Energy consumption forecasting for laser manufacturing of large artifacts based on fusionable transfer learning.

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Visual Computing for Industry Biomedicine and Art Pub Date : 2024-12-02 DOI:10.1186/s42492-024-00178-3
Linxuan Wang, Jinghua Xu, Shuyou Zhang, Jianrong Tan, Shaomei Fei, Xuezhi Shi, Jihong Pang, Sheng Luo
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Abstract

This study presents an energy consumption (EC) forecasting method for laser melting manufacturing of metal artifacts based on fusionable transfer learning (FTL). To predict the EC of manufacturing products, particularly from scale-down to scale-up, a general paradigm was first developed by categorizing the overall process into three main sub-steps. The operating electrical power was further formulated as a combinatorial function, based on which an operator learning network was adopted to fit the nonlinear relations between the fabricating arguments and EC. Parallel-arranged networks were constructed to investigate the impacts of fabrication variables and devices on power. Considering the interconnections among these factors, the outputs of the neural networks were blended and fused to jointly predict the electrical power. Most innovatively, large artifacts can be decomposed into time-dependent laser-scanning trajectories, which can be further transformed into fusionable information via neural networks, inspired by large language model. Accordingly, transfer learning can deal with either scale-down or scale-up forecasting, namely, FTL with scalability within artifact structures. The effectiveness of the proposed FTL was verified through physical fabrication experiments via laser powder bed fusion. The relative error of the average and overall EC predictions based on FTL was maintained below 0.83%. The melting fusion quality was examined using metallographic diagrams. The proposed FTL framework can forecast the EC of scaled structures, which is particularly helpful in price estimation and quotation of large metal products towards carbon peaking and carbon neutrality.

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基于可融合迁移学习的大型工件激光加工能耗预测。
提出了一种基于可融合迁移学习(FTL)的金属工件激光熔化加工能耗预测方法。为了预测制造产品的EC,特别是从按比例缩小到按比例扩大,首先通过将整个过程分为三个主要子步骤,开发了一个一般范例。在此基础上,采用算子学习网络拟合加工参数与电导率之间的非线性关系。构建了并联排列的网络,研究了制造变量和设备对功率的影响。考虑到这些因素之间的相互联系,将神经网络的输出进行混合融合,共同预测电功率。最具创新性的是,大型工件可以分解为与时间相关的激光扫描轨迹,这些轨迹可以进一步通过神经网络转化为可融合的信息,并受到大型语言模型的启发。因此,迁移学习可以处理按比例缩小或按比例扩大的预测,即在工件结构中具有可伸缩性的FTL。通过激光粉末床融合物理制造实验,验证了该超光速装置的有效性。基于超光速的平均和总体EC预测的相对误差保持在0.83%以下。用金相图对熔炼质量进行了检验。所提出的FTL框架可以预测规模结构的EC,特别有助于大型金属产品的碳峰值和碳中和价格估计和报价。
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