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GRNN Model for Fault Diagnosis of Unmanned Helicopter Rotor's Unbalance

机译:用于无人直升机旋翼不平衡故障诊断的GRNN模型

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In order to diagnose the unmanned helicopter rotor's unbalance fault accurately, a method based on particle swarm optimization algorithm and generalized regression neural network (PSO-GRNN) is proposed. The average mean square error got from cross-validation is used as the fitness function of particle swarm, then the optimal GRNN smooth factor is attained by using particle swarm optimization algorithm, and an optimal model for fault diagnosis is achieved finally. It can be concluded that, based on the PSO-GRNN model, the type and the grade of the helicopter rotor's unbalance can be diagnosed effectively, the diagnosis accurate rate of fault type is up to 94.29 % and the maximum error of fault grade is only 6.54 %, which is perfectly satisfied for the requirement of project.
机译:为了准确诊断直升机旋翼的不平衡故障,提出了一种基于粒子群算法和广义回归神经网络的方法。将交叉验证得到的平均均方误差作为粒子群的适应度函数,然后利用粒子群优化算法获得最优的GRNN平滑因子,最终建立故障诊断的最优模型。可以得出结论,基于PSO-GRNN模型,可以有效地诊断直升机旋翼不平衡的类型和等级,故障类型的诊断准确率高达94.29%,故障等级的最大误差仅为6.54%,完全可以满足项目要求。

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