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Rashmi B. Kale,
Nuzhat Faiz Shaikh,
- Research Scholar,, Department of Computer Engineering, Smt. Kashibai Navale College of Engineering, SPPU, Pune, Maharashtra, India
- Student, Department of Computer Engineering, Smt. Kashibai Navale College of Engineering, SPPU, Pune, Maharashtra, India
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This study presents a smart system that is intended to assist individuals and administrators in tracking their fuel costs and keeping an eye on their daily carbon emissions. It makes it simpler to make decisions by examining fuel consumption and its effects on the environment. The technology gathers real-time emissions data from vehicles equipped with Internet of Things devices. It can predict future trends of emissions by utilizing AI-based predictive modeling. Users can proactively monitor and lessen their environmental impact with this creative technique. The findings demonstrate that the system offers insightful data on fuel usage and carbon footprints, promoting more environmentally friendly behavior. To maximize fuel efficiency, lower emissions, and support users and administrators in making educated decisions about vehicle maintenance and driving practices, the system offers real-time feedback and alarms. Through the promotion of more environmentally friendly driving practices and improved fuel management, this proactive approach fosters cost savings and sustainability. This framework is a progressive approach that makes use of state-of-the-art technology to tackle the mounting issue of vehicle emissions and fuel management, promoting more environmentally friendly transportation and economical fuel use.
Keywords: Carbon dioxide (CO2), CariQ, Internet of Things (IoT), Probability Distribution Function (PDF), Cumulative Distribution Function (CDF), Global Positioning System (GPS), Mean Square Error (MSE), Intelligent Transportation System (ITM)
[This article belongs to Journal of Thermal Engineering and Applications (jotea)]
Rashmi B. Kale, Nuzhat Faiz Shaikh. Smart Framework for Personal Fuel Expense Tracking and Carbon Emission Assessment. Journal of Thermal Engineering and Applications. 2024; 11(03):41-50.
Rashmi B. Kale, Nuzhat Faiz Shaikh. Smart Framework for Personal Fuel Expense Tracking and Carbon Emission Assessment. Journal of Thermal Engineering and Applications. 2024; 11(03):41-50. Available from: https://journals.stmjournals.com/jotea/article=2024/view=0
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Journal of Thermal Engineering and Applications
Volume | 11 |
Issue | 03 |
Received | 03/10/2024 |
Accepted | 23/10/2024 |
Published | 19/11/2024 |