Title of article :
Applications of information theory, genetic algorithms, and neural models to predict oil flow
Author/Authors :
Ludwig Jr.، نويسنده , , Oswaldo and Nunes، نويسنده , , Urbano and Araْjo، نويسنده , , Rui and Schnitman، نويسنده , , Leizer and Lepikson، نويسنده , , Herman Augusto، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
16
From page :
2870
To page :
2885
Abstract :
This work introduces a new information-theoretic methodology for choosing variables and their time lags in a prediction setting, particularly when neural networks are used in non-linear modeling. The first contribution of this work is the Cross Entropy Function (XEF) proposed to select input variables and their lags in order to compose the input vector of black-box prediction models. The proposed XEF method is more appropriate than the usually applied Cross Correlation Function (XCF) when the relationship among the input and output signals comes from a non-linear dynamic system. The second contribution is a method that minimizes the Joint Conditional Entropy (JCE) between the input and output variables by means of a Genetic Algorithm (GA). The aim is to take into account the dependence among the input variables when selecting the most appropriate set of inputs for a prediction problem. In short, theses methods can be used to assist the selection of input training data that have the necessary information to predict the target data. The proposed methods are applied to a petroleum engineering problem; predicting oil production. Experimental results obtained with a real-world dataset are presented demonstrating the feasibility and effectiveness of the method.
Keywords :
Information theory , genetic algorithm , NEURAL NETWORKS , Non-linear modeling
Journal title :
Communications in Nonlinear Science and Numerical Simulation
Serial Year :
2009
Journal title :
Communications in Nonlinear Science and Numerical Simulation
Record number :
1534486
Link To Document :
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