基于机器学习的非均质材料特性序中监控,未来可应用于增材制造领域

Q2 Engineering Journal of Machine Engineering Pub Date : 2024-05-13 DOI:10.36897/jme/187872
André Jaquemod, Marijana Palalić, Kamil Güzel, H. Möhring
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引用次数: 0

摘要

由于不同缺陷的形成,快速成型部件往往显示出部件质量不足。气孔等缺陷会导致材料不均匀和结构完整性问题。在加工过程中集成过程监控功能有助于识别制造过程中的不均匀性特征,这对于工艺调整至关重要。在部件中加入人工缺陷有可能以更可控的方式模拟和研究真实世界中缺陷的行为。本研究强调了在加工操作过程中进行切削力和振动监测的潜在益处,目的是深入了解加工行为以及人工缺陷对加工过程的影响。异常情况的检测依赖于识别可能表明刀具与缺陷之间相互作用的力曲线或振动模式的变化。机器学习算法用于处理和解释收集到的数据。这些算法经过训练,能够识别模式、异常或预期行为偏差,有助于评估检测到的缺陷对加工过程和由此产生的部件质量的影响。本研究的主要目的是为加强非均质材料加工过程的质量控制做出贡献。
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In-Process Monitoring of Inhomogeneous Material Characteristics Based on Machine Learning for Future Application in Additive Manufacturing
Additively manufactured components often show insufficient component quality due to the formation of different defects. Defects such as porosity result in material inhomogeneity and structural integrity issues. The integration of in-process monitoring in machining processes facilitates the identification of inhomogeneity characteristics in manufacturing, which is crucial for process adaptation. The incorporation of artificial defects in components has the potential to mimic and study the behaviour of real-world defects in a more controlled way. This study highlights the potential benefits of cutting force and vibration monitoring during machining operations with the goal of providing insights into the machining behaviours and the effects of the artificially introduced defects on the process. Detection of anomalies relies on identifying changes in force profiles or vibration patterns that might indicate the interaction between the tool and the defect. Machine learning algorithms were used to process and interpret the collected data. The algorithms are trained to recognize patterns, anomalies, or deviations from expected behaviours, which can aid in evaluating the effect of detected defects on the machining process and the resultant component quality. The main objective of this study is to contribute to enhancing quality control of machining processes for inhomogeneous materials.
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来源期刊
Journal of Machine Engineering
Journal of Machine Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.70
自引率
0.00%
发文量
36
审稿时长
25 weeks
期刊介绍: ournal of Machine Engineering is a scientific journal devoted to current issues of design and manufacturing - aided by innovative computer techniques and state-of-the-art computer systems - of products which meet the demands of the current global market. It favours solutions harmonizing with the up-to-date manufacturing strategies, the quality requirements and the needs of design, planning, scheduling and production process management. The Journal'' s subject matter also covers the design and operation of high efficient, precision, process machines. The Journal is a continuator of Machine Engineering Publisher for five years. The Journal appears quarterly, with a circulation of 100 copies, with each issue devoted entirely to a different topic. The papers are carefully selected and reviewed by distinguished world famous scientists and practitioners. The authors of the publications are eminent specialists from all over the world and Poland. Journal of Machine Engineering provides the best assistance to factories and universities. It enables factories to solve their difficult problems and manufacture good products at a low cost and fast rate. It enables educators to update their teaching and scientists to deepen their knowledge and pursue their research in the right direction.
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