Uncertainty quantification of machining simulations using an in situ emulator
@article{Gul2018UncertaintyQO, title={Uncertainty quantification of machining simulations using an in situ emulator}, author={Evren Gul and V. Roshan Joseph and Huan Yan and Shreyes N. Melkote}, journal={Journal of Quality Technology}, year={2018}, volume={50}, pages={253 - 261}, url={https://api.semanticscholar.org/CorpusID:126384652} }
A new approach is proposed to build an emulator for the user-specified levels of the qualitative factors and inside the local region defined by the input uncertainty distribution of the quantitative factors, using the simulations of two solid end milling processes.
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