Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autoren

  • Insa Südbeck
  • Julia Mindlina
  • André Schnabel
  • Stefan Helber

Organisationseinheiten

Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Seiten (von - bis)267-291
Seitenumfang25
FachzeitschriftSchmalenbach Journal of Business Research
Jahrgang76
Ausgabenummer2
Frühes Online-Datum30 Apr. 2024
PublikationsstatusVeröffentlicht - Juni 2024

Abstract

Long-term throughput, as a key performance indicator of a stochastic flow line, is affected by numerous parameters describing the features of the flow line, such as processing time and buffer size. Fast and accurate evaluation methods for a given set of values for those parameters are a prerequisite to systematically optimize such a flow line. In this paper, we consider the case of a flow line with random processing times, limited buffer capacities and so-called milkruns that supply the machines with material parts that are required to perform, e.g., assembly operations on workpieces. In such a system, shortages in the supply of material parts can limit the performance of the flow line. Up to now, there are no accurate analytical approaches to quantify the complex interactions in such milkrun-supplied flow lines for realistic problem sizes. We propose to use recurrent neural networks to determine the long-term throughput of such flow lines enabling us to evaluate production systems of flexible size. Our results show that the throughput can be determined accurately and quickly via recurrent neural networks. Furthermore, we use this new evaluation procedure as a building block to optimize this type of flow line using gradient and local search techniques.

Zitieren

Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines. / Südbeck, Insa; Mindlina, Julia; Schnabel, André et al.
in: Schmalenbach Journal of Business Research, Jahrgang 76, Nr. 2, 06.2024, S. 267-291.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Südbeck, I, Mindlina, J, Schnabel, A & Helber, S 2024, 'Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines', Schmalenbach Journal of Business Research, Jg. 76, Nr. 2, S. 267-291. https://doi.org/10.1007/s41471-024-00183-5
Südbeck, I., Mindlina, J., Schnabel, A., & Helber, S. (2024). Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines. Schmalenbach Journal of Business Research, 76(2), 267-291. https://doi.org/10.1007/s41471-024-00183-5
Südbeck I, Mindlina J, Schnabel A, Helber S. Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines. Schmalenbach Journal of Business Research. 2024 Jun;76(2):267-291. Epub 2024 Apr 30. doi: 10.1007/s41471-024-00183-5
Südbeck, Insa ; Mindlina, Julia ; Schnabel, André et al. / Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines. in: Schmalenbach Journal of Business Research. 2024 ; Jahrgang 76, Nr. 2. S. 267-291.
Download
@article{cb851f8e2ada494480b46e19f3931572,
title = "Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines",
abstract = "Long-term throughput, as a key performance indicator of a stochastic flow line, is affected by numerous parameters describing the features of the flow line, such as processing time and buffer size. Fast and accurate evaluation methods for a given set of values for those parameters are a prerequisite to systematically optimize such a flow line. In this paper, we consider the case of a flow line with random processing times, limited buffer capacities and so-called milkruns that supply the machines with material parts that are required to perform, e.g., assembly operations on workpieces. In such a system, shortages in the supply of material parts can limit the performance of the flow line. Up to now, there are no accurate analytical approaches to quantify the complex interactions in such milkrun-supplied flow lines for realistic problem sizes. We propose to use recurrent neural networks to determine the long-term throughput of such flow lines enabling us to evaluate production systems of flexible size. Our results show that the throughput can be determined accurately and quickly via recurrent neural networks. Furthermore, we use this new evaluation procedure as a building block to optimize this type of flow line using gradient and local search techniques.",
keywords = "Buffer allocation, C45, C61, Flow line, JEL classification, M11, Milk run, Neural network, Performance Evaluation",
author = "Insa S{\"u}dbeck and Julia Mindlina and Andr{\'e} Schnabel and Stefan Helber",
note = "Publisher Copyright: {\textcopyright} The Author(s) 2024.",
year = "2024",
month = jun,
doi = "10.1007/s41471-024-00183-5",
language = "English",
volume = "76",
pages = "267--291",
number = "2",

}

Download

TY - JOUR

T1 - Using Recurrent Neural Networks for the Performance Analysis and Optimization of Stochastic Milkrun-Supplied Flow Lines

AU - Südbeck, Insa

AU - Mindlina, Julia

AU - Schnabel, André

AU - Helber, Stefan

N1 - Publisher Copyright: © The Author(s) 2024.

PY - 2024/6

Y1 - 2024/6

N2 - Long-term throughput, as a key performance indicator of a stochastic flow line, is affected by numerous parameters describing the features of the flow line, such as processing time and buffer size. Fast and accurate evaluation methods for a given set of values for those parameters are a prerequisite to systematically optimize such a flow line. In this paper, we consider the case of a flow line with random processing times, limited buffer capacities and so-called milkruns that supply the machines with material parts that are required to perform, e.g., assembly operations on workpieces. In such a system, shortages in the supply of material parts can limit the performance of the flow line. Up to now, there are no accurate analytical approaches to quantify the complex interactions in such milkrun-supplied flow lines for realistic problem sizes. We propose to use recurrent neural networks to determine the long-term throughput of such flow lines enabling us to evaluate production systems of flexible size. Our results show that the throughput can be determined accurately and quickly via recurrent neural networks. Furthermore, we use this new evaluation procedure as a building block to optimize this type of flow line using gradient and local search techniques.

AB - Long-term throughput, as a key performance indicator of a stochastic flow line, is affected by numerous parameters describing the features of the flow line, such as processing time and buffer size. Fast and accurate evaluation methods for a given set of values for those parameters are a prerequisite to systematically optimize such a flow line. In this paper, we consider the case of a flow line with random processing times, limited buffer capacities and so-called milkruns that supply the machines with material parts that are required to perform, e.g., assembly operations on workpieces. In such a system, shortages in the supply of material parts can limit the performance of the flow line. Up to now, there are no accurate analytical approaches to quantify the complex interactions in such milkrun-supplied flow lines for realistic problem sizes. We propose to use recurrent neural networks to determine the long-term throughput of such flow lines enabling us to evaluate production systems of flexible size. Our results show that the throughput can be determined accurately and quickly via recurrent neural networks. Furthermore, we use this new evaluation procedure as a building block to optimize this type of flow line using gradient and local search techniques.

KW - Buffer allocation

KW - C45

KW - C61

KW - Flow line

KW - JEL classification

KW - M11

KW - Milk run

KW - Neural network

KW - Performance Evaluation

UR - http://www.scopus.com/inward/record.url?scp=85191755399&partnerID=8YFLogxK

U2 - 10.1007/s41471-024-00183-5

DO - 10.1007/s41471-024-00183-5

M3 - Article

AN - SCOPUS:85191755399

VL - 76

SP - 267

EP - 291

JO - Schmalenbach Journal of Business Research

JF - Schmalenbach Journal of Business Research

SN - 0341-2687

IS - 2

ER -