Patents by Inventor Ramesh P. Singh

Ramesh P. Singh 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: 7890266
    Abstract: The present invention introduces an innovative data mining technique to identify precursory signals associated with earthquakes. It involves a multistrategy approach that employs one-dimensional wavelet transformations to identify singularities in data, and analyzes the continuity of wavelet maxima in time and space to determine the singularities that could be precursory signals. Surface Latent Heat Flux (SLHF) data may be used. A single prominent SLHF anomaly may be found to be associated some days prior to a main earthquake event.
    Type: Grant
    Filed: October 6, 2009
    Date of Patent: February 15, 2011
    Assignee: George Mason Intellectual Properties, Inc.
    Inventors: Guido Cervone, Menas Kafatos, Domenico Napoletani, Ramesh P. Singh
  • Patent number: 7702597
    Abstract: Crop yield may be assessed and predicted using a piecewise linear regression method with break point and various weather and agricultural parameters, such as NDVI, surface parameters (soil moisture and surface temperature) and rainfall data. These parameters may help aid in estimating and predicting crop conditions. The overall crop production environment can include inherent sources of heterogeneity and their nonlinear behavior. A non-linear multivariate optimization method may be used to derive an empirical crop yield prediction equation. Quasi-Newton method may be used in optimization for minimizing inconsistencies and errors in yield prediction. Minimization of least square loss function through iterative convergence of pre-defined empirical equation can be based on piecewise linear regression method with break point. This non-linear method can achieve acceptable lower residual values with predicted values very close to the observed values.
    Type: Grant
    Filed: April 19, 2005
    Date of Patent: April 20, 2010
    Assignee: George Mason Intellectual Properties, Inc.
    Inventors: Ramesh P. Singh, Anup Krishna Prasad, Vinod Tare, Menas Kafatos
  • Publication number: 20100082260
    Abstract: The present invention introduces an innovative data mining technique to identify precursory signals associated with earthquakes. It involves a multistrategy approach that employs one-dimensional wavelet transformations to identify singularities in data, and analyzes the continuity of wavelet maxima in time and space to determine the singularities that could be precursory signals. Surface Latent Heat Flux (SLHF) data may be used. A single prominent SLHF anomaly may be found to be associated some days prior to a main earthquake event.
    Type: Application
    Filed: October 6, 2009
    Publication date: April 1, 2010
    Inventors: Guido Cervone, Menas Kafatos, Domenico Napoletani, Ramesh P. Singh
  • Patent number: 7620499
    Abstract: The present invention introduces an innovative data mining technique to identify precursory signals associated with earthquakes. It involves a multistrategy approach that employs one-dimensional wavelet transformations to identify singularities in data, and analyzes the continuity of wavelet maxima in time and space to determine the singularities that could be precursory signals. Surface Latent Heat Flux (SLHF) data may be used. A single prominent SLHF anomaly may be found to be associated some days prior to a main earthquake event.
    Type: Grant
    Filed: April 18, 2005
    Date of Patent: November 17, 2009
    Assignee: George Mason Intellectual Properties, Inc.
    Inventors: Guido Cervone, Menas Kafatos, Domenico Napoletani, Ramesh P. Singh