Pushing the boundaries for fuel discovery with a multiview features fusion approach

Abstract Global warming poses a serious challenge to the human environment, prompting us to rapidly develop new environmentally friendly fuels. However, the time and cost required to determine the physical properties of fuels are constrained by the related industries. In this paper, we propose a mul...

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Main Authors: Dehai Zhang, Di Zhao, Jiashu Liang, Yu Ma, Zheng Chen
Format: Article
Language:English
Published: Wiley 2024-11-01
Series:Energy Science & Engineering
Subjects:
Online Access:https://doi.org/10.1002/ese3.1687
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author Dehai Zhang
Di Zhao
Jiashu Liang
Yu Ma
Zheng Chen
author_facet Dehai Zhang
Di Zhao
Jiashu Liang
Yu Ma
Zheng Chen
author_sort Dehai Zhang
collection DOAJ
description Abstract Global warming poses a serious challenge to the human environment, prompting us to rapidly develop new environmentally friendly fuels. However, the time and cost required to determine the physical properties of fuels are constrained by the related industries. In this paper, we propose a multiview features fusion method based on neural networks. This method uses the eight graph neural networks models as the basis of the multichannel network coordinator to extract the compound's molecular feature; also the functional groups in the compound are embedded with molecule weight as functional groups feature, and finally, combining the molecular view with the functional groups view for the prediction of compound flash point (FP). We used a data set consisting of 2200 hydrocarbons and oxygenated compounds for model training and testing. The results show that the model performance is improved in both after feature fusion. Finally, the ablation experiments demonstrate that the use of this method is effective and provides a new idea for fast and accurate screening of fuels. The Attentive FP‐FG model was the most effective, with a mean absolute error of 4.395 K, root mean square error of 5.854 K, and R‐squared score (R2) of 0.986.
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institution Kabale University
issn 2050-0505
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series Energy Science & Engineering
spelling doaj-art-fef7869e490b48778ed0cd53160209ce2025-01-06T14:45:33ZengWileyEnergy Science & Engineering2050-05052024-11-0112114860487510.1002/ese3.1687Pushing the boundaries for fuel discovery with a multiview features fusion approachDehai Zhang0Di Zhao1Jiashu Liang2Yu Ma3Zheng Chen4School of Software Yunnan University Kunming Yunnan ChinaSchool of Software Yunnan University Kunming Yunnan ChinaSchool of Software Yunnan University Kunming Yunnan ChinaSchool of Software Yunnan University Kunming Yunnan ChinaFaculty of Transportation Engineering Kunming University of Science and Technology Kunming Yunnan ChinaAbstract Global warming poses a serious challenge to the human environment, prompting us to rapidly develop new environmentally friendly fuels. However, the time and cost required to determine the physical properties of fuels are constrained by the related industries. In this paper, we propose a multiview features fusion method based on neural networks. This method uses the eight graph neural networks models as the basis of the multichannel network coordinator to extract the compound's molecular feature; also the functional groups in the compound are embedded with molecule weight as functional groups feature, and finally, combining the molecular view with the functional groups view for the prediction of compound flash point (FP). We used a data set consisting of 2200 hydrocarbons and oxygenated compounds for model training and testing. The results show that the model performance is improved in both after feature fusion. Finally, the ablation experiments demonstrate that the use of this method is effective and provides a new idea for fast and accurate screening of fuels. The Attentive FP‐FG model was the most effective, with a mean absolute error of 4.395 K, root mean square error of 5.854 K, and R‐squared score (R2) of 0.986.https://doi.org/10.1002/ese3.1687flash pointfuels discoveryfunctional groupsgraph neural networksmultiview features fusion
spellingShingle Dehai Zhang
Di Zhao
Jiashu Liang
Yu Ma
Zheng Chen
Pushing the boundaries for fuel discovery with a multiview features fusion approach
Energy Science & Engineering
flash point
fuels discovery
functional groups
graph neural networks
multiview features fusion
title Pushing the boundaries for fuel discovery with a multiview features fusion approach
title_full Pushing the boundaries for fuel discovery with a multiview features fusion approach
title_fullStr Pushing the boundaries for fuel discovery with a multiview features fusion approach
title_full_unstemmed Pushing the boundaries for fuel discovery with a multiview features fusion approach
title_short Pushing the boundaries for fuel discovery with a multiview features fusion approach
title_sort pushing the boundaries for fuel discovery with a multiview features fusion approach
topic flash point
fuels discovery
functional groups
graph neural networks
multiview features fusion
url https://doi.org/10.1002/ese3.1687
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AT jiashuliang pushingtheboundariesforfueldiscoverywithamultiviewfeaturesfusionapproach
AT yuma pushingtheboundariesforfueldiscoverywithamultiviewfeaturesfusionapproach
AT zhengchen pushingtheboundariesforfueldiscoverywithamultiviewfeaturesfusionapproach