Particle Swarm Optimization and Differential Evolution Hybrid Algorithm Applied to Calibration of Triaxial Accelerometer

Chenning Wang, R. He, S. Chen
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Abstract

The calibration accuracy of the accelerometer, a key device in an inertial navigation system, directly affects the navigation accuracy. In our study, a novel calibration method for a triaxial accelerometer was presented with automatic online calibration. A robotic arm was used to set different orientations for the accelerometer. The error parameters, including the scale factor and bias, were estimated using a particle swarm optimization (PSO) and differential evolution (DE) hybrid algorithm with adjustable inertia weight. The effectiveness of the new algorithm was validated using simulated data with or without noise in simulation. Simulation results showed that the hybrid algorithm increased the measurement accuracy by many orders of magnitude and outperformed the single PSO and DE algorithms in terms of convergence speed and global searchability. The new algorithm was applied to a real accelerometer experiment. The experiment results demonstrate that proper calibration parameters can be obtained without a precise turntable.
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粒子群优化与差分进化混合算法在三轴加速度计标定中的应用
加速度计是惯性导航系统中的关键器件,其标定精度直接影响导航精度。本文提出了一种新的三轴加速度计自动在线标定方法。利用机械臂为加速度计设置不同的方向。采用可调惯性权值的粒子群算法(PSO)和差分进化(DE)混合算法估计误差参数,包括尺度因子和偏差。通过带噪声和不带噪声的仿真数据验证了新算法的有效性。仿真结果表明,该混合算法将测量精度提高了多个数量级,并且在收敛速度和全局可搜索性方面优于单一PSO和DE算法。将该算法应用于实际加速度计实验。实验结果表明,在没有精密转台的情况下,也能得到合适的标定参数。
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