Cristin-resultat-ID: 1992693
Sist endret: 28. januar 2022, 15:07
NVI-rapporteringsår: 2021
Resultat
Vitenskapelig Kapittel/Artikkel/Konferanseartikkel
2021

On The Reliability Of Machine Learning Applications In Manufacturing Environments

Bidragsytere:
  • Nicolas Jourdan
  • Sagar Sen
  • Erik Johannes Husom
  • Enrique Garcia-Ceja
  • Tobias Biegel og
  • Joachim Metternich

Bok

NeurIPS 2021 Workshop on Distribution Shifts (DistShift): Connecting Methods and Applications
ISBN:
  • 0-000-00001-9

Utgiver

Neural Information Processing Systems
NVI-nivå 1

Om resultatet

Vitenskapelig Kapittel/Artikkel/Konferanseartikkel
Publiseringsår: 2021
Antall sider: 7
ISBN:
  • 0-000-00001-9
Open Access

Klassifisering

Fagfelt (NPI)

Fagfelt: IKT
- Fagområde: Realfag og teknologi

Beskrivelse Beskrivelse

Tittel

On The Reliability Of Machine Learning Applications In Manufacturing Environments

Sammendrag

The increasing deployment of advanced digital technologies such as Internet of Things (IoT) devices and Cyber-Physical Systems (CPS) in industrial environments is enabling the productive use of machine learning (ML) algorithms in the manufacturing domain. As ML applications transcend from research to productive use in real-world industrial environments, the question of reliability arises. Since the majority of ML models are trained and evaluated on static datasets, continuous online monitoring of their performance is required to build reliable systems. Furthermore, concept and sensor drift can lead to degrading accuracy of the algorithm over time, thus compromising safety, acceptance and economics if undetected and not properly addressed. In this work, we exemplarily highlight the severity of the issue on a publicly available industrial dataset which was recorded over the course of 36 months and explain possible sources of drift. We assess the robustness of ML algorithms commonly used in manufacturing and show, that the accuracy strongly declines with increasing drift for all tested algorithms. We further investigate how uncertainty estimation may be leveraged for online performance estimation as well as drift detection as a first step towards continually learning applications. The results indicate, that ensemble algorithms like random forests show the least decay of confidence calibration under drift.

Bidragsytere

Nicolas Jourdan

  • Tilknyttet:
    Forfatter
    ved Technische Universität Darmstadt

Sagar Sen

  • Tilknyttet:
    Forfatter
    ved Sustainable Communication Technologies ved SINTEF AS

Erik Johannes Husom

  • Tilknyttet:
    Forfatter
    ved Sustainable Communication Technologies ved SINTEF AS
Inaktiv cristin-person

Enrique Alejandro Garcia Ceja

Bidragsyterens navn vises på dette resultatet som Enrique Garcia-Ceja
  • Tilknyttet:
    Forfatter
    ved Sustainable Communication Technologies ved SINTEF AS

Tobias Biegel

  • Tilknyttet:
    Forfatter
    ved Technische Universität Darmstadt
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Resultatet er en del av Resultatet er en del av

NeurIPS 2021 Workshop on Distribution Shifts (DistShift): Connecting Methods and Applications.

NeurIPS, 2021. 2021, Neural Information Processing Systems. Vitenskapelig antologi/Konferanseserie
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