- Page 1 and 2: Name of Author: Soner Bekleric Univ
- Page 3 and 4: University of Alberta Faculty of Gr
- Page 5 and 6: Abstract Linear filter theory has p
- Page 7: Contents 1 Introduction 1 1.1 Appli
- Page 11 and 12: 4.4 (a) Prediction of Figure 4.2(b)
- Page 13 and 14: List of symbols Symbol Name or desc
- Page 15 and 16: List of abbreviations Abbreviation
- Page 17 and 18: In applied seismology predictive de
- Page 19 and 20: 1.1. APPLICATIONS 4 applied to vide
- Page 21 and 22: 1.3. THESIS OUTLINE 6 • Chapter 4
- Page 23 and 24: 2.2. LINEAR PROCESS 8 Finally, I pr
- Page 25 and 26: 2.3. LINEAR PREDICTION 10 E(z) 1 X(
- Page 27 and 28: 2.3. LINEAR PREDICTION 12 In my the
- Page 29 and 30: 2.3. LINEAR PREDICTION 14 which can
- Page 31 and 32: 2.3. LINEAR PREDICTION 16 ∂ρ fb
- Page 33 and 34: 2.3. LINEAR PREDICTION 18 I have an
- Page 35 and 36: 2.4. 1-D SYNTHETIC AND REAL DATA EX
- Page 37 and 38: 2.4. 1-D SYNTHETIC AND REAL DATA EX
- Page 39 and 40: 2.6. SUMMARY 24 Relative PSD Relati
- Page 41 and 42: Chapter 3 Nonlinear Prediction 3.1
- Page 43 and 44: 3.1. NONLINEAR PROCESSES VIA THE VO
- Page 45 and 46: 3.1. NONLINEAR PROCESSES VIA THE VO
- Page 47 and 48: 3.2. NONLINEAR MODELING OF TIME SER
- Page 49 and 50: 3.2. NONLINEAR MODELING OF TIME SER
- Page 51 and 52: 3.2. NONLINEAR MODELING OF TIME SER
- Page 53 and 54: 3.2. NONLINEAR MODELING OF TIME SER
- Page 55 and 56: 3.3. 1-D SYNTHETIC AND REAL DATA EX
- Page 57 and 58: 3.3. 1-D SYNTHETIC AND REAL DATA EX
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3.3. 1-D SYNTHETIC AND REAL DATA EX
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3.4. SUMMARY 46 3.4 Summary In this
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4.1. LINEAR PREDICTION IN THE F −
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4.2. ANALYSIS OF OPTIMUM FILTER LEN
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4.2. ANALYSIS OF OPTIMUM FILTER LEN
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4.3. NONLINEAR PREDICTION OF COMPLE
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4.3. NONLINEAR PREDICTION OF COMPLE
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RMSE 2 4.3. NONLINEAR PREDICTION OF
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4.3. NONLINEAR PREDICTION OF COMPLE
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4.4. NOISE REMOVAL AND VOLTERRA SER
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4.5. SYNTHETIC AND REAL DATA EXAMPL
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4.5. SYNTHETIC AND REAL DATA EXAMPL
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4.5. SYNTHETIC AND REAL DATA EXAMPL
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4.5. SYNTHETIC AND REAL DATA EXAMPL
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4.5. SYNTHETIC AND REAL DATA EXAMPL
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4.6. SUMMARY 74 4.6 Summary In this
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5.1. INTRODUCTION 76 ples remains a
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5.3. SYNTHETIC DATA EXAMPLES 78 Not
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5.3. SYNTHETIC DATA EXAMPLES 80 Tim
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5.3. SYNTHETIC DATA EXAMPLES 82 Tim
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5.4. REAL DATA EXAMPLES 84 Time [s]
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5.4. REAL DATA EXAMPLES 86 Time [s]
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5.4. REAL DATA EXAMPLES 88 Time [s]
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5.5. SUMMARY 90 5.5 Summary In this
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series in this thesis has been trun
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6.1. FUTURE DIRECTIONS 94 Noise red
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BIBLIOGRAPHY 96 Canales, L. L. (198
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BIBLIOGRAPHY 98 Marple, S. L. (1980
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BIBLIOGRAPHY 100 Trad, D. (2003). I