A Nonlinear Observability Analysis of Ambient Wind Estimation with Uncalibrated Sensors, Inspired by Insect Neural Encoding.

Floris van Breugel
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引用次数: 4

Abstract

Estimating the direction of ambient fluid flow is key for many flying or swimming animals and robots, but can only be accomplished through indirect measurements and active control. Recent work with tethered flying insects indicates that their sensory representation of orientation, apparent wind, direction of movement, and control is represented by a 2-dimensional angular encoding in the central brain. This representation simplifies sensory integration by projecting the direction (but not scale) of measurements with different units onto a universal polar coordinate frame. To align these angular measurements with one another and the motor system does, however, require a calibration of angular gain and offset for each sensor. This calibration could change with time due to changes in the environment or physical structure. The circumstances under which small robots and animals with angular sensors and changing calibrations could self-calibrate and estimate the direction of ambient fluid flow while moving remains an open question. Here, a methodical nonlinear observability analysis is presented to address this. The analysis shows that it is mathematically feasible to continuously estimate flow direction and perform self-calibrations by adopting frequent changes in course (or active prevention thereof) and orientation, and requires fusion and temporal differentiation of three sensory measurements: apparent flow, orientation (or its derivative), and direction of motion (or its derivative). These conclusions are consistent with the zigzagging trajectories exhibited by many plume tracking organisms, suggesting that perhaps flow estimation is a secondary driver of their trajectory structure.

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受昆虫神经编码启发,利用未校准传感器进行环境风估计的非线性可观测性分析。
对于许多飞行或游泳的动物和机器人来说,估计环境流体流动的方向是关键,但只能通过间接测量和主动控制来实现。最近对系留飞行昆虫的研究表明,它们对方向、视风、运动方向和控制的感觉表示是由中央大脑中的二维角度编码表示的。这种表示通过将不同单位的测量方向(但不是比例)投影到通用极坐标系上,简化了感官集成。然而,为了使这些角度测量值彼此对准,电机系统确实需要校准每个传感器的角度增益和偏移。由于环境或物理结构的变化,这种校准可能会随着时间的推移而变化。在什么情况下,具有角度传感器和不断变化的校准的小型机器人和动物可以在移动时自我校准和估计环境流体流动的方向仍然是一个悬而未决的问题。本文提出了一种系统的非线性可观测性分析方法来解决这一问题。分析表明,通过频繁改变路线(或积极预防)和方向来连续估计流动方向并进行自校准在数学上是可行的,并且需要融合和时间区分三种感觉测量:表观流量、方向(或其导数)和运动方向(或它的导数)。这些结论与许多羽流追踪生物所表现出的曲折轨迹一致,表明流量估计可能是其轨迹结构的次要驱动因素。
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