Title :
Variable Input Neural Network Ensembles in Generating Synthetic Well Logs
Author :
Chen, Dingding ; Quirein, John ; Smith, Harry ; Hamid, Syed ; Grable, Jeff ; Reed, Skip
Author_Institution :
Halliburton Energy Services, Carrollton
Abstract :
This paper discusses a hybrid method for construction of neural network ensembles (NNE) in generating synthetic well logs that is often driven by the needs of simulating unobtainable actual logs, reducing the operational cost, reconstruction of missing and/or bad log data, and minimizing the hazards associated with using radioactive sources. In this method, several computer-driven routines are developed to rank the candidate neural network inputs as a function of data partition, network complexity and initialization. Then a network pool is automatically formed having the selected candidate networks characterized with multi-set inputs and different hidden nodes. The ensemble optimization is performed using a multi-objective genetic algorithm by aggregating the ensemble validation error, complexity, and negative correlation into a single quantity of merit. The simulations applied to actual field examples demonstrate that using multi-set-input NNE is more robust than using single-set-input NNE with significantly reduced uncertainty and improved prediction accuracy on the new data for some applications.
Keywords :
genetic algorithms; neural nets; well logging; data partition; ensemble optimization; generating synthetic well logs; log data; multi-objective genetic algorithm; network complexity; radioactive sources; variable input neural network ensembles; Computational modeling; Computer networks; Costs; Genetic algorithms; Hazards; Hybrid power systems; Neural networks; Predictive models; Robustness; Uncertainty;
Conference_Titel :
Neural Networks, 2006. IJCNN '06. International Joint Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
0-7803-9490-9
DOI :
10.1109/IJCNN.2006.246842