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A NEW APPROACH FOR ONLINE MONITORING OF ADDITIVE MANUFACTURING BASED ON ACOUSTIC EMISSION

机译:基于声发射的添加剂制造在线监测一种新方法

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摘要

Despite its recent popularity, additive manufacturing (AM) still faces many technical challenges for the insufficiency of process reliability, controllability, and product quality. To enhance the process repeatability, effective in-situ monitoring methods for AM processes are needed. In this study, an online monitoring method for AM process failure detection is proposed, where a-coustic emission (AE) is applied as the sensing technique. Its application to polymer material extrusion, also known as the technology of fused deposition modeling (FDM), is demonstrated. Experimental results show that the proposed monitoring method allows for the real time identification of major process failures. The occurring time of major failures and failure modes can be identified by analyzing the time- and frequency-domain features of AE hits respectively. A K-means clustering algorithm is applied to verify and demonstrate the classification procedure. The automated failure identification can reduce the waste of fabrication with enhanced machine intelligence.
机译:尽管最近的普及,但添加剂制造业(AM)仍然面临许多用于工艺可靠性,可控性和产品质量的不足的技术挑战。为了提高过程重复性,需要对AM过程的有效原位监测方法。在本研究中,提出了一种用于AM处理故障检测的在线监测方法,其中施加佐源发射(AE)作为传感技术。其对聚合物材料挤出的应用,也称为融合沉积建模(FDM)的技术。实验结果表明,建议的监测方法允许实时识别主要过程故障。可以通过分别分析AE HIT的时间和频域特征来识别主要故障和故障模式的发生时间。 k-means聚类算法应用于验证和演示分类过程。自动化故障识别可以通过增强的机智智能减少制造的浪费。

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