Complex fuzzy-probabilistic analysis of information on drilling mud losses
Main Article Content
Abstract
Abstract
In recent years, classification and clustering have been widely used for processing and analyzing information for the purpose of structuring, ordering, summarizing, and sorting. Classification and clustering are used when working with information processes both in enterprises (large and medium-sized) and in various fields of scientific activity, which is especially important in the context of the constant growth of processed information.
At the same time, during cluster analysis, an important task is to assess its quality. In this work, cluster analysis was used to identify loss circulation zones when drilling wells and classify them by severity (intensity). To determine the quality of the cluster analysis, the entropy value was calculated, which should tend to a minimum. In our case, it was 0.23, which allows us to judge the fairly high quality of the cluster solution.
Downloads
Article Details
Copyright (c) 2024 Galib Efendiyev, I.A. Piriverdiyev
This work is licensed under a Creative Commons Attribution 4.0 International License.
Licensing and protecting the author rights is the central aim and core of the publishing business. Peertechz dedicates itself in making it easier for people to share and build upon the work of others while maintaining consistency with the rules of copyright. Peertechz licensing terms are formulated to facilitate reuse of the manuscripts published in journals to take maximum advantage of Open Access publication and for the purpose of disseminating knowledge.
We support 'libre' open access, which defines Open Access in true terms as free of charge online access along with usage rights. The usage rights are granted through the use of specific Creative Commons license.
Peertechz accomplice with- [CC BY 4.0]
Explanation
'CC' stands for Creative Commons license. 'BY' symbolizes that users have provided attribution to the creator that the published manuscripts can be used or shared. This license allows for redistribution, commercial and non-commercial, as long as it is passed along unchanged and in whole, with credit to the author.
Please take in notification that Creative Commons user licenses are non-revocable. We recommend authors to check if their funding body requires a specific license.
With this license, the authors are allowed that after publishing with Peertechz, they can share their research by posting a free draft copy of their article to any repository or website.
'CC BY' license observance:
License Name |
Permission to read and download |
Permission to display in a repository |
Permission to translate |
Commercial uses of manuscript |
CC BY 4.0 |
Yes |
Yes |
Yes |
Yes |
The authors please note that Creative Commons license is focused on making creative works available for discovery and reuse. Creative Commons licenses provide an alternative to standard copyrights, allowing authors to specify ways that their works can be used without having to grant permission for each individual request. Others who want to reserve all of their rights under copyright law should not use CC licenses.
Cherezov DS, Tyukachev NA. Review of main methods of data classification and clustering. Vestnik VSU, series: system analysis and information technologies. 2009; 2: 25-29.
Zadeh LA. Fuzzy sets. Information and Control. 1965; 8: 338-353.
Bezdek JC. Pattern Recognition with Fuzzy Objective Function Algorithms, Plenum Press, New York. 1981.
Grigorovich AV. Combat complications in real-time. Journal "Neftegaz.RU", No. 6, June 2020.
Panikarovskiy EV, Panikarovskiy VV, Murzaulugov ZA, Panikarovskiy V, Murzaulugov Z. Main types of complications when drilling wells in Achimov deposits. Territory Neftegaz. 2011; 6. https://cyberleninka.ru/article/n/osnovnye-tipy-oslozhneniy-pri-burenii-skvazhin-v-achimovskih-otlozheniyah [in Russian]
Suganya R, Shanthi R. Fuzzy C-Means Algorithm - A Review. International Journal of Scientific and Research Publications. 2012; 2: 11.
Jitendrasinh RG. A Review on Fuzzy C-Mean Clustering Algorithm. International Journal of Modern Trends in Engineering and Research. 2015; 2: 751-754.
Bora DJ, Gupta AK. A Comparative Study between Fuzzy Clustering Algorithm and Hard Clustering Algorithm. International Journal of Computer Trends and Technology (IJCTT). 2014; 10.
Efendiyev GM, Rza-zadeh SA, Kadimov AK, Kouliyev IR. Forecast of drilling mud loss by statistical technique and on the basis of a fuzzy cluster analysis. Seventh International Conference on Soft Computing, Computing with Words and Perceptions in System Analysis, Decision and Control. Turkey: Izmir. 2013; 319-322.
Efendiyev GM, Mammadov PZ, Piriverdiyev IA, Mammadov VN. Clustering of geological objects using FCM algorithm and evaluation of the rate of lost circulation. 12th International Conference on Application of Fuzzy Systems and Soft Computing, ICAFS 2016, 29-30 August 2016, Vienna, Austria. Procedia Computer Science. 2016; 102: 159–162.
Efendiyev GM, Mammadov PZ, Piriverdiyev IA, Mammadov VN. Estimation of the lost circulation rate using fuzzy clustering of geological objects by petrophysical properties. Visnyk Taras Shevchenko National University of Kyiv. Geology. 2018; 81: 28-33.
Internet Research Laboratory. (n.d.). https://linis.hse.ru/
Halkidi M, Batistakis Y, Vazirgiannis M. On clustering validation techniques. Journal of intelligent information systems. 2001; 17(2-3): 107-145.
Pal NR, Biswas J. Cluster validation using graph theoretic concepts. Pattern Recognition. 1997; 30(6): 847-857.
Sivogolovko EV. Methods for assessing the quality of clear clustering, 2011.