Multi-stream encoder and multi-layer comparative learning network for fluid classification based on logging data via wavelet threshold denoising
Hengxiao Li,
Sibo Qiao,
Youzhuang Sun
Abstract:In recent years, the importance of fluid classification in oil and gas exploration has become increasingly evident. However, the inherent complexity of logging data and noise pose significant challenges to this task. To this end, this paper proposes a wavelet threshold denoising-based multi-stream encoder combined with multi-level comparison learning (LogMEC-MCL) framework for fluid classification. The framework begins with comprehensive noise reduction, utilizing wavelet threshold denoising to preprocess the … Show more
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