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Machine learning strategies applied to the control of a fluidic pinball

机译:机器学习策略适用于流体弹球的控制

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摘要

The wake stabilization of a triangular cluster of three rotating cylinders is investigated. Experiments are performed at Reynolds number Re similar to 2200. Flow control is realized using rotating cylinders spanning the wind-tunnel height. The cylinders are individually connected to identical brushless DC motors. Two-component planar particle image velocimetry measurements and constant temperature hot-wire anemometry were used to characterize the flow without and with actuation. Main open-loop configurations are studied and different controlled flow topologies are identified. Machine learning control is then implemented for the optimization of the flow control performance. Linear genetic algorithms are used here as the optimization technique for the open-loop constant speed-actuators. Two different cost functions, are considered targeting either drag reduction or wake symmetrization. The functions are estimated based on the velocity from three hot-wire sensors in the wake. It is shown that the machine learning approach is an effective strategy for controlling the wake characteristics. More significantly, the results show that machine learning strategies can reveal unanticipated solutions or parameter relations, in addition to being a tool for optimizing searches in large parameter spaces. Published under license by AIP Publishing.
机译:研究了三个旋转圆筒的三角形簇的唤醒稳定。实验在类似于2200的雷诺数RE上进行。使用跨越风隧道高度的旋转汽缸来实现流量控制。气缸单独连接到相同的无刷直流电动机。双组分平面粒子图像测速率测量和恒温热线风化术用于表征流动而无需和致动。研究了主要开环配置,并确定了不同的控制流拓扑。然后实现机器学习控制以优化流量控制性能。这里使用线性遗传算法作为开环恒速致动器的优化技术。两种不同的成本函数,被认为是瞄准减少或唤醒对称化。根据唤醒中的三个热线传感器的速度估计该功能。结果表明,机器学习方法是控制唤醒特性的有效策略。更重要的是,结果表明,除了作为优化大参数空间中搜索的工具,还可以揭示意外的解决方案或参数关系。通过AIP发布在许可证下发布。

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    《Physics of fluids》 |2020年第1期|共13页
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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 流体力学;
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