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Seismic Soundoff
Society of Exploration Geophysicists (SEG)
285 episodes
4 days ago
"Sometimes the traditional methods are way more effective or efficient in handling certain things. To succeed in this new paradigm, we need to build on our strong fundamentals and progress further." Ivan Lim Chen Ning shares how data-driven methods are reshaping geophysics by challenging traditional workflows and opening new possibilities. He highlights the role of AI, machine learning, and fiber-optic sensing in improving seismic interpretation, imaging, and monitoring. His insights show how combining strong fundamentals with modern digital tools can help geophysicists solve problems more effectively. Read the September issue of TLE about data-driven geophysics at https://library.seg.org/toc/leedff/44/9. KEY TAKEAWAYS > AI and data-driven tools open new paths. They help geophysicists move beyond traditional workflows to find faster and simpler solutions. > Fiber-optic sensing changes monitoring. DAS provides continuous well data, replacing point sensors and revealing signals directly. > Strong fundamentals still matter. Success comes from combining proven geophysical methods with modern digital skills. GUEST BIO Ivan Lim Chen Ning is an Earth Scientist – Fiber Optics at Chevron, where he analyzes Distributed Fiber Optic Sensing (DFOS) data and develops real-time algorithms for field applications. He applies deep learning and signal processing to improve DFOS workflows, advancing distributed acoustic sensing in the energy industry. A member of Chevron’s Emerging Leader 2024 cohort, Ivan is recognized for solving cross-disciplinary challenges and driving innovation to help secure energy for the future.
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Science
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"Sometimes the traditional methods are way more effective or efficient in handling certain things. To succeed in this new paradigm, we need to build on our strong fundamentals and progress further." Ivan Lim Chen Ning shares how data-driven methods are reshaping geophysics by challenging traditional workflows and opening new possibilities. He highlights the role of AI, machine learning, and fiber-optic sensing in improving seismic interpretation, imaging, and monitoring. His insights show how combining strong fundamentals with modern digital tools can help geophysicists solve problems more effectively. Read the September issue of TLE about data-driven geophysics at https://library.seg.org/toc/leedff/44/9. KEY TAKEAWAYS > AI and data-driven tools open new paths. They help geophysicists move beyond traditional workflows to find faster and simpler solutions. > Fiber-optic sensing changes monitoring. DAS provides continuous well data, replacing point sensors and revealing signals directly. > Strong fundamentals still matter. Success comes from combining proven geophysical methods with modern digital skills. GUEST BIO Ivan Lim Chen Ning is an Earth Scientist – Fiber Optics at Chevron, where he analyzes Distributed Fiber Optic Sensing (DFOS) data and develops real-time algorithms for field applications. He applies deep learning and signal processing to improve DFOS workflows, advancing distributed acoustic sensing in the energy industry. A member of Chevron’s Emerging Leader 2024 cohort, Ivan is recognized for solving cross-disciplinary challenges and driving innovation to help secure energy for the future.
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Science
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Karelia La Marca - Geophysicist at bp (Inside IMAGE)
Seismic Soundoff
16 minutes 46 seconds
2 months ago
Karelia La Marca - Geophysicist at bp (Inside IMAGE)
Karelia La Marca shares how her passion for geophysics has taken her from the classroom to exciting fieldwork around the world. She offers an encouraging tip for first-timers while explaining the skills and teamwork that make science stronger. Get a front-row seat to the conversations shaping the geosciences. Inside IMAGE is a special series from Seismic Soundoff, SEG’s flagship podcast hosted by Andrew Geary, now in its 10th year. This limited-edition series takes you behind the scenes of IMAGE, the premier geoscience event, with exclusive interviews and in-depth discussions. Learn more at https://www.imageevent.org/.
Seismic Soundoff
"Sometimes the traditional methods are way more effective or efficient in handling certain things. To succeed in this new paradigm, we need to build on our strong fundamentals and progress further." Ivan Lim Chen Ning shares how data-driven methods are reshaping geophysics by challenging traditional workflows and opening new possibilities. He highlights the role of AI, machine learning, and fiber-optic sensing in improving seismic interpretation, imaging, and monitoring. His insights show how combining strong fundamentals with modern digital tools can help geophysicists solve problems more effectively. Read the September issue of TLE about data-driven geophysics at https://library.seg.org/toc/leedff/44/9. KEY TAKEAWAYS > AI and data-driven tools open new paths. They help geophysicists move beyond traditional workflows to find faster and simpler solutions. > Fiber-optic sensing changes monitoring. DAS provides continuous well data, replacing point sensors and revealing signals directly. > Strong fundamentals still matter. Success comes from combining proven geophysical methods with modern digital skills. GUEST BIO Ivan Lim Chen Ning is an Earth Scientist – Fiber Optics at Chevron, where he analyzes Distributed Fiber Optic Sensing (DFOS) data and develops real-time algorithms for field applications. He applies deep learning and signal processing to improve DFOS workflows, advancing distributed acoustic sensing in the energy industry. A member of Chevron’s Emerging Leader 2024 cohort, Ivan is recognized for solving cross-disciplinary challenges and driving innovation to help secure energy for the future.