DocumentCode
3746829
Title
Integrating data analytics and simulation methods to support manufacturing decision making
Author
Deogratias Kibira;Qais Hatim;Soundar Kumara;Guodong Shao
Author_Institution
Department of Industrial and Systems Engineering, Morgan State University, 1700 E Cold Spring Ln, Baltimore, MD 21251, USA
fYear
2015
Firstpage
2100
Lastpage
2111
Abstract
Modern manufacturing systems are installed with smart devices such as sensors that monitor system performance and collect data to manage uncertainties in their operations. However, multiple parameters and variables affect system performance, making it impossible for a human to make informed decisions without systematic methodologies and tools. Further, the large volume and variety of streaming data collected is beyond simulation analysis alone. Simulation models are run with well-prepared data. Novel approaches, combining different methods, are needed to use this data for making guided decisions. This paper proposes a methodology whereby parameters that most affect system performance are extracted from the data using data analytics methods. These parameters are used to develop scenarios for simulation inputs; system optimizations are performed on simulation data outputs. A case study of a machine shop demonstrates the proposed methodology. This paper also reviews candidate standards for data collection, simulation, and systems interfaces.
Keywords
"Analytical models","Manufacturing","Standards","Optimization"
Publisher
ieee
Conference_Titel
Winter Simulation Conference (WSC), 2015
Electronic_ISBN
1558-4305
Type
conf
DOI
10.1109/WSC.2015.7408324
Filename
7408324
Link To Document