基于萤火虫群优化算法的智能手机辅助室内定位方法

Mohammad Alshehri
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引用次数: 2

摘要

目前,精确的定位和跟踪过程对于使智能手机辅助导航在实时环境中最大限度地提高精度变得至关重要。基于指纹的定位是实现有效结果的常用模型。基于这一动机,本研究的重点是利用萤火虫群优化(ILT-GSO)算法设计高效的智能手机辅助室内定位和跟踪模型。ILT-GSO算法是根据萤火虫的发光特性创建GSO算法来确定位置。此外,还采用卡尔曼滤波来缓解估计过程,并更新萤火虫的初始位置。进行了广泛的实验,并根据不同的评价指标对结果进行了调查。仿真结果表明,该方法在实时环境下具有显著的增强效果,并降低了计算复杂度。与最近的技术相比,ILT-GSO算法以最小的误差提高了定位性能。
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An Efficient Smartphone Assisted Indoor Localization with Tracking Approach using Glowworm Swarm Optimization Algorithm
Presently, a precise localization and tracking process becomes significant to enable smartphone-assisted navigation to maximize accuracy in the real-time environment. Fingerprint-based localization is the commonly available model for accomplishing effective outcomes. With this motivation, this study focuses on designing efficient smartphone-assisted indoor localization and tracking models using the glowworm swarm optimization (ILT-GSO) algorithm. The ILT-GSO algorithm involves creating a GSO algorithm based on the light-emissive characteristics of glowworms to determine the location. In addition, the Kalman filter is applied to mitigate the estimation process and update the initial position of the glowworms. A wide range of experiments was carried out, and the results are investigated in terms of distinct evaluation metrics. The simulation outcome demonstrated considerable enhancement in the real-time environment and reduced the computational complexity. The ILT-GSO algorithm has resulted in an increased localization performance with minimal error over the recent techniques.
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