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Robust Modeling of Low-Cost MEMS Sensor Errors in Mobile Devices Using Fast Orthogonal Search

机译:使用快速正交搜索对移动设备中低成本MEMS传感器误差进行鲁棒建模

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Accessibility to inertial navigation systems (INS) has been severely limited by cost in the past. The introduction of low-cost microelectromechanical system-based INS to be integrated with GPS in order to provide a reliable positioning solution has provided more wide spread use in mobile devices. The random errors of the MEMS inertial sensors may deteriorate the overall system accuracy in mobile devices. These errors are modeled stochastically and are included in the error model of the estimated techniques used such as Kalman filter or Particle filter. First-order Gauss-Markov model is usually used to describe the stochastic nature of these errors. However, if the autocorrelation sequences of these random components are examined, it can be determined that first-order Gauss-Markov model is not adequate to describe such stochastic behavior. A robust modeling technique based on fast orthogonal search is introduced to remove MEMS-based inertial sensor errors inside mobile devices that are used for several location-based services. The proposed method is applied to MEMS-based gyroscopes and accelerometers. Results show that the proposed method models low-cost MEMS sensors errors with no need for denoising techniques and using smaller model order and less computation, outperforming traditional methods by two orders of magnitude.
机译:过去,惯性导航系统(INS)的可访问性受到成本的严重限制。低成本的基于微机电系统的INS与GPS集成以便提供可靠的定位解决方案,这在移动设备中得到了更广泛的应用。 MEMS惯性传感器的随机误差可能会降低移动设备的整体系统精度。这些误差是随机建模的,并包含在所使用的估计技术(例如卡尔曼滤波器或粒子滤波器)的误差模型中。一阶高斯-马尔可夫模型通常用于描述这些误差的随机性质。但是,如果检查了这些随机分量的自相关序列,则可以确定一阶高斯-马尔可夫模型不足以描述这种随机行为。引入了一种基于快速正交搜索的鲁棒建模技术,以消除移动设备内部用于多个基于位置的服务的基于MEMS的惯性传感器错误。所提出的方法被应用于基于MEMS的陀螺仪和加速度计。结果表明,所提出的方法可对低成本的MEMS传感器误差进行建模,而无需使用降噪技术,并且使用较小的模型阶数和较少的计算量,比传统方法要高两个数量级。

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