Smart City Gnosys

Smart city article details

Title Energy Savings In Buildings Based On Image Depth Sensors For Human Activity Recognition
ID_Doc 23383
Authors Mata O.; Méndez J.I.; Ponce P.; Peffer T.; Meier A.; Molina A.
Year 2023
Published Energies, 16, 3
DOI http://dx.doi.org/10.3390/en16031078
Abstract A smart city is a city that binds together technology, society, and government to enable the existence of a smart economy, smart mobility, smart environment, smart living, smart people, and smart governance in order to reduce the environmental impact of cities and improve life quality. The first step to achieve a fully connected smart city is to start with smaller modules such as smart homes and smart buildings with energy management systems. Buildings are responsible for a third of the total energy consumption; moreover, heating, ventilation, and air conditioning (HVAC) systems account for more than half of the residential energy consumption in the United States. Even though connected thermostats are widely available, they are not used as intended since most people do not have the expertise to control this device to reduce energy consumption. It is commonly set according to their thermal comfort needs; therefore, unnecessary energy consumption is often caused by wasteful behaviors and the estimated energy saving is not reached. Most studies in the thermal comfort domain to date have relied on simple activity diaries to estimate metabolic rate and fixed values of clothing parameters for strategies to set the connected thermostat’s setpoints because of the difficulty in tracking those variables. Therefore, this paper proposes a strategy to save energy by dynamically changing the setpoint of a connected thermostat by human activity recognition based on computer vision preserving the occupant’s thermal comfort. With the use of a depth sensor in conjunction with an RGB (Red–Green–Blue) camera, a methodology is proposed to eliminate the most common challenges in computer vision: background clutter, partial occlusion, changes in scale, viewpoint, lighting, and appearance on human detection. Moreover, a Recurrent Neural Network (RNN) is implemented for human activity recognition (HAR) because of its data’s sequential characteristics, in combination with physiological parameters identification to estimate a dynamic metabolic rate. Finally, a strategy for dynamic setpoints based on the metabolic rate, predicted mean vote (PMV) parameter and the air temperature is simulated using EnergyPlus™ to evaluate the energy consumption in comparison with the expected energy consumption with fixed value setpoints. This work contributes with a strategy to reduce energy consumption up to 15% in buildings with connected thermostats from the successful implementation of the proposed method. © 2023 by the authors.
Author Keywords computer vision; depth sensor; energy savings; metabolic rate; recurrent neural networks; thermal comfort


Similar Articles


Id Similarity Authors Title Published
59770 View0.867Ameur I.; Ameur M.E.A.; Ameur M.; Dagha H.E.Unveiling Human Activity Patterns In Smart Cities Through A Cnn-Lstm ApproachLecture Notes in Networks and Systems, 1267 LNNS (2025)
29566 View0.865Diraco G.; Rescio G.; Caroppo A.; Manni A.; Leone A.Human Action Recognition In Smart Living Services And Applications: Context Awareness, Data Availability, Personalization, And PrivacySensors, 23, 13 (2023)
51253 View0.861Subashini V.; Pradeesh D.; Sivaneshan N.; Sriram S.; Vignesh S.Smart Occupancy Detection And Activity Recognition Using Rf Transmissions2025 International Conference on Computing and Communication Technologies, ICCCT 2025 (2025)
57240 View0.861Shafiq M.; Bhavani N.P.G.; Venkata Naga Ramesh J.; Veeresha R.K.; Talasila V.; Sulaiman Alfurhood B.Thermal Modeling And Machine Learning For Optimizing Heat Transfer In Smart City Infrastructure Balancing Energy Efficiency And Climate ImpactThermal Science and Engineering Progress, 54 (2024)
40629 View0.86Jain R.; Bakare Y.B.; Alaric J.S.; Balam S.K.; Pattanaik B.; Ayele T.B.; Nalagandla R.Optimization Of Energy Consumption In Smart Homes Using Firefly Algorithm And Deep Neural NetworksSustainable Engineering and Innovation, 5, 2 (2023)
3968 View0.857Méndez J.I.; Medina A.; Ponce P.; Peffer T.; Meier A.; Molina A.A Real-Time Adaptive Thermal Comfort Model For Sustainable Energy In Interactive Smart Homes: Part ILecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 13497 LNCS (2022)
3210 View0.857Magdy M.; Hamouda M.R.; ElHadidy O.; Mekhael S.A Novel And Lean Data-Based Method To Calculate The Actual Hvac Zone Energy Consumption And Cooling Load In Sustainable Smart Cities Using A Single Temperature SensorEnergy Reports, 9 (2023)
23183 View0.856Binbusayyis A.; Sha M.Energy Consumption Prediction Using Modified Deep Cnn-Bi Lstm With Attention MechanismHeliyon, 11, 1 (2025)
49207 View0.855Gao Q.; Chu Y.; Peng Z.; Jin Y.; Ji X.; Ji S.; Ping S.; Xie X.; Zhu X.; Yue Y.Smart Building Management System Based On Digital Twin: A Case Study On Real-Time Environmental Monitoring And Thermal Comfort PredictionProceedings - 2024 IEEE International Symposium on Parallel and Distributed Processing with Applications, ISPA 2024 (2024)
17962 View0.852Aljohani A.Deep Learning-Based Optimization Of Energy Utilization In Iot-Enabled Smart Cities: A Pathway To Sustainable DevelopmentEnergy Reports, 12 (2024)