Patents by Inventor Andreas Potschka

Andreas Potschka 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).

  • Publication number: 20240168467
    Abstract: A computer-implemented method is provided.
    Type: Application
    Filed: March 12, 2021
    Publication date: May 23, 2024
    Inventors: Arzam Kotriwala, Nuo Li, Jan-Christoph Schlake, Prerna Juhlin, Felix Lenders, Matthias Biskoping, Benjamin Kloepper, Kalpesh Bhalodi, Andreas Potschka, Dennis Janka
  • Publication number: 20240160160
    Abstract: A method for detecting change points, CPs, in a signal of a process automation system, includes, in an offline learning phase, unsupervised, candidate CPs on at least one offline signal using unsupervised detection method are detected, CPs are selected from the candidate CPs; the selected CPs are provided to a supervised process; in the supervised process, an offline machine-learning (ML) system is trained to refine CPs from the selected CPs using a supervised machine learning method; a training data set for an online ML system is created using the offline ML system by projecting the refined CPs on the signal; the online ML system is trained in a supervised manner, using the created training data set; and after the offline learning phase, CPs are detected using the trained online ML system.
    Type: Application
    Filed: August 24, 2023
    Publication date: May 16, 2024
    Applicant: ABB Schweiz AG
    Inventors: Ruomu Tan, Marco Gaertler, Benjamin Kloepper, Sylvia Maczey, Andreas Potschka, Martin Hollender, Benedikt Schmidt
  • Publication number: 20240094715
    Abstract: A method of material flow optimization in an industrial process by using an integrated optimizing system is described. The integrated optimizing system includes: a high-level optimizer module describing the material flow by coarse high-level process parameters and including an optimization program for the high-level process parameters, the optimization program being dependent on high-level model parameters and including an objective function subject to constraints; a low-level simulation module for simulating the material flow, the low-level simulation module including a low-level simulation function adapted for obtaining detailed low-level material flow data based on the high-level process parameters; and an aggregator module including an aggregator function adapted for calculating the high-level model parameters based on the low-level material flow data.
    Type: Application
    Filed: January 29, 2021
    Publication date: March 21, 2024
    Inventors: Rickard Lindkvist, Jonas Linder, Kalpesh Bhalodi, Prerna Juhlin, Jan-Christoph Schlake, Dennis Janka, Andreas Potschka
  • Publication number: 20240069526
    Abstract: A method of industrial processing of a bulk material, the industrial processing including a plurality of process steps, the method including defining a material portion of the bulk material; generating a material portion identifier associated with the material portion processing the material portion in at least two process steps of the plurality of process steps the method including for each process step of the at least two process steps: determining a cost of processing the material portion in the process step; and generating a history data set, wherein the history data set is indicative of the cost, the process step and the material portion identifier and wherein the method further includes determining an aggregated cost based on the history data sets.
    Type: Application
    Filed: December 30, 2020
    Publication date: February 29, 2024
    Inventors: Dennis Janka, Kalpesh Bhalodi, Prerna Juhlin, Andreas Potschka, Jan-Christoph Schlake
  • Publication number: 20240069518
    Abstract: A method for monitoring a continuous industrial process is described. The industrial process includes a number of processing stations for processing material and a material flow between the number of processing stations. Each processing station dynamically provides data representing a state of the processing station. The method includes providing, for each processing station, a processing station layout of the processing station. The method further includes providing, for each processing station, an interface model of the processing station. The method further includes generating an information metamodel from the processing station layout and the interface model of the number of processing stations. The method further includes generating an adaptive simulation model of the industrial process by importing the data representing the state of the processing station provided by the number of processing stations into the adaptive simulation model via the information metamodel.
    Type: Application
    Filed: December 30, 2020
    Publication date: February 29, 2024
    Inventors: Prerna Juhlin, Arzam Muzaffar Kotriwala, Nuo Li, Jan-Christoph Schlake, Felix Lenders, Matthias Biskoping, Benjamin Kloepper, Kalpesh Bhalodi, Andreas Potschka, Dennis Janka
  • Publication number: 20230214724
    Abstract: A method and system for removing undesirable inferences from a machine learning model include a search component configured to receive a rejected explanation of model output provided by the machine learning model, identify data samples to unlearn by selecting training samples from training data that were used to train the machine learning model, the selected training samples being associated with explanations that are similar to the rejected explanation according to a calculated similarity measure, and pass the data samples to unlearn to a machine unlearning unit.
    Type: Application
    Filed: March 15, 2023
    Publication date: July 6, 2023
    Applicant: ABB Schweiz AG
    Inventors: Arzam Kotriwala, Andreas Potschka, Benjamin Kloepper, Marcel Dix