基于神经网络和遗传算法的纳米复合材料集成电容器制造优化

T. Thongvigitmanee, Gary S. May
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引用次数: 6

摘要

采用聚合物-陶瓷复合材料的薄膜集成电容器已开发用于下一代电子封装应用。为了获得高介电常数,研究了双峰陶瓷颗粒分布,以及表面活性剂修饰的颗粒和超声混合聚合物。本文提出了一个统计设计的实验,系统地表征了钛酸钡颗粒在环氧聚合物介质中以这种方式形成的积分电容器的介电常数和损耗正切。我们将这些量确定为陶瓷粒度、陶瓷在聚合物基体中的体积分数、聚合物固化时间、聚合物固化温度、表面活性剂的百分比、超声波混合时间和陶瓷表面改性球磨时间的函数。这些因素是通过一个需要32次运行的部分析因实验来检验的。进行进一步的实验,以生成流程建模所需的足够数据。为了开发这样的模型,我们训练神经网络来使用实验数据将变化建模为输入变量的函数。然后将这些模型用于使用遗传算法进行过程优化。使用这种方法,我们确定聚合物/陶瓷材料和工艺条件的适当组合,以实现理想的电性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of nanocomposite integral capacitor fabrication using neural networks and genetic algorithms
Thin film integral capacitors using polymer-ceramic composites have been developed for next-generation electronic packaging applications. To achieve a high dielectric constant, bimodal ceramic particle distributions, along with particles modified by a surfactant and mixed ultrasonically with the polymer have been explored. This paper presents a statistically designed experiment for systematic characterization of the dielectric constant and loss tangent of integral capacitors formed in this manner by using barium titanate particles in an epoxy polymer dielectric. We determine these quantities as a function of the particle size of the ceramic, the volume fraction of ceramic in the polymer matrix, the polymer cure time, the polymer cure temperature, the percent of surfactant, the ultrasonic mixing time, and the ball milling time for ceramic surface modification. These factors are examined by means of a partial factorial experiment requiring 32 runs. Further experimentation is performed to generate sufficient data for process modeling. To develop such models, we train neural networks to model the variation as a function of input variables using the experimental data. These models are then used for process optimization using genetic algorithms. Using this methodology, we determine the proper combination of polymer/ceramic materials and process conditions to achieve desirable electrical properties.
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