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SemFE: Facilitating ML Pipeline Development with Semantics

Published: 19 October 2020 Publication History

Abstract

Machine learning (ML) based data analysis has attracted an increasing attention in the manufacturing industry, however, many challenges hamper their wide spread adoption. The main challenges are the high costs of labour-intensive data preparation from diverse sources and processes, the asymmetrical backgrounds of the experts involved in manufacturing analyses that impede efficient communication between them, and the lack of generalisability of ML models tailored to specific applications. Our semantically enhanced ML pipeline, SemFE, with feature engineering addresses these challenges, serving as a bridge to bring the endeavours of experts together, and making data science accessible to non-ML-experts. SemFE relies on ontologies for discrete manufacturing monitoring that encapsulate domain and ML knowledge; it has five novel semantic modules for automation of ML-pipeline development and user-friendly GUIs. The demo attendees will be able to use our system to build manufacturing monitoring ML pipelines, and to design their own pipelines with minimal prior knowledge of machine learning.

Supplementary Material

MP4 File (3340531.3417436.mp4)
Semantically enhancing machine learning pipeline based on Feature Engineering for quality monitoring in electric resistance welding processes in automotive industry

References

[1]
Franz Baader, Diego Calvanese, Deborah McGuinness, et almbox. 2003. The description logic handbook: Theory, implementation and applications.
[2]
Sujeet Chand and Jim Davis. 2010. What is smart manufacturing. Time Magazine Wrapper, Vol. 7 (2010), 28--33.
[3]
DIN. 2004. EN14610:2004 Welding and Allied Processes - Definitions of Metal Welding Processes; Trilingual Version. German Standards, Vol. 14610 (2004).
[4]
DVS. 2016. Widerstandspunktschweißen von Stählen bis 3 mm Einzeldicke -- Konstruktion und Berechnung. Technical Report.
[5]
U. Fayyad, G. Piatetsky-Shapiro, and P. Smyth. 1996. From data mining to knowledge discovery in databases. AI Magazine, Vol. 17, 3 (1996), 37--37.
[6]
Pascal Hitzler et almbox. 2009. OWL 2 web ontology language primer. W3C Recommendation, Vol. 27, 1 (2009), 123.
[7]
Ian Horrocks, Martin Giese, Evgeny Kharlamov, and Arild Waaler. 2016. Using semantic technology to tame the data variety challenge. IEEE Internet Comput., Vol. 20, 6 (2016), 62--66.
[8]
ISO. 2004. Resistance welding -- Procedures for determining the weldability lobe for resistance spot, projection and seam welding. Standard. ISO, Geneva, CH.
[9]
Henning Kagermann. 2015. Change through digitization -- value creation in the age of industry 4.0. In Management of Permanent Change. 23--45.
[10]
Evgeny Kharlamov, Bernardo Cuenca Grau, Ernesto Jimé nez-Ruiz, Steffen Lamparter, Gulnar Mehdi, Martin Ringsquandl, Yavor Nenov, Stephan Grimm, Mikhail Roshchin, and Ian Horrocks. 2016. Capturing industrial information models with ontologies and constraints. In ISWC.
[11]
Evgeny Kharlamov, Dag Hovland, Martin G. Skjæveland, Dimitris Bilidas, Ernesto Jimé nez-Ruiz, Guohui Xiao, Ahmet Soylu, Davide Lanti, Martin Rezk, Dmitriy Zheleznyakov, Martin Giese, Hallstein Lie, Yannis E. Ioannidis, Yannis Kotidis, Manolis Koubarakis, and Arild Waaler. 2017a. Ontology based data access in statoil. J. Web Semant., Vol. 44 (2017), 3--36.
[12]
Evgeny Kharlamov, Yannis Kotidis, Theofilos Mailis, Christian Neuenstadt, Charalampos Nikolaou, Ö zgürL. Ö zcc ep, Christoforos Svingos, Dmitriy Zheleznyakov, Yannis E. Ioannidis, Steffen Lamparter, Ralf Mö ller, and Arild Waaler. 2019 a. An ontology-mediated analytics-aware approach to support monitoring and diagnostics of static and streaming data. J. Web Semant., Vol. 56 (2019), 30--55.
[13]
Evgeny Kharlamov, Theofilos Mailis, Gulnar Mehdi, Christian Neuenstadt, Özgür L.Özccep, Mikhail Roshchin, Nina Solomakhina, Ahmet Soylu, Christoforos Svingos, Sebastian Brandt, Martin Giese, Yannis E. Ioannidis, Steffen Lamparter, Ralf Möller, Yannis Kotidis, and Arild Waaler. 2017b. Semantic access to streaming and static data at Siemens. J. Web Semant., Vol. 44 (2017), 54--74.
[14]
Evgeny Kharlamov, Gulnar Mehdi, Ognjen Savkovic, Guohui Xiao, Elem Gü zel Kalayci, and Mikhail Roshchin. 2019 b. Semantically-enhanced rule-based diagnostics for industrial Internet of Things: The SDRL language and case study for Siemens trains and turbines. J. Web Semant., Vol. 56 (2019), 11--29.
[15]
Dmitriy Mikhaylov, Baifan Zhou, et almbox. 2019 a. ML aided phase retrieval algorithm for beam splitting with an LCoS-SLM. In Laser Resonators, Microresonators, and Beam Control XXI, Vol. 10904. 109041M.
[16]
Dmitriy Mikhaylov, Baifan Zhou, Thomas Kiedrowski, Ralf Mikut, and Andrés-Fabián Lasagni. 2019 b. High accuracy beam splitting using SLM combined with ML algorithms. Optics and Lasers in Engineering, Vol. 121 (2019), 227--235.
[17]
Ralf Mikut et almbox. 2006. Data mining in medical time series. Biomedizinische Technik, Vol. 51 (2006).
[18]
Carlos Ocampo-Martinez et almbox. 2019. Energy efficiency in discrete-manufacturing systems: insights, trends, and control strategies. Journal of Manufacturing Systems, Vol. 52 (2019), 131--145.
[19]
Martin Ringsquandl, Evgeny Kharlamov, Daria Stepanova, Marcel Hildebrandt, Steffen Lamparter, Raffaello Lepratti, Ian Horrocks, and Peer Kröger. 2018. Event-enhanced learning for KG completion. In ESWC.
[20]
Ahmet Soylu, Evgeny Kharlamov, Dmitriy Zheleznyakov, Ernesto Jiménez-Ruiz, Martin Giese, Martin G. Skjæveland, Dag Hovland, Rudolf Schlatte, Sebastian Brandt, Hallstein Lie, and Ian Horrocks. 2018. OptiqueVQS: A visual query system over ontologies for industry. Semantic Web, Vol. 9, 5 (2018), 627--660.
[21]
Yulia Svetashova, Baifan Zhou, Tim Pychynski, Stefan Schmidt, York Sure-Vetter, Ralf Mikut, and Evgeny Kharlamov. 2020. Ontology-enhanced machine learning: a Bosch use case of welding quality monitoring. In ISWC.
[22]
Thorsten Wuest et almbox. 2016. Machine Learning in Manufacturing: Advantages, Challenges, and Applications. Production & Manufacturing Research, Vol. 4 (2016).
[23]
Rui Zhao et almbox. 2019. DL and Its Applications to Machine Health Monitoring. MS&SP, Vol. 115 (2019).
[24]
Baifan Zhou et almbox. 2018. Comparison of ML approaches for time-series-based quality monitoring of RSW. AoDS, Series A (2018).
[25]
Baifan Zhou, Moncef Chioua, Margret Bauer, Jan Christoph Schlake, and Nina F Thornhill. 2019. Improving root cause analysis by detecting and removing transient changes in oscillatory time series with application to a 1,3-butadiene process. Industrial & Engineering Chemistry Research, Vol. 58 (2019), 11234--11250.

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cover image ACM Conferences
CIKM '20: Proceedings of the 29th ACM International Conference on Information & Knowledge Management
October 2020
3619 pages
ISBN:9781450368599
DOI:10.1145/3340531
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Published: 19 October 2020

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Author Tags

  1. discrete manufacturing
  2. machine learning
  3. quality monitoring
  4. semantic technology

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  • (2023)A Joint Study of the Challenges, Opportunities, and Roadmap of MLOps and AIOps: A Systematic SurveyACM Computing Surveys10.1145/362528956:4(1-30)Online publication date: 21-Oct-2023
  • (2022)Enhancing Knowledge Graph Generation with Ontology Reshaping – Bosch CaseThe Semantic Web: ESWC 2022 Satellite Events10.1007/978-3-031-11609-4_45(299-302)Online publication date: 29-May-2022
  • (2022)The Data Value Quest: A Holistic Semantic Approach at BoschThe Semantic Web: ESWC 2022 Satellite Events10.1007/978-3-031-11609-4_42(287-290)Online publication date: 29-May-2022
  • (2022)Towards Generalized Welding Ontology in Line with ISO and Knowledge Graph ConstructionThe Semantic Web: ESWC 2022 Satellite Events10.1007/978-3-031-11609-4_16(83-88)Online publication date: 29-May-2022
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  • (2021)Towards Ontology Reshaping for KG Generation with User-in-the-Loop: Applied to Bosch WeldingProceedings of the 10th International Joint Conference on Knowledge Graphs10.1145/3502223.3502243(145-150)Online publication date: 6-Dec-2021
  • (2021)Scaling Usability of ML Analytics with Knowledge Graphs: Exemplified with A Bosch Welding CaseProceedings of the 10th International Joint Conference on Knowledge Graphs10.1145/3502223.3502230(54-63)Online publication date: 6-Dec-2021
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