In the oil and gas production operations, hydrates deposition leads to serious problems including over pressuring, irreparable damages to production equipment, pipeline blockage, and finally resulting in production facilities shut down and even human life and the environment dangers. Hence, it is of great importance to forecast the hydrate formation conditions in order to overcome problems associated with deposition of hydrate. In this article, an effective, mathematical and predictive strategy, known as the least squares support vector machine, is employed to determine the hydrate forming conditions of sweet natural gases as well as the monoethylene glycol (MEG) flow-rate and desired depression of the gas hydrate formation temperature (DHFT). The outcome of this study reveals that the developed technique offers high predictive potential in precise estimation of this important characteristic in the gas industry. Beside the accuracy and reliability, the proposed model includes lower number of coefficients in contrast with conventional correlations/methods, implying an interesting feature to be added to the modeling simulation software packages in gas engineering.
Journal article
New tools predict monoethylene glycol injection rate for natural gas hydrate inhibition
Journal of Loss Prevention in the Process Industries, Vol.33, pp.222-231
2015
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Abstract
Details
- Title
- New tools predict monoethylene glycol injection rate for natural gas hydrate inhibition
- Creators
- Arash Kamari - University of KwaZulu-NatalAlireza Bahadori - Southern Cross UniversityAmir H Mohammadi - University of KwaZulu-NatalSohrab Zendehboudi - Massachusetts Institute of Technology
- Publication Details
- Journal of Loss Prevention in the Process Industries, Vol.33, pp.222-231
- Identifiers
- 3643; 991012820512702368
- Academic Unit
- School of Environment, Science and Engineering; Faculty of Science and Engineering
- Resource Type
- Journal article