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An extensible TCAD optimization framework combining gradient based and genetic optimizers

机译:结合了基于梯度和遗传优化器的可扩展TCAD优化框架

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摘要

The SIESTA framework is an extensible tool for optimization and inverse modeling of semiconductor devices including dynamic load balancing, for taking advantage of several, loosely connected workstations. Two gradient -based and two evolutionary computation optimi- zers are currently available through a uniform interface and can be combined at will. At a real world inverse modeling example we demonstrate that evolutionary computation optimizers provide several advantages over gradient-based optimizers. Due to the specific properties of the objective functions in TCAD applications. Furthermore, we shortly discuss issues arising in inverse modeling and conclude with a comparison of gradient-based and evolutionary computation optimizers from a TCAD point of view.
机译:SIESTA框架是可扩展的工具,用于优化和反向建模半导体器件,包括动态负载平衡,以利用多个松散连接的工作站。目前可以通过统一的界面使用两个基于梯度的优化器和两个演化计算优化器,并且可以随意组合。在一个现实世界的逆建模示例中,我们证明了进化计算优化器比基于梯度的优化器具有多个优势。由于TCAD应用程序中目标函数的特定属性。此外,我们简短地讨论了逆建模中出现的问题,并从TCAD的角度对基于梯度的计算优化器和进化计算优化器进行了比较。

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