Title
Using artificial neural networks to predict the quality and performance of oilfield cements
Abstract
Inherent batch to batch variability, ageing and contamination are major factors contributing to variability in oilfield cement slurry performance. Of particular concern are problems encountered when a slurry is formulated with one cement sample and used with a batch having different properties. Such variability imposes a heavy burden on performance testing and is often a major factor in operational failure. We describe methods which allow the identification, characterisation and prediction of the variability of oilfield cements. Our approach involves predicting cement compositions, particle size distributions and thickening time curves from the diffuse reflectance infrared Fourier transform spectrum of neat cement powders. Predictions make use of artificial neural networks. Slurry formulation thickening times can he predicted with uncertainties of less than ±10%. Composition and particle size distributions can he predicted with uncertainties a little greater than measurement error but general trends and differences between cements can be determined reliably. Our research shows that many key cement properties are captured within the Fourier transform infrared spectra of cement powders and can be predicted from these spectra using suitable neural network techniques. Several case studies are given to emphasise the use of these techniques which provide the basis for a valuable quality control tool now finding commercial use in the oilfield.
Year
Venue
Keywords
1996
AAAI/IAAI, Vol. 1
oilfield cement,cement sample,oilfield cement slurry performance,cement powder,major factor,batch variability,neat cement powder,artificial neural network,key cement property,cement composition,particle size distribution
Field
DocType
Citations 
Process engineering,Data mining,Computer science,Fourier transform infrared spectra,Particle size,Diffuse reflectance infrared fourier transform,Artificial neural network,Thickening,Cement,Observational error,Slurry
Conference
0
PageRank 
References 
Authors
0.34
1
3
Name
Order
Citations
PageRank
P. V. Coveney1335.99
T. L. Hughes210.72
P. Fletcher300.34