Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception

The results of usage of data science methods, in particular artificial neural networks, for the creation of new multifactor computational models of the solid propellants (SP) combustion that solve the direct and inverse tasks are presented. The own analytical platform Loginom was used for the models...

Full description

Bibliographic Details
Main Authors: Abrukov Victor, Anufrieva Darya, Lukin Alexander, Oommen Charlie, Sanalkumar V. R., Chandrasekaran Nichith
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:MATEC Web of Conferences
Online Access:https://www.matec-conferences.org/articles/matecconf/pdf/2020/26/matecconf_icome2019_01048.pdf
id doaj-0114bcc352f043a4b6a43dfabc01eeab
record_format Article
spelling doaj-0114bcc352f043a4b6a43dfabc01eeab2021-08-05T13:53:08ZengEDP SciencesMATEC Web of Conferences2261-236X2020-01-013300104810.1051/matecconf/202033001048matecconf_icome2019_01048Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome ConceptionAbrukov Victor0Anufrieva Darya1Lukin Alexander2Oommen Charlie3Sanalkumar V. R.4Chandrasekaran Nichith5Chuvash State UniversityChuvash State UniversityWestern-Caucasus Research CenterIndian Institute of ScienceKumaraguru College of TechnologyIndian Institute of ScienceThe results of usage of data science methods, in particular artificial neural networks, for the creation of new multifactor computational models of the solid propellants (SP) combustion that solve the direct and inverse tasks are presented. The own analytical platform Loginom was used for the models creation. The models of combustion of double based SP with such nano additives as metals, metal oxides, termites were created by means of experimental data published in scientific literature. The goal function of the models were burning rate (direct tasks) as well as propellants composition (inverse tasks). The basis (script) of a creation of Data Warehouse of SP combustion was developed. The Data Warehouse can be supplemented by new experimental data and metadata in automated mode and serve as a basis for creating generalized combustion models of SP and thus the beginning of work in a new direction of combustion science, which the authors propose to call "Propellant Combustion Genome" (by analogy with a very famous Materials Genome Initiative, USA). "Propellant Combustion Genome" opens wide possibilities for accelerate the advanced propellants development Genome" opens wide possibilities for accelerate the advanced propellants development.https://www.matec-conferences.org/articles/matecconf/pdf/2020/26/matecconf_icome2019_01048.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Abrukov Victor
Anufrieva Darya
Lukin Alexander
Oommen Charlie
Sanalkumar V. R.
Chandrasekaran Nichith
spellingShingle Abrukov Victor
Anufrieva Darya
Lukin Alexander
Oommen Charlie
Sanalkumar V. R.
Chandrasekaran Nichith
Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception
MATEC Web of Conferences
author_facet Abrukov Victor
Anufrieva Darya
Lukin Alexander
Oommen Charlie
Sanalkumar V. R.
Chandrasekaran Nichith
author_sort Abrukov Victor
title Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception
title_short Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception
title_full Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception
title_fullStr Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception
title_full_unstemmed Development of the Multifactor Computational Models of the Solid Propellants Combustion by Means of Data Science Methods. Propellant Combustion Genome Conception
title_sort development of the multifactor computational models of the solid propellants combustion by means of data science methods. propellant combustion genome conception
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2020-01-01
description The results of usage of data science methods, in particular artificial neural networks, for the creation of new multifactor computational models of the solid propellants (SP) combustion that solve the direct and inverse tasks are presented. The own analytical platform Loginom was used for the models creation. The models of combustion of double based SP with such nano additives as metals, metal oxides, termites were created by means of experimental data published in scientific literature. The goal function of the models were burning rate (direct tasks) as well as propellants composition (inverse tasks). The basis (script) of a creation of Data Warehouse of SP combustion was developed. The Data Warehouse can be supplemented by new experimental data and metadata in automated mode and serve as a basis for creating generalized combustion models of SP and thus the beginning of work in a new direction of combustion science, which the authors propose to call "Propellant Combustion Genome" (by analogy with a very famous Materials Genome Initiative, USA). "Propellant Combustion Genome" opens wide possibilities for accelerate the advanced propellants development Genome" opens wide possibilities for accelerate the advanced propellants development.
url https://www.matec-conferences.org/articles/matecconf/pdf/2020/26/matecconf_icome2019_01048.pdf
work_keys_str_mv AT abrukovvictor developmentofthemultifactorcomputationalmodelsofthesolidpropellantscombustionbymeansofdatasciencemethodspropellantcombustiongenomeconception
AT anufrievadarya developmentofthemultifactorcomputationalmodelsofthesolidpropellantscombustionbymeansofdatasciencemethodspropellantcombustiongenomeconception
AT lukinalexander developmentofthemultifactorcomputationalmodelsofthesolidpropellantscombustionbymeansofdatasciencemethodspropellantcombustiongenomeconception
AT oommencharlie developmentofthemultifactorcomputationalmodelsofthesolidpropellantscombustionbymeansofdatasciencemethodspropellantcombustiongenomeconception
AT sanalkumarvr developmentofthemultifactorcomputationalmodelsofthesolidpropellantscombustionbymeansofdatasciencemethodspropellantcombustiongenomeconception
AT chandrasekarannichith developmentofthemultifactorcomputationalmodelsofthesolidpropellantscombustionbymeansofdatasciencemethodspropellantcombustiongenomeconception
_version_ 1721220352814612480