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Training bioinspired sensors to classify flows

机译:培训生物悬浮的传感器以分类流动

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摘要

We consider the inverse problem of classifying flow patterns from local sensory measurements. This problem is inspired by the ability of various aquatic organisms to respond to ambient flow signals, and is relevant for translating these abilities to underwater robotic vehicles. In Colvert, Alsalman and Kanso, B&B (2018), we trained neural networks to classify vortical flows by relying on a single flow sensor that measures a 'time history' of the local vorticity. Here, we systematically investigate the effects of distinct types of sensors on the accuracy of flow classification. We consider four types of sensors-vorticity, flow velocities parallel and transverse to the direction of flow propagation, and flow speed-and show that the networks trained using transverse velocity outperform other networks, even when subjected to aggressive data corruption. We then train the network to classify flow patterns instantaneously, using a spatially-distributed array of sensors and a single 'one time' sensory measurement. The network, based on a handful of spatially-distributed sensors, exhibits remarkable accuracy in flow classification. These results lay the groundwork for developing learning algorithms for the dynamic deployment of sensory arrays in unsteady flows.
机译:我们考虑从局部感觉测量分类流程模式的逆问题。这个问题是通过各种水生物体响应环境流量信号的能力的启发,并且与将这些能力转化为水下机器人车辆的能力。在Clvert,Alsalman和Kanso,B&B(2018)(2018年)中,我们培训了神经网络通过依赖于测量本地涡度的“时间历史”的单个流量传感器来分类涡流。在这里,我们系统地研究了不同类型传感器对流分类精度的影响。我们考虑四种类型的传感器 - 涡旋,流速平行和横向于流动传播的方向,并显示使用横向速度验证的网络,即使在受到攻击性数据损坏时也能使用其他网络训练。然后,我们使用空间分布的传感器阵列和单个“一次性感觉测量来训练网络瞬间对流模式进行分类。基于少量空间分布式传感器的网络在流量分类中表现出显着的准确性。这些结果为开发学习算法的基础工作奠定了用于在不稳定流中动态部署的动态部署。

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