Prediction of Disassembly Parameters for Process Planning Based on Machine Learning

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandBeitrag in Buch/SammelwerkForschungPeer-Review

Autoren

Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Titel des SammelwerksProduction at the Leading Edge of Technology
Herausgeber (Verlag)Springer Nature
Seiten613-622
Seitenumfang10
ISBN (elektronisch)978-3-031-18318-8
ISBN (Print)978-3-031-18317-1
PublikationsstatusVeröffentlicht - 2023

Publikationsreihe

NameLecture Notes in Production Engineering
BandPart F1163
ISSN (Print)2194-0525
ISSN (elektronisch)2194-0533

Abstract

The disassembly of complex capital goods is characterized by strong uncertainty regarding the product condition and possible damage patterns to be expected during a regeneration job. Due to the high value of complex capital goods, the disassembly process must be as gentle as possible and being adaptable to the varying und uncertain product's state. While methods based on data mining have already been successfully used to forecast capacity and material requirements, the determination of the product’s or component's condition has become apparent in the recent past. Despite the rapid increase in sensor technology on capital goods such as aircraft engines and their use for condition monitoring due to countless interfering effects, it is only possible to react spontaneously to the product’s condition. So far, we have concentrated on product condition-based prioritization of disassembly operations in a logistics-oriented sequencing strategy. In this article, we present an approach to predict disassembly process-planning parameters based on operational usage data using machine learning. With the prediction of disassembly forces and times, processes, tools and capacities can be efficiently planned. Thus, we can establish a component-friendly disassembly process adaptable to varying product conditions. In this article, we show the successful validation on a replacement model of an aircraft engine.

ASJC Scopus Sachgebiete

Zitieren

Prediction of Disassembly Parameters for Process Planning Based on Machine Learning. / Blümel, Richard; Zander, Niklas; Blankemeyer, Sebastian et al.
Production at the Leading Edge of Technology. Springer Nature, 2023. S. 613-622 (Lecture Notes in Production Engineering; Band Part F1163).

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandBeitrag in Buch/SammelwerkForschungPeer-Review

Blümel, R, Zander, N, Blankemeyer, S & Raatz, A 2023, Prediction of Disassembly Parameters for Process Planning Based on Machine Learning. in Production at the Leading Edge of Technology. Lecture Notes in Production Engineering, Bd. Part F1163, Springer Nature, S. 613-622. https://doi.org/10.15488/13412, https://doi.org/10.1007/978-3-031-18318-8_61
Blümel, R., Zander, N., Blankemeyer, S., & Raatz, A. (2023). Prediction of Disassembly Parameters for Process Planning Based on Machine Learning. In Production at the Leading Edge of Technology (S. 613-622). (Lecture Notes in Production Engineering; Band Part F1163). Springer Nature. https://doi.org/10.15488/13412, https://doi.org/10.1007/978-3-031-18318-8_61
Blümel R, Zander N, Blankemeyer S, Raatz A. Prediction of Disassembly Parameters for Process Planning Based on Machine Learning. in Production at the Leading Edge of Technology. Springer Nature. 2023. S. 613-622. (Lecture Notes in Production Engineering). doi: 10.15488/13412, 10.1007/978-3-031-18318-8_61
Blümel, Richard ; Zander, Niklas ; Blankemeyer, Sebastian et al. / Prediction of Disassembly Parameters for Process Planning Based on Machine Learning. Production at the Leading Edge of Technology. Springer Nature, 2023. S. 613-622 (Lecture Notes in Production Engineering).
Download
@inbook{c2ac048c43564d968cdb711d1c82894a,
title = "Prediction of Disassembly Parameters for Process Planning Based on Machine Learning",
abstract = "The disassembly of complex capital goods is characterized by strong uncertainty regarding the product condition and possible damage patterns to be expected during a regeneration job. Due to the high value of complex capital goods, the disassembly process must be as gentle as possible and being adaptable to the varying und uncertain product's state. While methods based on data mining have already been successfully used to forecast capacity and material requirements, the determination of the product{\textquoteright}s or component's condition has become apparent in the recent past. Despite the rapid increase in sensor technology on capital goods such as aircraft engines and their use for condition monitoring due to countless interfering effects, it is only possible to react spontaneously to the product{\textquoteright}s condition. So far, we have concentrated on product condition-based prioritization of disassembly operations in a logistics-oriented sequencing strategy. In this article, we present an approach to predict disassembly process-planning parameters based on operational usage data using machine learning. With the prediction of disassembly forces and times, processes, tools and capacities can be efficiently planned. Thus, we can establish a component-friendly disassembly process adaptable to varying product conditions. In this article, we show the successful validation on a replacement model of an aircraft engine.",
keywords = "Disassembly planning, Machine learning, Regeneration",
author = "Richard Bl{\"u}mel and Niklas Zander and Sebastian Blankemeyer and Annika Raatz",
note = "Funding Information: Acknowledgements. Funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation)—SFB 871/3-119193472.",
year = "2023",
doi = "10.15488/13412",
language = "English",
isbn = "978-3-031-18317-1",
series = "Lecture Notes in Production Engineering",
publisher = "Springer Nature",
pages = "613--622",
booktitle = "Production at the Leading Edge of Technology",
address = "United States",

}

Download

TY - CHAP

T1 - Prediction of Disassembly Parameters for Process Planning Based on Machine Learning

AU - Blümel, Richard

AU - Zander, Niklas

AU - Blankemeyer, Sebastian

AU - Raatz, Annika

N1 - Funding Information: Acknowledgements. Funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation)—SFB 871/3-119193472.

PY - 2023

Y1 - 2023

N2 - The disassembly of complex capital goods is characterized by strong uncertainty regarding the product condition and possible damage patterns to be expected during a regeneration job. Due to the high value of complex capital goods, the disassembly process must be as gentle as possible and being adaptable to the varying und uncertain product's state. While methods based on data mining have already been successfully used to forecast capacity and material requirements, the determination of the product’s or component's condition has become apparent in the recent past. Despite the rapid increase in sensor technology on capital goods such as aircraft engines and their use for condition monitoring due to countless interfering effects, it is only possible to react spontaneously to the product’s condition. So far, we have concentrated on product condition-based prioritization of disassembly operations in a logistics-oriented sequencing strategy. In this article, we present an approach to predict disassembly process-planning parameters based on operational usage data using machine learning. With the prediction of disassembly forces and times, processes, tools and capacities can be efficiently planned. Thus, we can establish a component-friendly disassembly process adaptable to varying product conditions. In this article, we show the successful validation on a replacement model of an aircraft engine.

AB - The disassembly of complex capital goods is characterized by strong uncertainty regarding the product condition and possible damage patterns to be expected during a regeneration job. Due to the high value of complex capital goods, the disassembly process must be as gentle as possible and being adaptable to the varying und uncertain product's state. While methods based on data mining have already been successfully used to forecast capacity and material requirements, the determination of the product’s or component's condition has become apparent in the recent past. Despite the rapid increase in sensor technology on capital goods such as aircraft engines and their use for condition monitoring due to countless interfering effects, it is only possible to react spontaneously to the product’s condition. So far, we have concentrated on product condition-based prioritization of disassembly operations in a logistics-oriented sequencing strategy. In this article, we present an approach to predict disassembly process-planning parameters based on operational usage data using machine learning. With the prediction of disassembly forces and times, processes, tools and capacities can be efficiently planned. Thus, we can establish a component-friendly disassembly process adaptable to varying product conditions. In this article, we show the successful validation on a replacement model of an aircraft engine.

KW - Disassembly planning

KW - Machine learning

KW - Regeneration

UR - http://www.scopus.com/inward/record.url?scp=85166665847&partnerID=8YFLogxK

U2 - 10.15488/13412

DO - 10.15488/13412

M3 - Contribution to book/anthology

AN - SCOPUS:85166665847

SN - 978-3-031-18317-1

T3 - Lecture Notes in Production Engineering

SP - 613

EP - 622

BT - Production at the Leading Edge of Technology

PB - Springer Nature

ER -

Von denselben Autoren