In-Situ Monitoring of Additive Manufacturing Process Based on Vibration Data

Yantong Zhao, Yongxiang Li, Wen Wang, Gong Wang
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引用次数: 1

Abstract

With the increasing application of additive manufacturing in various fields, it is particularly important to monitor the manufacturing process, product quality, and printer status aiming at obtaining high-quality manufactured products. This paper introduces a kind of additive manufacturing process monitoring based on the vibration data of the fused deposition modeling(FDM). The random forest model has been applied to identify the normal state and filament jam state of the printer, which could achieve an accuracy rate of 94 %. The experimental results demonstrate that the proposed method can accurately identify the mechanical faults in the process of additive manufacturing, and effectively monitor the machine health and ensure the fabricated parts quality.
基于振动数据的增材制造过程现场监测
随着增材制造在各个领域的应用越来越广泛,为了获得高质量的制造产品,对制造过程、产品质量和打印机状态进行监控显得尤为重要。介绍了一种基于熔融沉积建模(FDM)振动数据的增材制造过程监测方法。将随机森林模型应用于打印机正常状态和卡纸状态的识别,准确率可达94%。实验结果表明,该方法能够准确识别增材制造过程中的机械故障,有效地监测机器健康状况,保证制造零件的质量。
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