Poisson's ratio prediction through dual stimulated fuzzy logic by ACE and GA-PS
Poisson's ratio is one of the most important rock mechanical parameters having significance in both planning and post analysis of wellbore operations. Laboratory measurement of this parameter covers a broad range of costs, including sidewall sampling, preservation, and laboratory tests. This st...
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Veröffentlicht in: | Journal of applied geophysics 2014-08, Vol.107, p.55-59 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Poisson's ratio is one of the most important rock mechanical parameters having significance in both planning and post analysis of wellbore operations. Laboratory measurement of this parameter covers a broad range of costs, including sidewall sampling, preservation, and laboratory tests. This study proposes an improved strategy, called dual stimulated fuzzy logic by ACE and GA-PS for determining Poisson's ratio from conventional well log data in a rapid, precise, and cost-effective way. Firstly, conventional well log data are transformed to a higher correlated data space with Poisson's ratio through the use of alternative condition expectation (ACE) algorithm. This step simplifies the convoluted space of the problem and makes it easier to solve for fuzzy logic. Subsequently, transformed conventional well log data are fed to fuzzy logic model. To ensure that optimal fuzzy model is constructed, a hybrid genetic algorithm-pattern search (GA-PS) technique is employed for extracting fuzzy clusters (or rules). This step sets fuzzy logic to its optimal performance. The propounded strategy was successfully applied to data from carbonate reservoir rocks of an Iranian Oil Field. A comparison between present model and previous models showed superiority of current study.
•Dual stimulated fuzzy logic was used for Poisson's ratio prediction.•First, problem space is simplified by ACE for fuzzy logic.•Then, structure of fuzzy model is optimized by GA.•Integration of fuzzy logic, ACE, and GA develops an improved model.•This study surpasses previous methods in terms of R-square and MSE. |
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ISSN: | 0926-9851 1879-1859 |
DOI: | 10.1016/j.jappgeo.2014.05.009 |