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引用次数: 0
摘要
随着四旋翼无人飞行器(UAV)的广泛应用,对其安全性和可靠性的要求也越来越严格。本文基于机身性能健康感知信息反馈和预测功能控制策略,实现了多执行器退化的四旋翼无人机的自主维护。自主维护架构由预测维护(PdM)思想和拉盖尔函数模型预测控制(LF-MPC)策略构建。基于已建立的无人机退化模型,采用两阶段卡尔曼滤波器(TSKF)方法,同时预测飞机状态和作动器退化状态。在系统健康度预测感知方面,一方面,根据机体状态与预期状态的偏离程度,定义基于马哈拉诺比距离的系统健康度(HD),进而得到无人机的故障阈值。另一方面,根据每个作动器的退化状态,利用融合了多个作动器退化的不同权重系数的综合退化变量,得到剩余使用寿命(RUL)预测的概率密度函数(PDF)。为自主维护系统健康,根据 HD 评估结果实时自适应调整 LF-MPC 权重矩阵,实现无人机性能与控制效果的折中平衡,大大延长了无人机的工作时间。仿真结果验证了所提方法的有效性。
Autonomous predictive maintenance of quadrotor UAV with multi-actuator degradation
With the wide application of quadrotor unmanned aerial vehicles (UAVs), the requirements for their safety and reliability are becoming increasingly stringent. In this paper, based on the feedback of airframe performance health perception information and the predictive function control strategy, the autonomous maintenance of a quadrotor UAV with multi-actuator degradation is realised. Autonomous maintenance architecture is constructed by the predictive maintenance (PdM) idea and the Laguerre function model predictive pontrol (LF-MPC) strategy. Using the two-stage Kalman filter (TSKF) method, based on the established UAV degradation model, the aircraft state and actuator degradation state are predicted simultaneously. For the predictive perception of system health, on the one hand, the system health degree (HD) based on Mahalanobis distance is defined by the degree of airframe state deviation from the expected state, and then the failure threshold of the UAV is obtained. On the other hand, according to the degradation state of each actuator, a comprehensive degradation variable fused with different weight coefficients of multiple actuators degradation is used to obtain the probability density function (PDF) of remaining useful life (RUL) prediction. For the autonomous maintenance of system health, the LF-MPC weight matrixes are adjusted adaptively in real-time based on the HD evaluation, to achieve a compromise balance between UAV performance and control effect, and greatly extend the working time of UAV. Simulation results verified the effectiveness of the proposed method.