Sensitivity study of process parameters of wire arc additive manufacturing using probabilistic deep learning and uncertainty quantification

Thinh Quy-Duc Pham, Van-Xuan Tran
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Abstract

This study employs a deep learning (DL) based stochastic approach to comprehensively interpret the effects of current intensity and velocity variations on temperature evolutions and cooling rates in the wire arc additive manufacturing (WAAM) process of a thin wall. Uncertainty raised from process parameters, material properties, and environmental conditions significantly impacts the final product quality. Furthermore, understanding the relationship between the process and temperature evolution within the WAAM process is complex. This study contributes to quantifying the uncertainty to the final product quality, such as temperature evolutions and cooling rates via a fast and accurate DL-based surrogate model. This contribution helps to precise adjustments and optimizations to enhance the overall WAAM process. Initially, a DL-based surrogate model is constructed using data obtained from a high-fidelity validated finite element (FE) model, ensuring an impressive 99% accuracy compared to the FE model while reducing computational costs. Subsequently, probabilistic methods are used to characterize uncertainties in current intensity and velocity, and the Monte-Carlo method is applied for uncertainty propagation. The findings illustrate that small variations in the input parameters can lead to significant fluctuations in temperature evolutions. Additionally, a sensitivity analysis is conducted to precisely quantify the influence of each input parameter. Finally, an uncertainty reduction is performed to enhance the variation of cooling rate. In general, this study is expected to make precise adjustments and optimizations to enhance the overall WAAM process for better quality of printed piece.
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利用概率深度学习和不确定性量化对线弧增材制造工艺参数的敏感性研究
本研究采用了一种基于深度学习(DL)的随机方法,以全面解释线弧增材制造(WAAM)薄壁工艺中电流强度和速度变化对温度演变和冷却速率的影响。工艺参数、材料特性和环境条件带来的不确定性会严重影响最终产品质量。此外,了解 WAAM 工艺中工艺与温度演变之间的关系也很复杂。本研究通过基于 DL 的快速、精确代用模型,对最终产品质量的不确定性(如温度演变和冷却速率)进行了量化。这一贡献有助于进行精确调整和优化,以增强整个 WAAM 过程。首先,利用从高保真验证有限元(FE)模型中获得的数据构建了基于 DL 的代理模型,确保了与 FE 模型相比令人印象深刻的 99% 的准确性,同时降低了计算成本。随后,使用概率方法描述水流强度和流速的不确定性,并采用蒙特卡洛法进行不确定性传播。研究结果表明,输入参数的微小变化会导致温度演变的显著波动。此外,还进行了敏感性分析,以精确量化每个输入参数的影响。最后,还进行了不确定性还原,以增强冷却速率的变化。总之,这项研究有望进行精确的调整和优化,以增强整个 WAAM 工艺,从而提高印刷品的质量。
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