Research on Lifespan Prediction Methods Using Ultrasonic Microimaging for Electronic Packaging
Abstract
:1. Introduction
2. Materials and Methods
- Experimental Data Acquisition: Four test boards were designed and manufactured, each equipped with 14 flip-chip packages mounted on a flame retardant type 4 substrate (FR-4). The boards underwent accelerated thermal cycling lifespan experiments until the chips detached. During the experiments, ultrasonic images of the flip chip were periodically acquired using the C-scan mode of an acoustic microscope, recording changes in their internal structure.To ensure the reliability and robustness of this study, a large-scale experimental dataset was collected. A total of 4 test boards were designed and fabricated, each equipped with 14 flip-chip packages, resulting in 56 flip chips for the experiments. Each test board contained 109 solder joints, and all samples underwent accelerated thermal cycling aging tests. During the experiment, data were collected every 4 thermal cycles, resulting in over 490 sampling points. The thermal cycling experiments lasted for a total of 2126 h over one year, producing more than 2 TB of experimental data. This dataset includes 3750 ultrasonic C-scan images of flip chips and over 400,000 solder joint images, providing a robust foundation for data analysis and model development.
- Ultrasonic Image Data Processing and Feature Extraction: The collected ultrasonic C-scan images were processed to ensure the consistency, stability, and accuracy of the image data. The mean intensity within the solder joint images was extracted as a key feature indicative of defects, which correlates with the solder joint’s fatigue stress and number of cycles, providing a basis for subsequent analysis.
- Failure Modeling and Lifespan Prediction: Based on the features of the solder joint images, a failure curve correlating the image features with the number of cycles was constructed. A cumulative failure probability model for individual solder joints was established using the Anderson–Darling test. This model was validated across multiple samples, demonstrating its accuracy and robustness in predicting the lifespan of solder joints. The model allows for the classification of solder joint health states, enabling lifespan prediction.
3. Ultrasonic Image Data Processing and Feature Extraction
3.1. Denoising of Flip-Chip Ultrasonic Image
3.2. Dynamic Normalization of Flip-Chip Ultrasonic Images
3.3. Intensity Compensation of Flip-Chip Ultrasonic Images
3.4. Flip-Chip Image Calibration and Solder Joint Image Segmentation
3.5. Feature Extraction of Solder Joint Image
4. Solder Joint Failure Modeling and Lifespan Prediction
4.1. Failure Modeling Based on Cumulative Failure Probability
4.2. Validation of Solder Joint Failure Model Based on Positional Differences
4.3. Solder Joint Lifespan Prediction
- 1.
- Healthy and Defect-Free Solder Joint Stage (from cycle 0 to cycle A of the accelerated thermal cycling test):
- 2.
- Defective but Non-Failure Solder Joint Stage (from cycle A to cycle B of the accelerated thermal cycling test):
- 3.
- Failed Solder Joint Stage (after cycle B of the accelerated thermal cycling test):
4.4. Simulation Validation
5. Discussion of Results
6. Conclusions
- (1)
- A novel non-destructive approach was established to monitor solder joint degradation throughout the life cycle, overcoming the limitations of conventional destructive methods and enabling continuous data collection under accelerated thermal cycling conditions.
- (2)
- The propagation mechanisms of ultrasound in electronic packaging were analyzed, establishing a quantitative relationship between ultrasonic image intensity and internal defects. This innovation enables precise tracking of defect evolution and bridges imaging data with failure mechanisms.
- (3)
- Image processing techniques, including denoising, normalization, and intensity compensation, were enhanced to address system noise, overexposure, and defocusing. These improvements significantly increased data quality, ensuring reliable feature extraction for failure modeling.
- (4)
- A robust failure model based on cumulative failure probability was developed, effectively capturing position-dependent failure behaviors. This model accurately predicts solder joint lifespans and resolves challenges related to stress concentration and thermal gradient effects.
- (5)
- Validation through extensive experimental data and comparison with simulation results confirmed the accuracy and reliability of the proposed method, demonstrating its potential for practical application in reliability assessment and predictive maintenance.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Distribution Function | AD | p |
---|---|---|
Normal | 3.416 | <0.005 |
Exponential normal | 6.402 | <0.005 |
Index | 7.043 | <0.003 |
Weibull | 5.212 | <0.010 |
3-parameter Weibull | 2.790 | <0.005 |
Gamma | 5.451 | <0.005 |
Logistic | 3.087 | <0.005 |
2-parameter Weibull cumulative | 0.987 | 0.526 |
Solder Joint on Flip Chip 2 of Sample 1 | ||
---|---|---|
Solder joint 4 | 74.22 | 1.24 |
Solder joint 42 | 81.18 | 1.26 |
Solder joint 69 | 84.45 | 1.27 |
Solder joint 102 | 87.65 | 1.34 |
Test Sample Number | |
---|---|
Sample 1 | 0.23 |
Sample 2 | 0.24 |
Sample 3 | 0.20 |
Sample 4 | 0.20 |
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Wang, H.; Ma, H.; Zhang, G.; Chen, Y.; Dong, M. Research on Lifespan Prediction Methods Using Ultrasonic Microimaging for Electronic Packaging. Appl. Sci. 2025, 15, 3246. https://doi.org/10.3390/app15063246
Wang H, Ma H, Zhang G, Chen Y, Dong M. Research on Lifespan Prediction Methods Using Ultrasonic Microimaging for Electronic Packaging. Applied Sciences. 2025; 15(6):3246. https://doi.org/10.3390/app15063246
Chicago/Turabian StyleWang, Haotian, Hongwei Ma, Guangming Zhang, Yuan Chen, and Ming Dong. 2025. "Research on Lifespan Prediction Methods Using Ultrasonic Microimaging for Electronic Packaging" Applied Sciences 15, no. 6: 3246. https://doi.org/10.3390/app15063246
APA StyleWang, H., Ma, H., Zhang, G., Chen, Y., & Dong, M. (2025). Research on Lifespan Prediction Methods Using Ultrasonic Microimaging for Electronic Packaging. Applied Sciences, 15(6), 3246. https://doi.org/10.3390/app15063246