Author:
Xin Feng,Shaohui Li,Qiang Feng,Shugui Liu
Abstract
During petroleum exploration and exploitation, the oil well-testing data collected by pressure gauges are used for monitoring the well condition and recording the reservoir performance. However, due to the large number of the collected data, the classification of this large volume of data requires a previous processing for the removal of noise and outliers. It is impractical to partition and process these data manually. Vibration-based features reflect geological properties and offer a promising option to fulfil such requirements. Based on the 75 on-site measured samples, the time-frequency-domain features are extracted and the classification performance of three classical classifiers are investigated. Then the downhole data processing and classification method is present by analysing the cross interaction of different types of data features and different classification mechanism. Several feature combinations are tested to establish a processing flow that can efficiently remove the noise and preserve the shape of curves, high signal to noise ratio rates, with minimum absolute errors. The results show that optimal multi-feature combination can achieve the highest working stage identification rate of 72%, the parameters optimized support vector machine can achieve the better classification performance than other listed classifiers. This paper provides a theoretical study for the data denoising and processing to enhance the working stage classification accuracy.
Reference9 articles.
1. A novel competitive learning neural network based acoustic transmission system for oil-well monitoring
2. Carvajal G., Maucec M., Cullick S., Smart Wells and Techniques for Reservoir Monitoring, (Intelligent Digital Oil and Gas Fields, 2018)
3. Elsherif T.A., Balto A.A., Baez F., et al. The Use of Real-Time Downhole Pressure and Distributed Temperature Surveying in Quantifying the Skin Evolution and Zonal Coverage in Horizontal Well Stimulation, (Society of Petroleum Engineers 2012)
4. Detection of nonstationarities in geological time series: Wavelet transform of chaotic and cyclic sequences
5. Automatic Deep Vector Learning Model Applied for Oil-Well-Testing Feature Mining, Purification and Classification