Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition

Response Surface Methodology (RSM) is a statistical method to design experiments and optimize the effect of process variables. RSM is based on the principles of design of experiments or DOE. Design of experiments or DOE is a field of applied statistics that plans, conducts, analyses, and interprets...

Full description

Bibliographic Details
Main Authors: Ibham Veza, Martin Spraggon, I.M. Rizwanul Fattah, Muhammad Idris
Format: Article
Language:English
Published: Elsevier 2023-06-01
Series:Results in Engineering
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2590123023003407
_version_ 1797802757426511872
author Ibham Veza
Martin Spraggon
I.M. Rizwanul Fattah
Muhammad Idris
author_facet Ibham Veza
Martin Spraggon
I.M. Rizwanul Fattah
Muhammad Idris
author_sort Ibham Veza
collection DOAJ
description Response Surface Methodology (RSM) is a statistical method to design experiments and optimize the effect of process variables. RSM is based on the principles of design of experiments or DOE. Design of experiments or DOE is a field of applied statistics that plans, conducts, analyses, and interprets controlled tests to assess factors that affect parameter values. Response surface methodology or RSM uses a statistical method for designing experiments and optimization. Despite the potential of response surface methodology to predict and optimize engine performance and emissions characteristics, a comprehensive review on RSM for biofuels, particularly for internal combustion engines (ICEs), is difficult to find. The review of response surface methodology is sometimes included together with other machine learning approaches such as ANN. Therefore, a review article that is exclusively written to address the specific of RSM for biofuel and ICE is required. This review article offers a fresh perspective on the application of RSM for biofuel in ICE. This article aims to critically review the RSM to optimize engine performance and emissions using biofuel. The study concludes with several possible research gaps for future works of RSM biofuel application. Although response surface methodology or RSM has drawbacks such as extrapolation inaccuracy outside the investigational ranges and discrete variables error, RSM has numerous advantages to design, model, estimate, and optimize biofuel for ICE with satisfactory accuracy. With its prediction and optimization capability, response surface methodology has the potential to assist the development of ICE optimization powered by biofuel for sustainability energy transition.
first_indexed 2024-03-13T05:11:33Z
format Article
id doaj.art-fbb0f9c17b0449cda9fb62b2d0cd0bbf
institution Directory Open Access Journal
issn 2590-1230
language English
last_indexed 2024-03-13T05:11:33Z
publishDate 2023-06-01
publisher Elsevier
record_format Article
series Results in Engineering
spelling doaj.art-fbb0f9c17b0449cda9fb62b2d0cd0bbf2023-06-16T05:11:18ZengElsevierResults in Engineering2590-12302023-06-0118101213Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transitionIbham Veza0Martin Spraggon1I.M. Rizwanul Fattah2Muhammad Idris3Mechanical Engineering Department, Universiti Teknologi PETRONAS (UTP), 32610, Seri Iskandar, Perak, Malaysia; Corresponding author.Research & Innovation Center Division, Rabdan Academy, Abu Dhabi, United Arab EmiratesCentre for Technology in Water and Wastewater, School of Civil and Environmental Engineering, Faculty of Engineering and IT, University of Technology Sydney, Ultimo, 2007, NSW, Australia; Corresponding author.School of Environmental Science, University of Indonesia, Jakarta, 10430, IndonesiaResponse Surface Methodology (RSM) is a statistical method to design experiments and optimize the effect of process variables. RSM is based on the principles of design of experiments or DOE. Design of experiments or DOE is a field of applied statistics that plans, conducts, analyses, and interprets controlled tests to assess factors that affect parameter values. Response surface methodology or RSM uses a statistical method for designing experiments and optimization. Despite the potential of response surface methodology to predict and optimize engine performance and emissions characteristics, a comprehensive review on RSM for biofuels, particularly for internal combustion engines (ICEs), is difficult to find. The review of response surface methodology is sometimes included together with other machine learning approaches such as ANN. Therefore, a review article that is exclusively written to address the specific of RSM for biofuel and ICE is required. This review article offers a fresh perspective on the application of RSM for biofuel in ICE. This article aims to critically review the RSM to optimize engine performance and emissions using biofuel. The study concludes with several possible research gaps for future works of RSM biofuel application. Although response surface methodology or RSM has drawbacks such as extrapolation inaccuracy outside the investigational ranges and discrete variables error, RSM has numerous advantages to design, model, estimate, and optimize biofuel for ICE with satisfactory accuracy. With its prediction and optimization capability, response surface methodology has the potential to assist the development of ICE optimization powered by biofuel for sustainability energy transition.http://www.sciencedirect.com/science/article/pii/S2590123023003407Response surface methodology (RSM)RSM full factorial designRSM Box-Behnken designRSM biofuelRSM DOE optimization
spellingShingle Ibham Veza
Martin Spraggon
I.M. Rizwanul Fattah
Muhammad Idris
Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition
Results in Engineering
Response surface methodology (RSM)
RSM full factorial design
RSM Box-Behnken design
RSM biofuel
RSM DOE optimization
title Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition
title_full Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition
title_fullStr Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition
title_full_unstemmed Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition
title_short Response surface methodology (RSM) for optimizing engine performance and emissions fueled with biofuel: Review of RSM for sustainability energy transition
title_sort response surface methodology rsm for optimizing engine performance and emissions fueled with biofuel review of rsm for sustainability energy transition
topic Response surface methodology (RSM)
RSM full factorial design
RSM Box-Behnken design
RSM biofuel
RSM DOE optimization
url http://www.sciencedirect.com/science/article/pii/S2590123023003407
work_keys_str_mv AT ibhamveza responsesurfacemethodologyrsmforoptimizingengineperformanceandemissionsfueledwithbiofuelreviewofrsmforsustainabilityenergytransition
AT martinspraggon responsesurfacemethodologyrsmforoptimizingengineperformanceandemissionsfueledwithbiofuelreviewofrsmforsustainabilityenergytransition
AT imrizwanulfattah responsesurfacemethodologyrsmforoptimizingengineperformanceandemissionsfueledwithbiofuelreviewofrsmforsustainabilityenergytransition
AT muhammadidris responsesurfacemethodologyrsmforoptimizingengineperformanceandemissionsfueledwithbiofuelreviewofrsmforsustainabilityenergytransition