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A Study on Applications of High-Frequency Optical Satellite Data to Oceanic Disastrous Phenomena : Focused on Oil Spill and Red Tide : 해양 재해현상에 대한 고빈도 광학위성자료 응용에 관한 연구 : 유류 유출 및 적조를 중심으로

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dc.contributor.advisor박경애-
dc.contributor.author이민선-
dc.date.accessioned2017-07-19T06:22:47Z-
dc.date.available2018-03-30-
dc.date.issued2017-02-
dc.identifier.other000000142764-
dc.identifier.urihttps://hdl.handle.net/10371/129672-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 과학교육과 지구과학전공, 2017. 2. 박경애.-
dc.description.abstractThe spatial distribution of an oil spill and its temporal dispersion within a coastal bay were investigated using high-resolution optical images. A neural network method was applied to Landsat and DubaiSat-2 images to detect the oil spill. We conducted field observations to measure spectral characteristics of the oil spill and the oil-free sea surface. We were able to detect and eliminate pixels corresponding to ships and ship shadows on the satellite image, resulting in successful oil spill detection. A new recursive neural network method using a near-infrared band was developed to classify oil types into thick or film-like oil and to estimate their areal extents. To understand potential causes of the temporal evolution of the oil spill, we performed numerical modeling with atmospheric and oceanic inputs. Overall, trajectories of oil particles controlled by tidal currents showed good agreement with the detection results from satellite data. Slight discrepancies occurred between satellite data and results from the model simulation using only tidal currents, particularly in the southeastward dispersion or in the spreading of film-like oils into the northern inner channels. This was attributed to the effect of wind-driven Ekman drift. This study suggests that tidal currents played an important role in the temporal dispersion of oil in the bay during initial phases, when wind conditions were relatively weak, and that the Ekman drift became the dominant control on oil movement during periods of weak tidal currents and strong winds.
Speckles in the suspended particulate matter (SPM) data of the Geostationary Ocean Color Imager (GOCI) were spatiotemporally analyzed. The speckles were classified into four types based on their appearance: isolated speckle, speckle near cloud, patch-type speckle, and slot-related speckle. The spectral characteristics of the speckles were analyzed. We developed a speckle removal procedure to detect the speckles. The speckle removal improved the quality of the GOCI SPM data. We conclude that the speckles were generated by the unmasked clouds edge, water vapor, and small clouds that move during the spectral scanning sequences.
From field cruises around the Korean coast, we found that red tide had a bimodal spectral distribution, having two peaks at 555 nm and 680 nm. A red tide index (RTI) algorithm was developed based on in situ spectral characteristics of red tide bloom and validated by in situ red tide measurements. The RTI algorithm was applied to reprocessed GOCI data with speckle removal for the period from 2011 to 2016. The phenology of red tide, such as starting time, ending time, duration, and spatial probability, was estimated using satellite RTI data. Migration and propagation of red tide along and across the coast was investigated spatially and temporally. The relationship between RTI and environmental parameters, such as sea surface temperature, cloudiness, sea surface wind, river discharge, colored dissolved organic matter, Chlorophyll-a, SPM, were clarified.
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dc.description.tableofcontentsOverview 1

Part I. Oil Spill 2
Chapter 1. Introduction 3
1.1. Previous Study 3
1.2. Objectives of This Study 7

Chapter 2. Data Description 10
2.1. Satellite Data 10
2.1.1. Landsat ETM+/OLI 10
2.1.2. DubaiSat-2 13
2.2. Field Observation 17
2.2.1. Oceanic Optical Measurement 17
2.2.2. Wind Data 18

Chapter 3. Methods 19
3.1. Field Observation 19
3.2. Conversion of In Situ Measurements 20
3.3. Neural Network 22
3.4. Ship and Ship Shadow Masking 24
3.4.1. Ship Mask 24
3.4.2. Ship Shadow Mask 25
3.5. Particle Tracking 27
3.5.1. Numerical Tide Model 27
3.5.2. Ekman Drift Surface Current 29
3.5.3. Oil Spill Trajectory 30

Chapter 4. Result 31
4.1. Removal of Ship and Ship Shadow Pixels 31
4.2. Spectral Characteristics of Oil 33
4.3. Ship and Ship Shadow Masking 36
4.4. Image Classification into Thick oil/Film-like oil 39
4.5. Tidal Effects on Oil Spill Dispersion 43
4.6. Effect of Wind on Oil Spill Dispersion 49

Chaper 5. Summary and Conclusion 55

References 58

Part II. Speckle 68
Chapter 1. Introduction 69

Chapter 2. Data and Method 73

Chapter 3. Results 76
3.1. Speckle Types 76
3.1.1. Isolated Speckles 80
3.1.2. Speckles Near/Along Clouds 82
3.1.3. Patch-type Speckles 85
3.1.4. Slot-related Speckles 87
3.2. Causes of Speckles 89
3.2.1. Cloud Movement 89
3.2.2. Cloud and Cloud Shadowing 91
3.2.3. Atmospheric Correction for Water Vapor 93
3.2.4. Sensor Calibration 95
3.3. Removal Process of Speckles 96
3.4. Comparison with a Reprocessed SPM Map 99

Chapter 4. Summary and Conclusion 106

References 108

Part Ⅲ. Red Tide 112
Chapter 1. Introduction 113
1.1. Previous Research 113
1.2. Satellite Application to Red Tide Detection 117
1.3. Study Objectives 119

Chapter 2. Data 120
2.1. Satellite Data 120
2.2. In-Situ Optical Measurement 121
2.3. In-Situ Red Tide Observation 125
2.4. Wind Data 130

Chapter 3. Methods 131
3.1. Algorithm Development 131
3.2. Digitization of Red Tide Report 135
3.3. Relation with Red Tide Index and Red Tide Density 137
3.4. Algorithms of Ocean Color Parameters 139
3.5. Cloudiness 140

Chapter 4. Results 141
4.1. Comparison with Previous RTIs 141
4.2. Validation of RTI 143
4.2.1. Relationship with SPM, CDOM, and Chl-a 143
4.2.2. Diurnal Variation of Red Tide 146
4.3. Fundamental Variability of Red Tide 151
4.3.1. Along-Shore Variability of Red Tides 159
4.3.2. Across-Shore Variability of Red Tides 165
4.3.3. Occurrence Time of Maximum Red Tide Bloom 167
4.3.4. Life Span of Red Tide Bloom 170
4.3.5. Red Tide Bloom near Jeju Island 174
4.3.5.1. Peculiar spatial distribution of red tides in 2016 174
4.3.5.2. Tracking red tides in the Yangtze River region 179
4.3.5.3. In-situ red tide occurrence around Jeju island 182
4.3.5.4. Spatial variability of red tides around Jeju island 185
4.4. Potential Causes of Red Tide Bloom 186


Chapter 5. Discussion 191
5.1. In-situ Measurement Data and RTI Validation 191
5.2. Satellite Sensor-Generated Problems 194
5.3. Limitation of RTI Index 195
5.4. Red Tide Species around Jeju 199
5.5. Case of Yellow Sea 200
5.6. Difference between Region Classifications between Scientists 202
5.7. Yangtze River Discharge 204
5.8. Further Study 206

Chapter 6. Summary and Conclusion 207

References 210

Abstract in Korean 214
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dc.formatapplication/pdf-
dc.format.extent16764881 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoko-
dc.publisher서울대학교 대학원-
dc.subject기름유출-
dc.subject스펙클-
dc.subject적조-
dc.subject위성원격탐사-
dc.subject.ddc507-
dc.titleA Study on Applications of High-Frequency Optical Satellite Data to Oceanic Disastrous Phenomena : Focused on Oil Spill and Red Tide-
dc.title.alternative해양 재해현상에 대한 고빈도 광학위성자료 응용에 관한 연구 : 유류 유출 및 적조를 중심으로-
dc.typeThesis-
dc.contributor.AlternativeAuthorMin-Sun Lee-
dc.description.degreeDoctor-
dc.citation.pages215-
dc.contributor.affiliation사범대학 과학교육과-
dc.date.awarded2017-02-
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