Smart City Gnosys

Smart city article details

Title Smart Housing: Integrating Machine Learning In Sustainable Urban Planning, Interior Design, And Development
ID_Doc 51061
Authors Arabasy M.; Hussein M.F.; Abu Osba R.; Al Dweik S.
Year 2025
Published Asian Journal of Civil Engineering, 26, 1
DOI http://dx.doi.org/10.1007/s42107-024-01144-3
Abstract Smart housing, therefore, theoretically becomes very vital in this context of a smart city for sustainable urban planning and development. Machine learning technologies can be considered quite fundamental in enhancing efficiency, sustainability, and livability through incorporating into smart housing. However, rapid urbanization, population growth, traffic congestion, and energy management are huge problems. The main objective of this research work is to identify the feasibility of ML application in smart housing for resource management optimization, environmental sustainability, and public safety. It conducts an analysis on key factors like energy consumption, waste management, and public safety measures by applying machine learning’s efficient algorithms on the comprehensive dataset. There is a 20% decrease in total energy consumption, 15% increase in renewable source energy consumption, and a 25% efficiency improvement in waste management. In addition, public safety response times decreased by 30%. Also, ML models gave out very accurate predictions for power use, traffic patterns, and air quality that turned out with an average accuracy of 92%, thus saving 10% carbon emissions. The study clearly showed that ML will play a very key role in housing planning and interior design. The results bring out the importance of ML in tackling challenging urban issues and promoting better sustainable urban planning practices. © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2024.
Author Keywords Housing and planning; Interior design; Machine learning; Sustainable building; Sustainable urban planning


Similar Articles


Id Similarity Authors Title Published
50394 View0.921Papitha Christobel T.; Meenakshi S.; Rajeswari P.; Mohanambal K.; Giri R.K.Smart City Optimization Through Machine Learning For Enhancing Urban Efficiency And SustainabilityNanotechnology Perceptions, 20, S5 (2024)
32035 View0.921Mrabet M.; Sliti M.Integrating Machine Learning For The Sustainable Development Of Smart CitiesFrontiers in Sustainable Cities, 6 (2024)
8877 View0.92Hemlata; Rai M.An Optimized Demand For Cost And Environment Benefits Towards Smart Residentials Using Iot And Machine LearningSustainable Smart Homes and Buildings with Internet of Things (2024)
35091 View0.915Ahmad M.; Mumtaz R.; Khan M.A.Leveraging Iot And Machine Learning For Smart Urban PlanningLeveraging IoT and Machine Learning for Smart Urban Planning (2025)
24850 View0.909Shahrabani M.M.N.; Apanaviciene R.Evaluation Of Smart Building Integration Into A Smart City By Applying Machine Learning TechniquesBuildings, 15, 12 (2025)
5160 View0.896Saranya M.; Amutha B.A Survey Of Innovative Machine Learning Approaches In Smart City ApplicationsInnovative Machine Learning Applications for Cryptography (2024)
8953 View0.895França R.P.; Monteiro A.C.B.; Arthur R.; Iano Y.An Overview Of The Machine Learning Applied In Smart CitiesLecture Notes in Intelligent Transportation and Infrastructure, Part F1386 (2021)
34050 View0.894Sahana D.S.; Vidya J.; Madhurya J.A.; Nida K.G.Iot-Driven Machine Learning Solutions For Smarter Urban LivingSpringer Tracts on Transportation and Traffic, 22 (2025)
35979 View0.891Mahamuni C.V.; Sayyed Z.; Mishra A.Machine Learning For Smart Cities: A Survey2022 IEEE International Power and Renewable Energy Conference, IPRECON 2022 (2022)
36081 View0.89Prasad M.S.C.; Dhanalakshmi M.; Mohan M.; Somasundaram B.; Valarmathi R.; Boopathi S.Machine Learning-Integrated Sustainable Engineering And Energy Systems: Innovations At The NexusHarnessing High-Performance Computing and AI for Environmental Sustainability (2024)