KI-gestützte Qualitätssicherung für die Fließfertigung von UHFB-Stabelementen

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Titel in ÜbersetzungAI-supported quality assurance for the flow production of UHFB bar elements
OriginalspracheDeutsch
Seiten (von - bis)34-41
Seitenumfang8
FachzeitschriftBeton- und Stahlbetonbau
Jahrgang116
AusgabenummerS2
PublikationsstatusVeröffentlicht - 6 Sept. 2021

Abstract

AI-supported quality assurance for the flow production of UHFB bar elements. Fast precision construction requires modular designs with lightweight, easy-to-handle components that can be manufactured at high repetition rates. To enable such elements to be produced continuously, quickly and economically, new manufacturing and design concepts are needed, in which the design must be highly efficient (form follows force) and which also consistently complies to the requirements for rapid series production. AI-supported quality assurance controls in the course of flow production, which obtains its data from a variety of different sensors and sensor types, lend themselves to such new manufacturing processes. Such AI-assisted manufacturing is implemented by an Artificial Neural Network (KNN), which, compared to conventional approaches, offers the possibility to map nonlinear relationships of heterogeneous data. In this paper, the KNN-based form of quality assurance (QA) on flow-produced beam elements is described as an example for the assessment of the concrete surface and geometry, which can represent a first step into process control. First investigations have shown that even small defects can be detected and localized very efficiently.

Schlagwörter

    artificial neural networks, flow production, machine learning, quality assurance, ultra high performance concrete

ASJC Scopus Sachgebiete

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KI-gestützte Qualitätssicherung für die Fließfertigung von UHFB-Stabelementen. / Tritschel, Franz Ferdinand; Markowski, Jan; Penner, Nikolai et al.
in: Beton- und Stahlbetonbau, Jahrgang 116, Nr. S2, 06.09.2021, S. 34-41.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Tritschel FF, Markowski J, Penner N, Rolfes R, Lohaus L, Haist M. KI-gestützte Qualitätssicherung für die Fließfertigung von UHFB-Stabelementen. Beton- und Stahlbetonbau. 2021 Sep 6;116(S2):34-41. doi: 10.1002/best.202100052
Tritschel, Franz Ferdinand ; Markowski, Jan ; Penner, Nikolai et al. / KI-gestützte Qualitätssicherung für die Fließfertigung von UHFB-Stabelementen. in: Beton- und Stahlbetonbau. 2021 ; Jahrgang 116, Nr. S2. S. 34-41.
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AU - Markowski, Jan

AU - Penner, Nikolai

AU - Rolfes, Raimund

AU - Lohaus, Ludger

AU - Haist, Michael

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