Elkhalea Mohamed F, Hendy Hossam, Kamel Ahmed, Abosekeen Ashraf, Noureldin Aboelmagd
Electrical and Computer Engineering, Military Technical College, Cairo 11766, Egypt.
Electrical and Computer Engineering, Royal Military College of Canada, Kingston, ON K7K 7B4, Canada.
Sensors (Basel). 2025 Apr 29;25(9):2804. doi: 10.3390/s25092804.
In the current era, which is characterized by increasing demand for high-precision location and navigation capabilities, various industries, including those involved in intelligent vehicle systems, logistics, augmented reality, and more, heavily rely on accurate location information to optimize processes and deliver personalized experiences. In this context, the integration of Global Navigation Satellite System (GNSS) and inertial sensor technologies in smartphones has emerged as a critical solution to meet these demands. This research paper presents an algorithm that combines a GNSS with a modified downdate algorithm (MDDA) for satellite selection and integrates inertial navigation systems (INS) in both loosely and tightly coupled configurations. The primary objective was to harness the inherent strengths of these onboard sensors for navigation in challenging environments. These algorithms were meticulously designed to enhance performance and address the limitations encountered in harsh terrain. To evaluate the effectiveness of these proposed systems, vehicular experiments were conducted under diverse GNSS observation conditions. The experimental results clearly illustrate the considerable improvements achieved by the recommended tightly coupled (TC) algorithm when integrated with MDDA, in contrast to the loosely coupled (LC) algorithm. Specifically, the TC algorithm demonstrated a remarkable reduction of over 90% in 2D position root mean square error (RMSE) and a 75% reduction in 3D position RMSE when compared to solutions utilizing the weighting matrix provided by Google with all visible satellites. These findings underscore the substantial advancements in precision resulting from the integration of GNSS and INS technologies, thereby unlocking the full potential of transformative applications in the realm of intelligent vehicle navigation.
在当前这个对高精度定位和导航能力需求不断增加的时代,包括智能车辆系统、物流、增强现实等在内的各个行业都严重依赖准确的位置信息来优化流程并提供个性化体验。在此背景下,智能手机中全球导航卫星系统(GNSS)与惯性传感器技术的集成已成为满足这些需求的关键解决方案。本研究论文提出了一种算法,该算法将GNSS与用于卫星选择的改进型递推算法(MDDA)相结合,并在松耦合和紧耦合配置中集成了惯性导航系统(INS)。其主要目标是利用这些车载传感器的固有优势,以便在具有挑战性的环境中进行导航。这些算法经过精心设计,以提高性能并解决在恶劣地形中遇到的限制。为了评估这些所提出系统的有效性,在不同的GNSS观测条件下进行了车辆实验。实验结果清楚地表明,与松耦合(LC)算法相比,推荐的紧耦合(TC)算法与MDDA集成时取得了显著改进。具体而言,与使用谷歌提供的所有可见卫星的加权矩阵的解决方案相比,TC算法在二维位置均方根误差(RMSE)方面显著降低了超过90%,在三维位置RMSE方面降低了75%。这些发现强调了GNSS和INS技术集成所带来的精度大幅提升,从而释放了智能车辆导航领域变革性应用的全部潜力。