An Improved Method for Swing State Estimation in Multirotor Slung Load Applications

IF 4.4 2区 地球科学 Q1 REMOTE SENSING Drones Pub Date : 2023-10-31 DOI:10.3390/drones7110654
Emanuele Luigi de de Angelis, Fabrizio Giulietti
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Abstract

A method is proposed to estimate the swing state of a suspended payload in multirotor drone delivery scenarios. Starting from the equations of motion of the coupled slung load system, defined by two point masses interconnected by a rigid link, a recursive algorithm is developed to estimate cable swing angle and rate from acceleration measurements available from an onboard Inertial Measurement Unit, without the need for extra sensors. The estimation problem is addressed according to the Extended Kalman Filter structure. With respect to the classical linear formulation, the proposed approach allows for improved estimation accuracy in both stationary and maneuvering flight. As an additional contribution, filter performance is enhanced by accounting for aerodynamic disturbance force, which largely affects the estimation accuracy in windy flight conditions. The validity of the proposed methodology is demonstrated as follows. First, it is applied to an octarotor platform where propellers are modeled according to blade element theory and the load is suspended by an elastic cable. Numerical simulations show that estimated swing angle and rate represent suitable feedback variables for payload stabilization, with benefits on flying qualities and energy demand. The algorithm is finally implemented on a small-scale quadrotor and is investigated through an outdoor experimental campaign, thus proving the effectiveness of the approach in a real application scenario.
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一种改进的多转子悬挂载荷摆动状态估计方法
提出了一种多旋翼无人机投送场景下悬空载荷摆动状态估计方法。从由刚性连杆连接的两个质点定义的耦合悬挂载荷系统的运动方程出发,开发了一种递归算法,可根据机载惯性测量单元提供的加速度测量值估计电缆的摆动角度和速率,而无需额外的传感器。根据扩展卡尔曼滤波结构解决了估计问题。相对于经典的线性公式,所提出的方法允许在静止和机动飞行中提高估计精度。另外,考虑了气动扰动力,滤波器性能得到了提高,这在很大程度上影响了多风飞行条件下的估计精度。所提出的方法的有效性证明如下。首先,将其应用于八旋翼平台,根据叶片单元理论对螺旋桨进行建模,并用弹性索悬挂载荷。数值模拟结果表明,估计的摆角和摆速是有效载荷稳定的合适反馈变量,有利于提高飞行质量和能量需求。最后在小型四旋翼飞行器上实现了该算法,并进行了室外实验,验证了该算法在实际应用场景中的有效性。
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来源期刊
Drones
Drones Engineering-Aerospace Engineering
CiteScore
5.60
自引率
18.80%
发文量
331
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