An integrated manufacturing platform, the law of sciencetechnology,industrial ecosystem - smart productionintelligent precision manufacturing with digital decision, AI modeling, big data governancekernel technologies
Summary | A self-improving thermal error compensation model is established by federated learning to improve performance under different ambient temperatures. The scenario is that the machine tools work in different ambient temperatures between different users. The cloud compensation model can keep absorbing compensation experience from each machine to improve its performance in different environments but without any private data leak. Individual users can also update the latest model parameters to improve the local compensation in different seasons or weather. The compensated root mean square error can be 6.93 µm with the ambient temperature variation over 8 ℃ from physical machine tool experimental measuring data. | ||
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Keyword | Thermal Compensation Ambient Temperatures Federated Learning Shared Model | ||
Research Project | An integrated manufacturing platform, the law of sciencetechnology,industrial ecosystem - smart productionintelligent precision manufacturing with digital decision, AI modeling, big data governancekernel technologies | ||
Research Team | Led by PI:Prof. Chen-Fu Chien, National Tsing Hua University |
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