Abstract

The traditional cable-based geophone network is an inefficient way of seismic data transmission owing to the related cost and weight. The future of oil and gas exploration technology demands large-scale seismic acquisition, versatility, flexibility, scalability, and automation. On the one hand, a typical seismic survey can pile up a massive amount of raw seismic data per day. On the other hand, the need for wireless seismic data transmission remains immense. Moving from pre-wired to wireless geophones faces major challenges given the enormous amount of data that needs to be transmitted from geophones to the on-site data collection center. The most important factor that has been ignored in the previous studies for the realization of wireless seismic data transmission is wireless channel effects. While transmitting the seismic data wirelessly, impairments like interference, multi-path fading, and channel noise need to be considered. Therefore, in this work, a novel amalgamation of blind channel identification and deep neural networks is proposed. As a geophone already is responsible for transmitting a tremendous amount of data under tight timing constraints, the proposed setup eschews sending any additional training signals for the purpose of mitigating the channel effects. Note that the deep neural network is trained only on synthetic seismic data without the need to use real data in the training process. Experiments show that the proposed method gives promising results when applied to the real/field data set.

Highlights

  • Classical seismic acquisition networks rely on cable-based systems

  • Wireless seismic network poses major challenges given the gigantic amount of data that need to be transmitted from seismic sensors to the on-site data processing center

  • Wireless transmission requires removing the wireless channel effects from seismic data. This is the most important factor that has been ignored in the previous studies for the realization of wireless seismic data transmission

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Summary

Introduction

Classical seismic acquisition networks rely on cable-based systems. With the increase in the surveying area, cable-based systems are not practical owing to the weight and cost of the cables. The method consists of two deep neural networks: one is used for signal-to-noise ratio (SNR) enhancement and the other for classification. The blind system identification methods are effective in low-noise environments without the need for SNR improvement. The geophone setup environment is stationary, i.e., geophones or the data center are fixed at the locations for several shots This added advantage of a stationary environment is used together with blind system identification for improving the estimation of the channel impulse response. Classification of geophone data using a deep fully connected neural network in order to decide about the need for SNR enhancement. This point addresses the practical implementation aspect of the proposed method.

Blind Channel Identification
SNR Enhancement Using Deep Neural Networks
Preprocessing Stage
SNR Enhancement
Classification
Overall Work Flow
Results and Discussion
Conclusions
Full Text
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