กรุณาใช้ตัวระบุนี้เพื่ออ้างอิงหรือเชื่อมต่อรายการนี้: http://elartu.tntu.edu.ua/handle/lib/44236
ชื่อเรื่อง: Diagnostics of oil leaks caused by malicious damage to the linear part of oil pipelines: innovative solutions for the oil industry
ผู้แต่ง: Obshta, Anatoliy
Yuzevych, Volodymyr
Pohrebniak, Andrii
Mysiuk, Roman
Chorniy, Bogdan
Bibliographic description (Ukraine): Obshta A., Yuzevych V., Pohrebniak A., Mysiuk R., Chorniy B. Diagnostics of oil leaks caused by malicious damage to the linear part of oil pipelines: innovative solutions for the oil industry // International scientific journal "Internauka". 2024. № 2. doi: https://doi.org/10.25313/2520-2057-2024-2-9590
Journal/Collection: International scientific journal "Internauka". 2024. № 2.
วันที่เผยแพร่: 2024
Submitted date: 2024
Date of entry: 30-มกร-2024
Country (code): UA
DOI: https://doi.org/10.25313/2520-2057-2024-2-9590
URI: https://www.inter-nauka.com/en/issues/2024/2/9590/
http://elartu.tntu.edu.ua/handle/lib/44236
URL for reference material: https://www.inter-nauka.com/en/issues/2024/2/9590/
https://doi.org/10.25313/2520-2057-2024-2-9590
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Content type: Article
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