A MODEL OF AN AUTONOMOUS SMART LIGHTING SYSTEM USING SENSORS
Journal: Scientific Journal of Astana IT University (Vol.12, No. 12)Publication Date: 2022-12-30
Authors : Arailym Tleubayeva; Assar Maidanov; Arina Kantayeva;
Page : 34-44
Keywords : street lights; automation; smart technologies; optimization; modeling; data collection and processing algorithms;
Abstract
Traditional street lighting systems receive data about daylight levels and adjust the lighting. However, in such conditions, energy consumption increases since the sensors of such systems receive data on only one indicator, which is daylight. Therefore, a suitable automated intelligent lighting system model is needed. Intelligent lighting systems can adjust the brightness of the light not only based on natural data but also based on the movement of vehicles and people. This paper describes the development, implementation, and testing of a smart lighting system model to increase energy efficiency and high reliability. This system is controlled by a microcontroller programmed to control the lighting and receive data from sensors for processing with good efficiency. Distributed sensors record environmental conditions such as daylight and traffic. Photoresistors change resistance in daylight to light up the streets at night. The HC-SR501 infrared motion sensor detects objects emitting infrared radiation (heat) in the controlled motion zone and sends a signal to the microcontroller. The intelligent lighting system uses LEDs, which consume less energy and achieve high efficiency. Calculations show that the efficiency of using these lamps is almost 70%, compared to what is used in conventional street lighting systems.
Other Latest Articles
- ON THE DEVELOPMENT OF MANAGEMENT MODELS FOR REGIONAL PROGRAMS OF ENVIRONMENTALLY SAFE OPERATION AT CRITICAL TRANSPORT INFRASTRUCTURE FACILITIES
- TRAFFIC SIGN RECOGNITION WITH CONVOLUTIONAL NEURAL NETWORK
- DEEP LEARNING-BASED FACE MASK DETECTION USING YOLOV5 MODEL
- Peritoneal dialysis and peritoneal fibrosis: molecular mechanisms, risk factors and prospects for prevention
- The potential mechanisms of cardiovascular calcification in patients with chronic kidney disease
Last modified: 2023-02-27 18:10:20