Reflow profiling with the aid of machine learning models

Yangyang Lai, Seungbae Park
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Abstract

Purpose This paper aims to propose a method to quickly set the heating zone temperatures and conveyor speed of the reflow oven. This novel approach intensely eases the trial and error in reflow profiling and is especially helpful when reflowing thick printed circuit boards (PCBs) with bulky components. Machine learning (ML) models can reduce the time required for profiling from at least half a day of trial and error to just 1 h. Design/methodology/approach A highly compact computational fluid dynamics (CFD) model was used to simulate the reflow process, exhibiting an error rate of less than 1.5%. Validated models were used to generate data for training regression models. By leveraging a set of experiment results, the unknown input factors (i.e. the heat capacities of the bulkiest component and PCB) can be determined inversely. The trained Gaussian process regression models are then used to perform virtual reflow optimization while allowing a 4°C tolerance for peak temperatures. Upon ensuring that the profiles are inside the safe zone, the corresponding reflow recipes can be implemented to set up the reflow oven. Findings ML algorithms can be used to interpolate sparse data and provide speedy responses to simulate the reflow profile. This proposed approach can effectively address optimization problems involving multiple factors. Practical implications The methodology used in this study can considerably reduce labor costs and time consumption associated with reflow profiling, which presently relies heavily on individual experience and skill. With the user interface and regression models used in this approach, reflow profiles can be swiftly simulated, facilitating iterative experiments and numerical modeling with great effectiveness. Smart reflow profiling has the potential to enhance quality control and increase throughput. Originality/value In this study, the employment of the ultimate compact CFD model eliminates the constraint of components’ configuration, as effective heat capacities are able to determine the temperature profiles of the component and PCB. The temperature profiles generated by the regression models are time-sequenced and in the same format as the CFD results. This approach considerably reduces the cost associated with training data, which is often a major challenge in the development of ML models.
借助机器学习模型的回流分析
目的提出一种快速设定回流烘箱加热区温度和输送速度的方法。这种新颖的方法极大地减少了回流分析中的试验和错误,特别是在回流带有笨重组件的厚印刷电路板(pcb)时特别有用。机器学习(ML)模型可以将分析所需的时间从至少半天的试错时间减少到只需1小时。设计/方法/方法使用高度紧凑的计算流体动力学(CFD)模型来模拟回流过程,其错误率低于1.5%。使用验证过的模型生成训练回归模型的数据。通过利用一组实验结果,未知的输入因素(即体积最大的组件和PCB的热容)可以反向确定。然后使用训练好的高斯过程回归模型执行虚拟回流优化,同时允许峰值温度公差为4°C。在确保型材在安全区内后,可执行相应的回流配方来设置回流炉。FindingsML算法可用于插值稀疏数据,并提供快速响应来模拟回流剖面。该方法可以有效地解决涉及多因素的优化问题。实际意义本研究中使用的方法可以大大减少与回流分析相关的劳动力成本和时间消耗,目前回流分析在很大程度上依赖于个人经验和技能。利用该方法中使用的用户界面和回归模型,可以快速模拟回流曲线,促进迭代实验和数值建模,具有很高的效率。智能回流分析具有加强质量控制和提高产量的潜力。独创性/价值在本研究中,由于有效热容能够确定组件和PCB的温度分布,因此采用终极紧凑CFD模型消除了组件配置的约束。由回归模型生成的温度分布是时间序列的,格式与CFD结果相同。这种方法大大降低了与训练数据相关的成本,这通常是ML模型开发中的主要挑战。
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