Issue 7, 2026, Issue in Progress

Experimental and ML-assisted optimization of injection timing and EGR in a diesel engine fueled with palmyra biodiesel

Abstract

Growing environmental concerns and stricter emission regulations have intensified the need for cleaner combustion and sustainable energy solutions. In this pursuit, Palmyra Methyl Ester (POME) stands out as a promising biodiesel, offering renewable origin and desirable fuel characteristics for cleaner, more sustainable engine applications. This study presents an integrated experimental and computational investigation into the performance, combustion, and emission characteristics of a diesel engine operating on POME blends, with a focus on optimizing injection timing and exhaust gas recirculation (EGR). Using a desirability-based multi-objective optimization framework, engine tests were conducted under varied conditions, guided by Response Surface Methodology (RSM). The predictive capabilities of RSM were benchmarked against advanced machine learning models like Extreme Gradient Boosting (XGBoost) and Random Forest. The optimal setting, found as POME20 with 23°bTDC injection timing and EGR, further improved BTE and significantly lowered NOx emissions. Among the predictive models, XGBoost outperformed RSM and Random Forest, yielding the highest test R2 and lowest MSE and MAPE, demonstrating superior accuracy in predicting engine responses. These results highlight the synergistic potential of renewable fuel utilization and data-driven modeling in optimizing diesel engine operation. The findings provide a viable pathway toward cleaner, high-efficiency combustion systems, contributing to the broader goals of sustainable transportation and global energy transition.

Graphical abstract: Experimental and ML-assisted optimization of injection timing and EGR in a diesel engine fueled with palmyra biodiesel

Article information

Article type
Paper
Submitted
03 Aug 2025
Accepted
13 Jan 2026
First published
30 Jan 2026
This article is Open Access
Creative Commons BY license

RSC Adv., 2026,16, 6338-6365

Experimental and ML-assisted optimization of injection timing and EGR in a diesel engine fueled with palmyra biodiesel

J. N. Nair, T. S. Rao, M. B. S. Sreekara Reddy, V. D. Raju, H. Venu, A. A. Hadi, A. Smerat, T. M. Y. Khan, A. S. Shaik and Md. A. Khan, RSC Adv., 2026, 16, 6338 DOI: 10.1039/D5RA05659D

This article is licensed under a Creative Commons Attribution 3.0 Unported Licence. You can use material from this article in other publications without requesting further permissions from the RSC, provided that the correct acknowledgement is given.

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