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Predictive modelling of surface roughness in fused deposition modelling using data fusion

机译:使用数据融合融合沉积建模的表面粗糙度预测建模

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摘要

To realise high quality, additively manufactured parts, real-time process monitoring and advanced predictive modelling tools are crucial for accelerating quality assurance in additive manufacturing. While previous research has demonstrated the effectiveness of physics- and model-based diagnosis and prognosis for additive manufacturing, very little research has been reported on real-time monitoring and predictive modelling of the surface roughness of additively manufactured parts. This paper presents a data fusion approach to predicting surface roughness in fused deposition modelling (FDM) processes. The predictive models are trained using random forests (RFs), support vector regression (SVR), ridge regression (RR), and least absolute shrinkage and selection operator (LASSO). A real-time monitoring system is developed to monitor the health condition of a FDM machine in real-time using multiple sensors. RFs, SVR, RR, and LASSO are demonstrated on the condition monitoring data collected from these sensors. To integrate the data sources, a feature-level data fusion method is introduced. Experimental results have shown that the predictive models trained by the machine learning algorithms are capable of predicting the surface roughness of additively manufacturing parts with very high accuracy. The prediction accuracy can be further improved using the data fusion method.
机译:为了实现高质量,加剧制造的零件,实时过程监控和先进的预测建模工具对于加速加速添加剂制造的质量保证至关重要。虽然以前的研究表明了物理学和模型的诊断和预后对添加剂制造的有效性,但已经对瘦性制造部件的表面粗糙度的实时监测和预测建模报告了很少的研究。本文介绍了一种数据融合方法,以预测融合沉积建模(FDM)过程中的表面粗糙度。使用随机林(RFS),支持向量回归(SVR),脊回归(RR),以及最小的绝对收缩和选择操作员(套索),预测模型培训。开发了一个实时监控系统,以使用多个传感器实时监控FDM机器的健康状况。 RFS,SVR,RR和套索在从这些传感器中收集的状态监测数据上进行了说明。要集成数据源,介绍了一种特征级数据融合方法。实验结果表明,由机器学习算法训练的预测模型能够以非常高的精度预测瘦性地制造部件的表面粗糙度。使用数据融合方法可以进一步提高预测精度。

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