Department of Mechanical Engineering, University of Washington, Seattle, WA 98195.
Department of Biology, University of Washington, Seattle, WA, 98195.
Proc Natl Acad Sci U S A. 2018 Oct 16;115(42):10564-10569. doi: 10.1073/pnas.1808909115. Epub 2018 Sep 13.
Sparse sensor placement is a central challenge in the efficient characterization of complex systems when the cost of acquiring and processing data is high. Leading sparse sensing methods typically exploit either spatial or temporal correlations, but rarely both. This work introduces a sparse sensor optimization that is designed to leverage the rich spatiotemporal coherence exhibited by many systems. Our approach is inspired by the remarkable performance of flying insects, which use a few embedded strain-sensitive neurons to achieve rapid and robust flight control despite large gust disturbances. Specifically, we identify neural-inspired sensors at a few key locations on a flapping wing that are able to detect body rotation. This task is particularly challenging as the rotational twisting mode is three orders of magnitude smaller than the flapping modes. We show that nonlinear filtering in time, built to mimic strain-sensitive neurons, is essential to detect rotation, whereas instantaneous measurements fail. Optimized sparse sensor placement results in efficient classification with approximately 10 sensors, achieving the same accuracy and noise robustness as full measurements consisting of hundreds of sensors. Sparse sensing with neural-inspired encoding establishes an alternative paradigm in hyperefficient, embodied sensing of spatiotemporal data and sheds light on principles of biological sensing for agile flight control.
稀疏传感器布置是在获取和处理数据成本高的情况下高效描述复杂系统的核心挑战。主流稀疏传感方法通常利用空间或时间相关性,但很少同时利用两者。这项工作提出了一种稀疏传感器优化方法,旨在利用许多系统表现出的丰富时空一致性。我们的方法受到了飞行昆虫卓越性能的启发,它们使用少量嵌入式应变敏感神经元实现了快速和鲁棒的飞行控制,尽管存在大的阵风干扰。具体来说,我们在拍动翅膀的几个关键位置确定了能够检测身体旋转的神经启发式传感器。这个任务特别具有挑战性,因为旋转扭曲模式比拍动模式小三个数量级。我们表明,时间上的非线性滤波,模仿应变敏感神经元,对于检测旋转至关重要,而瞬时测量则不行。优化的稀疏传感器布置可以用大约 10 个传感器实现高效分类,其准确性和噪声鲁棒性与包含数百个传感器的全测量相同。基于神经启发式编码的稀疏传感为高效、嵌入式时空数据传感建立了另一种范例,并为敏捷飞行控制的生物传感原理提供了启示。