現在位置: 機構典藏 > 詳目


    篇名/題名:The Hybrid Taguchi-Genetic Algorithm for Mobile Location
    摘要:To estimate the mobile location is an important topic in wireless communication. It is well known that non-line-of-sight (NLOS)problem is the most pivotal part that causes the estimated error. When we transmit the signal from mobile station (MS) to base stations (BSs), the direct path between MS and BS is sealed off by some obstacles, and the signal measurements will measure the error due to the signal reflection or diffraction. The hybrid Taguchi-genetic algorithm (HTGA) combines the Taguchi method with the genetic algorithm (GA). In this paper, we bring up a novel HTGA algorithm that utilizes time of arrival (TOA) measurements
    from three BSs to locate MS. The proposed algorithm utilizes the intersections of three TOA circles based on HTGA to estimate the
    MS location. Finally, we compare HTGA with GA and find that the Taguchi algorithm can enhance genetic algorithm. We also can find that the average convergence of generation number will not be affected no matter which propagation models we use. Obviously HTGA is more robust, statistically sound, and quickly convergent than the other algorithms. The simulation results show that the HTGA can converge more quickly than GA and furthermore the HTGA can enhance the accuracy of the mobile location.
    類型:期刊論文
    著作語言:英文
    作者:作者:
     盧全得、陳見生、林君明、李金譚
    學校系所:財務金融系
    卷期:International Journal of Distributed Sensor Networks;vol. 2014 卷;period 1 期
    頁碼:1-9