用人工神经网络方法预测焊点温度和电流密度

IF 1.7 4区 材料科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Yang Liu, Xin Xu, Shiqing Lv, Xuewei Zhao, Yuxiong Xue, Shuye Zhang, Xingji Li, Chaoyang Xing
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引用次数: 0

摘要

目的由于电子器件的小型化,通过焊点的电流密度增大,导致电迁移故障的发生,从而降低了电子器件的可靠性。本研究的目的是提出一种预测焊点温度和电流密度的有限元-人工神经网络方法,为焊点可靠性评估提供参考信息。设计方法通过有限元模拟研究了电子器件互连结构的温度分布和电流密度分布。在实验过程中,测量了焊点的实际温度,并对有限元模型进行了优化。通过改变焊点的高度、焊盘的直径和电流负载的大小,获得了大量的仿真数据来分析神经网络。利用这些数据对构建的神经网络进行训练、测试和优化。基于有限元模拟结果,电流更集中在焊点的角落,产生了大量的焦耳加热,导致局部温度升高。利用仿真结果对构建的神经网络进行训练、测试和优化。ANN 1用于预测焊点温度,预测准确率为96.9%,ANN 2用于预测焊点电流密度,预测准确率为93.4%。该方法可以有效地提高封装结构中温度和电流密度的估计效率。这种方法在包装领域很流行,并且可以将影响包装结构的热、机械和电学性能的其他因素引入模型中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temperature and current density prediction in solder joints using artificial neural network method

Purpose

Due to the miniaturization of electronic devices, the increased current density through solder joints leads to the occurrence of electromigration failure, thereby reducing the reliability of electronic devices. The purpose of this study is to propose a finite element-artificial neural network method for the prediction of temperature and current density of solder joints, and thus provide reference information for the reliability evaluation of solder joints.

Design/methodology/approach

The temperature distribution and current density distribution of the interconnect structure of electronic devices were investigated through finite element simulations. During the experimental process, the actual temperature of the solder joints was measured and was used to optimize the finite element model. A large amount of simulation data was obtained to analyze the neural network by varying the height of solder joints, the diameter of solder pads and the magnitude of current loads. The constructed neural network was trained, tested and optimized using this data.

Findings

Based on the finite element simulation results, the current is more concentrated in the corners of the solder joints, generating a significant amount of Joule heating, which leads to localized temperature rise. The constructed neural network is trained, tested and optimized using the simulation results. The ANN 1, used for predicting solder joint temperature, achieves a prediction accuracy of 96.9%, while the ANN 2, used for predicting solder joint current density, achieves a prediction accuracy of 93.4%.

Originality/value

The proposed method can effectively improve the estimation efficiency of temperature and current density in the packaging structure. This method prevails in the field of packaging, and other factors that affect the thermal, mechanical and electrical properties of the packaging structure can be introduced into the model.

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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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