Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference
An artificial-intelligence based decision-making protocol is developed for tight gas sands to identify re-fracturing wells and used in case studies. The methodology is based on fuzzy logic to deal with imprecision and subjectivity through mathematical representations of linguistic vagueness, and is...
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doaj-7d322b24950a46c1a1083351c23284bd2021-03-02T07:27:50ZengKeAi Communications Co., Ltd.Petroleum Exploration and Development1876-38042020-04-01472413420Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inferenceEmre ARTUN0Burak KULGA1Middle East Technical University, Northern Cyprus Campus, Petroleum and Natural Gas Engineering Program, Mersin 10, Turkey, 99738; Corresponding authorIstanbul Technical University, Department of Petroleum and Natural Gas Engineering, Maslak, Istanbul, Turkey, 34467An artificial-intelligence based decision-making protocol is developed for tight gas sands to identify re-fracturing wells and used in case studies. The methodology is based on fuzzy logic to deal with imprecision and subjectivity through mathematical representations of linguistic vagueness, and is a computing system based on the concepts of fuzzy set theory, fuzzy if-then rules, and fuzzy reasoning. Five indexes are used to characterize hydraulic fracture quality, reservoir characteristics, operational parameters, initial conditions, and production related to the selection of re-fracturing well, and each index includes 3 related parameters. The value of each index/parameter is grouped into three categories that are low, medium, and high. For each category, a trapezoidal membership function all related rules are defined. The related parameters of an index are input into the rule-based fuzzy-inference system to output value of the index. Another fuzzy-inference system is built with the reservoir index, operational index, initial condition index and production index as input parameters and re-fracturing potential index as output parameter to screen out re-fracturing wells. This approach was successfully validated using published data. Key words: tight gas sands, re-fracturing, horizontal wells, artificial intelligence, fuzzy logic, fuzzy rule, hydraulic fracture quality, refracturing potentialhttp://www.sciencedirect.com/science/article/pii/S1876380420600581 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Emre ARTUN Burak KULGA |
spellingShingle |
Emre ARTUN Burak KULGA Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference Petroleum Exploration and Development |
author_facet |
Emre ARTUN Burak KULGA |
author_sort |
Emre ARTUN |
title |
Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference |
title_short |
Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference |
title_full |
Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference |
title_fullStr |
Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference |
title_full_unstemmed |
Selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference |
title_sort |
selection of candidate wells for re-fracturing in tight gas sand reservoirs using fuzzy inference |
publisher |
KeAi Communications Co., Ltd. |
series |
Petroleum Exploration and Development |
issn |
1876-3804 |
publishDate |
2020-04-01 |
description |
An artificial-intelligence based decision-making protocol is developed for tight gas sands to identify re-fracturing wells and used in case studies. The methodology is based on fuzzy logic to deal with imprecision and subjectivity through mathematical representations of linguistic vagueness, and is a computing system based on the concepts of fuzzy set theory, fuzzy if-then rules, and fuzzy reasoning. Five indexes are used to characterize hydraulic fracture quality, reservoir characteristics, operational parameters, initial conditions, and production related to the selection of re-fracturing well, and each index includes 3 related parameters. The value of each index/parameter is grouped into three categories that are low, medium, and high. For each category, a trapezoidal membership function all related rules are defined. The related parameters of an index are input into the rule-based fuzzy-inference system to output value of the index. Another fuzzy-inference system is built with the reservoir index, operational index, initial condition index and production index as input parameters and re-fracturing potential index as output parameter to screen out re-fracturing wells. This approach was successfully validated using published data. Key words: tight gas sands, re-fracturing, horizontal wells, artificial intelligence, fuzzy logic, fuzzy rule, hydraulic fracture quality, refracturing potential |
url |
http://www.sciencedirect.com/science/article/pii/S1876380420600581 |
work_keys_str_mv |
AT emreartun selectionofcandidatewellsforrefracturingintightgassandreservoirsusingfuzzyinference AT burakkulga selectionofcandidatewellsforrefracturingintightgassandreservoirsusingfuzzyinference |
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