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Second-Order Kalman Filtering Application to Fading Channels Supported by Real Data 被引量:1

Second-Order Kalman Filtering Application to Fading Channels Supported by Real Data
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摘要 The lack of effective techniques for estimation of shadow power in fading mobile wireless communication channels motivated the use of Kalman Filtering as an effective alternative. In this paper, linear second-order state space Kalman Filtering is further investigated and tested for applicability. This is important to optimize estimates of received power signals to improve control of handoffs. Simulation models were used extensively in the initial stage of this research to validate the proposed theory. Recently, we managed to further confirm validation of the concept through experiments supported by data from real scenarios. Our results have shown that the linear second-order state space Kalman Filter (KF) can be more accurate in predicting local shadow power profiles than the first-order Kalman Filter, even in channels with imposed non-Gaussian measurement noise. The lack of effective techniques for estimation of shadow power in fading mobile wireless communication channels motivated the use of Kalman Filtering as an effective alternative. In this paper, linear second-order state space Kalman Filtering is further investigated and tested for applicability. This is important to optimize estimates of received power signals to improve control of handoffs. Simulation models were used extensively in the initial stage of this research to validate the proposed theory. Recently, we managed to further confirm validation of the concept through experiments supported by data from real scenarios. Our results have shown that the linear second-order state space Kalman Filter (KF) can be more accurate in predicting local shadow power profiles than the first-order Kalman Filter, even in channels with imposed non-Gaussian measurement noise.
作者 Azra Kapetanovic Redhwan Mawari Mohamed A. Zohdy Azra Kapetanovic;Redhwan Mawari;Mohamed A. Zohdy(Department of Electrical and Computer Engineering, Oakland University, Rochester, MI, USA)
出处 《Journal of Signal and Information Processing》 2016年第2期61-74,共14页 信号与信息处理(英文)
关键词 Kalman Filtering RAYLEIGH GAUSSIAN MULTIPATH SHADOWING Power Estimation Kalman Filtering Rayleigh Gaussian Multipath Shadowing Power Estimation
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