Dissertation > Excellent graduate degree dissertation topics show

The Research of Digital Communication Signals Recognition and Parameter Estimation

Author: LuYue
Tutor: WangYiMing; DengJing
School: Suzhou University
Course: Communication and Information System
Keywords: Modulation recognition Feature extraction Carrier frequency estimation Symbol rate estimation
CLC: TN911.7
Type: Master's thesis
Year: 2013
Downloads: 38
Quote: 0
Read: Download Dissertation

Abstract


As a very important issue in the field of the non-cooperative communication signalprocessing, automatic modulation recognition of communication signals is widely used incivilian areas and military areas of signal interception, signal monitoring, software radioand satellite communications. The purpose of modulation recognition is that,by processingthe received signal, such as estimating carrier frequency and symbol rate of the signal, onecan correctly judge out the modulation type of the signal.Modulation recognition is usually composed of three parts,which are signalpreprocessing, feature extraction and classification. The main work and innovation of thisthesis contains:First, it introduces the modulation recognition algorithm based on the instantaneouscharacteristics which are raised by E.E.Azzouz, and A.K.Nandi. These characteristics aresuch classical that the most of the following research are based on them; Second, thepaper discusses how to extract the signal characteristics of the three instantaneouscharacteristics; then, this paper proposes five new characteristic parameters on the basis ofthe existing algorithms. By the simulation using MATLAB for seven digital modulationsignals including2ASK,4ASK2FSK,4FSK,2PSK4PSK and16QAM, the simulationresults show that the proposed new algorithm greatly improve the recognition accuracy.On the other hand, the paper discusses the signal preprocessing of modulationrecognition by analyzing and comparing the advantages and disadvantages of somedifferent methods of the carrier frequency and symbol rate estimation.And according to thedisadvantages of existed algorithms, this thesis puts forward improved algorithms.

Related Dissertations

  1. Research on Automatic Detection Algorithm for Substructure Distress of Highway Pavement Based on SVM,U418.6
  2. ISAR Imaging Simulation of Space Targets and Target Recognition Based on ISAR Images,TN957.52
  3. Research on Feature Extraction and Classification of Pulse Waveform for Cholecystitis and Nephrotic Syndrome Diagnosis,TP391.41
  4. Application of Q-Learning in the Content-Based Image Retrieval Technology,TP391.41
  5. Research on Transductive Support Vector Machine and Its Application in Image Retrieval,TP391.41
  6. Research on Feature Extraction and Classification of Tongue Shape and Tooth-Marked Tongue in TCM Tongue Diagnosis,TP391.41
  7. Research on Visual Measurement for Spacecraft Rendezvous and Approach,TP391.41
  8. Research on the Image Real-Time Acquisition, Storage and Image Processing System,TP391.41
  9. Feature Extraction, Selection and Combination in Lipreading,TP391.41
  10. Multi-currency Notes Technology Research and Implementation,TP391.41
  11. The Research on Paper Currency Classification Method Based on Harr-Like Feature and Minimal Ball Including Samples,TP391.41
  12. Pavement Distress Recognition Based on Image,TP391.41
  13. Research on Visual Detection and Tracking of Mobile Robots,TP242.62
  14. Research on Fusion Algorithm of Hyper Spectral and High Spatial Resolution Remote Sensing Image,TP751
  15. An Approach for Identifying a Plant Resistance Gene Based on the Random Forest,Q943
  16. Tobacco Diseases Auto-Recognition Research Based on Image Processing Technology,S435.72
  17. Research on Nondestructive Detection Technology for External Qualities of Papayas Based-on Vision,S667.9
  18. Research on Identification System of Cashmere and Wool Fiber,TS101.921
  19. Research for Infrared Image Target Identification and Tracking Technology,TP391.41
  20. The Compression and Fusion Technique Research of Underwater Target Feature,TN911.7
  21. Research of Diagnosing Cucumber Diseases Based on Hyperspectral Imaging,S436.421

CLC: > Industrial Technology > Radio electronics, telecommunications technology > Communicate > Communication theory > Signal processing
© 2012 www.DissertationTopic.Net  Mobile