伟德国际_伟德国际1946$娱乐app游戏

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Forschungsschwerpunkte

In meiner Forschung besch?ftige ich mich derzeit mit automatisierter Optimierung von Parametern in industriellen Produktionsprozessen und der Qualit?tsvorhersage (predictive quality) von in extrusionsbasierter Fertigung erstellten Bauteilen. Dies ist einzuordnen in den Kontext der Inbetriebnahme oder auch Reparametrisierung von Maschinen beliebiger Produktion. Um optimale Parameterkonfigurationen für einen Herstellungsprozess zu finden, kombinieren wir expertenwissensbasierte Ans?tze mit evolution?ren regelbasierten Lernverfahren (z.B. LCS). Neben der Vorhersage von Qualit?t ist auch die (automatisierte) Beurteilung von Bauteilen anhand von Qualit?tsmerkmalen Forschungsgegenstand. Im Allgemeinen setze ich in meiner Arbeit vor allem auf verschiedene Techniken des maschinellen Lernens (z.B. Deep Learning, evolution?res Lernen), wobei für unsere Anwendungsszenarien die Erkl?rbarkeit der Systeme für ihre diversen Stakeholder stets essenziell ist.

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  • evolution?res regelbasiertes Lernen
  • Unsupervised Learning zur feature extraction (z.B. Autoencoder)
  • Explainable AI (XAI)
  • Assistenzsysteme
  • Extrusionsbasierte Fertigung
  • 3D-Druck / Additive Fertigung

Publikationen

2024 | 2023 | 2022 | 2021 | 2020 | 2019 | 2016

2024

Michael Heider, Maximilian Krischan, Roman Sraj and J?rg H?hner. 2024. Exploring self-adaptive genetic algorithms to combine compact sets of rules. DOI: 10.1109/cec60901.2024.10612101
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Jonathan Wurth, Helena Stegherr, Michael Heider and J?rg H?hner. 2024. GRAHF: a hyper-heuristic framework for evolving heterogeneous island model topologies. DOI: 10.1145/3638529.3654136
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Henning Cui, Michael Heider and J?rg H?hner. 2024. Positional bias does not influence Cartesian Genetic Programming with crossover. DOI: 10.1007/978-3-031-70055-2_10
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2023

Markus G?rlich-Bucher, Michael Heider, Tobias Ciemala and J?rg H?hner. 2023. A decision-theoretic approach for?prioritizing maintenance activities in?organic computing systems. DOI: 10.1007/978-3-031-42785-5_3
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Helena Stegherr, Leopold Luley, Jonathan Wurth, Michael Heider and J?rg H?hner. 2023. A framework for modular construction and evaluation of metaheuristics.
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Michael Heider, David P?tzel, Helena Stegherr and J?rg H?hner. 2023. A metaheuristic perspective on learning classifier systems. DOI: 10.1007/978-981-19-3888-7_3
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Michael Heider, Helena Stegherr, Richard Nordsieck and J?rg H?hner. 2023. Assessing model requirements for explainable AI: a template and exemplary case study. DOI: 10.1162/artl_a_00414
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Helena Stegherr, Michael Heider and J?rg H?hner. 2023. Assisting convergence behaviour characterisation with unsupervised clustering. DOI: 10.5220/0012202100003595
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Michael Heider, Helena Stegherr, David P?tzel, Roman Sraj, Jonathan Wurth, Benedikt Volger and J?rg H?hner. 2023. Discovering rules for rule-based machine learning with the help of novelty search. DOI: 10.1007/s42979-023-02198-x
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Jonathan Wurth, Helena Stegherr, Michael Heider, Leopold Luley and J?rg H?hner. 2023. Fast, flexible, and fearless: a rust framework for the modular construction of metaheuristics. DOI: 10.1145/3583133.3596335
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Neele Kemper, Michael Heider, Dirk Pietruschka and J?rg H?hner. in press. Forecasting of residential unit's heat demands: a comparison of machine learning techniques in a real-world case study. DOI: 10.1007/s12667-023-00579-y
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Lukas Meitz, Michael Heider, Thorsten Sch?ler and J?rg H?hner. 2023. On data-preprocessing for effective predictive maintenance on multi-purpose machines. DOI: 10.5220/0012146700003541
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Markus G?rlich-Bucher, Michael Heider and J?rg H?hner. 2023. Predicting physical disturbances in?organic computing systems using automated machine learning. DOI: 10.1007/978-3-031-42785-5_4
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Michael Heider, Helena Stegherr, Roman Sraj, David P?tzel, Jonathan Wurth and J?rg H?hner. 2023. SupRB in the context of rule-based machine learning methods: a comparative study. DOI: 10.1016/j.asoc.2023.110706
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David P?tzel, Michael Heider and J?rg H?hner. 2023. Towards principled synthetic benchmarks for explainable rule set learning algorithms. DOI: 10.1145/3583133.3596416
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Tobias Wittmeir, Michael Heider, André Schweiger, Michaela Kr?, J?rg H?hner, Johannes Schilp and Joachim Berlak. 2023. Towards robustness of production planning and control against supply chain disruptions. DOI: 10.15488/13425
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Henning Cui, Andreas Margraf, Michael Heider and J?rg H?hner. 2023. Towards understanding crossover for Cartesian Genetic Programming. DOI: 10.5220/0012231400003595
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2022

Richard Nordsieck, Michael Heider, Anton Hummel and J?rg H?hner. 2022. A closer look at sum-based embeddings for knowledge graphs containing procedural knowledge.
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Michael Heider, David P?tzel and Alexander R. M. Wagner. 2022. An overview of LCS research from 2021 to 2022. DOI: 10.1145/3520304.3533985
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Michael Heider, Helena Stegherr, David P?tzel, Roman Sraj, Jonathan Wurth, Benedikt Volger and J?rg H?hner. 2022. Approaches for rule discovery in a learning classifier system. DOI: 10.5220/0011542000003332
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Helena Stegherr, Michael Heider and J?rg H?hner. 2022. Classifying metaheuristics: towards a unified multi-level classification system. DOI: 10.1007/s11047-020-09824-0
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Jonathan Wurth, Michael Heider, Helena Stegherr, Roman Sraj and J?rg H?hner. 2022. Comparing different metaheuristics for model selection in a supervised learning classifier system. DOI: 10.1145/3520304.3529015
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Michael Heider, Helena Stegherr, Jonathan Wurth, Roman Sraj and J?rg H?hner. 2022. Investigating the?impact of?independent rule fitnesses in?a?learning classifier system. DOI: 10.1007/978-3-031-21094-5_11
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Richard Nordsieck, Michael Heider, Alwin Hoffmann and J?rg H?hner. 2022. Reliability-based aggregation of heterogeneous knowledge to assist operators in manufacturing. DOI: 10.1109/icsc52841.2022.00027
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Michael Heider, Helena Stegherr, Jonathan Wurth, Roman Sraj and J?rg H?hner. 2022. Separating rule discovery and global solution composition in a learning classifier system. DOI: 10.1145/3520304.3529014
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Richard Nordsieck, Michael Heider, Anton Hummel, Alwin Hoffmann and J?rg H?hner. 2022. Towards models of conceptual and procedural operator knowledge.
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2021

David P?tzel, Michael Heider and Alexander R. M. Wagner. 2021. An overview of LCS research from 2020 to 2021. DOI: 10.1145/3449726.3463173
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Andreas Wiedholz, Michael Heider, Richard Nordsieck, Andreas Angerer, Simon Dietrich and J?rg H?hner. 2021. CAD-based grasp and motion planning for process automation in fused deposition modelling. DOI: 10.5220/0010571204500458
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Helena Stegherr, Michael Heider, Leopold Luley and J?rg H?hner. 2021. Design of large-scale metaheuristic component studies. DOI: 10.1145/3449726.3463168
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Richard Nordsieck, Michael Heider, Anton Winschel and J?rg H?hner. 2021. Knowledge extraction via decentralized knowledge graph aggregation. DOI: 10.1109/icsc50631.2021.00024
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Michael Heider, Richard Nordsieck and J?rg H?hner. 2021. Learning classifier systems for self-explaining socio-technical-systems.
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2020

Richard Nordsieck, Michael Heider, Andreas Angerer and J?rg H?hner. 2020. Evaluating the effect of user-given guiding attention on the learning process. DOI: 10.1109/acsos49614.2020.00044
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Michael Heider, David P?tzel and J?rg H?hner. 2020. SupRB: a supervised rule-based learning system for continuous problems.
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Michael Heider, David P?tzel and J?rg H?hner. 2020. Towards a Pittsburgh-style LCS for learning manufacturing machinery parametrizations. DOI: 10.1145/3377929.3389963
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2019

Michael Heider. 2019. Increasing reliability in FDM manufacturing. DOI: 10.18420/inf2019_ws52
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Richard Nordsieck, Michael Heider, Andreas Angerer and J?rg H?hner. 2019. Towards automated parameter optimisation of machinery by persisting expert knowledge. DOI: 10.5220/0007953204060413
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2016

Sebastian von Mammen, Heiko Hamann and Michael Heider. 2016. Robot gardens: an augmented reality prototype for plant-robot biohybrid systems. DOI: 10.1145/2993369.2993400
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Lebenslauf

seit 2019 Wissenschaftlicher Mitarbeiter am Lehrstuhl Organic Computing der Universit?t Augsburg
2015–2018 Master-Studium im Fach Informatik und Informationswirtschaft an der Universit?t Augsburg
2012–2016 Bachelor-Studium im Fach Informatik an der Universit?t Augsburg

Lehrveranstaltungen

(Angewandte Filter: Semester: aktuelles | Institutionen: Organic Computing | Dozenten: Michael Heider | Vorlesungsarten: ?bung, Seminar)
Name Semester Typ
Seminar Organic Computing (Bachelor) Wintersemester 2024/25 Seminar
Seminar Organic Computing (Master) Wintersemester 2024/25 Seminar

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