2021
DOI: 10.21203/rs.3.rs-955412/v1
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Transfer Learning Based Surface Roughness Prediction Integrating Tool Wear Under Variable Cutting Parameters

Abstract: The monitoring of surface quality in machining is of great practical significance for the reliability and life of high-value products such as rocket, spacecraft and aircraft, particularly for their assembly interfaces of these products. Surface roughness is an important metric to evaluate the surface quality. The current research of online surface roughness prediction has the following limitations. The effect of the varying tool wear on the surface roughness is rarely considered in machining. In addition, the … Show more

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