Matches in SemOpenAlex for { <https://semopenalex.org/work/W4241833849> ?p ?o ?g. }
Showing items 1 to 62 of
62
with 100 items per page.
- W4241833849 abstract "A Rule Induction Algorithm for Application to Petrophysical, Seismic, Geological and Reservoir Data Clayton V. Deutsch; Clayton V. Deutsch University of Alberta Search for other works by this author on: This Site Google Scholar YuLong Xie; YuLong Xie University of Alberta Search for other works by this author on: This Site Google Scholar A. Stan Cullick A. Stan Cullick Landmark Graphics Search for other works by this author on: This Site Google Scholar Paper presented at the SPE Western Regional Meeting, Bakersfield, California, March 2001. Paper Number: SPE-68818-MS https://doi.org/10.2118/68818-MS Published: March 26 2001 Connected Content Related to: Rule-Induction Algorithm for Multidisciplinary Data Cite View This Citation Add to Citation Manager Share Icon Share Twitter LinkedIn Get Permissions Search Site Citation Deutsch, Clayton V., Xie, YuLong, and A. Stan Cullick. A Rule Induction Algorithm for Application to Petrophysical, Seismic, Geological and Reservoir Data. Paper presented at the SPE Western Regional Meeting, Bakersfield, California, March 2001. doi: https://doi.org/10.2118/68818-MS Download citation file: Ris (Zotero) Reference Manager EasyBib Bookends Mendeley Papers EndNote RefWorks BibTex Search Dropdown Menu toolbar search search input Search input auto suggest filter your search All ContentAll ProceedingsSociety of Petroleum Engineers (SPE)SPE Western Regional Meeting Search Advanced Search AbstractThis paper introduces an algorithm for rule induction intended to provide new insights, improve the reliability and expedite the utilization of large petrophysical and geologic databases. Very large petrophysical, geophysical, and geological databases contain multiple data types, which must be interpreted for application in subsurface modeling. This paper presents a significant advance in discovering complex and even nontrivial data relationships from such databases.Geoscientists are often challenged to predict subsurface lithologies and properties from multivariate relationships within large databases of core, wireline, and seismic data. Many data analysis techniques are used including histograms, parametric and non-parametric regression, n-dimensional histograms, cluster analysis, discrimininant analysis, principal components analysis. This paper introduces a new algorithm that seeks to discover rule-like relationships within the data that can be used to make predictions. The method is loosely derived from a data mining technology of classification.Concepts of data attribute distinguishability and importance are introduced to assess the value of the data and the outcomes to predictability. The new theory, implementation details, and an application are presented. Current petrophysical, seismic, and geostatistical analysis benefit from the rule induction algorithm presented. Improved reservoir characterization and forecasting result.BackgroundThe field of data mining2,7,8,11,17,18 has grown in recent years to deal with large databases available in different industries, in particular, the financial and medical fields. Data mining is the identification or discovery of patterns in data. There are several different types of data mining. These include classification, clustering (segmentation), association, and sequence discovery. The main focus of classification is supervised induction, that is, inference of rules and relationships from large databases. The aim is to extract knowledge from data, so that results not directly in the training data set can be predicted. The training data helps to distinguish predefined classes. Neural networks3,9,13,14,27, decision trees5,6,16,19,26,29 and if-then-else rules are classification techniques. A disadvantage of neural networks is that it is difficult to provide a good rationale for the predictions made, that is, the rules are not always clear.Data mining is an interdisciplinary field bringing together techniques from statistics, machine learning, artificial intelligence, pattern recognition, database, and visualization technologies. The methods used in data mining are not fundamentally different from older quantitative model-building techniques, but are natural extensions and generalizations of such methods. There are many applications of various data mining techniques to petroleum characterization1,4,12,15,28.A rule-based algorithm is intended to provide understandable rule-like relationships in the data. A rule is a prevailing quality or state. Induction is an instance of reasoning from a part to a whole. Rules indicate the degree of association between variables, map data into predefined classes, and identify a finite set of categories or clusters to describe the data. The rules support specific tasks and are generated by repeated application of a certain technique, or more generally an algorithm, on the data. Rough Sets17,20–25,30,31 are specialized methods for inducing rules. The essential idea of rough sets is to express uncertain knowledge through an approximation space, which is constructed as certain sets. Keywords: prediction, algorithm, probability, upstream oil & gas, application, data table, machine learning, facies model, decision category, information value Subjects: Information Management and Systems, Artificial intelligence This content is only available via PDF. 2001. Society of Petroleum Engineers You can access this article if you purchase or spend a download." @default.
- W4241833849 created "2022-05-12" @default.
- W4241833849 creator A5018381025 @default.
- W4241833849 creator A5047670977 @default.
- W4241833849 creator A5050348327 @default.
- W4241833849 date "2001-03-01" @default.
- W4241833849 modified "2023-09-23" @default.
- W4241833849 title "A Rule Induction Algorithm for Application to Petrophysical, Seismic, Geological and Reservoir Data" @default.
- W4241833849 doi "https://doi.org/10.2523/68818-ms" @default.
- W4241833849 hasPublicationYear "2001" @default.
- W4241833849 type Work @default.
- W4241833849 citedByCount "0" @default.
- W4241833849 crossrefType "proceedings-article" @default.
- W4241833849 hasAuthorship W4241833849A5018381025 @default.
- W4241833849 hasAuthorship W4241833849A5047670977 @default.
- W4241833849 hasAuthorship W4241833849A5050348327 @default.
- W4241833849 hasConcept C11413529 @default.
- W4241833849 hasConcept C124101348 @default.
- W4241833849 hasConcept C127313418 @default.
- W4241833849 hasConcept C161191863 @default.
- W4241833849 hasConcept C166957645 @default.
- W4241833849 hasConcept C187320778 @default.
- W4241833849 hasConcept C205649164 @default.
- W4241833849 hasConcept C23123220 @default.
- W4241833849 hasConcept C2778805511 @default.
- W4241833849 hasConcept C2781113848 @default.
- W4241833849 hasConcept C41008148 @default.
- W4241833849 hasConcept C46293882 @default.
- W4241833849 hasConcept C6648577 @default.
- W4241833849 hasConcept C77088390 @default.
- W4241833849 hasConcept C8058405 @default.
- W4241833849 hasConceptScore W4241833849C11413529 @default.
- W4241833849 hasConceptScore W4241833849C124101348 @default.
- W4241833849 hasConceptScore W4241833849C127313418 @default.
- W4241833849 hasConceptScore W4241833849C161191863 @default.
- W4241833849 hasConceptScore W4241833849C166957645 @default.
- W4241833849 hasConceptScore W4241833849C187320778 @default.
- W4241833849 hasConceptScore W4241833849C205649164 @default.
- W4241833849 hasConceptScore W4241833849C23123220 @default.
- W4241833849 hasConceptScore W4241833849C2778805511 @default.
- W4241833849 hasConceptScore W4241833849C2781113848 @default.
- W4241833849 hasConceptScore W4241833849C41008148 @default.
- W4241833849 hasConceptScore W4241833849C46293882 @default.
- W4241833849 hasConceptScore W4241833849C6648577 @default.
- W4241833849 hasConceptScore W4241833849C77088390 @default.
- W4241833849 hasConceptScore W4241833849C8058405 @default.
- W4241833849 hasLocation W42418338491 @default.
- W4241833849 hasOpenAccess W4241833849 @default.
- W4241833849 hasPrimaryLocation W42418338491 @default.
- W4241833849 hasRelatedWork W2075740931 @default.
- W4241833849 hasRelatedWork W2101164893 @default.
- W4241833849 hasRelatedWork W2110946462 @default.
- W4241833849 hasRelatedWork W2145813196 @default.
- W4241833849 hasRelatedWork W2153573425 @default.
- W4241833849 hasRelatedWork W2157891449 @default.
- W4241833849 hasRelatedWork W2316636014 @default.
- W4241833849 hasRelatedWork W2333085833 @default.
- W4241833849 hasRelatedWork W2556474329 @default.
- W4241833849 hasRelatedWork W2789499036 @default.
- W4241833849 isParatext "false" @default.
- W4241833849 isRetracted "false" @default.
- W4241833849 workType "article" @default.