Development of an intelligent development management system based on It technologies
Keywords:
intelligent lighting, microcontroller, motion sensor, energy efficiency, control system, daylight.Abstract
Buildings consume a lot of energy, and inefficient lighting increases costs. The study presents a lighting control system based on Internet of Things technologies with PIR and Doppler sensors, an external light sensor and adaptive algorithms. Tests in the FF TUIT training room showed a 36% reduction in energy consumption. This solution contributes to the creation of environmentally smart buildings, which is economically beneficial and supports the sustainable development of urban infrastructure.
References
Sun, K.; Zhao, Q.; Zou, J. A review of building occupancy measurement systems. Energy Build. 2020, 216, 109965. [CrossRef]
Sun, F.; Yu, J. Indoor intelligent lighting control method based on distributed multi-agent framework. Optik 2020, 213, 164816. [CrossRef]
Han, K.H.; Zhang, J. Energy-saving building system integration with a smart and low-cost sensing/control network for sustainable and healthy living environments: Demonstration case study. Energy Build. 2020, 214, 109861. [CrossRef]
Cho, Y.; Seo, J.; Lee, H.; Choi, S.; Choi, A.; Sung, M.; Hur, Y. Platform design for lifelog-based smart lighting control. Build. Environ. 2020, 185, 107267. [CrossRef]
Seyedolhosseini, A.; Masoumi, N.; Modarressi, M.; Karimian, N. Daylight adaptive smart indoor lighting control method using artificial neural networks. J. Build. Eng. 2020, 29, 101141. [CrossRef]
Zou, H.; Zhou, Y.; Jiang, H.; Chien, S.-C.; Xie, L.; Spanos, C.J. WinLight: A WiFi-based occupancy-driven lighting control system for smart building. Energy Build. 2018, 158, 924–938. [CrossRef]
Juntunen, E.; Sarjanoja, E.-M.; Eskeli, J.; Pihlajaniemi, H.; Österlund, T. Smart and dynamic route lighting control based on movement tracking. Build. Environ. 2018, 142, 472–483. [CrossRef]
Kandasamy, N.K.; Karunagaran, G.; Spanos, C.; Tseng, K.J.; Soong, B.-H. Smart lighting system using ANN-IMC for personalized lighting control and daylight harvesting. Build. Environ. 2018, 139, 170–180. [CrossRef]
Additional Files
Published
How to Cite
License
Copyright (c) 2024 Aleksandr Kozlov, Temurbek Abdullaev

This work is licensed under a Creative Commons Attribution 4.0 International License.