An intelligent system for reflow oven temperature settings based on hybrid physics-machine learning model

IF 1.7 4区 材料科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Yangyang Lai, K. Pan, Yuqiao Cen, Junbo Yang, Chongyang Cai, Pengcheng Yin, Seungbae Park
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引用次数: 12

Abstract

Purpose This paper aims to provide the proper preset temperatures of the convection reflow oven when reflowing a printed circuit board (PCB) assembly with varied sizes of components simultaneously. Design/methodology/approach In this study, computational fluid dynamics modeling is used to simulate the reflow soldering process. The training data provided to the machine learning (ML) model is generated from a programmed system based on the physics model. Support vector regression and an artificial neural network are used to validate the accuracy of ML models. Findings Integrated physical and ML models synergistically can accurately predict reflow profiles of solder joints and alleviate the expense of repeated trials. Using this system, the reflow oven temperature settings to achieve the desired reflow profile can be obtained at substantially reduced computation cost. Practical implications The prediction of the reflow profile subjected to varied temperature settings of the reflow oven is beneficial to process engineers when reflowing bulky components. The study of reflowing a new PCB assembly can be started at the early stage of board design with no need for a physical profiling board prototype. Originality/value This study provides a smart solution to determine the optimal preset temperatures of the reflow oven, which is usually relied on experience. The hybrid physics–ML model providing accurate prediction with the significantly reduced expense is used in this application for the first time.
基于混合物理-机器学习模型的回流炉温度设置智能系统
目的研究不同尺寸的印刷电路板(PCB)组件同时回流时对流回流炉的预设温度。设计/方法/方法在本研究中,计算流体动力学模型被用于模拟回流焊接过程。提供给机器学习(ML)模型的训练数据是从基于物理模型的编程系统生成的。使用支持向量回归和人工神经网络来验证机器学习模型的准确性。综合物理模型和ML模型可以协同准确地预测焊点回流曲线,并减少重复试验的费用。使用该系统,可以在大大降低计算成本的情况下获得达到所需回流曲线的回流炉温度设置。实际意义预测回流炉不同温度设置下的回流曲线对工艺工程师在回流大块部件时是有益的。回流研究一个新的PCB组件可以在板设计的早期阶段开始,而不需要物理剖析板原型。独创性/价值本研究提供了一个智能的解决方案,以确定回流炉的最佳预设温度,这通常依赖于经验。在该应用中首次使用了混合物理- ml模型,该模型提供了准确的预测,同时显著降低了成本。
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来源期刊
Soldering & Surface Mount Technology
Soldering & Surface Mount Technology 工程技术-材料科学:综合
CiteScore
4.10
自引率
15.00%
发文量
30
审稿时长
>12 weeks
期刊介绍: Soldering & Surface Mount Technology seeks to make an important contribution to the advancement of research and application within the technical body of knowledge and expertise in this vital area. Soldering & Surface Mount Technology compliments its sister publications; Circuit World and Microelectronics International. The journal covers all aspects of SMT from alloys, pastes and fluxes, to reliability and environmental effects, and is currently providing an important dissemination route for new knowledge on lead-free solders and processes. The journal comprises a multidisciplinary study of the key materials and technologies used to assemble state of the art functional electronic devices. The key focus is on assembling devices and interconnecting components via soldering, whilst also embracing a broad range of related approaches.
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