遥测
信号处理
计算机科学
钻探
信号(编程语言)
数字信号处理
工程类
计算机硬件
电信
机械工程
程序设计语言
作者
Songwei Zhang,Jie Shang,Wei Chen,Zhiming M. Wang
标识
DOI:10.30632/spwla-2025-0001
摘要
Real-time data transmission from deep wells is critical for safe and efficient drilling operations, yet mud pulse telemetry (MPT) systems face substantial challenges due to severe signal attenuation, multipath distortion, and strong noise interference. This paper reviews recent advancements in MPT and proposes an integrated approach combining advanced combination code encoding with deep learning-based channel estimation and AI-driven noise suppression. A Multi-Pulse Position Check Code (MPCC) is introduced to enable high- density data transmission with built-in error detection, significantly reducing both memory requirements and computational complexity compared to conventional methods. In parallel, deep neural networks—employing convolutional and recurrent architectures—are utilized to accurately model and estimate the dynamic, nonlinear mud channel, thereby facilitating effective channel equalization. Moreover, the implementation of a Mud Signal Denoising Network (MSDnNet) markedly suppresses pump stroke noise, baseline drift, and random interference, achieving an average SNR improvement. Laboratory and field results demonstrate significantly improved signal-to-noise ratios and higher data transmission rates under harsh downhole conditions. The integration of these advanced techniques not only enhances signal clarity and reliability but also supports real-time predictive maintenance and adaptive modulation. These innovations promise to significantly improve the performance of Measurement While Drilling (MWD) systems, enabling more accurate downhole measurements and promoting safer, more cost-effective drilling operations. Future research will focus on further refining these methods and extending their application to other telemetry systems in extreme environments. Keywords: Mud Pulse Telemetry, Combination Code Encoding, Deep Learning, Noise Suppression 1.
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