2024
DOI: 10.30574/gscarr.2024.19.1.0147
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Creating a neural network-based model to predict the exhaust gas temperature of the internal combustion engine

Mahnaz Zameni,
Mahdi Ahmadi,
Arash Talebi

Abstract: The regulation and improvement of the performance of internal combustion engines is a continual primary focus of research and development activities conducted within the automobile industry and other relevant sectors. To succeed in reaching this objective, it is necessary to have an accurate and complete model of these engines. However, due to internal combustion engines' complex and nonlinear nature, accurately replicating their behavior may be challenging and time-consuming. Neural networks are a potentially… Show more

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