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    Artificial Neural Network Models for Octane Number and Octane Sensitivity: A Quantitative Structure Property Relationship Approach to Fuel Design

    Source: Journal of Energy Resources Technology:;2023:;volume( 145 ):;issue: 010::page 102302-1
    Author:
    SubLaban, Amina
    ,
    Kessler, Travis J.
    ,
    Van Dam, Noah
    ,
    Mack, J. Hunter
    DOI: 10.1115/1.4062189
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Octane sensitivity (OS), defined as the research octane number (RON) minus the motor octane number (MON) of a fuel, has gained interest among researchers due to its effect on knocking conditions in internal combustion engines. Compounds with a high OS enable higher efficiencies, especially within advanced compression ignition engines. RON/MON must be experimentally tested to determine OS, requiring time, funding, and specialized equipment. Thus, predictive models trained with existing experimental data and molecular descriptors (via quantitative structure-property relationships (QSPRs)) would allow for the preemptive screening of compounds prior to performing these experiments. The present work proposes two methods for predicting the OS of a given compound: using artificial neural networks (ANNs) trained with QSPR descriptors to predict RON and MON individually to compute OS (derived octane sensitivity (dOS)), and using ANNs trained with QSPR descriptors to directly predict OS. Twenty-five ANNs were trained for both RON and MON and their test sets achieved an overall 6.4% and 5.2% error, respectively. Twenty-five additional ANNs were trained for both dOS and OS; dOS calculations were found to have 15.3% error while predicting OS directly resulted in 9.9% error. A chemical analysis of the top QSPR descriptors for RON/MON and OS is conducted, highlighting desirable structural features for high-performing molecules and offering insight into the inner mathematical workings of ANNs; such chemical interpretations study the interconnections between structural features, descriptors, and fuel performance showing that connectivity, structural diversity, and atomic hybridization consistently drive fuel performance.
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      Artificial Neural Network Models for Octane Number and Octane Sensitivity: A Quantitative Structure Property Relationship Approach to Fuel Design

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4292087
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    contributor authorSubLaban, Amina
    contributor authorKessler, Travis J.
    contributor authorVan Dam, Noah
    contributor authorMack, J. Hunter
    date accessioned2023-08-16T18:31:41Z
    date available2023-08-16T18:31:41Z
    date copyright4/17/2023 12:00:00 AM
    date issued2023
    identifier issn0195-0738
    identifier otherjert_145_10_102302.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4292087
    description abstractOctane sensitivity (OS), defined as the research octane number (RON) minus the motor octane number (MON) of a fuel, has gained interest among researchers due to its effect on knocking conditions in internal combustion engines. Compounds with a high OS enable higher efficiencies, especially within advanced compression ignition engines. RON/MON must be experimentally tested to determine OS, requiring time, funding, and specialized equipment. Thus, predictive models trained with existing experimental data and molecular descriptors (via quantitative structure-property relationships (QSPRs)) would allow for the preemptive screening of compounds prior to performing these experiments. The present work proposes two methods for predicting the OS of a given compound: using artificial neural networks (ANNs) trained with QSPR descriptors to predict RON and MON individually to compute OS (derived octane sensitivity (dOS)), and using ANNs trained with QSPR descriptors to directly predict OS. Twenty-five ANNs were trained for both RON and MON and their test sets achieved an overall 6.4% and 5.2% error, respectively. Twenty-five additional ANNs were trained for both dOS and OS; dOS calculations were found to have 15.3% error while predicting OS directly resulted in 9.9% error. A chemical analysis of the top QSPR descriptors for RON/MON and OS is conducted, highlighting desirable structural features for high-performing molecules and offering insight into the inner mathematical workings of ANNs; such chemical interpretations study the interconnections between structural features, descriptors, and fuel performance showing that connectivity, structural diversity, and atomic hybridization consistently drive fuel performance.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleArtificial Neural Network Models for Octane Number and Octane Sensitivity: A Quantitative Structure Property Relationship Approach to Fuel Design
    typeJournal Paper
    journal volume145
    journal issue10
    journal titleJournal of Energy Resources Technology
    identifier doi10.1115/1.4062189
    journal fristpage102302-1
    journal lastpage102302-12
    page12
    treeJournal of Energy Resources Technology:;2023:;volume( 145 ):;issue: 010
    contenttypeFulltext
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