A Knowledge Extraction Platform for Reproducible Decision-Support from Multi-Objective Optimization Data
Paper in proceeding, 2022

Simulation and optimization enables companies to take decision based on data, and allows prescriptive analysis of current and future production scenarios, creating a competitive edge. However, it can be difficult to visualize and extract knowledge from the large amounts of data generated by a many-objective optimization genetic algorithm, especially with conflicting objectives. Existing tools offer capabilities for extracting knowledge in the form of clusters, rules, and connections. Although powerful, most existing software is proprietary and is therefore difficult to obtain, modify, and deploy, as well as for facilitating a reproducible workflow. We propose an open-source web-based application using commonly available packages in the R programming language to extract knowledge from data generated from simulation-based optimization. This application is then verified by replicating the experimental methodology of a peer-reviewed paper on knowledge extraction. Finally, further work is also discussed, focusing on method improvements and reproducible results.

decision-support

knowledge extraction

industry 4.0

industrial optimization

multi-objective optimization

Author

Simon Lidberg

Volvo Group

University of Skövde

Marcus Frantzén

Chalmers, Industrial and Materials Science, Production Systems

Tehseen Aslam

University of Skövde

Amos H.C. Ng

University of Skövde

Advances in Transdisciplinary Engineering

Vol. 21 725-736
9781614994398 (ISBN)

10th Swedish Production Symposium, SPS 2022
Skövde, Sweden,

Subject Categories

Other Computer and Information Science

Software Engineering

Computer Science

DOI

10.3233/ATDE220191

More information

Latest update

7/25/2022