Knowledge Agora



Scientific Article details

Title Automated Street Light Adjustment System on Campus with AI-Assisted Data Analytics
ID_Doc 42650
Authors Deepaisarn, S; Yiwsiw, P; Chaisawat, S; Lerttomolsakul, T; Cheewakriengkrai, L; Tantiwattanapaibul, C; Buaruk, S; Sornlertlamvanich, V
Title Automated Street Light Adjustment System on Campus with AI-Assisted Data Analytics
Year 2023
Published Sensors, 23, 4
DOI 10.3390/s23041853
Abstract The smart city concept has been popularized in the urbanization of major metropolitan areas through the implementation of intelligent systems and technology to serve the increasing human population. This work developed an automatic light adjustment system at Thammasat University, Rangsit Campus, Thailand, with a primary objective of optimizing energy efficiency, while providing sufficient illumination for the campus. The development consists of two sections: the device control and the prediction model. The device control functionalities were developed with the user interface to enable control of the smart street light devices and the application programming interface (API) to send the light-adjusting command. The prediction model was created using an AI-assisted data analytic platform to obtain the predicted illuminance values so as to, subsequently, suggest light-dimming values according to the current environment. Four machine-learning models were performed on a nine-month environmental dataset to acquire predictions. The result demonstrated that the three-day window size setting with the XGBoost model yielded the best performance, attaining the correlation coefficient value of 0.922, showing a linear relationship between actual and predicted illuminance values using the test dataset. The prediction retrieval API was established and connected to the device control API, which later created an automated system that operated at a 20-min interval. This allowed real-time feedback to automatically adjust the smart street lighting devices through the purpose-designed data analytics features.
Author Keywords smart city; smart street lighting; Internet of Things (IoT); artificial intelligence; web application; automated system; data analytics; environmental sensors
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000942288200001
WoS Category Chemistry, Analytical; Engineering, Electrical & Electronic; Instruments & Instrumentation
Research Area Chemistry; Engineering; Instruments & Instrumentation
PDF https://www.mdpi.com/1424-8220/23/4/1853/pdf?version=1675911729
Similar atricles
Scroll