Hailu Tesfay Gidey, Guo Xiansheng, Si Haonan, Li Lin, Zhang Yukun
Department of Software Engineering, Addis Ababa Science and Technology University, Addis Ababa 16417, Ethiopia.
Department of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China.
Sensors (Basel). 2024 Aug 30;24(17):5665. doi: 10.3390/s24175665.
Wi-Fi fingerprint-based indoor localization methods are effective in static environments but encounter challenges in dynamic, real-world scenarios due to evolving fingerprint patterns and feature spaces. This study investigates the temporal variations in signal strength over a 25-month period to enhance adaptive long-term Wi-Fi localization. Key aspects explored include the significance of signal features, the effects of sampling fluctuations, and overall accuracy measured by mean absolute error. Techniques such as mean-based feature selection, principal component analysis (PCA), and functional discriminant analysis (FDA) were employed to analyze signal features. The proposed algorithm, Ada-LT IP, which incorporates data reduction and transfer learning, shows improved accuracy compared to state-of-the-art methods evaluated in the study. Additionally, the study addresses multicollinearity through PCA and covariance analysis, revealing a reduction in computational complexity and enhanced accuracy for the proposed method, thereby providing valuable insights for improving adaptive long-term Wi-Fi indoor localization systems.
基于Wi-Fi指纹的室内定位方法在静态环境中有效,但在动态的现实场景中会遇到挑战,因为指纹模式和特征空间不断变化。本研究调查了25个月期间信号强度的时间变化,以增强自适应长期Wi-Fi定位。探索的关键方面包括信号特征的重要性、采样波动的影响以及通过平均绝对误差测量的总体准确性。采用了基于均值的特征选择、主成分分析(PCA)和功能判别分析(FDA)等技术来分析信号特征。所提出的算法Ada-LT IP结合了数据约简和迁移学习,与该研究中评估的现有方法相比,显示出更高的准确性。此外,该研究通过PCA和协方差分析解决了多重共线性问题,揭示了所提出方法的计算复杂度降低和准确性提高,从而为改进自适应长期Wi-Fi室内定位系统提供了有价值的见解。