Patents by Inventor Michael C. DIX

Michael C. DIX 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: 10329900
    Abstract: Dimensionality reduction systems and methods facilitate visualization, understanding, and interpretation of high-dimensionality data sets, so long as the essential information of the data set is preserved during the dimensionality reduction process. In some of the disclosed embodiments, dimensionality reduction is accomplished using clustering, evolutionary computation of low-dimensionality coordinates for cluster kernels, particle swarm optimization of kernel positions, and training of neural networks based on the kernel mapping. The fitness function chosen for the evolutionary computation and particle swarm optimization is designed to preserve kernel distances and any other information deemed useful to the current application of the disclosed techniques, such as linear correlation with a variable that is to be predicted from future measurements. Various error measures are suitable and can be used.
    Type: Grant
    Filed: November 10, 2016
    Date of Patent: June 25, 2019
    Assignee: Halliburton Energy Services, Inc.
    Inventors: Dingding Chen, Syed Hamid, Michael C. Dix
  • Publication number: 20170058666
    Abstract: Dimensionality reduction systems and methods facilitate visualization, understanding, and interpretation of high-dimensionality data sets, so long as the essential information of the data set is preserved during the dimensionality reduction process. In some of the disclosed embodiments, dimensionality reduction is accomplished using clustering, evolutionary computation of low-dimensionality coordinates for cluster kernels, particle swarm optimization of kernel positions, and training of neural networks based on the kernel mapping. The fitness function chosen for the evolutionary computation and particle swarm optimization is designed to preserve kernel distances and any other information deemed useful to the current application of the disclosed techniques, such as linear correlation with a variable that is to be predicted from future measurements. Various error measures are suitable and can be used.
    Type: Application
    Filed: November 10, 2016
    Publication date: March 2, 2017
    Applicant: Halliburton Energy Services, Inc.
    Inventors: Dingding CHEN, Syed HAMID, Michael C. DIX
  • Patent number: 9514388
    Abstract: Dimensionality reduction systems and methods facilitate visualization, understanding, and interpretation of high-dimensionality data sets, so long as the essential information of the data set is preserved during the dimensionality reduction process. In some of the disclosed embodiments, dimensionality reduction is accomplished using clustering, evolutionary computation of low-dimensionality coordinates for cluster kernels, particle swarm optimization of kernel positions, and training of neural networks based on the kernel mapping. The fitness function chosen for the evolutionary computation and particle swarm optimization is designed to preserve kernel distances and any other information deemed useful to the current application of the disclosed techniques, such as linear correlation with a variable that is to be predicted from future measurements. Various error measures are suitable and can be used.
    Type: Grant
    Filed: August 12, 2008
    Date of Patent: December 6, 2016
    Assignee: HALLIBURTON ENERGY SERVICES, INC.
    Inventors: Dingding Chen, Syed Hamid, Michael C. Dix
  • Publication number: 20150046092
    Abstract: Real-time or near real-time estimates of reservoir quality properties, along with performance indicators for such estimates, can be provided through use of methods and systems for fully automating the estimation of reservoir quality properties based on geochemical data obtained at a well site.
    Type: Application
    Filed: August 8, 2014
    Publication date: February 12, 2015
    Inventors: Hamed Chok, Simon N. Hughes, Christopher N. Smith, Michael C. Dix
  • Publication number: 20100040281
    Abstract: Dimensionality reduction systems and methods facilitate visualization, understanding, and interpretation of high-dimensionality data sets, so long as the essential information of the data set is preserved during the dimensionality reduction process. In some of the disclosed embodiments, dimensionality reduction is accomplished using clustering, evolutionary computation of low-dimensionality coordinates for cluster kernels, particle swarm optimization of kernel positions, and training of neural networks based on the kernel mapping. The fitness function chosen for the evolutionary computation and particle swarm optimization is designed to preserve kernel distances and any other information deemed useful to the current application of the disclosed techniques, such as linear correlation with a variable that is to be predicted from future measurements. Various error measures are suitable and can be used.
    Type: Application
    Filed: August 12, 2008
    Publication date: February 18, 2010
    Applicant: HALLIBURTON ENERGY SERVICES, INC.
    Inventors: Dingding CHEN, Syed HAMID, Michael C. DIX