Variation in the local thermal history during the Laser Powder Bed Fusion (LPBF) process in Additive Manufacturing (AM) can cause micropore defects, which add to the uncertainty of the mechanical properties (e.g., fatigue life, tensile strength) of the built materials. In-situ sensing has been proposed for monitoring the AM process to minimize defects, but successful minimization requires establishing a quantitative relationship between the sensing data and the porosity, which is particularly challenging with a large number of variables (e.g., laser speed, power, scan path, powder property). Physics-based modeling can simulate such an in-situ sensing-porosity relationship, but it is computationally costly. In this work, we develop Machine L...
Acoustic monitoring of laser powder bed fusion (LPBF) has shown a high sensitivity to stochastic def...
The detection of internal irregularities is crucial for quality assessment in metal-based additive m...
We developed and applied a novel approach for shape agnostic detection of multiscale flaws in laser ...
Local thermal history can significantly vary in parts during metal Additive Manufacturing (AM), lead...
Industry application of additive manufacturing demands strict in-process quality control procedures ...
This dissertation describes the development of advanced in-situ defect detection algorithms using an...
Recent studies in additive manufacturing (AM) monitoring techniques have focussed on the identificat...
Additive manufacturing (AM) has the potential to revolutionize the way products are designed and pro...
The goal of this research is the in-situ detection of flaw formation in metal parts made using the l...
The goal of this thesis is the prevention of flaw formation in laser powder bed fusion additive manu...
Metal Additive Manufacturing (AM) promises an era of highly flexible part production, replete with u...
Laser powder bed fusion (LPBF) currently faces challenges in consistency, complexity, and cost assoc...
One of the major challenges of implementing additive manufacturing (AM) processes for the purpose of...
Physics-informed machine learning is emerging through vast methodologies and in various applications...
In laser powder bed fusion (LPBF), melt pool instability can lead to the development of pores in pri...
Acoustic monitoring of laser powder bed fusion (LPBF) has shown a high sensitivity to stochastic def...
The detection of internal irregularities is crucial for quality assessment in metal-based additive m...
We developed and applied a novel approach for shape agnostic detection of multiscale flaws in laser ...
Local thermal history can significantly vary in parts during metal Additive Manufacturing (AM), lead...
Industry application of additive manufacturing demands strict in-process quality control procedures ...
This dissertation describes the development of advanced in-situ defect detection algorithms using an...
Recent studies in additive manufacturing (AM) monitoring techniques have focussed on the identificat...
Additive manufacturing (AM) has the potential to revolutionize the way products are designed and pro...
The goal of this research is the in-situ detection of flaw formation in metal parts made using the l...
The goal of this thesis is the prevention of flaw formation in laser powder bed fusion additive manu...
Metal Additive Manufacturing (AM) promises an era of highly flexible part production, replete with u...
Laser powder bed fusion (LPBF) currently faces challenges in consistency, complexity, and cost assoc...
One of the major challenges of implementing additive manufacturing (AM) processes for the purpose of...
Physics-informed machine learning is emerging through vast methodologies and in various applications...
In laser powder bed fusion (LPBF), melt pool instability can lead to the development of pores in pri...
Acoustic monitoring of laser powder bed fusion (LPBF) has shown a high sensitivity to stochastic def...
The detection of internal irregularities is crucial for quality assessment in metal-based additive m...
We developed and applied a novel approach for shape agnostic detection of multiscale flaws in laser ...