Abstract:Aiming at the problems of susceptibility to noise and low stability of fourrotor UAV with single attitude sensor, the gyroscope array is used to form multinode, antijamming and stable multiattitude system. A flight attitude measurement system of fourrotor UAV based on the new gyroscope array is proposed. The measurement array is composed of multiple micromechanical electronic systems with low accuracy, which improves the accuracy and stability of the system data. At the same time, a corresponding BP network data fusion algorithm based on neighborhood search is proposed, which solves the problem that the traditional BP neural network requires accurately giving the output value. The BP neural network model was used in the data fusion processing of the gyroscopearray. The experiment results show that the multigyroscope array system designed in this paper obviously improves the antinoise performance compared with the singlegyroscope system. Compared with the traditional linear weighted fusion algorithm, the proposed algorithm increases the support degree by 92% and reduces the residual error by 442%. The practicality experiment shows that the proposed method has practical significance in improving the flight stability of fourrotor UAV.