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Marco Grasso

Researcher at Polytechnic University of Milan

Publications -  65
Citations -  1678

Marco Grasso is an academic researcher from Polytechnic University of Milan. The author has contributed to research in topics: Statistical process control & Computer science. The author has an hindex of 14, co-authored 59 publications receiving 1021 citations.

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Prescriptive Data-Analytical Modeling of Selective Laser Melting Processes for Accuracy Improvement

TL;DR: In this article, a prescriptive modeling approach is adopted to minimize geometrical deviations of built products through compensating computer aided design models, as opposed to changing process parameters, and an error decomposition and compensation scheme is developed to decouple the influence from different error components and to reduce the shape deviations caused by part geometry deviation, laser beam positioning error, and other location effects simultaneously via an integrated modeling and compensation framework.
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In-situ monitoring in L-PBF: Opportunities and challenges

TL;DR: The opportunities and challenges related to in-situ sensing and monitoring solutions for zero-defect and first-time-right AM processes are reviewed, with a special focus on metal Powder Bed Fusion (PBF) processes.
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Real-time detection of clustered events in video-imaging data with applications to additive manufacturing

TL;DR: The proposed approach works by decomposing the original spatio-temporal data into random natural events, sparse spatially clustered and temporally consistent anomalous events, and random noise and was applied to the analysis of high-sped video-imaging data to detect and locate local hot-spots during a metal additive manufacturing process.
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Empirical mode decomposition of pressure signal for health condition monitoring in waterjet cutting

TL;DR: In this paper, the suitability of the water pressure signal as a source of information to detect different kinds of fault that may affect both the cutting head and the UHP pump components is investigated.