Fuzzy Preprocessing Rules for the Improvement of an Artificial Neural Network Well Log Interpretation Model

نویسندگان

  • Kok Wai Wong
  • Chun Che
چکیده

The success of an Artificial Neural Network (ANN) based data interpretation model depends heavily on the availability and the characteristics of the training data. In the process of developing a reliable well log interpretation model, a log analyst has to spend many hours to perform pre-processing on the training data set. This demands substantial experience and expertise from the analyst. This paper proposes a fuzzy logic approach to integrate the knowledge of the log analysts in the stage of pre-processing. This paper also presents results from an experimental study which demonstrated the implementation of the fuzzy preprocessing technique which has increased the prediction accuracy of the ANN well log interpretation model. This new method has the potential to be a useful and important tool for the professional well log analysts.

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تاریخ انتشار 2009