@inproceedings{b7345a6c49b7478692a11aaa37cd751d,
title = "Digital twin for machine-learning-based vehicle CO2 emissions concentration prediction in embedded system",
abstract = "In this paper, we describe the design, implementation, and installation of a digital twin version of a physical CO 2 monitoring system with the aim of democratizing access to affordable CO 2 emission measuring and enabling the creation of effective pollutant reduction strategies. The presented digital twin acts as a replacement that enables the measuring of CO 2 emissions without the use of a physical sensor. The exhibited work is specifically designed to be installed on a low-powered Micro Controller Unit (MCU), enabling its accessibility to a broader base of users. To this end, an optimized Artificial Neural Network (ANN) model was trained to be capable of predicting CO 2 emission concentrations with 87.15% accuracy when performing on the MCU. The ANN model is the result of a compound optimization technique that enhances the speed and accuracy of the model while reducing its computational complexity. The results outline that the implementation of the digital twin is 86.4% less expensive than its physical CO 2 counterpart, whilst still providing highly accurate and reliable data.",
keywords = "ANN, CO2, embedded systems, micro controllers",
author = "David Tena-Gago and Mohammad AlSelek and Alcaraz-Calero, {Jose M.} and Qi Wang",
year = "2023",
month = oct,
day = "12",
doi = "10.1109/AE58099.2023.10274412",
language = "English",
isbn = "9798350335552",
publisher = "IEEE",
booktitle = "2023 International Conference on Applied Electronics (AE) ",
address = "United States",
}