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    Data-Driven Approach for Resistivity Prediction Using Artificial Intelligence

    Source: Journal of Energy Resources Technology:;2022:;volume( 144 ):;issue: 010::page 103003-1
    Author:
    Abdelaal, Ahmed
    ,
    Ibrahim, Ahmed Farid
    ,
    Elkatatny, Salaheldin
    DOI: 10.1115/1.4053954
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Formation resistivity is crucial for petrophysics and formation evaluation. Laboratory measurements and/or well logging can be used to provide resistivity data. Laboratory measurements are time-consuming and costly, limiting their use. Furthermore, certain log records may be missing in some segments for a variety of reasons, including instrument failure, poor hole conditions, and data loss due to storage and incomplete recording. The purpose of this study is to apply support vector machines (SVM), and functional networks (FN) to introduce intelligent models for formation resistivity prediction using other available logging parameters. The well logs include gamma ray, density, neutron, and sonic data. The predictive models were built using a data collection of roughly 4300 data points collected from vertical sections of complex reservoirs. For model training and testing, the data set was split at random in a 70:30 ratio. The predictive models were validated using a different set of data (around 1300 points) that had not been seen by the model. The models predicted the target with a good correlation coefficient (R) of around 0.93 and accepted root-mean-squared error (RMSE) of 0.3 for training and testing. The suggested methods for estimating formation resistivity from available logging parameters are shown to be reliable in this study. Resistivity prediction can fill the missing gaps in log tracks and may save money by removing resistivity logs running in all offset wells in the same field.
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      Data-Driven Approach for Resistivity Prediction Using Artificial Intelligence

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    contributor authorAbdelaal, Ahmed
    contributor authorIbrahim, Ahmed Farid
    contributor authorElkatatny, Salaheldin
    date accessioned2022-05-08T09:35:15Z
    date available2022-05-08T09:35:15Z
    date copyright3/18/2022 12:00:00 AM
    date issued2022
    identifier issn0195-0738
    identifier otherjert_144_10_103003.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4285321
    description abstractFormation resistivity is crucial for petrophysics and formation evaluation. Laboratory measurements and/or well logging can be used to provide resistivity data. Laboratory measurements are time-consuming and costly, limiting their use. Furthermore, certain log records may be missing in some segments for a variety of reasons, including instrument failure, poor hole conditions, and data loss due to storage and incomplete recording. The purpose of this study is to apply support vector machines (SVM), and functional networks (FN) to introduce intelligent models for formation resistivity prediction using other available logging parameters. The well logs include gamma ray, density, neutron, and sonic data. The predictive models were built using a data collection of roughly 4300 data points collected from vertical sections of complex reservoirs. For model training and testing, the data set was split at random in a 70:30 ratio. The predictive models were validated using a different set of data (around 1300 points) that had not been seen by the model. The models predicted the target with a good correlation coefficient (R) of around 0.93 and accepted root-mean-squared error (RMSE) of 0.3 for training and testing. The suggested methods for estimating formation resistivity from available logging parameters are shown to be reliable in this study. Resistivity prediction can fill the missing gaps in log tracks and may save money by removing resistivity logs running in all offset wells in the same field.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleData-Driven Approach for Resistivity Prediction Using Artificial Intelligence
    typeJournal Paper
    journal volume144
    journal issue10
    journal titleJournal of Energy Resources Technology
    identifier doi10.1115/1.4053954
    journal fristpage103003-1
    journal lastpage103003-6
    page6
    treeJournal of Energy Resources Technology:;2022:;volume( 144 ):;issue: 010
    contenttypeFulltext
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