APPLIED LASER, Volume. 44, Issue 9, 96(2024)
Mid-Infrared Spectrum Detection of Kerosene Content in Gasoline Based on GASF-CNN
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Zou Fuqun. Mid-Infrared Spectrum Detection of Kerosene Content in Gasoline Based on GASF-CNN[J]. APPLIED LASER, 2024, 44(9): 96
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Received: Oct. 26, 2023
Accepted: Jan. 17, 2025
Published Online: Jan. 17, 2025
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