enhance the efficiency of conventional networks and services for sustainable growth, optimized resource management, and the well-being of its residents. Today, with the increase in urban populations worldwide, their importance is greater than ever before and, as a result, they are being rapidly developed to meet the varying needs of their inhabitants. The Internet of Things (IoT) lies at the heart of such efforts, as it allows for large amounts of data to be collected and subsequently used in intelligent ways that contribute to smart city goals. Time-series forecasting using deep learning has been a major research focus due to its significance in many real-world applications in key sectors, such as medicine, climate, retail, finance, and more. This review focuses on describing the most prominent deep learning time-series forecasting methods and their application to six smart city domains, and more specifically, on problems of a multivariate nature, where more than one IoT time series is involved.
Author Keywords deep learning; forecasting; IoT; machine learning; multivariate; smart cities; time series


Similar Articles


Id Similarity Authors Title Published
58197 View0.911Zhang Z.; Ren S.; Qian X.; Duffield N.Towards Invariant Time Series Forecasting In Smart CitiesWWW 2024 Companion - Companion Proceedings of the ACM Web Conference (2024)
57415 View0.906Cribier-Delande P.; Puget R.; Noûs C.; Guigue V.; Denoyer L.Time Series Prediction Generation From Disentangled Latent Factors: New Opportunities For Smart Cities2020 IEEE 23rd International Conference on Intelligent Transportation Systems, ITSC 2020 (2020)
1384 View0.903He J.; Dong M.; Bi S.; Zhao W.; Liao X.A Deep Neural Network For Anomaly Detection And Forecasting For Multivariate Time Series In Smart City9th IEEE International Conference on Cyber Technology in Automation, Control and Intelligent Systems, CYBER 2019 (2019)
35883 View0.9Oladipo I.D.; AbdulRaheem M.; Awotunde J.B.; Bhoi A.K.; Adeniyi E.A.; Abiodun M.K.Machine Learning And Deep Learning Algorithms For Smart Cities: A Start-Of-The-Art ReviewEAI/Springer Innovations in Communication and Computing (2022)
57409 View0.9Ciaburro G.Time Series Data Analysis Using Deep Learning Methods For Smart Cities MonitoringStudies in Computational Intelligence, 994 (2022)
17818 View0.888Muhammad A.N.; Aseere A.M.; Chiroma H.; Shah H.; Gital A.Y.; Hashem I.A.T.Deep Learning Application In Smart Cities: Recent Development, Taxonomy, Challenges And Research ProspectsNeural Computing and Applications, 33, 7 (2021)
50528 View0.887Venkateshwari P.; Veeraiah V.; Talukdar V.; Gupta D.N.; Anand R.; Gupta A.Smart City Technical Planning Based On Time Series Forecasting Of Iot Data2023 International Conference on Sustainable Emerging Innovations in Engineering and Technology, ICSEIET 2023 (2023)
35057 View0.886Atitallah S.B.; Driss M.; Boulila W.; Ghezala H.B.Leveraging Deep Learning And Iot Big Data Analytics To Support The Smart Cities Development: Review And Future DirectionsComputer Science Review, 38 (2020)
2859 View0.885Bitencourt H.V.; Lucas P.-C.D.O.; Orang O.; Silva P.C.L.; Guimaraes F.G.A Multi-Step Multivariate Fuzzy-Based Time Series Forecasting On Internet Of Things DataIEEE Internet of Things Journal (2025)
60277 View0.885Fan X.; Xiang C.; Gong L.; He X.; Chen C.; Huang X.Urbanedge: Deep Learning Empowered Edge Computing For Urban Iot Time Series PredictionACM International Conference Proceeding Series (2019)