Semiconductor Optoelectronics, Volume. 45, Issue 6, 971(2024)
Fiber Optic Gyroscope Temperature Compensation and Implementation Based on Particle Swarm Optimization-radial Basis Function Neural Network
To reduce the bias drift of the fiber optic gyroscope arising from the temperature effect and improve accuracy, a temperature compensation model of the fiber optic gyroscope was established based on the radial basis function (RBF) neural network model and particle swarm optimization (PSO-RBF). Temperature compensation tests were conducted on the three-axis fiber gyroscope in temperature environments of -40 to +60 ℃. The experimental results demonstrate that the model reduces the bias drift of the entire process of the fiber optic gyroscope by more than 85% under the condition of variable temperature, with prediction stability and compensation effect better than those of the traditional polynomial and unoptimized RBF models.
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QIU Haitao, FENG Zijian, SHI Haiyang. Fiber Optic Gyroscope Temperature Compensation and Implementation Based on Particle Swarm Optimization-radial Basis Function Neural Network[J]. Semiconductor Optoelectronics, 2024, 45(6): 971
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Received: Jun. 28, 2024
Accepted: Feb. 28, 2025
Published Online: Feb. 28, 2025
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