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基于BAS-BP-Bagging模型的光纤陀螺温度补偿 被引量:1

The Temperature Compensation Method of Fiber Optic Gyroscope Based on BAS-BP-Bagging Neural Network
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摘要 为提高光纤陀螺的输出精度,以天牛须搜索算法(BAS)优化后的BP神经网络模型为基学习器,采用Bagging并行集成学习算法建立了BAS-BP-Bagging温度补偿模型,并对某型号光纤陀螺进行了温度补偿实验。实验结果表明,在-40~+60℃温度变化环境下,该方法补偿后的光纤陀螺温度漂移相较于补偿前减小了近80%,相较于多项式补偿算法减小了55%,相较于BP神经网络补偿算法减小了30%左右。同时该模型在对新鲜样本的补偿过程中表现出了较为优越的泛化性能。 In order to improve the output accuracy of fiber optic gyroscope,the BP neural network model optimized by the beetle antennae search algorithm(BAS)was used as the base learner,and the Bagging parallel integrated learning algorithm was used to establish a BAS-BPBagging temperature compensation model,and a temperature compensation experiment was conducted for a certain model of fiber optic gyroscope.The experimental results show that under the temperature change environment from-40℃to+60℃,the temperature drift of the fiber optic gyroscope after compensation is reduced by nearly 80%compared with that before compensation,55%compared with the polynomial compensation algorithm,and about 30%compared with the BP neural network compensation algorithm.And the model shows superior generalization performance in the compensation of fresh samples.
作者 王开 仇海涛 石海洋 WANG Kai;QIU Haitao;SHI Haiyang(Beijing Key Laboratory of High Dynamic Navigation Technology,Beijing Information Science&Technology University,Beijing 100101,CHN;Beijing Aerospace Times Optical-electronic Technology Co.,Ltd,Beijing 100094,CHN)
出处 《半导体光电》 CAS 北大核心 2023年第4期519-524,共6页 Semiconductor Optoelectronics
关键词 光纤陀螺 温度补偿 BP神经网络 天牛须搜索算法 集成学习 fiber optic gyroscope temperature compensation BP neural network beetle antennae search algorithm ensemble learning
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