Title
Data Analytics for Industrial Process Improvement A Vision Paper
Abstract
Nowadays, manufacturers are increasingly able to collect and analyze data from sensors on manufacturing equipment, and also from other types of machinery, such as smart meters, pipelines, delivery trucks, etc. Nevertheless, many manufacturers are not yet ready to use analytics beyond a tool to track historical performance. However, just knowing what happened and why it happened does not use the full potential of the data and is not sufficient anymore. Manufacturers need to know what happens next and what actions to take in order to get optimal results. It is a challenge to develop advanced analytics techniques including machine learning and predictive algorithms to transform data into relevant information for gaining useful insights to take appropriate action. In the proposed research we target new analytic methods and tools that make insights not only more understandable but also actionable by decision makers. The latter requires that the results of data analytics have an immediate effect on the processes of the manufacturer. Thereby, data analytics has the potential to improve industrial processes by reducing maintenance costs, avoiding equipment failures and improving business operations. Accordingly, the overall objective of this project is to develop a set of tools - including algorithms, analytic machinery, planning approaches and visualizations - for industrial process improvements based on data analytics.
Year
DOI
Venue
2018
10.1109/CBI.2018.10051
2018 IEEE 20th Conference on Business Informatics (CBI)
Keywords
Field
DocType
Data Analytics,Visual Analytics,Process Management,Industry 4.0
Data science,Data modeling,Data analysis,Computer science,Predictive analytics,Visual analytics,Automation,Need to know,Analytics,Industry 4.0
Conference
Volume
ISSN
ISBN
02
2378-1963
978-1-5386-7017-0
Citations 
PageRank 
References 
0
0.34
0
Authors
17
Name
Order
Citations
PageRank
Stefan Thalmann17415.18
Juergen Mangler27611.75
Tobias Schreck31854123.28
Christian Huemer435371.56
Marc Streit554928.91
Florian Pauker600.34
Georg Weichhart715719.20
Stefan Schulte821322.62
Christian Kittl900.34
Christoph Pollak1000.34
Matej Vukovic1100.34
Gerti Kappel121575349.41
Milot Gashi1300.34
Stefanie Rinderle-Ma141323103.54
Josef Suschnigg1500.34
Nikolina Jekic1600.34
Stefanie N. Lindstaedt1754461.48