Title: Virtual STFI Sensor
1Virtual STFI Sensor
Willard Reed, Process Control Supervisor
Weyerhaeuser Company
2VIRTUAL STFI SENSOR
- Outline
- Objective Predict Strength
- Background
- STFI -- What is it?
- No.1 Machine process
- Experience with On-Line Strength Measurement
- Neural Net model
- Results of study
- Next Steps
3VIRTUAL STFI SENSOR
- Objective Predict Strength
- Key bets
- Knowing the strength can improve operators
ability to reduce cull and optimize speed. - If it can be predicted, it can be automatically
controlled.
4VIRTUAL STFI SENSOR
- Background
- What is STFI ?
- It is the principle strength property.
- It is typically measured on reel turn-up by the
Paper Test Lab. - Operators must wait 15-minutes before test
results are available. - Operators use Jet/Wire and refining to maintain.
5VIRTUAL STFI SENSOR
- Background
- No.1 Machine Process
- Produce Linerboard 35-69 lb./MSF
- Rule 41 grades (mullen)
- Alternate Rule grades (STFI)
- 3-Ply sheet with 2 headboxes
- 6 stages of refining
- 5-30 recycled fiber (OCC)
6VIRTUAL STFI SENSOR
7VIRTUAL STFI SENSOR
- Background
- Experience with On-Line Measurement
- Worked on early generation gauge.
- Sold by the gauge for nearly 2-years
- Value was the information gained by the operator,
i.e. faster testing. - Use of the virtual sensor was intended to help
reconcile calibration issues with the gauge.
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- Process Characteristics
- Non-Linear
- example --- impact of mid-hole refiner on STFI
may be different at high HPd/T versus low HPd/T. - Interactions amongst many variables
- example --- impact of mid-tickler refiner may
vary at different levels of OCC and broke - The interactions made it nearly impossible to
gain information from traditional bump tests.
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- Pavilion Predicter
- Predicted STFI is calculated every 5-minutes for
display to operator. - Model is run in a separate computer and result
(STFI) is written into PI database. - Monitor model performance with X-Y and SQC tools
in PI.
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- Neural Net Model
- Using 17 process measurements, including
- total head
- refiner specific energy (HPd/T)
- couch vacuum
- headbox flow
- OCC broke flows
- The process variables have remained unchanged,
but their relative impact varies from month to
month.
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- Results of Study
- Quickly achieved same accuracy as the on-line
gauge. - Model stability has been good. Re-trained once in
8-months. - Model step-outs still occur. Reasons unknown.
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Trends of lab test model.
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Overall difference between lab test model.
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Model fit to lab test for all grades.
On the trained data, R² ?0.95
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Stability of model prediction.
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Model prediction compared to TAPPI test variation.
17VIRTUAL STFI SENSOR
Forecasting STFI 30-minutes ahead.
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- Lessons Learned
- Understand the statistical properties of the
modeled variable, such as sample and test errors. - Look for system changes to facilitate change. For
example, use of SPC/SQC tools. - Change, even for the better, is hard for
operators to accept.
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- Next Steps
- Work with the operators to make model more
useful. - Improve performance of the 30-minute prediction.
- Re-train model after changes to refiner plates.
- Assess opportunity for closed loop control.
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Questions ?
21Study of CONCORA
VIRTUAL STFI SENSOR
Collected 85 variables from PI system for 3
months.
22Neural Net Model
VIRTUAL STFI SENSOR
Formula using
CONCORA
These variables are used to calculate
CONCORA, not for control.
23Prediction Results for 26-lb.
VIRTUAL STFI SENSOR
3-month study
24Residual Analysis Results
VIRTUAL STFI SENSOR
Predicted is within 2.5 of test 95 of the
time.
25Results of Feasibility Study
VIRTUAL STFI SENSOR
- A neural net model has been built using process
data from 3 months operation. - CONCORA was predicted within 2.5 approximately
95 of the time.