Now showing 1 - 8 of 8
  • Publication
    KI-Engineering in der Produktion
    Um Methoden der künstlichen Intelligenz (KI) in IT-Systemen der industriellen Produktion nachhaltig und operativ einzusetzen, bedarf es der Methodik des KI-Engineering. KI-Engineering adressiert die systematische Entwicklung und den Betrieb von KI-basierten Lösungen als Teil von Systemen, die komplexe Aufgaben erfüllen. Ziel ist es, das Innovations- und Optimierungspotenzial von KI-Verfahren in der industriellen Produktion nutzen zu können. Die Studie spannt die Dimensionen für KI-Engineering-Anwendungen auf, umreißt die qualitativen Anforderungen in der Entwicklung und im Betrieb unter dem Blickwinkel des Anwenders und Entscheiders. Verschiedene Anwendungsfälle werden in vier Autonomiestufen eingeordnet: von KI-basierten Assistenzfunktionen bis hin zu autonomen und adaptiven Systemen. Zudem werden passende Lösungsmethoden aufgezeigt. Ein Kapitel widmet sich den technischen und organisatorischen Schulden beim Einsatz von KI-Methoden. Hierin wird als Antwort das KI-Engineering-Vorgehensmodell PAISE® im Kontext bestehender Modelle aus dem Data Mining und dem Software-Engineering erläutert. Im Anschluss werden relevante Initiativen und Projekte beschrieben und anstehende Entwicklungen umrissen.
  • Publication
    Informed Machine Learning - A Taxonomy and Survey of Integrating Prior Knowledge into Learning Systems
    Despite its great success, machine learning can have its limits when dealing with insufficient training data. A potential solution is the additional integration of prior knowledge into the training process which leads to the notion of informed machine learning. In this paper, we present a structured overview of various approaches in this field. We provide a definition and propose a concept for informed machine learning which illustrates its building blocks and distinguishes it from conventional machine learning. We introduce a taxonomy that serves as a classification framework for informed machine learning approaches. It considers the source of knowledge, its representation, and its integration into the machine learning pipeline. Based on this taxonomy, we survey related research and describe how different knowledge representations such as algebraic equations, logic rules, or simulation results can be used in learning systems. This evaluation of numerous papers on the basis of our taxonomy uncovers key methods in the field of informed machine learning.
  • Publication
    Deutsche Normungsroadmap Künstliche Intelligenz
    Im Auftrag des Bundesministeriums für Wirtschaft und Klimaschutz haben DIN und DKE im Januar 2022 die Arbeiten an der zweiten Ausgabe der Deutschen Normungsroadmap Künstliche Intelligenz gestartet. In einem breiten Beteiligungsprozess und unter Mitwirkung von mehr als 570 Fachleuten aus Wirtschaft, Wissenschaft, öffentlicher Hand und Zivilgesellschaft wurde damit der strategische Fahrplan für die KI-Normung weiterentwickelt. Koordiniert und begleitet wurden diese Arbeiten von einer hochrangigen Koordinierungsgruppe für KI-Normung und -Konformität. Mit der Normungsroadmap wird eine Maßnahme der KI-Strategie der Bundesregierung umgesetzt und damit ein wesentlicher Beitrag zur "KI - Made in Germany" geleistet. Die Normung ist Teil der KI-Strategie und ein strategisches Instrument zur Stärkung der Innovations- und Wettbewerbsfähigkeit der deutschen und europäischen Wirtschaft. Nicht zuletzt deshalb spielt sie im geplanten europäischen Rechtsrahmen für KI, dem Artificial Intelligence Act, eine besondere Rolle. Die vorliegende Normungsroadmap KI zeigt die Erfordernisse in der Normung auf, formuliert konkrete Empfehlungen und schafft so die Basis, um frühzeitig Normungsarbeiten auf nationaler, insbesondere aber auch auf europäischer und internationaler Ebene, anzustoßen. Damit zahlt sie maßgeblich auf den Artificial Intelligence Act der Europäischen Kommission ein und unterstützt dessen Umsetzung.
  • Publication
    New active learning algorithms for near-infrared spectroscopy in agricultural applications
    The selection of training data determines the quality of a chemometric calibration model. In order to cover the entire parameter space of known influencing parameters, an experimental design is usually created. Nevertheless, even with a carefully prepared Design of Experiment (DoE), redundant reference analyses are often performed during the analysis of agricultural products. Because the number of possible reference analyses is usually very limited, the presented active learning approaches are intended to provide a tool for better selection of training samples.
  • Publication
    Generative Machine Learning for Resource-Aware 5G and IoT Systems
    Extrapolations predict that the sheer number of Internet-of-Things (IoT) devices will exceed 40 billion in the next five years. Hand-crafting specialized energy models and monitoring sub-systems for each type of device is error prone, costly, and sometimes infeasible. In order to detect abnormal or faulty behavior as well as inefficient resource usage autonomously, it is of tremendous importance to endow upcoming IoT and 5G devices with sufficient intelligence to deduce an energy model from their own resource usage data. Such models can in-turn be applied to predict upcoming resource consumption and to detect system behavior that deviates from normal states. To this end, we investigate a special class of undirected probabilistic graphical model, the so-called integer Markov random fields (IntMRF). On the one hand, this model learns a full generative probability distribution over all possible states of the system-allowing us to predict system states and to measure the probability of observed states. On the other hand, IntMRFs are themselves designed to consume as less resources as possible-e.g., faithful modelling of systems with an exponentially large number of states, by using only 8-bit unsigned integer arithmetic and less than 16KB memory. We explain how IntMRFs can be applied to model the resource consumption and the system behavior of an IoT device and a 5G core network component, both under various workloads. Our results suggest, that the machine learning model can represent important characteristics of our two test systems and deliver reasonable predictions of the power consumption.
  • Publication
    IDS Reference Architecture Model. Industrial Data Space. Version 2.0
    (International Data Spaces Association, 2018) ;
    Lohmann, Steffen
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    Steinbuss, Sebastian
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    Teuscher, Andreas
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    Auer, Soeren
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    Boehmer, Martin
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    Bohn, Juergen
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    Ciureanu, Constantin
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    Corsi, Eva
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    Danielsen, Soeren
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    Gude, Roland
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    Heiles, Juergen
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    Hierro, Juanjo
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    Hoernle, Joachim
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    Huber, Manuel
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    Juerjens, Jan
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    Kasprzik, Anna
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    Ketterl, Markus
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    Koetzsch, Judith
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    Koehler, Jacob
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    Lange, Christoph
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    Langer, Dorothea
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    Langkau, Joerg
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    Loeffler, Sven
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    Loewen, Ulrich
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    Mader, Christian
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    Mueller, Andreas
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    Mueller, Bernhard
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    Nagel, Lars
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    Nieminen, Harri
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    Reitelbach, Thomas
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    Resetko, Aleksei
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    Pakkala, Daniel
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    Pietzsch, Rene
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    Pullmann, Jaroslav
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    Punter, Matthijs
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    Rohrmus, Dominik
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    Romer, Lena
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    Sandloehken, Joerg
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    Schoewe, Patrick
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    Schuette, Julian
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    Schweichhart, Karsten
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    Sol, Egbert-Jan
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    Sorowka, Peter
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    Spiegelberg, Gernot
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    Spohn, Christian
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    Stoehr, Gerrit
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    Thess, Michael
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    Tramp, Sebastian
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    Wappler, Mona
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    Weiergraeber, Ann-Christin
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    Wenzel, Sven
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    Wolff, Oliver
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    Woerner, Heike
  • Publication
    Situation responsive networking of mobile robots for disaster management
    ( 2014)
    Kuntze, Helge-Björn
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    Frey, Christian W.
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    Walter, Moriz
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    Müller, Fabian
    If a natural disaster like an earthquake or an accident in a chemical or nuclear plant hits a populated area, rescue teams have to get a quick overview of the situation in order to identify possible locations of victims, which need to be rescued, and dangerous locations, hich need to be secured. Rescue forces must operate quickly in order to save lives, and they often need to operate in dangerous enviroments. Hence, robot-supported systems are increasingly used to support and accelerate search operations. The objective of the SENEKA concept is the situation responsive networking of various robots and sensor systems used by first responders in order to make the search for victims and survivors more quick and efficient. SENEKA targets the integration of the robot-sensor network into the operation procedures of the rescue teams. The aim of this paper is to inform on the objectives and first research results of the ongoing joint research project SENEKA.
  • Publication
    SENEKA - sensor network with mobile robots for disaster management
    ( 2012)
    Kuntze, Helge-Björn
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    Frey, Christian W.
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    Staehle, Barbara
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    Wenzel, Andreas
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    Developed societies have a high level of preparedness for natural or man-made disasters. But such incidents cannot be completely prevented, and when an incident like an earthquake or an accident in a chemical or nuclear plant hits a populated area, rescue teams need to be employed. In such situations it is a necessity for rescue teams to get a quick overview of the situation in order to identify possible locations of victims that need to be rescued and dangerous locations that need to be secured. Rescue forces must operate quickly in order to save lives, and they often need to operate in dangerous environments. Hence, robot-supported systems are increasingly used to support and accelerate search operations. The objective of the SENEKA concept is to network the various robots and sensor systems used by first responders in order to make the search for victims and survivors more quick and efficient. SENEKA targets the integration of the robot-sensor network into the operation procedures of the rescue teams. The aim of this paper is to inform on the goals and first research results of the ongoing joint research project SENEKA.