Seismic attributes as the framework for data integration throughout the oilfield life cycle
著者
書誌事項
Seismic attributes as the framework for data integration throughout the oilfield life cycle
(Distinguished instructor series, no. 21 . 2018 distinguished instructor short course)
Society of Exploration Geophysicists, c2018
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注記
"sponsored by the Society of Exploration Geophysicists"
Includes bibliographical references and index
内容説明・目次
内容説明
Useful attributes capture and quantify key components of the seismic amplitude and texture for subsequent integration with well log, microseismic, and production data through either interactive visualization or machine learning. Although both approaches can accelerate and facilitate the interpretation process, they can by no means replace the interpreter. Interpreter "grayware" includes the incorporation and validation of depositional, diagenetic, and tectonic deformation models, the integration of rock physics systematics, and the recognition of unanticipated opportunities and hazards. This book is written to accompany and complement the 2018 SEG Distinguished Instructor Short Course that provides a rapid overview of how 3D seismic attributes provide a framework for data integration over the life of the oil and gas field. Key concepts are illustrated by example, showing modern workflows based on interactive interpretation and display as well as those aided by machine learning.
目次
Preface
Acknowledgments
Chapter 1 Introduction
Chapter 2 Seismic Attributes and What They Measure
Chapter 3 Postmigration Data Conditioning and Image Enhancement
Chapter 4 The Exploration Stage of the Oilfield Life Cycle
Chapter 5 The Development Stage of the Oilfield Life Cycle
Chapter 6 The Mature Stage of the Oilfield Life Cycle
Chapter 7 Data Integration During the Rebirth Stage of the Oilfield Life Cycle: Resource Plays
Chapter 8 Data Integration and a Profile of the Future Interpreter
Appendix A Concepts of Linear Algebra - Correlation, Linear Regression, Covariance Matrices, Eigenvectors, and Principal Components
Appendix B Multiattribute Display
References
Index
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