Process monitoring for material extrusion additive manufacturing: a state-of-the-art review

Progress in Additive Manufacturing - Tập 6 Số 4 - Trang 705-730 - 2021
Alexander Oleff1, Benjamin Küster1, Malte Stonis1, Ludger Overmeyer2
1Institut für Integrierte Produktion Hannover gGmbH, Hollerithallee 6, 30419 Hannover, Germany
2Leibniz University Hannover, Institute of Transport and Automation Technology, An der Universität 2, 30823, Garbsen, Germany

Tóm tắt

AbstractQualitative uncertainties are a key challenge for the further industrialization of additive manufacturing. To solve this challenge, methods for measuring the process states and properties of parts during additive manufacturing are essential. The subject of this review is in-situ process monitoring for material extrusion additive manufacturing. The objectives are, first, to quantify the research activity on this topic, second, to analyze the utilized technologies, and finally, to identify research gaps. Various databases were systematically searched for relevant publications and a total of 221 publications were analyzed in detail. The study demonstrated that the research activity in this field has been gaining importance. Numerous sensor technologies and analysis algorithms have been identified. Nonetheless, research gaps exist in topics such as optimized monitoring systems for industrial material extrusion facilities, inspection capabilities for additional quality characteristics, and standardization aspects. This literature review is the first to address process monitoring for material extrusion using a systematic and comprehensive approach.

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