Title :
Adaptive neural network filtering device for enhanced downhole oilfield measurements
Author :
De Jestis, O. ; Chen, Dingding ; Schultz, Roger ; Foster, Jerry
Author_Institution :
Halliburton Energy Services, Carrollton, TX, USA
Abstract :
Slickline-deployed, instruments are commonly used to perform measurement and. service operations in oilwells. In order to accurately determine the downhole position of a suspended instrument, a device known as an electro-mechanical casing collar locator (EMCL) is sometimes used. The device is first lowered into a well, and then, slowly withdrawn. When a casing collar is,encountered, the EMCL device causes changes in the line tension. These changes in line tension, which are measured at the surface, are correlated to collar locations, and hence, instrument depth. Like many other applications, noise from different sources during slickline jobs may add contaminating noise or cause destructive interference in the monitored of tension signals. In this paper, a method of using an adaptive neural network to filter the tension signal to remove unwanted noise is described. A theoretical discussion and the review of results of experimental testing are presented.
Keywords :
adaptive filters; distance measurement; force measurement; interference suppression; neural nets; oil technology; position measurement; EMCL; adaptive neural network filtering; collar locations; contaminating noise; depth measurement; destructive interference; downhole oilfield measurements; electro-mechanical casing collar locator; line tension measurement; oilwell service operations; slickline deployed instruments; suspended instrument downhole position determination; Adaptive filters; Adaptive systems; Filtering; Instruments; Interference; Lubricating oils; Neural networks; Performance evaluation; Pollution measurement; Surface contamination;
Conference_Titel :
Circuits and Systems, 2002. MWSCAS-2002. The 2002 45th Midwest Symposium on
Print_ISBN :
0-7803-7523-8
DOI :
10.1109/MWSCAS.2002.1186980