Towards Sensor Autonomy in Sub-Gram Flying Insect Robots: A Lightweight and Power-Efficient Avionics System

IEEE International Conference on Robotics and Automation(2022)

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摘要
Flying insect robots weighing less than a gram (FIRs) have advantages over their larger counterparts due to their low materials cost, small size, and low weight, allowing for deployment in large numbers. Control autonomy in such aircraft introduces challenges arising from their small size such as high-speed dynamics, limited power and payload capacity. Previous work has produced and characterized sensors with compatible mass and power specifications, many of which are biologically-inspired. And controlled flight has been demon-strated using feedback from external motion capture cameras. But to date, no avionics system has been reported that is light enough and capable of providing the feedback necessary to perform controlled hovering flight using only components carried on-board. Here we present such a system. It consists a sensor package consisting of an inertial measurement unit, a laser rangefinder and an optical flow sensor, and an associated estimator based on the nonlinear Extended Kalman Filter (EKF). The sensor suite weighs 187 mg and consumes 21 mW. We implemented a low-latency wireless link to transmit this data at 1 kHz without cumbersome wires. The EKF estimates attitude, altitude and lateral velocities. We estimate that computation power usage is <400 µW using floating-point operations on a standard microcontroller. Our system's RMSE attitude and position error are less than 4° and 1 cm relative to motion capture estimates.
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关键词
towards sensor autonomy,sub-gram flying insect robots,lightweight,power-efficient avionics system,FIRs,larger counterparts,low materials cost,control autonomy,aircraft,high-speed dynamics,payload capacity,compatible mass,controlled flight,demon-strated,external motion capture cameras,sensor package,inertial measurement unit,optical flow sensor,associated estimator,nonlinear extended Kalman filter,EKF,sensor suite,low-latency wireless link,computation power usage,motion capture estimates,floating-point operations,standard microcontroller,mass 187.0 mg,power 21.0 mW,frequency 1.0 kHz,power 400.0 muW,size 1.0 cm
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