Science, Technology, Engineering and Mathematics.
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METHODS FOR DETECTING AND EARLY WARNING OF DRILLING ENGINEERING ACCIDENTS

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Volume 2, Issue 2, Pp 1-3, 2024

DOI: 10.61784/wjerv2n235

Author(s)

Alexey Nikita

Affiliation(s)

Gazprom Neft Science & Technology Center, Russia.

Corresponding Author

Alexey Nikita

ABSTRACT

As a very important part of engineering construction, drilling engineering has certain difficulties in terms of work content and construction technology. The quality of the project is difficult to control, and the safety factor is not high. Drilling engineering accident detection and early warning is a very critical part of engineering construction. It is an important method to ensure the quality of drilling engineering and an important measure to improve the level and safety of drilling construction. On this basis, the article will analyze drilling engineering accident detection and early warning methods to provide guarantee for the development of drilling engineering.

KEYWORDS

Drilling engineering; Accident detection; Early warning method

CITE THIS PAPER

Alexey Nikita. Methods for detecting and early warning of drilling engineering accidents. World Journal of Engineering Research. 2024, 2(2): 1-3. DOI: 10.61784/wjerv2n235.

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