Impact of Imperfect Artefacts and the Modus Operandi on Uncertainty Quantification Using Virtual Instruments
Abstract
:1. Introduction
2. Materials and Methods
2.1. Numerical Simulation Model
2.2. Dataset and Research Design
- Real measurement data of a measured sphere;
- Simulated data of the nominal measurement points;
- Simulated data of an imperfect sphere with a similar PV value—version 1;
- Simulated data of an imperfect sphere with a similar PV value—version 2.
3. Results
3.1. Uncertainty Calculation
3.2. Numerical Example Related to a Sphere with Form Deviation in a VCMM
3.3. Improved Method for Predicting Uncertainties with a VI
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Input Dataset | Uncertainty Sources | PV (nm) | u(PV) (nm) |
---|---|---|---|
Measured sphere | none | 310 | 0 |
Measured sphere | all | 313 | 15 |
Measured sphere | random | 310 | 6 |
Measured sphere | systematic | 313 | 14 |
Simulated perfect sphere | none | 0 | 0 |
Simulated perfect sphere | all | 47 | 9 |
Simulated perfect sphere | random | 16 | 2 |
Simulated perfect sphere | systematic | 44 | 9 |
Simulated imperfect sphere 1 | none | 310 | 0 |
Simulated imperfect sphere 1 | all | 310 | 19 |
Simulated imperfect sphere 1 | random | 310 | 6 |
Simulated imperfect sphere 1 | systematic | 310 | 13 |
Simulated imperfect sphere 2 | none | 310 | 0 |
Simulated imperfect sphere 2 | all | 311 | 16 |
Simulated imperfect sphere 2 | random | 311 | 10 |
Simulated imperfect sphere 2 | systematic | 311 | 15 |
Modus Operandi of VCMM | u(PV) (nm) |
---|---|
Uncertainty for real measurement data | 15 |
Predicted uncertainty based on nominal data | 10 |
Predicted uncertainty based on a single imperfect artefact (lowest value) | 7 |
Predicted uncertainty based on simulating a large number of imperfect artefacts (proposed approach) | 19 |
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Kok, G.; Wübbeler, G.; Elster, C. Impact of Imperfect Artefacts and the Modus Operandi on Uncertainty Quantification Using Virtual Instruments. Metrology 2022, 2, 311-319. https://doi.org/10.3390/metrology2020019
Kok G, Wübbeler G, Elster C. Impact of Imperfect Artefacts and the Modus Operandi on Uncertainty Quantification Using Virtual Instruments. Metrology. 2022; 2(2):311-319. https://doi.org/10.3390/metrology2020019
Chicago/Turabian StyleKok, Gertjan, Gerd Wübbeler, and Clemens Elster. 2022. "Impact of Imperfect Artefacts and the Modus Operandi on Uncertainty Quantification Using Virtual Instruments" Metrology 2, no. 2: 311-319. https://doi.org/10.3390/metrology2020019
APA StyleKok, G., Wübbeler, G., & Elster, C. (2022). Impact of Imperfect Artefacts and the Modus Operandi on Uncertainty Quantification Using Virtual Instruments. Metrology, 2(2), 311-319. https://doi.org/10.3390/metrology2020019