Risk management on machine defects at PT, yoska prima inti with reality charting by apollo root cause analysis and defect forecasting by arima
Abstract
Machine defect has been a critical problem which has huge economic impact. Therefore,
machine defect forecasting is necessary to be considered due to its importance. However,
several companies neglect the need of machine’s defect forecasting. This research
analyzed the machine defects historical data of PT. Yoska Prima Inti for root cause
analysis using Apollo RCA and to do defect forecasting using ARIMA model. The tools
that used for the data analysis are Reality Charting for Apollo RCA and XLSTAT for
ARIMA modelling. The data were taken from historical data of 2016 – 2018. The defect
forecasting is being conducted twice to see the effectiveness of risk control
implementation. The modelling approach of ARIMA itself is following Box-Jenkins
approach, which is started with model identification, parameter estimation, and model
verification. The significance level used for the whole calculations is 0.05. There are also
several tests being done, such as stationarity test, white noise test, normality test, and
trend test. The results of this research are divided into two results. The first result is related
with root cause analysis, which identified that there are twelve problems occurs during
the production from 2016 until 2018. The analysis also results in the discovery of major
causes and the possible solutions to mitigate the causes. The second result is a result
related to the ARIMA defect forecasting. The forecasting is conducted twice, before and
after defect mitigation. The result shows that the forecasted defect frequency to occur
before defect mitigation is 2 until 3 defects for each month. However, the forecasted
defect frequency to occur after risk mitigation is 1 until 2 defects each month. The
effectiveness measured for the implementation of defect mitigation is 75% to obtain zero
defect occurrence.
Collections
- Industrial Engineering [2224]