Repository logo
Communities & Collections
All of DSpace
  • English
  • Español
Log In
New user? Click here to register. Have you forgotten your password?
  1. Home
  2. Browse by Author

Browsing by Author "Rivas Huerta, Karen Andrea"

Filter results by typing the first few letters
Now showing 1 - 1 of 1
  • Results Per Page
  • Sort Options
  • Loading...
    Thumbnail Image
    Thesis
    INFORMATION CRITERION-BASED CHANNEL ESTIMATION IN OFDM SYSTEMS WITH UNKNOWN CHANNEL LENGTH
    (2017) Rivas Huerta, Karen Andrea; Departamento de Electrónica; Carvajal, Rodrigo
    This thesis adresses the problem of channel estimation in OFDM systemswhen the channel length is unknown. This problem includes the joint estimationof the channel and carrier frequency oset (CFO) in the presence ofphase noise (PHN) which correspond to phase distortions in the form of anunknown deterministic variable and a random variable, respectively. Channelnoise variance is also estimated and phase noise bandwidth is assummedknown as well as the transmitted signal.The joint estimation of the channel impulse response (CIR) and the frequencyoset is carried out using Maximum Likelihood estimation. TheExpectation-Maximization (EM) algorithm is implemented due to the presenceof PHN as hidden variable. In the Expectation step, given that PHNhas a nonlinear relation with the output signal, Extended Kalman Filter(EKF) is used as nonlinear lter to calculate the expected posterior distributionof the PHN, whilst the maximization step is carried out by concentratingthe cost in carrier frequency oset, and obtaining the channelestimates in closed form.Akaike's Information Criterion is used as a model selection technique tosolve channel length estimation. The implementation is carried out by usingthree approaches: one direct approach and two others formulated as a regularizedoptimization problem. One of the regularized problems correpondsto the utilization of the `0-(pseudo)norm, whilst the other corresponds tothe utilization of an approximation of the `0-(pseudo)norm.The three approaches are compared considering not only the accuracy ofthe estimation, but the computational load required, in terms of CPU time.EKF was chosen instead of other nonlinear techniques (such as SequentialMonte Carlo techniques) to ensure a fair comparison among dierent AICapproaches.For completeness of the presentation, in this thesis we study the impactof dierent levels of SNR on the overall parameter estimation problem, whenusing full training signals via numerical simulations.

UNIVERSIDAD

  • Nuestra Historia
  • Federico Santa María
  • Definiciones Estratégicas
  • Modelo Educativo
  • Organización
  • Información Estadística USM

CAMPUS Y SEDES

  • Información Campus y Sedes
  • Tour Virtual
  • Icono Seguridad Política de Privacidad

EXTENSIÓN Y CULTURA

  • Dirección de Comunicaciones Estratégicas y Extensión Cultural
  • Dirección General de Vinculación con el Medio
  • Dirección de Asuntos Internacionales
  • Alumni
  • Noticias
  • Eventos
  • Radio USM
  • Cultura USM

SERVICIOS

  • Aula USM
  • Biblioteca USM
  • Portal de Autoservicio Institucional
  • Dirección de Tecnologías de la Información
  • Portal de Reportes UDAI
  • Sistema de Información de Gestión Académica
  • Sistema Integrado de Información Argos ERP
  • Sistema de Remuneraciones Históricas
  • Directorio USM
  • Trabaja con nosotros
Acreditación USM
usm.cl
Logo Acceso
Logo Consejo de Rectores
Logo G9
Logo AUR
Logo CRUV
Logo REUNA
Logo Universia

DSpace software copyright © 2002-2026 LYRASIS

  • Privacy policy
  • End User Agreement
  • Send Feedback