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Neural Network Aided Adaptive Filtering and Smoothing for an Integrated INS/GPS Unexploded Ordnance Geolocation System

机译:集成INS / GPS未爆炸弹药地理位置系统的神经网络辅助自适应滤波和平滑

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The precise geolocation of buried unexploded ordnance (UXO) is a significant component of the detection, characterization, and remediation process. Traditional geolocation methods associated with these procedures are inefficient in helping to distinguish buried UXO from relatively harmless geologic magnetic sources or anthropic clutter items such as exploded ordnance fragments and agricultural or industrial artefacts. The integrated INS/GPS geolocation system can satisfy both high spatial resolution and robust, uninterrupted positioning requirements for successful UXO detection and characterization. To maximize the benefits from this integration, non-linear filtering strategies (such as the unscented Kalman filter) have been developed and tested using laboratory data. In addition, adaptive filters and smoothers have been designed to address variable or inaccurate a priori knowledge of the process noise of the system during periods of GPS unavailability. In this paper, we study and compare the improvement in the geolocation accuracy when the neural network approach is applied to aid the adaptive versions of the extended Kalman filter (EKF) and the unscented Kalman filter (UKF). The test results show that the neural network based filters can improve overall position accuracy and can homogenize the performance of the integrated system over a range of relatively quiet to dynamic environments. Navigation-grade and medium-grade IMUs were compared and, with standard smoothing applied to the new filters, geolocation accuracy of 5 cm (13 cm) was achieved with the navigation- (medium-) grade unit within 8-second intervals that lack external control, which is at or close to the area-mapping accuracy requirement for UXO detection.
机译:掩埋未爆炸弹药(UXO)的精确地理位置是检测,表征和修复过程的重要组成部分。与这些程序相关的传统地理位置方法无法有效地将掩埋的UXO与相对无害的地质磁源或人为混乱的物品(例如爆炸的碎片和农业或工业制品)区分开来。集成的INS / GPS地理位置系统既可以满足高空间分辨率,又可以满足鲁棒,不间断的定位要求,以成功进行UXO检测和表征。为了从这种集成中获得最大收益,已经开发了非线性滤波策略(例如无味卡尔曼滤波器),并使用实验室数据进行了测试。另外,已经设计了自适应滤波器和平滑器以解决在GPS不可用期间系统的过程噪声的可变或不准确的先验知识。在本文中,我们研究并比较了当使用神经网络方法来辅助扩展卡尔曼滤波器(EKF)和无味卡尔曼滤波器(UKF)的自适应版本时,地理位置精度的提高。测试结果表明,基于神经网络的滤波器可以提高整体位置精度,并且可以在相对安静到动态环境的范围内使集成系统的性能均匀化。对导航级和中级IMU进行了比较,并且对新过滤器应用了标准平滑处理,使用导航级(中级)的单位在8秒钟的间隔内(没有外部干扰)达到了5厘米(13厘米)的地理位置精度控制,达到或接近UXO检测的区域映射精度要求。

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