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An improved particle filter and its application to an INS/GPS integrated navigation system in a serious noisy scenario

机译:一种改进的粒子滤波器及其在噪声严重的情况下在INS / GPS组合导航系统中的应用

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摘要

For loosely coupled INS/ GPS integrated navigation systems with low-cost and low-accuracy microelectromechanical device inertial sensors, in order to obtain enough accuracy, a fullstate nonlinear dynamic model rather than a linearized error model is much more preferable. Particle filters are particularly for nonlinear and non-Gaussian situations, but typical bootstrap particle filters (BPFs) and some improved particle filters (IPFs) such as auxiliary particle filters (APFs) and Gaussian particle filters (GPFs) cannot solve the mismatch between the importance function and the likelihood function very well. The predicted particles propagated through inertial navigation equations cannot be scattered with certainty within the effective range of current observation when there are large drift errors of the inertial sensors. Therefore, the current observation cannot play the correction role well and these particle filters are invalid to some extent. The proposed IPF firstly estimates the corresponding state bias errors according to the current observation and then corrects the bias errors of the predicted particles before determining the weights and resampling the particles. Simulations and practical experiments both show that the proposed IPF can effectively solve the mismatch between the importance function and the likelihood function of a BPF and compensate the accumulated errors of INSs very well. It has great robustness in a serious noisy scenario.
机译:对于具有低成本和低精度的微机电设备惯性传感器的INS / GPS松耦合耦合导航系统,为了获得足够的精度,全状态非线性动力学模型比线性误差模型更为可取。粒子滤波器特别适用于非线性和非高斯情况,但是典型的自举粒子滤波器(BPF)和某些改进的粒子滤波器(IPF),例如辅助粒子滤波器(APF)和高斯粒子滤波器(GPF)不能解决重要性之间的不匹配问题函数和似然函数很好。当惯性传感器的漂移误差较大时,通过惯性导航方程传播的预测粒子无法在当前观测的有效范围内确定性地散射。因此,当前的观测不能很好地发挥校正作用,这些粒子滤波器在一定程度上是无效的。提出的IPF首先根据当前的观测值估计相应的状态偏差误差,然后在确定权重并对粒子进行重采样之前校正预测粒子的偏差误差。仿真和实际实验均表明,所提出的IPF可以有效地解决BPF的重要性函数和似然函数之间的失配,并很好地补偿了INS的累积误差。在严重嘈杂的情况下,它具有强大的鲁棒性。

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