Patents by Inventor Petr L. Volegov

Petr L. Volegov has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 9557394
    Abstract: Methods for determining the identity of a substance are provided. A classification parameter set is defined to allow identification of substances that previously could not be identified or to allow identification of substances with a higher degree of confidence. The classification parameter set may include at least one of relative nuclear susceptibility (RNS) or an x-ray linear attenuation coefficient (LAC). RNS represents the density of hydrogen nuclei present in a substance relative to the density of hydrogen nuclei present in water. The extended classification parameter set may include T1, T2, and/or T1? as well as at least one additional classification parameter comprising one of RNS or LAC. Values obtained for additional classification parameters as well as values obtained for T1, T2, and T1? can be compared to known classification parameter values to determine whether a particular substance is a known material.
    Type: Grant
    Filed: April 24, 2013
    Date of Patent: January 31, 2017
    Assignee: U.S. Department of Energy
    Inventors: Michelle A. Espy, Andrei N. Matlashov, Larry J. Schultz, Petr L. Volegov, Algis Urbaitis, Henrik Sandin, Jacob Yoder, Stephen Surko
  • Patent number: 9411031
    Abstract: Technologies related to identification of a substance in an optimized manner are provided. A reference group of known materials is identified. Each known material has known values for several classification parameters. The classification parameters comprise at least one of T1, T2, T1?, a relative nuclear susceptibility (RNS) of the substance, and an x-ray linear attenuation coefficient (LAC) of the substance. A measurement sequence is optimized based on at least one of a measurement cost of each of the classification parameters and an initial probability of each of the known materials in the reference group.
    Type: Grant
    Filed: April 24, 2013
    Date of Patent: August 9, 2016
    Assignee: Los Alamos National Security, LLC
    Inventors: Michelle A. Espy, Andrei N. Matlashov, Larry J. Schultz, Petr L. Volegov
  • Publication number: 20130317758
    Abstract: Technologies related to identification of a substance in an optimized manner are provided. A reference group of known materials is identified. Each known material has known values for several classification parameters. The classification parameters comprise at least one of T1, T2, T1?, a relative nuclear susceptibility (RNS) of the substance, and an x-ray linear attenuation coefficient (LAC) of the substance. A measurement sequence is optimized based on at least one of a measurement cost of each of the classification parameters and an initial probability of each of the known materials in the reference group.
    Type: Application
    Filed: April 24, 2013
    Publication date: November 28, 2013
    Inventors: Michelle A. Espy, Andrei N. Matlashov, Larry J. Schultz, Petr L. Volegov
  • Publication number: 20130285657
    Abstract: Methods for determining the identity of a substance are provided. A classification parameter set is defined to allow identification of substances that previously could not be identified or to allow identification of substances with a higher degree of confidence. The classification parameter set may include at least one of relative nuclear susceptibility (RNS) or an x-ray linear attenuation coefficient (LAC). RNS represents the density of hydrogen nuclei present in a substance relative to the density of hydrogen nuclei present in water. The extended classification parameter set may include T1, T2, and/or T1? as well as at least one additional classification parameter comprising one of RNS or LAC. Values obtained for additional classification parameters as well as values obtained for T1, T2, and T1? can be compared to known classification parameter values to determine whether a particular substance is a known material.
    Type: Application
    Filed: April 24, 2013
    Publication date: October 31, 2013
    Inventors: Michelle A. Espy, Andrei N. Matlashov, Larry J. Schultz, Petr L. Volegov, Algis Urbaitis, Henrik Sandin, Jacob Yoder, Stephen Surko
  • Patent number: 7688069
    Abstract: An ultra-low magnetic field NMR system can non-invasively examine containers. Database matching techniques can then identify hazardous materials within the containers. Ultra-low field NMR systems are ideal for this purpose because they do not require large powerful magnets and because they can examine materials enclosed in conductive shells such as lead shells. The NMR examination technique can be combined with ultra-low field NMR imaging, where an NMR image is obtained and analyzed to identify target volumes. Spatial sensitivity encoding can also be used to identify target volumes. After the target volumes are identified the NMR measurement technique can be used to identify their contents.
    Type: Grant
    Filed: May 18, 2007
    Date of Patent: March 30, 2010
    Assignee: Los Alamos National Security, LLC
    Inventors: Robert H. Kraus, Andrei N. Matlashov, Michelle A. Espy, Petr L. Volegov
  • Patent number: 7573268
    Abstract: Using resonant interactions to directly and tomographically image neural activity in the human brain using magnetic resonance imaging (MRI) techniques at ultra-low field (ULF), the present inventors have established an approach that is sensitive to magnetic field distributions local to the spin population in cortex at the Larmor frequency of the measurement field. Because the Larmor frequency can be readily manipulated (through varying Bm), one can also envision using ULF-DNI to image the frequency distribution of the local fields in cortex. Such information, taken together with simultaneous acquisition of MEG and ULF-NMR signals, enables non-invasive exploration of the correlation between local fields induced by neural activity in cortex and more ‘distant’ measures of brain activity such as MEG and EEG.
    Type: Grant
    Filed: February 22, 2007
    Date of Patent: August 11, 2009
    Assignee: Los Alamos National Security, LLC
    Inventors: Petr L. Volegov, Andrei N. Matlashov, John C. Mosher, Michelle A. Espy, Robert H. Kraus, Jr.
  • Publication number: 20080284433
    Abstract: An ultra-low magnetic field NMR system can non-invasively examine containers. Database matching techniques can then identify hazardous materials within the containers. Ultra-low field NMR systems are ideal for this purpose because they do not require large powerful magnets and because they can examine materials enclosed in conductive shells such as lead shells. The NMR examination technique can be combined with ultra-low field NMR imaging, where an NMR image is obtained and analyzed to identify target volumes. Spatial sensitivity encoding can also be used to identify target volumes. After the target volumes are identified the NMR measurement technique can be used to identify their contents.
    Type: Application
    Filed: May 18, 2007
    Publication date: November 20, 2008
    Inventors: Robert H. Kraus, JR., Andrei N. Matlashov, Michelle A. Espy, Petr L. Volegov