2023
DOI: 10.1088/1361-651x/ad0e79
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Numerical simulation of nanosecond laser drilling of 316L stainless steel: addition of laser focus and analysis of manufacturing process

Junliang Zhao,
Chen Li,
Jing Wang

Abstract: A two-dimensional model of nanosecond laser drilling 316L stainless steel was established with the consideration of laser focus, which was indeed different from the original two-phase flow model without laser focus, especially in the temperature field, velocity field, surface morphology and hole depth. Simulation and experiment of drilling holes with different laser repetition frequencies (100 kHz, 50 kHz and 20 kHz) were carried out. The results show that manufacturing process could divide into three stages: … Show more

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“…The milling performance index is normalized according to the principle of "the smaller the better", and the larger the normalized value, the better the milling performance index. Therefore, a normalized value of 1 indicates the best results of the test [18]. The test data were normalized to be uniformly distributed, laying the foundation for gray correlation analysis of the data.…”
Section: Performance Metrics Data Normalization Processmentioning
confidence: 99%
“…The milling performance index is normalized according to the principle of "the smaller the better", and the larger the normalized value, the better the milling performance index. Therefore, a normalized value of 1 indicates the best results of the test [18]. The test data were normalized to be uniformly distributed, laying the foundation for gray correlation analysis of the data.…”
Section: Performance Metrics Data Normalization Processmentioning
confidence: 99%