Patents by Inventor Marc Christian Weber

Marc Christian Weber 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: 20240140724
    Abstract: A computer-implemented method, a device for data processing and a computer system for controlling a control device of a conveyor system to achieve an alignment and/or a defined spacing of piece goods, wherein the control of the control device is determined by an agent acting according to Reinforcement Learning methods. An individual, local state vector of predefined dimension that is the same for all the piece goods is created for each of the piece goods and an action vector is selected from an action space according to a strategy that is the same for all piece goods for the current state vector of this piece good. These action vectors are projected onto the conveying elements, wherein conflicts are resolved. After a cycle time has elapsed, state vectors are created again for each piece good and evaluated with rewards and the strategy is adjusted.
    Type: Application
    Filed: February 1, 2022
    Publication date: May 2, 2024
    Inventors: Michael Zettler, Marc Christian Weber, Daniel Hein, Clemens Otte, Martin Schall, Frank Pfeiffer
  • Publication number: 20240046146
    Abstract: A method for teaching an electronic computing device includes at least a machine learning algorithm for predicting a position-based propagation of radio waves in an environment, including the steps of: providing a mathematical model for the position-based propagation, wherein the mathematical model includes at least a physical model for the position-based propagation in the environment generating training data for the machine learning algorithm including a propagation field and/or a propagation domain; training the machine learning algorithm by fitting the training data to a partial derivative of the machine learning algorithm; and obtaining a prediction of a propagation loss by a weighted sum of multiple evaluations of the trained machine learning algorithm. Furthermore, provided is a computer program product, a computer-readable storage medium as well as an electronic computing device.
    Type: Application
    Filed: August 3, 2023
    Publication date: February 8, 2024
    Inventors: Steffen Limmer, Nicola Michailow, Marc Christian Weber, Daniel Hein, Volkmar Sterzing, Alberto Martinez Alba
  • Publication number: 20230338963
    Abstract: Method and apparatus for industrial scale production of a suspension for a battery, wherein an input material is processed via ball milling in a rotating chamber of a device that is effected as a continuous process with a continuously controlled addition of the input material and with a continuously controlled delivery of the processed output material, where state parameters of the input material and process parameters of the manufacturing installation are acquired as first parameters during production of the suspension, results of laboratory analyses about the state or quality of the manufactured suspension are acquired as second parameters in a learning phase during production, the first and the second parameters are used in the learning phase for training a model for predicting the state or quality via machine learning, and where the device is open-loop or closed-loop controlled outside the learning phase via the first parameters and the trained model.
    Type: Application
    Filed: April 25, 2023
    Publication date: October 26, 2023
    Inventors: Jonas WITT, Manfred BALDAUF, Thomas RUNKLER, Marc-Christian WEBER, Frank STEINBACHER, Clemens OTTE, Arno ARZBERGER
  • Publication number: 20230067320
    Abstract: A controller for a technical system is trained using a machine learning method. For this purpose, a chronological sequence of training data is detected for the machine learning method, the training data including both state data as well as control action data of the technical system. A change in the control action data over time is detected specifically and correlated with changes in the state data over time within different time windows, wherein a time window specific correlation value is ascertained in each case. A resulting time window is then ascertained on the basis of the ascertained correlation values, and the training data which is found within the resulting time window is extracted in a time window-specific manner. The controller is trained by means of the machine learning method using the extracted training data and thereby configured to control the technical system.
    Type: Application
    Filed: December 1, 2020
    Publication date: March 2, 2023
    Inventors: Daniel Hein, Holger Schöner, Marc Christian Weber
  • Patent number: 11585323
    Abstract: Provided is an apparatus and method for cooperative controlling wind turbines of a wind farm, wherein the wind farm includes at least one pair of turbines aligned along a common axis approximately parallel to a current wind direction and having an upstream turbine and a downstream turbine. The method includes the steps of: a) providing a data driven model trained with a machine learning method and stored in a database, b) determining a decision parameter for controlling at least one of the upstream turbine and the downstream turbine by feeding the data driven model with the current power production of the upstream turbine which returns a prediction value indicating whether the downstream turbine will be affected by wake, and/or the temporal evolvement of the current power production of the upstream turbine; c) based on the decision parameter, determining control parameters for the upstream turbine and/or the downstream turbine.
    Type: Grant
    Filed: January 16, 2019
    Date of Patent: February 21, 2023
    Inventors: Per Egedal, Peder Bay Enevoldsen, Alexander Hentschel, Markus Kaiser, Clemens Otte, Volkmar Sterzing, Steffen Udluft, Marc Christian Weber
  • Publication number: 20230025935
    Abstract: A computer-implemented method for determining at least one remaining time value, to be determined, for a system is provided, having the following steps: a. providing at least one known input data record containing a multiplicity of input elements for at least one determined time; b. providing at least one associated known remaining time value for the at least one input data record; c. determining the at least one remaining time value to be determined by applying an error function to the at least one input data record and the at least one associated remaining time value; and d. providing an output data record containing the at least one determined remaining time value and an associated reliability value. The invention furthermore targets a corresponding determination unit and computer program product.
    Type: Application
    Filed: November 19, 2020
    Publication date: January 26, 2023
    Inventors: Stefan Depeweg, Harald Frank, Michel Tokic, Steffen Udluft, Marc Christian Weber
  • Publication number: 20220415170
    Abstract: Real state information, which influences the switching times of a light signal system, is supplied as input signals to a first neural network in a fixed time cycle. The first neural network calculates estimated state information as a replacement for real state information or parts of the real state information which are not received in good time or are received incorrectly in the fixed time cycle. This estimated state information is output to artificial intelligence which predicts the switching times. The first neural network allows the artificial intelligence to also make good predictions for the switching times of signal groups when one of the many communication paths involved fails or is overloaded. It is therefore possible to predict signal group states in the fixed time cycle in real time with a high degree of robustness and tolerance with respect to gaps in the time cycle of the real state information provided.
    Type: Application
    Filed: November 10, 2020
    Publication date: December 29, 2022
    Inventors: Harald Frank, Michel Tokic, Marc Christian Weber
  • Publication number: 20220381832
    Abstract: Various embodiments include a method for producing a quality test system executing a quality test model with a filter mask and a quality model to determine a quality feature of a battery cell. The system has an electrochemical impedance spectroscopic unit for capturing test data relating to the battery within a frequency range. The method includes: creating the model; and producing the system. Creating the model includes: capturing spectroscopic learning data; creating the filter mask using a first machine learning method with analysis data from part of the frequency range by consulting the filter mask and creating the model using a second machine learning method. The first and the second learning method are coupled based on the learning data. The first machine learning method creates a filter mask determining the analysis data such that the second machine learning method creates a quality model optimized with respect to maximizing the quality.
    Type: Application
    Filed: May 27, 2022
    Publication date: December 1, 2022
    Applicant: Siemens Aktiengesellschaft
    Inventors: Marc Christian Weber, Manfred Baldauf, Jonas Witt, Frank Steinbacher, Arno Arzberger, Thomas Runkler, Clemens Otte
  • Publication number: 20220269226
    Abstract: A control device for a technical system, state-specific safety information about an admissibility of a control action signal is read in by a safety module is provided. Furthermore, a state signal indicating a state of the technical system is supplied to a machine learning module and to the safety module. In addition, an output signal of the machine learning module is supplied to the safety module. The output signal is converted into an admissible control action signal by the safety module on the basis of the safety information depending on the state signal. Furthermore, a performance for control of the technical system by the admissible control action signal is ascertained, and the machine learning module is trained to optimize the performance. The control device is then configured by the trained machine learning module.
    Type: Application
    Filed: February 17, 2022
    Publication date: August 25, 2022
    Inventors: Daniel Hein, Marc Christian Weber, Holger Schöner, Steffen Udluft, Volkmar Sterzing, Kai Heesche
  • Publication number: 20220171348
    Abstract: Method and device for controlling a machine in accordance with to multiple control objectives in which machine control is based on automated learning of subordinate control skills, wherein the device provides multiple subordinate control skills which are each assigned to a different one of the multiple control objectives, the device provides multiple learning processes that are reinforcement learning processes that are each assigned to a different one of the multiple control objectives and are configured to optimize the corresponding subordinate control skill based on input data received from the machine, and where the device is configured to determine a superordinate control skill based on the subordinate control skills and to control the machine based on the superordinate control skill.
    Type: Application
    Filed: March 11, 2020
    Publication date: June 2, 2022
    Inventors: Judith MOSANDL, Daniel HEIN, Steffen UDLUFT, Marc Christian WEBER
  • Publication number: 20210363969
    Abstract: Provided is an apparatus and method for cooperative controlling wind turbines of a wind farm, wherein the wind farm includes at least one pair of turbines aligned along a common axis approximately parallel to a current wind direction and having an upstream turbine and a downstream turbine. The method includes the steps of: a) providing a data driven model trained with a machine learning method and stored in a database, b) determining a decision parameter for controlling at least one of the upstream turbine and the downstream turbine by feeding the data driven model with the current power production of the upstream turbine which returns a prediction value indicating whether the downstream turbine will be affected by wake, and/or the temporal evolvement of the current power production of the upstream turbine; c) based on the decision parameter, determining control parameters for the upstream turbine and/or the downstream turbine.
    Type: Application
    Filed: January 16, 2019
    Publication date: November 25, 2021
    Inventors: Per Egedal, Peder Bay Enevoldsen, Alexander Hentschel, Markus Kaiser, Clemens Otte, Volkmar Sterzing, Steffen Udluft, Marc Christian Weber
  • Patent number: 11164077
    Abstract: A method of controlling a complex system and a gas turbine being controlled by the method are provided. The method comprises providing training data, which training data represents at least a portion of a state space of the system; setting a generic control objective for the system and a corresponding set point; and exploring the state space, using Reinforcement Learning, for a control policy for the system which maximizes an expected total reward. The expected total reward depends on a randomized deviation of the generic control objective from the corresponding set point.
    Type: Grant
    Filed: November 2, 2017
    Date of Patent: November 2, 2021
    Assignee: SIEMENS AKTIENGESELLSCHAFT
    Inventors: Siegmund Düll, Kai Heesche, Raymond S. Nordlund, Steffen Udluft, Marc Christian Weber
  • Publication number: 20210256428
    Abstract: A technical system controller is trained using a machine learning method. For this purpose, a chronological sequence of training data is detected for the machine learning method. The training data includes state data, which specifies states of the technical system, and control action data, which specifies control actions of the technical system. A chronological sequence of control action data is extracted specifically from the training data and is checked for a change over time. If a change over time is ascertained, a time window including the change is ascertained, and training data which can be found within the time window is extracted in a manner which is specific to the time window. The controller is then trained by the machine learning method using the extracted training data and is thus configured for controlling the technical system.
    Type: Application
    Filed: June 26, 2019
    Publication date: August 19, 2021
    Inventors: Siegmund Düll, Kai Heesche, Volkmar Sterzing, Marc Christian Weber
  • Publication number: 20200371480
    Abstract: For reducing oscillations in a technical system plurality of different controller settings for the technical system is received. For a respective controller setting signal representing a time series of operational data of the technical system controlled by the respective controller setting is received, the signal is processed, whereby the processing includes a transformation into a frequency domain, and an entropy value of the processed signal is determined. Depending on the determined entropy values a controller setting from the plurality of controller settings is selected, and the selected controller setting is output for configuring the technical system.
    Type: Application
    Filed: November 23, 2017
    Publication date: November 26, 2020
    Inventors: Siegmund Düll, Kai Heesche, Gurdev Singh, Marc Christian Weber
  • Publication number: 20190130263
    Abstract: A method of controlling a complex system and a gas turbine being controlled by the method are provided. The method comprises providing training data, which training data represents at least a portion of a state space of the system; setting a generic control objective for the system and a corresponding set point; and exploring the state space, using Reinforcement Learning, for a control policy for the system which maximizes an expected total reward. The expected total reward depends on a randomized deviation of the generic control objective from the corresponding set point.
    Type: Application
    Filed: November 2, 2017
    Publication date: May 2, 2019
    Inventors: Siegmund Düll, Kai Heesche, Raymond S. Nordlund, Steffen Udluft, Marc Christian Weber