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    Forecasting chemical characteristics of aircraft fuel using artificial neural networks

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    Forecasting chemical characteristics of aircraft fuel using artificial neural networks.pdf (5.756Mb)
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    Artigo de Periódico
    Date
    2021
    Author
    Rocha, Felipe Valverde
    Iha, Koshun
    Tolosa, Thiago Antonio Grandi de
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    Abstract
    Aircraft fuels, called jet propulsion, are used in several areas of activity within aeronautics. There are jet fuels based on kerosene, that is, those obtained commercially, and there are synthetics produced in the laboratory. All of these fuels are included within the so-called propellants. In this article, Jet propulsion-8 (JP 8) fuel was used as the basis for data analysis, and thus two temperature ranges were analyzed. The first range, from 300 to 2500 K, was analyzed for specific heat, enthalpy and entropy. Based on theoretical and experimental data, artificial neural networks (ANNs) were developed to identify these properties in other working conditions, that is, at other temperatures. © 2021, Journal of Aerospace Technology and Management. All rights reserved.
    1. Enthalpy
    2. Entropy
    3. Fuel
    4. Heat
    5. Temperature
    6. Aircraft
    7. Enthalpy
    8. Neural networks
    9. Propulsion
    10. Specific heat
    11. Area of activities
    12. Chemical characteristic
    13. Condition
    14. Heat
    15. Jet propulsion
    16. Property
    17. Specific enthalpy
    18. Specific entropy
    19. Temperature range
    20. Entropy
    URI
    https://www.scopus.com/inward/record.uri?eid=2-s2.0-85107772052&doi=10.1590%2fJATM.V13.1221&partnerID=40&md5=1467021d9eae23ccda546b7550841a96
    https://repositorio.maua.br/handle/MAUA/1384
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