DocumentCode :
1714835
Title :
Application of dynamic fuzzy neural networks based on EBF to multifactorial flooding index prediction
Author :
Wang Jing-ci ; Luo Jin-xiong ; Xu Guo-zhen
Author_Institution :
Key Lab. of Exploration Technol. for Oil & Gas Resources, Yangtze Univ., Jingzhou, China
fYear :
2013
Firstpage :
3535
Lastpage :
3540
Abstract :
Multifactorial flooding index is an important parameter to flooding reservoir analysis. It is very necessary to consider the weight of each flooding strength indicator in calculation of multifactorial flooding index by using of logging data. Therefore, a fuzzy neural network prediction system of multifactorial flooding index based on Ellipse Basis Function was established on the basis of the analysis of a variety of static and dynamic data of Gasikule oil field N1-N21 reservior. This prediction system can create or delete fuzzy rules by analyzing samples and take the dynamic weight values of the input variables into consideration. The information contained in the log data is enormous. By using this prediction system with self-learning mechanism, the extraction and utilization of information is more effective. Practical application shows that the accuracy of identification is high. Especially for complex reservoirs, the application of this Fuzzy Neural Networks to reservoir characteristic parameters prediction improves the precision of prediction results and reduces the dependency on prior informations.
Keywords :
fuzzy neural nets; hydrocarbon reservoirs; unsupervised learning; EBF; Gasikule oil field N1-N21 reservior; dynamic fuzzy neural networks; ellipse basis function; flooding reservoir analysis; fuzzy neural network prediction system; information extraction; information utilization; multifactorial flooding index prediction; reservoir characteristic parameters prediction; self-learning mechanism; Educational institutions; Electronic mail; Floods; Fuzzy neural networks; IP networks; Indexes; Reservoirs; Ellipse Basis Function; Fuzzy Neural Networks; Multifactorial flooding index; Well log;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an
Type :
conf
Filename :
6640033
Link To Document :
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