Patents by Inventor Siegmund Düll

Siegmund Düll 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: 11467568
    Abstract: Provided is a method for computer-aided processing of quality information of an object manufactured by stacked printed layers in an additive manufacturing system, including the steps of: receiving a quality indicator for each printed layer of the object from the manufacturing system, assigning a color out of a predefined set of colors to each quality indicator depending on the value of the quality indicator, visualizing the quality indicators of the received manufactured layers as a sequence of colored bars ordered according to the sequence of the manufactured layers the color of each bar indicating the value of the quality indicator of the respective printed layer on a graphical user interface.
    Type: Grant
    Filed: September 21, 2018
    Date of Patent: October 11, 2022
    Inventors: Felix Buggenthin, Siegmund Düll, Mitchell Joblin, Clemens Otte, Axel Reitinger, Victor Balanica, Michael Caelers, Jonas Eriksson, Jerry Fornander, Andreas Graichen, Vincent Sidenvall
  • Patent number: 11269297
    Abstract: In order to control a technical system by means of control model a data container is received, in which data container a control model having a training structure and model type information are encoded over all the model types. One of multiple model-type specific execution modules is selected for the technical system as a function of the model type information. Furthermore, operating data channels of the technical system are assigned input channels of the control model as a function of the model type information. Operating data of the technical system are acquired via a respective operating data channel and are transferred to the control model via an input channel assigned to this operating data channel. The control model is executed by means of the selected execution module, wherein control data are derived from the transferred operating data according to the training structure and are output to control the technical system.
    Type: Grant
    Filed: February 1, 2017
    Date of Patent: March 8, 2022
    Assignee: SIEMENS AKTIENGESELLSCHAFT
    Inventors: Siegmund Düll, Markus Michael Geipel, Jean-Christoph Heyne, Volkmar Sterzing
  • 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: 20200301375
    Abstract: In order to control a technical system by means of control model a data container is received, in which data container a control model having a training structure and model type information are encoded over all the model types. One of multiple model-typespecific execution modules is selected for the technical system as a function of the model type information. Furthermore, operating data channels of the technical system are assigned input channels of the control model as a function of the model type information. Operating data of the technical system are acquired via a respective operating data channel and are transferred to the control model via an input channel assigned to this operating data channel. The control model is executed by means of the selected execution module, wherein control data are derived from the transferred operating data according to the training structure and are output to control the technical system.
    Type: Application
    Filed: February 1, 2017
    Publication date: September 24, 2020
    Inventors: Siegmund Düll, Markus Michael Geipel, Jean-Christoph Heyne, Volkmar Sterzing
  • Publication number: 20200264594
    Abstract: Provided is a method for computer-aided processing of quality information of an object manufactured by stacked printed layers in an additive manufacturing system, including the steps of: receiving a quality indicator for each printed layer of the object from the manufacturing system, assigning a color out of a predefined set of colors to each quality indicator depending on the value of the quality indicator, visualizing the quality indicators of the received manufactured layers as a sequence of colored bars ordered according to the sequence of the manufactured layers the color of each bar indicating the value of the quality indicator of the respective printed layer on a graphical user interface.
    Type: Application
    Filed: September 21, 2018
    Publication date: August 20, 2020
    Inventors: Felix Buggenthin, Siegmund Düll, Mitchell Joblin, Clemens Otte, Axel Reitinger, Victor Balanica, Michael Caelers, Jonas Eriksson, Jerry Fornander, Andreas Graichen, Vincent Sidenvall
  • Patent number: 10747184
    Abstract: For controlling a target system, e.g. a gas or wind turbine or another technical system, a pool of control policies is provided. The pool of control policies comprising a plurality of control policies and weights for weighting each of the plurality of control policies are received. The plurality of control policies is weighted by the weights to provide a weighted aggregated control policy. With that, the target system is controlled using the weighted aggregated control policy, and performance data relating to a performance of the controlled target system are received. Furthermore, the weights are adjusted on the basis of the received performance data to improve the performance of the controlled target system. With that, the plurality of control policies is reweighted by the adjusted weights to adjust the weighted aggregated control policy.
    Type: Grant
    Filed: December 13, 2016
    Date of Patent: August 18, 2020
    Assignee: SIEMENS AKTIENGESELLSCHAFT
    Inventors: Hany F. Bassily, Siegmund Düll, Michael Müller, Clemens Otte, Steffen Udluft
  • Publication number: 20200230884
    Abstract: An apparatus and method for monitoring a quality of an object of a 3D-print job series of identical objects, each object built from a multitude of stacked 2D-layers printed by a 3D-printer in an additive manufacturing process, including: determining a layer quality indicator of a currently printed layer of an object, comparing the determined layer quality indicator of the currently printed layer with a predetermined lower confidence limit of the layer, the predetermined lower confidence limit being calculated depending on layer quality indicators of previously completely manufactured objects complying with predefined quality requirements, and generating a warning signal, if the layer quality indicator of the currently printed layer has a value equal or lower than the lower quality limit is provided.
    Type: Application
    Filed: September 19, 2018
    Publication date: July 23, 2020
    Inventors: Felix Buggenthin, Siegmund Düll, Mitchell Joblin, Clemens Otte, Axel Reitinger, Victor Balanica, Michael Caelers, Jonas Eriksson, Jerry Fornander, Andreas Graichen, Vincent Sidenvall
  • Patent number: 10549349
    Abstract: The present invention provides an enhanced setup of a 3D-printing device, especially to a laser powder bed fusion 3D-printing device. It is for this purpose, that data relating to previously printed products are stored in a database. When a new product is to be printed, the features of the new product are matched with features of previously printed products stored in the database. Accordingly, a suggestion for setting-up the 3D-printing device based on corresponding previously printed products and their setup parameters can be automatically determined and applied to the 3D-printing device.
    Type: Grant
    Filed: September 28, 2017
    Date of Patent: February 4, 2020
    Assignee: Siemens Aktiengesellschaft
    Inventors: Victor Balanica, Felix Buggenthin, Siegmund Düll, Mitchell Joblin, Clemens Otte, Axel Reitinger, Michael Caelers, Jonas Eriksson, Jerry Fornander, Andreas Graichen, Yi Huang, Vincent Sidenvall, Sunil Viswanathan
  • Patent number: 10338542
    Abstract: An interactive assistance system and method for computer-aided control optimization for a technical system is provided. For example, a gas or wind turbine, in particular for optimizing the action sequence or the control variables of the plant (e.g. gas supply, compression), wherein an input terminal is provided for reading at least one status parameter providing a first system status of the technical system, and at least one setting parameter for adapting a reward function. A simulation module having a pre-trained neuronal network, simulating the plant, serves to simulate an action sequence on the technical system, starting from the first system status and to the prediction of the resulting statuses of the technical system.
    Type: Grant
    Filed: May 5, 2015
    Date of Patent: July 2, 2019
    Assignee: Siemens Aktiengesellschaft
    Inventors: Siegmund Düll, Alexander Hentschel, Jatinder P. Singh, Volkmar Sterzing, Steffen Udluft
  • 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
  • Publication number: 20190091770
    Abstract: The present invention provides an enhanced setup of a 3D-printing device, especially to a laser powder bed fusion 3D-printing device. It is for this purpose, that data relating to previously printed products are stored in a database. When a new product is to be printed, the features of the new product are matched with features of previously printed products stored in the database. Accordingly, a suggestion for setting-up the 3D-printing device based on corresponding previously printed products and their setup parameters can be automatically determined and applied to the 3D-printing device.
    Type: Application
    Filed: September 28, 2017
    Publication date: March 28, 2019
    Inventors: Victor Balanica, Felix Buggenthin, Siegmund Düll, Mitchell Joblin, Clemens Otte, Axel Reitinger, Michael Caelers, Jonas Eriksson, Jerry Fornander, Andreas Graichen, Yi Huang, Vincent Sidenvall, Sunil Viswanathan
  • Patent number: 10107205
    Abstract: The embodiments relate to a method for the computer-aided control and/or regulation of a technical system, particularly a power generation installation. The actions to be performed in the course of regulation or control are ascertained using a numerical optimization method (e.g., a particle swarm optimization). In this case, the numerical optimization method uses a predetermined simulation model that is used to predict states of the technical system and, on the basis thereof, to ascertain a measure of quality that reflects an optimization criterion for the operation of the technical system.
    Type: Grant
    Filed: August 5, 2014
    Date of Patent: October 23, 2018
    Assignee: Siemens Aktiengesellschaft
    Inventors: Siegmund Düll, Daniel Hein, Alexander Hentschel, Thomas Runkler, Steffen Udluft
  • Patent number: 10036328
    Abstract: The invention concerns a method for the computerized control and/or regulation of a technical system (T). Within the context of the method according to the invention, there is implemented in a preset regulating process (CO1, CO2) an exploration rule (EP) by means of which new, as yet unknown, states (x) of the technical system (T) are started, a simulation model (SM) of the technical system (T) checking whether the actions (a2) of the exploration rule (EP) lead to sequential states (x?) lying within predetermined thresholds. Only in that case is the corresponding action (a2) performed according to the exploration rule (EP) on the technical system. The method according to the invention enables new states to be explored within the framework of the operation of a technical system, it being ensured through checking of appropriate thresholds that the exploration is carried out imperceptibly and does not lead to incorrect operation of the technical system.
    Type: Grant
    Filed: January 22, 2014
    Date of Patent: July 31, 2018
    Assignee: Siemens Aktiengesellschaft
    Inventors: Hans-Gerd Brummel, Siegmund Düll, Jatinder P. Singh, Volkmar Sterzing, Steffen Udluft
  • Patent number: 9952566
    Abstract: A computer-implemented method for controlling and/or regulating a technical system, in which actions to be carried out on the technical system are first of all determined using an action selection rule which was determined through the learning of a data-driven model and, in particular, a neural network. On the basis of these actions a numerical optimization searches for actions which are better than the original actions according to an optimization criterion. If such actions are found, the technical system is regulated or controlled on the basis of these new actions, such that the corresponding actions are applied to the technical system in succession. The method is suitable, in particular, for regulating or controlling a gas turbine, wherein the actions are preferably optimized with respect to the criterion of low pollutant emission or low combustion chamber humming.
    Type: Grant
    Filed: August 23, 2013
    Date of Patent: April 24, 2018
    Assignee: Siemens Aktiengesellschaft
    Inventors: Siegmund Düll, Alexander Hentschel, Steffen Udluft
  • Patent number: 9926853
    Abstract: The invention concerns a method for the computerized control and/or regulation of a technical system. Within the context of the method according to the invention, an action-selection rule (PO?) is determined which has a low level of complexity and yet is well suited to the regulating and/or control of the technical system, there being used for determination of the action-selection rule (PO?) an evaluation measure (EM) which is determined on the basis of a distance measure and/or a reward measure and/or an action-selection rule evaluation method. The action-selection rule is then used to control and/or regulate the technical system. The method according to the invention has the advantage of the action-selection rule being comprehensible to a human expert. Preferably, the method according to the invention is used for regulating and/or controlling a gas turbine and/or a wind turbine.
    Type: Grant
    Filed: January 22, 2014
    Date of Patent: March 27, 2018
    Assignee: Siemens Aktiengesellschaft
    Inventors: Siegmund Düll, Alexander Hentschel, Steffen Udluft
  • Publication number: 20170160706
    Abstract: An interactive assistance system and method for computer-aided control optimization for a technical system is provided. For example, a gas or wind turbine, in particular for optimizing the action sequence or the control variables of the plant (e.g. gas supply, compression), wherein an input terminal is provided for reading at least one status parameter providing a first system status of the technical system, and at least one setting parameter for adapting a reward function. A simulation module having a pre-trained neuronal network, simulating the plant, serves to simulate an action sequence on the technical system, starting from the first system status and to the prediction of the resulting statuses of the technical system.
    Type: Application
    Filed: May 5, 2015
    Publication date: June 8, 2017
    Inventors: SIEGMUND DÜLL, ALEXANDER HENTSCHEL, JATINDER P. SINGH, VOLKMAR STERZING, STEFFEN UDLUFT
  • Patent number: 9639070
    Abstract: A method for controlling a turbine is proposed, which is characterized at any point in the control by a hidden state. The dynamic behavior of the turbine is modeled with a recurrent neural network comprising a recurrent hidden layer. In this case, the recurrent hidden layer is formed from vectors of neurons, which describe the hidden state of the turbine at the time points of the regulation, wherein two vectors are chronologically linked for each time point with a first connection bridging a time and second connection bridging at least two points in time. Short-term effects can be controlled by means of the first connections and long-term effects can be adjusted by means of the second connections. Secondly, emissions and also occurring dynamics in the turbine can be minimized. Furthermore, a regulating device and a turbine with such a regulating device are proposed.
    Type: Grant
    Filed: April 8, 2013
    Date of Patent: May 2, 2017
    Assignee: Siemens Aktiengesellschaft
    Inventors: Siegmund Düll, Steffen Udluft, Lina Weichbrodt
  • Publication number: 20170090429
    Abstract: For controlling a target system, e.g. a gas or wind turbine or another technical system, a pool of control policies is provided. The pool of control policies comprising a plurality of control policies and weights for weighting each of the plurality of control policies are received. The plurality of control policies is weighted by the weights to provide a weighted aggregated control policy. With that, the target system is controlled using the weighted aggregated control policy, and performance data relating to a performance of the controlled target system are received. Furthermore, the weights are adjusted on the basis of the received performance data to improve the performance of the controlled target system. With that, the plurality of control policies is reweighted by the adjusted weights to adjust the weighted aggregated control policy.
    Type: Application
    Filed: December 13, 2016
    Publication date: March 30, 2017
    Inventors: Hany F. Bassily, Siegmund Düll, Michael Müller, Clemens Otte, Steffen Udluft