Patents by Inventor Dmitri John De Vaz

Dmitri John De Vaz 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: 11118804
    Abstract: A ceiling-mounted sensing unit includes (i) one or more air temperature sensors; (ii) an infrared sensor having a field of view oriented towards a floor of the room; and (iii) a microcontroller receiving readings from both the air temperature sensors and the infrared sensor, the microcontroller providing an estimated temperature at a predetermined distance above the floor of the room based on a model of the room. The model may be based on a double-exponential smoothing function obtained by matching a Kalman filter model. Alternately, the model may be itself a Kalman filter model or a machine learning trained linear model obtained using a linear regression technique, such as L2 regularization. The Kalman filter model uses a state vector that includes both the estimated temperature and a rate of change in the estimated change in temperature. The machine-trained model may be verified using a k-fold cross-validation technique.
    Type: Grant
    Filed: March 14, 2019
    Date of Patent: September 14, 2021
    Assignee: DELTA CONTROLS INC.
    Inventors: Robert Christopher Kwong, John Vincent Nicholls, Dmitri John De Vaz, Kevin Scott Batdorf, Derek John Vanditmars, Junsang Yoo, Lap Yan Jonathan Tsui, Andrew Michael Swanton
  • Publication number: 20190285300
    Abstract: A ceiling-mounted sensing unit includes (i) one or more air temperature sensors; (ii) an infrared sensor having a field of view oriented towards a floor of the room; and (iii) a microcontroller receiving readings from both the air temperature sensors and the infrared sensor, the microcontroller providing an estimated temperature at a predetermined distance above the floor of the room based on a model of the room. The model may be based on a double-exponential smoothing function obtained by matching a Kalman filter model. Alternately, the model may be itself a Kalman filter model or a machine learning trained linear model obtained using a linear regression technique, such as L2 regularization. The Kalman filter model uses a state vector that includes both the estimated temperature and a rate of change in the estimated change in temperature. The machine-trained model may be verified using a k-fold cross-validation technique.
    Type: Application
    Filed: March 14, 2019
    Publication date: September 19, 2019
    Applicant: Delta Controls Inc.
    Inventors: Robert Christopher Kwong, John Vincent Nicholls, Dmitri John De Vaz, Kevin Scott Batdorf, Derek John Vanditmars, Junsang Yoo, Lap Yan Jonathan Tsui, Andrew Michael Swanton