In wireless communications, a joint channel coefficient and time-delay tracking technique are a critical issue. Due to the highly nonlinear nature of time delay estimation, particle filter (PF) and sigma point particle filter (SPPF) can be employed. The SPPF algorithm consists of a particle filter that uses a sigma point Kalman filter (SPKF) to generate the important proposal distribution. The SPKF allows the particle filter to incorporate the latest observations into a prior updating routine. In addition, the SPKF generates proposal distributions that match the true posterior more closely. We propose an SPPF based on algorithm for the estimation of closely-spaced path delays and related channel coefficients in CDMA environments. We show that the parameter estimation using this filter structure is very effective even in the non-orthogonality of spreading codes and under imperfect power control in the CDMA environments. The simulation results show that this filter outperforms the PF including conventional Kalman filters.
Jonghoon KimHojin ShinD. R. SHIN
Jang-Sub KimDong-Ryeol ShinWoo-Gon Chung
Jang-Sub KimHojin ShinDong Ryeol Shin
Goran KujundžićMario VašakJadranko Matuško
Zhiwei HeMingyu GaoJie XuYuanyuan Liu