首页> 外文期刊>Instrumentation science & technology: Designs and applications for chemistry, biotechnology, and environmental science >AUGMENTED FAST ORTHOGONAL SEARCH/KALMAN FILTERING (FOS/KF) POSITIONING AND ORIENTATION SOLUTION USING MEMS-BASED INERTIAL NAVIGATION SYSTEM (INS) IN DRILLING APPLICATIONS
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AUGMENTED FAST ORTHOGONAL SEARCH/KALMAN FILTERING (FOS/KF) POSITIONING AND ORIENTATION SOLUTION USING MEMS-BASED INERTIAL NAVIGATION SYSTEM (INS) IN DRILLING APPLICATIONS

机译:在钻井应用中使用基于MEMS的惯性导航系统(INS)的增强型快速正交搜索/卡尔曼滤波(FOS / KF)定位和定向解决方案

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摘要

Due to the advantages of small size and low cost, micro-electro-mechanical system (MEMS) inertial navigation systems (INS) show good prospects for use as a part of measurement-while-drilling (MWD) equipment to guarantee proper directional drilling procedure. Since current MEMS sensors have inaccurate measurements, an update aiding solution is developed using the Kalman filtering (KF) technique. However, because of the inherent poor behavior of MEMS sensors, KF technique with its linearized models has limited capability in providing accurate solution through the entire surveying process. In addition, certain realistic problems from the rugged environment would interrupt the updates in KF, without which the performance of the inertial system would deteriorate badly. This research proposes a fast orthogonal search (FOS)/KF solution where the FOS (a nonlinear modeling technique) method is proposed to augment KF. The experimental results illustrate that the FOS/KF solution outperforms the KF-only solution. Velocity and position performance are greatly enhanced during the interruptions of measurement updates.
机译:由于体积小和成本低的优势,微机电系统(MEMS)惯性导航系统(INS)具有良好的应用前景,可作为随钻测量(MWD)设备的一部分,以确保正确的定向钻井程序。由于当前的MEMS传感器的测量结果不准确,因此使用卡尔曼滤波(KF)技术开发了一种更新辅助解决方案。但是,由于MEMS传感器固有的不良性能,KF技术及其线性化模型在整个测量过程中提供准确解决方案的能力有限。此外,恶劣环境中的某些现实问题将中断KF的更新,否则,惯性系统的性能将严重恶化。这项研究提出了一种快速正交搜索(FOS)/ KF解决方案,其中提出了FOS(一种非线性建模技术)方法来增强KF。实验结果表明,FOS / KF解决方案优于仅KF解决方案。在中断测量更新期间,速度和位置性能会大大提高。

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