Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Martin Vad Bennetzen is active.

Publication


Featured researches published by Martin Vad Bennetzen.


information processing and trusted computing | 2014

Automatic High-Throughput Detection of Fluid Inclusions in Thin-Section Images using a Novel Algorithm

Martin Vad Bennetzen; Xiomara Marquez; Kristian Mogensen

Detection and examination of fluid inclusions can lead to insight into diagenesis and history of a hydrocarbon reservoir. Currently, geologists are faced with a large collection of digital images, making manual investigation highly inefficient and time-consuming. A combination of data acquisition by simple and robust light microscopy and an advanced downstream computational solution is ideal with respect to cost efficiency and stable large-scale and high-throughput ability. Moreover, a strict deterministic algorithm for automatic fluid inclusion detection is not subjected to any human biases that would otherwise violate detection consistency. A novel algorithm for fluid inclusion detection has been developed and implemented in the statistical scripting language R and the object-oriented programming language C# under the .NET 4.0 computational framework. The algorithm is a result of thorough understanding of the image representation of fluid inclusions and optimized based on empirical correlations. It is based on sequential image section-specific intensity-centric selection criteria, intensity distribution discrimination and conditional statistics. Moreover, a multi-dimensional scoring-scheme has been developed and implemented. The software was able to successfully identify a series of fluid inclusions on the same thin-section image containing hydrocarbon and aqueous phases, respectively. Due to the modular structure the software is highly flexible and can be tailor-made to specific analytical needs, such as selective identification of solid phases.


information processing and trusted computing | 2014

Novel Applications of Nanoparticles for Future Enhanced Oil Recovery

Martin Vad Bennetzen; Kristian Mogensen


SPE Annual Technical Conference and Exhibition, ATCE 2014 | 2014

Accelerated Oil Droplet Separation from Produced Water Using Magnetic Nanoparticles

Saebom Ko; Valentina Prigiobbe; Chun Huh; Steven L. Bryant; Martin Vad Bennetzen; Kristian Mogensen


information processing and trusted computing | 2014

Removal of Divalent Cations from Brine Using Selective Adsorption onto Magnetic Nanoparticles

Qing Wang; Valentina Prigiobbe; Chun Huh; Steven L. Bryant; Kristian Mogensen; Martin Vad Bennetzen


Abu Dhabi International Petroleum Exhibition and Conference | 2014

Successful Polymer Flooding of Low-Permeability, Oil-Wet, Carbonate Reservoir Cores

Martin Vad Bennetzen; Syed Furqan H. Gilani; Kristian Mogensen; Muhammad Ghozali; Noureddine Bounoua


Journal of Nanoparticle Research | 2017

Amine functionalized magnetic nanoparticles for removal of oil droplets from produced water and accelerated magnetic separation

Saebom Ko; Eun Song Kim; Siman Park; Hugh Daigle; Thomas E. Milner; Chun Huh; Martin Vad Bennetzen; Giuliano A. Geremia


information processing and trusted computing | 2014

Dilute Surfactant Flooding Studies in a Low-Permeability Oil-Wet Middle East Carbonate

Martin Vad Bennetzen; Kristian Mogensen; Soren Frank; Kishore K. Mohanty


SPE International Symposium on Oilfield Chemistry | 2015

Magnetic Nanoparticles for Efficient Removal of Oilfield “Contaminants": Modeling of Magnetic Separation and Validation

Valentina Prigiobbe; Saebom Ko; Qing Wang; Chun Huh; Steven L. Bryant; Martin Vad Bennetzen


Journal of Organic Chemistry | 2015

Hydrocarbon binding by proteins: structures of protein binding sites for ≥C10 linear alkanes or long-chain alkyl and alkenyl groups.

Jiyong Park; Hung V. Pham; Kristian Mogensen; Theis I. Sølling; Martin Vad Bennetzen; K. N. Houk


SPE Annual Technical Conference and Exhibition | 2016

Oil Droplet Removal from Produced Water Using Nanoparticles and Their Magnetic Separation

Saebom Ko; Eun Song Kim; Siman Park; Hugh Daigle; Thomas E. Milner; Chun Huh; Martin Vad Bennetzen; Giuliano A. Geremia

Collaboration


Dive into the Martin Vad Bennetzen's collaboration.

Top Co-Authors

Avatar

Chun Huh

University of Texas at Austin

View shared research outputs
Top Co-Authors

Avatar

Saebom Ko

University of Texas at Austin

View shared research outputs
Top Co-Authors

Avatar

Valentina Prigiobbe

University of Texas at Austin

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge