地震データ処理のためのテンソル計算<br>Tensor Computation for Seismic Data Processing : Linking Theory and Practice

個数:1
紙書籍版価格
¥42,368
  • 電子書籍
  • ポイントキャンペーン

地震データ処理のためのテンソル計算
Tensor Computation for Seismic Data Processing : Linking Theory and Practice

  • 著者名:Qian, Feng/Pan, Shengli/Zhang, Gulan
  • 価格 ¥32,381 (本体¥29,438)
  • Springer(2025/04/26発売)
  • 春うらら!Kinoppy 電子書籍・電子洋書 全点ポイント30倍キャンペーン(~3/15)
  • ポイント 8,820pt (実際に付与されるポイントはご注文内容確認画面でご確認下さい)
  • 言語:ENG
  • ISBN:9783031788994
  • eISBN:9783031789007

ファイル: /

Description

This book aims to provide a comprehensive understanding of tensor computation and its applications in seismic data analysis, exclusively catering to seasoned researchers, graduate students, and industrial engineers alike. Tensor emerges as a natural representation of multi-dimensional modern seismic data, and tensor computation can help prevent possible harm to the multi-dimensional geological structure of the subsurface that occurred in classical seismic data analysis.

It delivers a wealth of theoretical, computational, technical, and experimental details, presenting an engineer's perspective on tensor computation and an extensive investigation of tensor-based seismic data analysis techniques. Embark on a transformative exploration of seismic data processing—unlock the potential of tensor computation and reshape your approach to high-dimensional geological structures.

The discussion begins with foundational chapters, providing a solid background in both seismic data processing and tensor computation. The heart of the book lies in its seven chapters on tensor-based seismic data analysis methods. From structured low-tubal-rank tensor completion to cutting-edge techniques like tensor deep learning and tensor convolutional neural networks, each method is meticulously detailed. The superiority of tensor-based data analysis methods over traditional matrix-based data analysis approaches is substantiated through synthetic and real field examples, showcasing their prowess in handling high-dimensional modern seismic data. Notable chapters delve into seismic noise suppression, seismic data interpolation, and seismic data super-resolution using advanced tensor models. The final chapter provides a cohesive summary of the conclusion and future research directions, ensuring readers facilitate a thorough understanding of tensor computation applications in seismic data processing. The appendix includes a hatful of information on existing tensor computation software, enhancing the book's practical utility.

Table of Contents

Introduction.- The Foundations of Tensor Computation.- Tensor Completion for Seismic Data Reconstruction.- Tensor Low Rank Approximation for Seismic Footprint Suppression.- Tensor Deep Learning for Seismic Data Interpolation.- Transform Based Tensor Deep Learning for Seismic Random Noise Attenuation.- Order 𝒑 Tensor Deep Learning for Seismic Data Denoising.- Robust Tensor Deep Learning for Seismic Erratic Noise Attenuation.- Tensor Dictionary Learning for Seismic Data Super Resolution.- Conclusion and Future Research Directions.

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