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Deep Learning for Flow Sculpting: Insights into Efficient Learning using Scientific Simulation Data

机译:用于流程雕刻的深度学习:使用科学模拟数据深入了解高效学习

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摘要

A new technique for shaping microfluid flow, known as flow sculpting, offers an unprecedented level of passive fluid flow control, with potential breakthrough applications in advancing manufacturing, biology, and chemistry research at the microscale. However, efficiently solving the inverse problem of designing a flow sculpting device for a desired fluid flow shape remains a challenge. Current approaches struggle with the many-to-one design space, requiring substantial user interaction and the necessity of building intuition, all of which are time and resource intensive. Deep learning has emerged as an efficient function approximation technique for high-dimensional spaces, and presents a fast solution to the inverse problem, yet the science of its implementation in similarly defined problems remains largely unexplored. We propose that deep learning methods can completely outpace current approaches for scientific inverse problems while delivering comparable designs. To this end, we show how intelligent sampling of the design space inputs can make deep learning methods more competitive in accuracy, while illustrating their generalization capability to out-of-sample predictions.
机译:一种用于成形微流体流的新技术,称为流塑,可提供前所未有的被动流体流控制水平,在推动微型制造,生物学和化学研究方面具有潜在的突破性应用。然而,有效地解决设计用于期望的流体流动形状的流动雕刻装置的反问题仍然是挑战。当前的方法在多对一设计空间中挣扎,需要大量的用户交互和建立直觉的必要性,所有这些都需要大量时间和资源。深度学习已经成为高维空间的一种有效的函数逼近技术,并提出了一种快速解决反问题的方法,但在类似定义的问题中实现深度学习的科学方法仍很有限。我们建议深度学习方法在提供可比较的设计的同时,可以完全胜过当前针对科学逆问题的方法。为此,我们展示了对设计空间输入的智能采样如何使深度学习方法在准确性上更具竞争力,同时说明了它们对样本外预测的泛化能力。

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