4.6 Article

A Novel Clustering Algorithm for Wi-Fi Indoor Positioning

Journal

IEEE ACCESS
Volume 7, Issue -, Pages 122428-122434

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2019.2937464

Keywords

Wi-Fi; indoor positioning; improved public c-means (IPC) clustering algorithm; the k-nearest neighbors (KNN) algorithm

Funding

  1. Annual Outstanding Young Teacher Training Program Project of North China University of Technology [XN019009]
  2. Scientic Research Project of Beijing Educational Committee [KM201710009004]
  3. Science and Technology Activities Project for College Students of North China University of Technology [110051360007]
  4. Research Project on Teaching Reform and Curriculum Construction of North China University of Technology [18XN009-011]
  5. Beijing University Student Scientic Research and Entrepreneurship Action Plan Project [218051360019XN004]
  6. Education and Teaching Reform General Project of North China University of Technology [108051360019XN141/021]
  7. Fundamental Research Funds for Beijing Universities [110052971921/004]

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In recent years, the Wi-Fi-based indoor positioning technology has become a research hotspot. This technology mainly locates the indoor Wi-Fi based on the received signal strength indicator (RSSI) signals. The most popular Wi-Fi positioning algorithm is the k-nearest neighbors (KNN) algorithm. Due to the excessive amount of RSSI data, clustering algorithms are generally adopted to classify the data before KNN positioning. However, the traditional clustering algorithms cannot maintain data integrity after the classification. To solve the problem, this paper puts forward an improved public c-means (IPC) clustering algorithm with high accuracy in indoor environment, and uses the algorithm to optimize the fingerprint database. After being trained in the database, all fingerprint points were divided into several classes. Then, the range of each class was determined by comparing the cluster centers. To optimize the clustering effect, the points in the border area between two classes were allocated to these classes simultaneously, pushing up the positioning accuracy in this area. The experimental results show that the IPC clustering algorithm achieved better accuracy with lighter computing load than FCM clustering and k-means clustering, and could be coupled with KNN or FS-KNN to achieve good positioning effect.

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