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Adaptive aerodynamic part feeding enabled by genetic algorithm

Research output: Contribution to journalArticleResearchpeer review

Authors

  • Sebastian Blankemeyer
  • Torge Kolditz
  • Jan Busch
  • Melissa Seitz
  • Peter Nyhuis
  • Annika Raatz

Details

Original languageEnglish
Number of pages8
JournalProduction Engineering
Volume16
Issue number1
Early online date18 Sept 2021
Publication statusPublished - Feb 2022

Abstract

Aerodynamic feeding systems represent one possibility to meet the challenges of part feeding for automated production in terms of feeding performance and flexibility. The aerodynamic feeding system investigated in this article is already able to adapt itself to different workpieces using a genetic algorithm. However, due to the operating principle, the system is susceptible to changes in environmental conditions such as air pressure and pollution (e.g. dust). To minimise the effect of ambient influences, the system must be enabled to detect changes in the feeding rate and react autonomously by adapting the system’s adjustment parameters. In this work, based on pre-identified factors interfering with the aerodynamic orientation process, a new approach is developed to react to changes of the ambient conditions during operation. The presented approach makes us of an alternating sequence of monitoring and corrective algorithms. The monitoring algorithm measures the ratio of correctly oriented parts to the total number of fed parts of the process and triggers the corrective algorithm if necessary. Simulated and experimental results both show that an increased feeding rate can be achieved in varying conditions. Furthermore, it is shown that integrating both known process and parameter information can reduce the time for re-parametrisation of the feeding system.

Keywords

    Feeding technology, Flexible manufacturing system, Genetic algorithm, Optimisation

ASJC Scopus subject areas

Cite this

Adaptive aerodynamic part feeding enabled by genetic algorithm. / Blankemeyer, Sebastian; Kolditz, Torge; Busch, Jan et al.
In: Production Engineering, Vol. 16, No. 1, 02.2022.

Research output: Contribution to journalArticleResearchpeer review

Blankemeyer, S, Kolditz, T, Busch, J, Seitz, M, Nyhuis, P & Raatz, A 2022, 'Adaptive aerodynamic part feeding enabled by genetic algorithm', Production Engineering, vol. 16, no. 1. https://doi.org/10.1007/s11740-021-01076-w
Blankemeyer, S., Kolditz, T., Busch, J., Seitz, M., Nyhuis, P., & Raatz, A. (2022). Adaptive aerodynamic part feeding enabled by genetic algorithm. Production Engineering, 16(1). https://doi.org/10.1007/s11740-021-01076-w
Blankemeyer S, Kolditz T, Busch J, Seitz M, Nyhuis P, Raatz A. Adaptive aerodynamic part feeding enabled by genetic algorithm. Production Engineering. 2022 Feb;16(1). Epub 2021 Sept 18. doi: 10.1007/s11740-021-01076-w
Blankemeyer, Sebastian ; Kolditz, Torge ; Busch, Jan et al. / Adaptive aerodynamic part feeding enabled by genetic algorithm. In: Production Engineering. 2022 ; Vol. 16, No. 1.
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AU - Seitz, Melissa

AU - Nyhuis, Peter

AU - Raatz, Annika

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