Volume 16 No 5 (2018)
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Oil Well Productivity Computation Based on a Brain-Inspired Cognitive Architecture
Yu Yuan, Suian Zhang , Shuqin Yuan, Yanqiang Wu, Xinjia Liu , Hongli Wang
Abstract
This paper aims to mitigate the negative effect of production data errors on the curve of inflow performance
relationship (IPR). To this end, the author proposed a brain-inspired productivity computation method for oil wells
based on Shannhan’s brain-inspired cognitive architecture. The architecture consists of two interacting
sensorimotor loops. In the proposed method, the IPR parameters were fitted in the inner loop, and the fitting
results were considered in the productivity computing in the outer loop. Then, the proposed model was applied to
compute the oil productivity of a real oil well, compared with other common methods, and verified through
numerical simulation. The results show that the new method can predict well productivity more accurately than
the contrast methods. Suffice it to say that this research puts forward a simple and reliable method for IPR curve
drawing
Keywords
Brain-inspired Intelligence, Productivity, Inflow Performance Relationship (IPR), Brain-inspired Cognitive Architecture, Nonlinear Least Squares Fitting
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