PRODUCTION LOG DATA ANALYSIS FOR REJECT RATE PREDICTION AND WORKLOAD ESTIMATION
Year:
2018 (published)
DOI:
10.1109/WSC.2018.8632482
Open access:
Yes
Abstract:
The main focus of the research presented in this paper is to propose new methods for filtering and cleaning
large-scale production log data by applying statistical learning models. Successful application of the
methods in consideration of a production optimization and a simulation-based prediction framework for
decision support is presented through an industrial case study. Key parameters analysed in the
computational experiments are fluctuating reject rates that make capacity estimations on a shift basis
difficult to cope with. The most relevant features of simulation-based workload estimation are extracted
from the products’ final test log, which process has the greatest impact on the variance of workload
parameters.
SCI:
No
Kiemelt:
No
Pdf:
No
Place of publication: