改进BP-AdaBoost模型在半导体质量预测中的应用

Liu Chang, Hua Rong
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引用次数: 3

摘要

半导体生产数据通常是复杂的、非线性的、高维的,传统的抽样后质量检验往往存在较大的误差,并会带来不良产品带来的经济损失。基于机器学习技术,本研究旨在建立适当的模型来提前预测半导体质量。根据实际生产需求,将BP神经网络与AdaBoost算法相结合,在对AdaBoost算法进行优化后,提出了一种新的BP- adqboost模型。对液晶显示器的生产数据进行了分析。然后对改进BP- adqboost模型、BP神经网络和未改进BP- adaboost模型的预测结果进行预测精度和可靠性比较。结果表明,改进后的BP-AdqBoost模型不仅提高了预测精度,而且增强了预测可靠性,对实际半导体生产具有实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of an Improved BP-AdaBoost Model in Semiconductor Quality Prediction
The semiconductor production data is typically complex, nonlinear and high-dimension, and the traditional post-sampling quality inspection often have large errors and will bring the economic losses caused by defective products. Based on machine learning technologies, this research is aimed to establish the proper model to predict semiconductor quality in advance. Based on the requirements of actual production, the BP neural network and AdaBoost algorithm are combined, and a new BP-AdqBoost model is proposed after optimizing the AdaBoost algorithm. The data of LCD Monitor production was analyzed. Then the improved BP-AdqBoost model, BP neural network, and the unmodified BP-AdaBoost prediction results are compared by prediction accuracy and reliability. The comparison shows that the improved BP-AdqBoost model can not only improve the prediction accuracy, but also strengthen the prediction reliability, which would be useful to the practical semiconductor production.
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