Patents by Inventor Ahmad Aldabbagh

Ahmad Aldabbagh 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: 11651278
    Abstract: An automated method of pipeline sensor integration for product mapping of a pipeline network is provided. The method includes acquiring, by a plurality of sensors of the pipeline network, first sensor responses of a pipeline in the pipeline network when a first hydrocarbon product is flowing through the pipeline. The method further includes using a prediction circuit to receive the acquired first sensor responses, integrate the received first sensor responses into one or more integrated first sensor responses in order to improve accuracy of the received first sensor responses, and identify the first hydrocarbon product in the pipeline based on the integrated first sensor responses. The prediction circuit is built from training data using a machine learning process. The training data includes first training sensor responses of the pipeline by the plurality of sensors acquired at a previous time when the first hydrocarbon product was flowing through the pipeline.
    Type: Grant
    Filed: December 23, 2019
    Date of Patent: May 16, 2023
    Assignee: Saudi Arabian Oil Company
    Inventors: Vincent Cunningham, Ahmad Aldabbagh, Sahejad Patel, Wesam Hussain
  • Patent number: 11579586
    Abstract: A method according to the disclosure configures a processor to predict metal loss in a structure for remediation. The method uses a machine learning model, trained based upon historical data, to predict metal loss over locations of a structure at a time of the prediction. The method identifies from among the predicted locations a high-risk location on the structure in which a magnitude of metal loss indicates potential remediation being needed, dispatches a robotic vehicle to the high-risk location on the structure and inspects the high-risk location using the robotic vehicle to confirm whether the magnitude of metal loss at the location requires remediation. In further methods, remediation is performed. In still further methods, a three-dimensional visualization of the structure is generated with an overlay which depicts predicted metal loss over the sections of the structure.
    Type: Grant
    Filed: September 30, 2019
    Date of Patent: February 14, 2023
    Assignee: SAUDI ARABIAN OIL COMPANY
    Inventors: Ahmad Aldabbagh, Sahejad Patel, Hassane Trigui
  • Patent number: 11386541
    Abstract: A technological solution for analyzing a sequence of electromagnetic spectrum image frames of a nonmetallic asset and detecting or predicting an aberration in the asset, including a detected or predicted location of the aberration.
    Type: Grant
    Filed: August 22, 2019
    Date of Patent: July 12, 2022
    Assignee: Saudi Arabian Oil Company
    Inventors: Ali Al Shehri, Ahmad Aldabbagh, Ayman Amer, Vincent Cunningham
  • Patent number: 11377945
    Abstract: A computer-based method and system for predicting the propagation of cracks along a pipe is provided, wherein successive time-indexed ultrasound images of a pipe surface are captured and digitized. A computer vision algorithm processes the images to identify defects in the pipe, including cracks. At least one blob detection module is used to identify groups of cracks on the pipe surface that have created detectable areas of stress concentration or a prescribed likelihood of crack coalescence or crack cross-influence. The center locations and radial extents of respective blobs are each parametrized as a function of time and pipe surface location by determining parity relationships between successive digital data sets from successive captured images. The determined parity relationships are then used as training data for a machine learning process to train a system implementing the method to predict the propagation of cracks along the pipe.
    Type: Grant
    Filed: April 29, 2020
    Date of Patent: July 5, 2022
    Assignee: Saudi Arabian Oil Company
    Inventors: Kaamil Ur Rahman Mohamed Shibly, Ahmad Aldabbagh
  • Publication number: 20220018811
    Abstract: A technological solution for analyzing a sequence of noisy or incoherent ultrasound scan images of an asset that includes a composite material having internal defects or voids and diagnosing a health condition of a section of the asset.
    Type: Application
    Filed: July 14, 2020
    Publication date: January 20, 2022
    Inventors: Hasan Ali AL-Hashmy, Kaamil Ur Rahman Mohamed Shibly, Ahmad Aldabbagh
  • Publication number: 20220019190
    Abstract: A technological solution for analyzing a sequence of ultrasound scan images of an asset and diagnosing a health condition of a section of the asset. The solution includes receiving, by a machine learning platform, an ultrasound scan image of the section of the asset; analyzing, by the machine learning platform, the ultrasound scan image to detect any aberrations in the section; generating, by the machine learning platform, an aberration label for each detected aberration in the section; labeling, by the machine learning platform, the section of the asset with a section condition label; and, rendering, by a display device, the section conditional label. The section condition label can be based on each detected aberration in the section. The section condition label can include at least one of an aberration area ratio, a total number of aberrations, and the aberration label for each detected aberration in the section of the asset.
    Type: Application
    Filed: July 14, 2020
    Publication date: January 20, 2022
    Inventors: Kaamil Ur Rahman Mohamed Shibly, Ahmad Aldabbagh
  • Publication number: 20210340857
    Abstract: A computer-based method and system for predicting the propagation of cracks along a pipe is provided, wherein successive time-indexed ultrasound images of a pipe surface are captured and digitized. A computer vision algorithm processes the images to identify defects in the pipe, including cracks. At least one blob detection module is used to identify groups of cracks on the pipe surface that have created detectable areas of stress concentration or a prescribed likelihood of crack coalescence or crack cross-influence. The center locations and radial extents of respective blobs are each parametrized as a function of time and pipe surface location by determining parity relationships between successive digital data sets from successive captured images. The determined parity relationships are then used as training data for a machine learning process to train a system implementing the method to predict the propagation of cracks along the pipe.
    Type: Application
    Filed: April 29, 2020
    Publication date: November 4, 2021
    Inventors: Kaamil Ur Rahman Mohamed Shibly, Ahmad Aldabbagh
  • Patent number: 11162888
    Abstract: A system for predicting corrosion under insulation (CUI) in an infrastructure asset includes at least one infrared camera positioned to capture thermal images of the asset, at least one smart mount supporting and electrically coupled to the at least one infrared camera and including a wireless communication module, memory storage, a battery module operative to recharge the at least one infrared camera, an ambient sensor module adapted to obtain ambient condition data and a structural probe sensor to obtain CUI-related data from the asset. At least one computing device has a wireless communication module that communicates with the at least one smart mount and is configured with a machine learning algorithm that outputs a CUI prediction regarding the asset. A cloud computing platform receive and stores the received data and the prediction output and to receive verification data for updating the machine learning algorithm stored on the computing device.
    Type: Grant
    Filed: January 13, 2020
    Date of Patent: November 2, 2021
    Assignees: Saudi Arabian Oil Company
    Inventors: Ali Al Shehri, Ser Nam Lim, Ayman Amer, Mustafa Uzunbas, Ahmad Aldabbagh, Muhammad Ababtain, Vincent Cunningham
  • Publication number: 20210192388
    Abstract: An automated method of pipeline sensor integration for product mapping of a pipeline network is provided. The method includes acquiring, by a plurality of sensors of the pipeline network, first sensor responses of a pipeline in the pipeline network when a first hydrocarbon product is flowing through the pipeline. The method further includes using a prediction circuit to receive the acquired first sensor responses, integrate the received first sensor responses into one or more integrated first sensor responses in order to improve accuracy of the received first sensor responses, and identify the first hydrocarbon product in the pipeline based on the integrated first sensor responses. The prediction circuit is built from training data using a machine learning process. The training data includes first training sensor responses of the pipeline by the plurality of sensors acquired at a previous time when the first hydrocarbon product was flowing through the pipeline.
    Type: Application
    Filed: December 23, 2019
    Publication date: June 24, 2021
    Inventors: Vincent Cunningham, Ahmad Aldabbagh, Sahejad Patel, Wesam Hussain
  • Publication number: 20210096529
    Abstract: A method according to the disclosure configures a processor to predict metal loss in a structure for remediation. The method uses a machine learning model, trained based upon historical data, to predict metal loss over locations of a structure at a time of the prediction. The method identifies from among the predicted locations a high-risk location on the structure in which a magnitude of metal loss indicates potential remediation being needed, dispatches a robotic vehicle to the high-risk location on the structure and inspects the high-risk location using the robotic vehicle to confirm whether the magnitude of metal loss at the location requires remediation. In further methods, remediation is performed. In still further methods, a three-dimensional visualization of the structure is generated with an overlay which depicts predicted metal loss over the sections of the structure.
    Type: Application
    Filed: September 30, 2019
    Publication date: April 1, 2021
    Inventors: Ahmad Aldabbagh, Sahejad Patel, Hassane Trigui
  • Publication number: 20210056406
    Abstract: A method according to the disclosure configures a processor to execute a machine learning model specific to a type and size of the structure, the machine learning model being trained using historical data of known structures of the same type and size to predict an amount of metal lost by the structure over time. The method predicts metal loss over sections of a specimen structure using the trained machine learning model and generates a three-dimensional visualization of the specimen structure including an overlay depicting predicted metal loss over the sections of the structure at the time of prediction. The historical data upon which prediction of an amount of metal lost is based includes: spatial maps of measured wall thicknesses over time, material composition, operating conditions for structures of the same type and size, or a combination of the foregoing. In certain embodiments, the structure is a pipe component.
    Type: Application
    Filed: August 22, 2019
    Publication date: February 25, 2021
    Inventors: Ahmad Aldabbagh, Sahejad Patel, Hassane Trigui
  • Publication number: 20210056678
    Abstract: A technological solution for analyzing a sequence of electromagnetic spectrum image frames of a nonmetallic asset and detecting or predicting an aberration in the asset, including a detected or predicted location of the aberration.
    Type: Application
    Filed: August 22, 2019
    Publication date: February 25, 2021
    Inventors: Ali Al Shehri, Ahmad Aldabbagh, Ayman Amer, Vincent Cunningham
  • Publication number: 20200217777
    Abstract: A system for predicting corrosion under insulation (CUI) in an infrastructure asset includes at least one infrared camera positioned to capture thermal images of the asset, at least one smart mount supporting and electrically coupled to the at least one infrared camera and including a wireless communication module, memory storage, a battery module operative to recharge the at least one infrared camera, an ambient sensor module adapted to obtain ambient condition data and a structural probe sensor to obtain CUI-related data from the asset. At least one computing device has a wireless communication module that communicates with the at least one smart mount and is configured with a machine learning algorithm that outputs a CUI prediction regarding the asset. A cloud computing platform receive and stores the received data and the prediction output and to receive verification data for updating the machine learning algorithm stored on the computing device.
    Type: Application
    Filed: January 13, 2020
    Publication date: July 9, 2020
    Inventors: Ali Al Shehri, Ser Nam Lim, Ayman Amer, Mustafa Uzunbas, Ahmad Aldabbagh, Muhammad Ababtain, Vincent Cunningham
  • Patent number: 10643324
    Abstract: A system for predicting corrosion under insulation (CUI) in an infrastructure asset includes at least one infrared camera positioned to capture thermal images of the asset, at least one smart mount supporting and electrically coupled to the at least one infrared camera and including a wireless communication module, memory storage, a battery module operative to recharge the at least one infrared camera, an ambient sensor module adapted to obtain ambient condition data and a structural probe sensor to obtain CUI-related data from the asset. At least one computing device has a wireless communication module that communicates with the at least one smart mount and is configured with a machine learning algorithm that outputs a CUI prediction regarding the asset. A cloud computing platform receive and stores the received data and the prediction output and to receive verification data for updating the machine learning algorithm stored on the computing device.
    Type: Grant
    Filed: January 23, 2019
    Date of Patent: May 5, 2020
    Assignees: Saudi Arabian Oil Company, AVITAS SYSTEMS, INC.
    Inventors: Ali Al Shehri, Ser Nam Lim, Ayman Amer, Mustafa Uzunbas, Ahmad Aldabbagh, Muhammad Ababtain, Vincent Cunningham, John Boot, Godine Kok Yan Chan
  • Publication number: 20200074616
    Abstract: A system for predicting corrosion under insulation (CUI) in an infrastructure asset includes at least one infrared camera positioned to capture thermal images of the asset, at least one smart mount supporting and electrically coupled to the at least one infrared camera and including a wireless communication module, memory storage, a battery module operative to recharge the at least one infrared camera, an ambient sensor module adapted to obtain ambient condition data and a structural probe sensor to obtain CUI-related data from the asset. At least one computing device has a wireless communication module that communicates with the at least one smart mount and is configured with a machine learning algorithm that outputs a CUI prediction regarding the asset. A cloud computing platform receive and stores the received data and the prediction output and to receive verification data for updating the machine learning algorithm stored on the computing device.
    Type: Application
    Filed: January 23, 2019
    Publication date: March 5, 2020
    Inventors: Ali Al Shehri, Ser Nam Lim, Ayman Amer, Mustafa Uzunbas, Ahmad Aldabbagh, Muhammad Ababtain, Vincent Cunningham, John Boot, Godine Kok Yan Chan
  • Patent number: 10533937
    Abstract: A system for predicting corrosion under insulation (CUI) in an infrastructure asset includes at least one infrared camera positioned to capture thermal images of the asset, at least one smart mount supporting and electrically coupled to the at least one infrared camera and including a wireless communication module, memory storage, a battery module operative to recharge the at least one infrared camera, an ambient sensor module adapted to obtain ambient condition data and a structural probe sensor to obtain CUI-related data from the asset. At least one computing device has a wireless communication module that communicates with the at least one smart mount and is configured with a machine learning algorithm that outputs a CUI prediction regarding the asset. A cloud computing platform receive and stores the received data and the prediction output and to receive verification data for updating the machine learning algorithm stored on the computing device.
    Type: Grant
    Filed: August 30, 2018
    Date of Patent: January 14, 2020
    Assignees: Saudi Arabian Oil Company, AVITAS SYSTEMS, INC.
    Inventors: Ali Al Shehri, Ser Nam Lim, Ayman Amer, Mustafa Uzunbas, Ahmad Aldabbagh, Muhammad Ababtain, Vincent Cunningham