Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel

Biodiesel; Diesel fuels; Forecasting; Knowledge acquisition; Machine learning; Neural networks; Smoke; Acid pretreatment; Blended fuels; Emission characteristics; Engine performance; Exhausts emissions; Learning machines; Modelling and predictions; Pretreatment process; Refining process; Sterculia f...

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Main Authors: Sebayang A.H., Milano J., Shamsuddin A.H., Alfansuri M., Silitonga A.S., Kusumo F., Prahmana R.A., Fayaz H., Zamri M.F.M.A.
Other Authors: 39262519300
Format: Article
Published: Elsevier Ltd 2023
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spelling my.uniten.dspace-267032023-05-29T17:36:15Z Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel Sebayang A.H. Milano J. Shamsuddin A.H. Alfansuri M. Silitonga A.S. Kusumo F. Prahmana R.A. Fayaz H. Zamri M.F.M.A. 39262519300 57052617200 35779071900 57782407000 39262559400 56611974900 56507258600 37018106500 57354218900 Biodiesel; Diesel fuels; Forecasting; Knowledge acquisition; Machine learning; Neural networks; Smoke; Acid pretreatment; Blended fuels; Emission characteristics; Engine performance; Exhausts emissions; Learning machines; Modelling and predictions; Pretreatment process; Refining process; Sterculia foetida; Diesel engines Sterculia foetida derived biodiesel is a potential fuel for a diesel engine. The Sterculia foetida biodiesel required a pre-refining process called degumming and an acid pretreatment process before converting them to methyl ester using the transesterification process. This study blended fuel from Sterculia foetida biodiesel and diesel with different volume ratios (5% to 30% of biodiesel blend with 95% to 70% diesel fuel). Sterculia foetida biodiesel and blended fuels met the ASTM D6751 and EN 14214 standards. The blended fuel is examined to obtain its influences on the performance and emission when operating at a diesel engine (1300 rpm to 2400 rpm). From the outcome, the engine performance of the SFB5 blend shows better performance than diesel fuel in terms of BTE (28.84%) and BSFC (5.86%). Artificial neural networks and extreme learning machines were employed to predict engine performance and exhaust emissions. The developed models gave excellent results, where the coefficient of determination is more than 99% and 98% for BSFC and BTE, respectively. When the engine is operated with SFB5, there is a significant reduction in CO, HC, and smoke opacity emissions by 8.26%, 2.08%, and 3.08%, respectively, and at the same time, an increase in CO2 by 3.53% and NOX by 22.39%. The comparison is made with diesel fuel. The extreme learning machine modelling is powerful for predicting engine performance and exhaust emission compared to artificial neural networks in terms of prediction accuracy. Sterculia foetida biodiesel�diesel blends of 5% show its capability to replace diesel fuel by providing engine peak performance than diesel fuel. � 2022 The Author(s) Final 2023-05-29T09:36:15Z 2023-05-29T09:36:15Z 2022 Article 10.1016/j.egyr.2022.06.052 2-s2.0-85133434302 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85133434302&doi=10.1016%2fj.egyr.2022.06.052&partnerID=40&md5=a7860d201cf6a655d7031ebaa827ed39 https://irepository.uniten.edu.my/handle/123456789/26703 8 8333 8345 All Open Access, Gold Elsevier Ltd Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description Biodiesel; Diesel fuels; Forecasting; Knowledge acquisition; Machine learning; Neural networks; Smoke; Acid pretreatment; Blended fuels; Emission characteristics; Engine performance; Exhausts emissions; Learning machines; Modelling and predictions; Pretreatment process; Refining process; Sterculia foetida; Diesel engines
author2 39262519300
author_facet 39262519300
Sebayang A.H.
Milano J.
Shamsuddin A.H.
Alfansuri M.
Silitonga A.S.
Kusumo F.
Prahmana R.A.
Fayaz H.
Zamri M.F.M.A.
format Article
author Sebayang A.H.
Milano J.
Shamsuddin A.H.
Alfansuri M.
Silitonga A.S.
Kusumo F.
Prahmana R.A.
Fayaz H.
Zamri M.F.M.A.
spellingShingle Sebayang A.H.
Milano J.
Shamsuddin A.H.
Alfansuri M.
Silitonga A.S.
Kusumo F.
Prahmana R.A.
Fayaz H.
Zamri M.F.M.A.
Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
author_sort Sebayang A.H.
title Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
title_short Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
title_full Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
title_fullStr Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
title_full_unstemmed Modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
title_sort modelling and prediction approach for engine performance and exhaust emission based on artificial intelligence of sterculia foetida biodiesel
publisher Elsevier Ltd
publishDate 2023
_version_ 1806427933413212160
score 13.222552