Sistem Monitoring Perilaku Pengendara Mobil Berbasis Internet of Things

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Andri Ulus Rahayu

Abstract

This research is created as a system for a car rental service. The system has monitoring features allowing the car rental owner to monitor the engine condition. The monitoring is performed by using a web interface that could read data from OBD-II that sent by raspberry pi 2. The owner can also monitor the position of the car by using coordinates sent from a smartphone by utilizing the GPS feature. In addition, it also has a reporting feature that allows the owner to track the data history from OBD II about the engine rpm, speed, engine load & temperature. Moreover, the owners can identify the route that has been passed by their car. Likewise, this system provides a program that analyzes the car driver's behavior based on the determined rules. The analysis was conducted based on all data from OBD-II in the database server and all data of driving rules violation performed by the driver. The result is an assessment of the driver as a driving error rate. This study generated 173 data of which 9 were driving rules violations with a 5.20% driving error rate. The report can be obtained by selecting the time interval. It also downloadable and can be sent by e-mail.

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How to Cite
Rahayu, A. (2021, March 31). Sistem Monitoring Perilaku Pengendara Mobil Berbasis Internet of Things. JITCE (Journal of Information Technology and Computer Engineering), 5(01), 18-24. https://doi.org/https://doi.org/10.25077/jitce.5.01.18-24.2021
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Articles

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