Patents by Inventor Felix Lenders

Felix Lenders 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: 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: 20230281734
    Abstract: A computer-implemented method for determining a mitigated peak power exchange value for power exchange between a supplier and a facility includes receiving a timeseries comprising power exchange values for power exchange between the supplier and the facility over a predetermined time period; executing an optimization algorithm configured to determine a mitigated maximum power exchange value in the timeseries using data defining one or more peak shaving capabilities at the facility as variables; and outputting the determined mitigated maximum power exchange value.
    Type: Application
    Filed: May 12, 2023
    Publication date: September 7, 2023
    Applicant: ABB Schweiz AG
    Inventors: Georg Gutermuth, Felix Lenders
  • Publication number: 20230273585
    Abstract: A system and method for synthesizing energy time-series data for a facility includes a time-series generator configured to receive an input set of attributes comprising attributes characterizing the facility, and to output a synthesized time-series representing estimated energy data for the facility. The synthesized time-series are generated on the basis of the input set of attributes and one or more reference time-series associated with respective reference sets of attributes.
    Type: Application
    Filed: May 5, 2023
    Publication date: August 31, 2023
    Applicant: ABB Schweiz AG
    Inventors: Georg Gutermuth, Bernhard Primas, Felix Lenders
  • Publication number: 20230236563
    Abstract: A method for evaluating an energy efficiency of a second energy consumption scenario of a site includes obtaining a first energy consumption scenario, which comprises a first time-series of energy consumption data of at least one device, and a quality measure of the first energy consumption scenario; obtaining the second energy consumption scenario, which comprises a second time-series of energy consumption data, wherein the second energy consumption scenario has a same or a shorter duration than the first energy consumption scenario; comparing the second time-series of energy consumption data to the first time-series of energy consumption data; and if or when the second time-series of energy consumption data is similar to the first time-series of energy consumption data, outputting the quality measure of the first energy consumption scenario.
    Type: Application
    Filed: March 31, 2023
    Publication date: July 27, 2023
    Applicant: ABB Schweiz AG
    Inventors: Felix Lenders, Georg Gutermuth, Bernhard Primas
  • Publication number: 20230094914
    Abstract: A computer-implemented method of generating a training data set for training an artificial intelligence module includes providing first and second data sets, the first data set including first data elements indicative of a first operational condition, the second data set including second data elements indicative of a second operational condition that matches the first operational condition. The method further comprises determining a data transformation for transforming the first data elements into the second data elements; applying the data transformation to the first data elements and/or to further data elements of further data sets, thereby generating a transformed data set; and generating a training data set for training the AI module based on at least a part of the transformed data set.
    Type: Application
    Filed: September 29, 2022
    Publication date: March 30, 2023
    Applicant: ABB Schweiz AG
    Inventors: Benedikt Schmidt, Ido Amihai, Arzam Muzaffar Kotriwala, Moncef Chioua, Felix Lenders, Dennis Janka, Martin Hollender, Jan Christoph Schlake, Hadil Abukwaik, Benjamin Kloepper
  • Patent number: 11567483
    Abstract: A computer-implemented method to control technical equipment that performs a production batch-run of a production process, the technical equipment providing data in a form of time-series from a set of data sources, the data sources being related to the technical equipment, includes: accessing a reference time-series with data from a previously performed batch-run of the production process, the reference time-series being related to a parameter for the technical equipment; and while the technical equipment performs the production batch-run: receiving a production time-series with data, identifying a sub-series of the reference time-series, and comparing the received time-series and the sub-series of the reference time-series, to provide an indication of similarity or non-similarity, in case of similarity, controlling the technical equipment during a continuation of the production batch-run, by using the parameter as control parameter.
    Type: Grant
    Filed: April 16, 2020
    Date of Patent: January 31, 2023
    Assignee: ABB Schweiz AG
    Inventors: Benedikt Schmidt, Martin Hollender, Felix Lenders
  • Publication number: 20230023896
    Abstract: A method of transfer learning for a specific production process of an industrial plant includes providing data templates defining expected data for a production process, and providing plant data, wherein the data templates define groupings for the expected data according to their relation in the industrial plant; determining a process instance and defining a mapping with the plant data; determining historic process data; determining training data using the determined process instance and the determined historic process data, wherein the training data comprises a structured data matrix, wherein columns of the data matrix represent the sensor data that are grouped in accordance with the data template and wherein rows of the data matrix represent timestamps of obtaining the sensor data; providing a pre-trained machine learning model using the determined process instance; and training a new machine learning model using the provided pre-trained model and the determined training data.
    Type: Application
    Filed: September 30, 2022
    Publication date: January 26, 2023
    Applicant: ABB Schweiz AG
    Inventors: Benedikt Schmidt, Ido Amihai, Arzam Muzaffar Kotriwala, Moncef Chioua, Dennis Janka, Felix Lenders, Jan Christoph Schlake, Martin Hollender, Hadil Abukwaik, Benjamin Kloepper
  • Publication number: 20230029400
    Abstract: A method of hierarchical machine learning includes receiving a topology model having information on hierarchical relations between components of the industrial plant, determining a representation hierarchy comprising a plurality of levels, wherein each representation on a higher level represents a group of representations on a lower level, wherein the representations comprise a machine learning model, and training an output machine learning model using the determined hierarchical representations.
    Type: Application
    Filed: September 30, 2022
    Publication date: January 26, 2023
    Applicant: ABB Schweiz AG
    Inventors: Benedikt Schmidt, Ido Amihai, Arzam Muzaffar Kotriwala, Moncef Chioua, Dennis Janka, Felix Lenders, Jan Christoph Schlake, Martin Hollender, Hadil Abukwaik, Benjamin Kloepper
  • Publication number: 20230019201
    Abstract: An industrial plant machine learning system includes a machine learning model, providing machine learning data, an industrial plant providing plant data and an abstraction layer, connecting the machine learning model and the industrial plant, wherein the abstraction layer is configured to provide standardized communication between the machine learning model and the industrial plant, using a machine learning markup language.
    Type: Application
    Filed: September 29, 2022
    Publication date: January 19, 2023
    Applicant: ABB Schweiz AG
    Inventors: Benedikt Schmidt, Ido Amihai, Arzam Muzaffar Kotriwala, Moncef Chioua, Dennis Janka, Felix Lenders, Jan Christoph Schlake, Martin Hollender, Hadil Abukwaik, Benjamin Kloepper
  • Publication number: 20230019404
    Abstract: A computer-implemented method for automating the development of industrial machine learning applications includes one or more sub-methods that, depending on the industrial machine learning problem, may be executed iteratively. These sub-methods include at least one of a method to automate the data cleaning in training and later application of machine learning models, a method to label time series (in particular signal data) with help of other timestamp records, feature engineering with the help of process mining, and automated hyper-parameter tuning for data segmentation and classification.
    Type: Application
    Filed: September 29, 2022
    Publication date: January 19, 2023
    Applicant: ABB Schweiz AG
    Inventors: Benjamin Kloepper, Benedikt Schmidt, Ido Amihai, Moncef Chioua, Jan Christoph Schlake, Arzam Muzaffar Kotriwala, Martin Hollender, Dennis Janka, Felix Lenders, Hadil Abukwaik
  • Publication number: 20230016668
    Abstract: A method includes training a first control model by utilizing a first set of input data as first input, resulting in a trained first control model; copying the trained first control model to a second control model, wherein, after copying, the second input layer and the plurality of second hidden layers is identical to the plurality of first hidden layers, and the first output layer is replaced by the second output layer; freezing the plurality of second hidden layers; training the second control model by utilizing the first set of input data as second input, resulting in a trained second control model; and running the trained second control model by utilizing a second set of input data as second input, wherein the second output outputs the quality measure of the first control model.
    Type: Application
    Filed: September 28, 2022
    Publication date: January 19, 2023
    Applicant: ABB Schweiz AG
    Inventors: Benedikt Schmidt, Ido Amihai, Moncef Chioua, Arzam Kotriwala, Martin Hollender, Dennis Janka, Felix Lenders, Jan Christoph Schlake, Benjamin Kloepper, Hadil Abukwaik
  • Publication number: 20220044178
    Abstract: A system for action determination includes an input unit, a processing unit, and an output unit. The input unit provides the processing unit with information relating to a plurality of past actions over a period of time associated with the operation of an industrial process. The input unit provides the processing unit with information relating to a plurality of past process events over the time period associated with the operation of the industrial process. The input unit provides the processing unit with information relating to a new process event. The processing unit determines a correlation between at least some of the plurality of past actions with at least some of the past process events. The processing unit determines at least one recommended action from the information relating to the new process event, the determination including utilization of the determined correlation. The output unit outputs the at least one recommended action.
    Type: Application
    Filed: October 22, 2021
    Publication date: February 10, 2022
    Inventors: Martin Hollender, Felix Lenders, Josef Bicik, Mark-Stefan Struempfler, Rebekka Litzelmann, Dominik Steickert
  • Publication number: 20200333773
    Abstract: A computer-implemented method to control technical equipment that performs a production batch-run of a production process, the technical equipment providing data in a form of time-series from a set of data sources, the data sources being related to the technical equipment, includes: accessing a reference time-series with data from a previously performed batch-run of the production process, the reference time-series being related to a parameter for the technical equipment; and while the technical equipment performs the production batch-run: receiving a production time-series with data, identifying a sub-series of the reference time-series, and comparing the received time-series and the sub-series of the reference time-series, to provide an indication of similarity or non-similarity, in case of similarity, controlling the technical equipment during a continuation of the production batch-run, by using the parameter as control parameter.
    Type: Application
    Filed: April 16, 2020
    Publication date: October 22, 2020
    Inventors: Benedikt Schmidt, Martin Hollender, Felix Lenders