Predicting melt pool depth and grain length using multiple signatures from in-situ single camera two-wavelength imaging pyrometry for laser powder bed fusion

In laser powder bed fusion (LPBF), the in-situ process signatures are known to have a direct correlation with the microstructural properties of the solidified melt pool (MP). It is known that the MP cooling and heating rates, and laser processing parameters can critically determine the grain structu...

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Veröffentlicht in:Journal of materials processing technology 2022-10, Vol.308 (C), p.117724, Article 117724
Hauptverfasser: Vallabh, Chaitanya Krishna Prasad, Sridar, Soumya, Xiong, Wei, Zhao, Xiayun
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Sprache:eng
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Zusammenfassung:In laser powder bed fusion (LPBF), the in-situ process signatures are known to have a direct correlation with the microstructural properties of the solidified melt pool (MP). It is known that the MP cooling and heating rates, and laser processing parameters can critically determine the grain structure and thereby affect the part properties. The objective of this work is to study the feasibility of using in-process, high-speed imaging pyrometry for evaluating the solidified MP properties “below” the surface, such as depth and microstructural properties. To accomplish this, we employ an in-house single camera-based two-wavelength imaging pyrometry (STWIP) system for monitoring the printing of single-scan tracks with Inconel 718 on a commercial LPBF printer (EOS M290). The lab designed STWIP system is a coaxial high-speed (>10,000 fps) imaging system capable of monitoring MP temperature, morphology, and intensity profiles. The temperature measurements from STWIP are emissivity independent. The STWIP measured MP signatures of the printed tracks are correlated with the ex-situ microscopy characterized MP depth and the average grain lengths. From the data analysis, using support vector machine (SVM)-based regression models, we found that the MP temperature signatures are crucial for an accurate prediction of MP depth and the grain length, thus validating the novelty and necessity of the developed in-situ monitoring methods and analysis. •In-situ melt pool (MP) monitoring using a single camera based pyrometry system.•In-situ MP temperature and width measurements of single track prints.•Correlating in process MP signatures to ex-situ characterized MP depth and grain lengths.•Evaluation of solidified MP properties “below” the surface, using in-situ MP signatures.•MP temperature signatures are crucial for predicting MP depth and the grain lengths.
ISSN:0924-0136
1873-4774
DOI:10.1016/j.jmatprotec.2022.117724