Description

Book Synopsis
Sustainable management of natural resources is an urgent need, given the changing climatic conditions of Earth systems. The ability to monitor natural resources precisely and accurately is increasingly important. New and advanced remote sensing tools and techniques are continually being developed to monitor and manage natural resources in an effective way. Remote sensing technology uses electromagnetic sensors to record, measure and monitor even small variations in natural resources. The addition of new remote sensing datasets, processing techniques and software makes remote sensing an exact and cost-effective tool and technology for natural resource monitoring and management. Advances in Remote Sensing for Natural Resources Monitoring provides a detailed overview of the potential applications of advanced satellite data in natural resource monitoring. The book determines how environmental and - ecological knowledge and satellite-based information can be effectively combined to addre

Table of Contents

List of Abbreviations xix

List of Contributors xxix

List of Editors xxxv

Preface xxxvii

Section I General Section 1

1 Introduction to Natural Resource Monitoring Using Remote Sensing Technology 3
Prem Chandra Pandey and Laxmi Kant Sharma

1.1 Introduction 3

References 6

2 Spectroradiometry: Types, Data Collection, and Processing 9
Prem Chandra Pandey, Manish Kumar Pandey, Ayushi Gupta, Prachi Singh, and Prashant K. Srivastava

2.1 Introduction 9

2.2 Literature Review 10

2.3 The Types of Spectroradiometry 12

2.3.1 Spectroradiometry 13

2.3.2 Photometry and Colorimetry 13

2.4 Principle of the Spectroradiometer 13

2.5 Radiance Measurement 16

2.5.1 Factors Affecting Spectral Reflectance Measurements 17

2.5.2 Data Processing 18

2.5.2.1 Radiometric Calibration 18

2.5.2.2 Reflectance/Transmittance 19

2.5.2.3 Radiance/Irradiance/Emissivity 20

2.5.2.4 1st Derivative 20

2.5.2.5 2nd Derivative 20

2.5.2.6 Parabolic Correction 20

2.5.2.7 Other Methods 21

2.6 Data Collection 21

2.7 Generation of the Metadata 21

2.7.1 Continuum Removal 22

2.8 Applications of ASD in Agriculture and Forestry 23

2.9 Future Importance, Limitations, and Recommendations 23

Acknowledgment 24

References 24

3 Geometric-Optical Modeling of Bidirectional Reflectance Distribution Function for Trees and Forest Stands 28
Nour El Islam Bachari, Salim Lamine, and Khaled Meharrar

3.1 Introduction 28

3.2 Model Description 29

3.2.1 Sunlit Surfaces 31

3.2.2 Shaded Surfaces 31

3.2.3 Forest Stand Modeling 32

3.3 General Shape of the Apparent Luminance 33

3.4 Simulation and Discussion 35

References 39

Section II Vegetation Resource Monitoring (Forest and Agriculture) 43

4 Mapping Stand Age of Indonesian Rubber Plantation Using Fully Polarimetric L-Band Synthetic Aperture Radar 45
Bambang H. Trisasongko

4.1 Introduction 45

4.2 Methodology 46

4.2.1 Test Site and Dataset 46

4.2.2 Processing 47

4.3 Results and Discussion 48

4.3.1 Scattering Behavior 48

4.3.2 Classification Using Backscatter Coefficients 50

4.3.3 Classification Using Model-Based Decomposition 51

4.3.4 The Role of Combining Datasets 51

4.3.5 The Best Subset 52

4.4 Conclusion 55

Acknowledgments 55

References 55

5 Responses of Multi-Frequency Remote Sensing to Forest Biomass 58
Suman Sinha, A. Santra, Laxmi Kant Sharma, Anup Kumar Das, C. Jeganathan, Shiv Mohan, S.S. Mitra, and M.S. Nathawat

5.1 Background 58

5.1.1 Optical Remote Sensing 59

5.1.2 Microwave Remote Sensing 62

5.1.3 LiDAR Remote/Sensing 63

5.1.4 Synergic Use of Multi-Sensor Data 65

5.2 A Case Study in the Mixed Tropical Deciduous Forest of India 66

5.2.1 Study Area 66

5.2.2 Datasets 67

5.2.3 Methodology 67

5.2.4 Results 67

5.2.5 Conclusion 67

5.3 Uncertainties and Future Scope of Research in Biomass Estimation 71

5.3.1 Summary 71

Acknowledgment 72

References 72

6 Crop Water Requirements Analysis Using Geoinformatics Techniques in the Water-Scarce Semi-Arid Watershed 81
K. Ibrahim-Bathis, S.A. Ahmed, V. Nischitha, and M.A. Mohammed-Aslam

6.1 Introduction 81

6.1.1 Crop Calendar 82

6.1.2 Crop Type Classification 83

6.1.3 Crop Water Requirements 86

6.1.4 CROPWAT Model 86

6.1.5 Meteorological Data 86

6.2 Reference Evapotranspiration (ETo) 86

6.2.1 Effective Rainfall 88

6.2.2 Crop Coefficient (Kc) 89

6.3 Soil Data 89

6.4 Crop Evapotranspiration (ETc) 90

6.5 Irrigation Water Requirement 90

6.6 Conclusion 91

Acknowledgment 92

References 92

7 Biophysical Characterization and Monitoring Large-Scale Water and Vegetation Anomalies by Remote Sensing in the Agricultural Growing Areas of the Brazilian Semi-Arid Region 94
Antônio Heriberto de Castro Teixeira, Janice Freitas Leivas, Edson Patto Pacheco, Edlene Aparecida Monteiro Garçon, and Celina Maki Takemura

7.1 Introduction 94

7.2 Material and Methods 96

7.3 Results and Discussion 99

7.4 Conclusions 104

Acknowledgments 105

References 105

Section III Soil and Land Resource Monitoring 111

8 SMOS L4 Downscaled Soil Moisture Product Evaluation Over a Two Year – Period in a Mediterranean Setting 113
Patrick N.L. Lamptey, George P. Petropoulos, and Prashant K. Srivastava

8.1 Introduction 113

8.2 Experimental Setup 116

8.3 Datasets Description 116

8.3.1 SMOS L4 SM Product (1 km) 116

8.3.2 In-situ Soil Moisture Data 118

8.4 Methodology 119

8.4.1 SSM Extraction from SMOS 119

8.4.2 Pre-Processing of SMOS 119

8.4.3 Agreement Evaluation 119

8.5 Results 120

8.5.1 Station ES-CPA 120

8.5.2 Station N9 122

8.5.3 Station M5 123

8.5.4 Station H7 123

8.5.5 Station K9 124

8.6 Discussion 126

8.7 Conclusions 127

Acknowledgments 128

References 128

9 Estimating Urban Population Density Using Remotely Sensed Imagery Products 132
Dimitris Triantakonstantis, Demetris Stathakis, and Zoi Papadopoulou

9.1 Introduction 132

9.2 Spatial Data Disaggregation–MAUP Problem 134

9.2.1 Spatial Interpolation 135

9.3 Materials and Methods 136

9.3.1 Study Area and Data Sources 136

9.3.2 Areal Interpolation Using Cokriging 137

9.4 Areal Interpolation Using Geographically Weighted Regression (GWR) 138

9.5 Results and Discussion 139

9.6 Conclusions 144

References 145

10 Impact of Land Cover Change on Surface Runoff 150
Apoorv Sood, S.K. Ghosh, and Priyadarshi Upadhyay

10.1 Introduction 150

10.2 Literature 151

10.3 Methodology 152

10.3.1 Supervised Classification 152

10.3.2 SWAT Model 153

10.3.3 SWAT Inputs 153

10.3.4 SWAT Outputs 154

10.4 Methodology 154

10.5 Study Area 154

10.5.1 Justification for Study Area Selection 154

10.6 Data Used 155

10.6.1 Weather Data 156

10.6.2 Satellite Data 158

10.6.2.1 LANDSAT Dataset 158

10.6.3 Digital Elevation Model 158

10.6.4 Soil Map 158

10.7 Results and Discussion 158

10.7.1 LU/LC Classification 158

10.7.2 LU/LC Map 1987 161

10.7.3 LU/LC Map 1997 161

10.7.4 LU/LC Map 2007 161

10.7.5 LU/LC Map 2017 161

10.7.6 Watershed Delineation 163

10.8 SWAT Results 164

10.8.1 HRU Analysis Report 164

10.8.2 Runoff Generated in Sub Basins 164

10.9 Conclusion 167

Acknowledgment 168

References 168

11 Delineation of Groundwater Potential Zone and Site Suitability of Rainwater Harvesting Structures Using Remote Sensing and In Situ Geophysical Measurements 170
Prachi Singh, Akash Anand, Prashant K. Srivastava, Arjun Singh, and Prem Chandra Pandey

11.1 Introduction 170

11.2 Study Area 171

11.3 Data Used and Methodology 172

11.3.1 Data Used 172

11.3.2 Methodology 173

11.3.3 Vertical Electrical Sounding 173

11.3.4 Weightage Calculation 174

11.4 Results and Discussion 175

11.4.1 Land Use and Land Cover (LULC) 175

11.4.2 Soil 175

11.4.3 Hydro-Geomorphology 176

11.4.4 Lithology 176

11.4.5 Drainage Density 178

11.4.6 Lineament Density 178

11.5 Resistivity Survey 179

11.5.1 VES Survey and Cross Section 179

11.5.2 Interpolated Subsurface Soil Profile 181

11.5.3 Groundwater Potential Zone 181

11.5.4 Suitable Sites for Rainwater Harvesting Structures 182

11.6 Conclusions 185

Acknowledgment 186

References 186

12 Structural Control on the Landscape Evolution of Son Alluvial Fan System in Ganga Foreland Basin 189
Manish Pandey, Yogesh Ray, Aman Arora, U.K. Shukla, and Shyam Ranjan

12.1 Introduction 189

12.2 Study Area 192

12.2.1 Geomorphological Setting of SAFS 192

12.2.2 Geology of the Son Valley and SAFS 196

12.2.3 Drainage 196

12.2.4 Climate 197

12.3 Materials and Methods 198

12.3.1 Data Used 198

12.3.2 Preprocessing of DEM 199

12.3.3 DEM Derived Parameters 199

12.3.4 Conceptual Background 199

12.3.4.1 Quantitative Measure of River Basin Dynamics/Reorganization 200

12.3.4.2 X (χ)-Metrics and Cross-Divide χ-Anomaly 200

12.3.4.3 Rationale Behind Experimental Use of χ-Transform for Alluvial Stream Long Profiles 203

12.3.5 Normalized Channel Steepness Index (ksn) and Channel Concavity Index (θ) Computation 205

12.3.6 Stream Sinuosity 205

12.3.7 Hypsometric Curve (HC) 206

12.4 Results and Discussion 206

12.4.1 Zones of (dis)equilibrium Over SAFS in Ganga Foreland Basin (GFB) 206

12.4.2 Sinuosity of Streams and Drainage Behavior Over SAFS 211

12.4.3 Extent of SAFS vis-à-vis Evolution of Ganga Plain 212

12.5 Conclusion and Recommendations 214

Acknowledgments 215

References 215

12.A Appendix A: Supplementary Figures 226

12.B Field Evidences of Neotectonic Activity (Source: Google Earth Pro) 240

12.C Longitudinal Profile of the Ganga and its Right Bank Tributaries Flowing over SAFS 242

12.D Lines of Cross-Sectional and Longitudinal Profiles 244

12.E SAFS Profiles from Pandey 2014 245

Section IV Water Resource Monitoring 247

13 Managing the Blue Carbon Ecosystem: A Remote Sensing and GIS Approach 249
Parul Maurya, Anup Kumar Das, and Rina Kumari

13.1 Introduction 249

13.2 Blue Carbon Ecosystem 249

13.2.1 Distribution 250

13.2.2 Mangrove 251

13.2.3 Seagrass 251

13.2.4 Salt Marshes 252

13.3 Factors Affecting Carbon Storage in Blue Carbon Ecosystems 253

13.4 Carbon Storage in the Blue Carbon Ecosystem 254

13.5 Pathways of Carbon in the Blue Carbon Ecosystem 254

13.6 Evaluation of Long-Term Carbon Deposition in Sediments 255

13.7 Ecosystem Services 256

13.8 Threats to Coastal Blue Carbon Ecosystems 256

13.9 Economy of Blue Carbon Ecosystems 257

13.10 Management 258

13.11 Conservation of Blue Carbon Ecosystem: A Remote Sensing Approach 258

13.11.1 Role of Optical Remote Sensing 259

13.11.2 Mapping the Mangrove Cover and Change Detection 259

13.12 Quantification of Biophysical Variables 260

13.12.1 Phenology 260

13.12.2 Role of Hyperspectral Remote Sensing 260

13.12.3 Mangrove-Mapping and Dynamics Studies Using Radar Data 261

13.12.4 Dependence on Frequency 261

13.12.5 Species Identification 261

13.13 Conclusion 262

Acknowledgment 262

References 262

14 Appraising the Changing Climate and Extent of Snow in the Kashmir Himalaya Using MODIS Data 269
Seema Rani

14.1 Introduction 269

14.2 Study Area 270

14.3 Materials and Methods 271

14.4 Results and Discussions 273

14.4.1 Trend in Air Temperature 273

14.4.2 Trend in Snow Cover Area 275

14.4.3 Variations in SCA Under Elevation Zones 278

14.5 Conclusion 282

Acknowledgments 283

References 283

15 Knowledge-Based Mapping of Debris-Covered Glaciers in the Greater Himalayan Range 287
Swagata Ghosh and Raaj Ramsankaran

15.1 Introduction 287

15.1.1 Overview of Ablation Pattern of Glaciers in the Western Himalaya 288

15.1.2 Overview of Glacier Mapping Techniques 288

15.2 Study Area 290

15.3 Data Sources 291

15.4 Methodology 292

15.4.1 Pre-Processing of Satellite Data 293

15.4.2 Knowledge-Based Approach 295

15.4.2.1 Segregation of Snow and Ice from Other Land Covers Using Spectral Index 295

15.4.2.2 Segregation Between Snow and Ice Types Using Spectral Indices 298

15.4.2.3 Segregation of Supraglacial Debris Types from Non-Glacier Area 298

15.5 Results and Discussions 299

15.5.1 Accuracy Assessment of Supraglacial Covers Mapping of Pensilungpa Glacier 303

15.5.2 Knowledge-Based Approach Versus Manual Digitization for Mapping Pensilungpa Glacier 304

15.5.3 Uncertainty Analysis 306

15.5.4 Knowledge-Based Approach Versus Supervised Classification for Mapping Pensilungpa Glacier 307

15.5.5 Evaluation of Spatiotemporal Application Potential of the Knowledge-Based Approach 311

15.6 Summary and Conclusions 312

15.7 Future Scope 315

References 315

16 Seawater Intrusion and Salinity Mapping in Coastal Aquifers: A Geospatial Approach 323
Tanushree and Rina Kumari

16.1 Introduction 323

16.1.1 Water Stress in Coastal Aquifers Due to Salinity: A Global Concern 323

16.1.2 Salinization of Aquifers in Semiarid Regions 324

16.1.3 Seawater Intrusion: Basic Concept 324

16.1.4 Various Approaches to Study Seawater Intrusion 325

16.2 Aquifer Vulnerability Concept 326

16.2.1 Vulnerability Types 327

16.2.1.1 Intrinsic Vulnerability 327

16.2.1.2 Specific Vulnerability 327

16.2.2 Aquifer Vulnerability Due to Seawater Intrusion 327

16.2.3 Methods to Assess Vulnerability 327

16.2.3.1 Sensitivity Analysis 328

16.2.4 Significance 331

16.2.5 Geophysical Approaches 332

16.2.5.1 Electromagnetic Surveys 332

16.2.5.2 Time Domain Electromagnetic (TDEM) 333

16.2.5.3 Frequency Domain Electromagnetic (FEM) 333

16.2.5.4 Self-Potential 333

16.2.5.5 Ground Penetrating Radar 333

16.2.6 Numerical Model for Explaining Seawater Intrusion 334

16.2.7 Remote Sensing for Salinity Mapping 334

16.2.7.1 Optical Remote Sensing for Salinity Mapping 334

16.2.7.2 Hyperspectral Remote Sensing 335

16.2.7.3 Microwave Remote Sensing for Salinity Mapping 335

16.3 Conclusion 336

Acknowledgments 337

References 337

17 Wetland-Inundated Area Modeling and Monitoring Using Supervised and Machine Learning Classifiers 346
Swapan Talukdar, Sakshi Mankotia, Md Shamimuzzaman, Shahfahad, and Susanta Mahato

17.1 Introduction 346

17.2 Study Area 348

17.3 Data Sources and Methods 349

17.3.1 Data Sources 349

17.3.2 Methods for Wetland-Inundated Area Mapping 349

17.3.2.1 Methods for Machine Learning Classifiers 350

17.3.2.2 Method for Supervised Classifiers 352

17.3.3 Methods for Accuracy Assessment of Wetland-Inundation Area Mapping 352

17.3.4 Methods of Modeling Wetland Landscape Transformation 353

17.4 Results and Discussion 353

17.4.1 Wetland Mapping Using Different Classifiers 353

17.4.2 Validation of the Methods 354

17.4.3 Spatiotemporal Analysis of Hydrological Variability of the Wetlands 356

17.4.4 Fragmentation Analysis of the Hydrological Variability 357

17.5 Conclusion 360

Acknowledgment 360

References 360

18 A Focus on Reaggregation of Playa Wetland scapes in the Face of Global Ecological Disconnectivity 366
Laxmi Kant Sharma, Rajashree Naik, and Prem Chandra Pandey

18.1 Introduction 366

18.2 Global Ecological Disconnectivity 367

18.3 Playa Wetland scapes 367

18.3.1 Importance 368

18.3.2 Threats 368

18.3.3 Playas of India 370

18.4 Indian Playa Wetland scapes for Global Ecological Connectivity 371

18.5 Reaggregation of Playa Wetland scapes 374

18.6 Recent Approaches Used for Wetland scape Studies 375

18.7 Limitations of Current Wetland scape Studies 377

18.8 Scope of Integrated Playa Wetland scape Modeling 380

Acknowledgment 381

References 381

Section V Disaster Monitoring of Natural Resources 389

19 Flood Damage Assessment in a Part of the Ganga-Brahmaputra Plain Region, India 391
Rajesh Kumar

19.1 Introduction 391

19.2 Study Area 393

19.3 Materials and Methods 393

19.4 Results and Discussion 395

19.4.1 Flood-Prone and Flooded Areas 395

19.4.2 Flood Damage and Flood Protection Works 396

19.4.3 Trends in Flood Damage and Peak Flood Discharge 398

19.5 Conclusions 400

Acknowledgments 401

Declaration 401

References 401

20 Texture-Based Riverine Feature Extraction and Flood Mapping Using Satellite Images 405
Kuldeep, P.K. Garg, and R.D. Garg

20.1 Introduction 405

20.2 Related Work 406

20.3 The Study Area and Data Resources 408

20.4 Methodology 408

20.4.1 Geometric Correction and Image Enhancement 408

20.4.2 Texture Feature Extraction and Optimal Feature Selection 409

20.4.3 Texture-Based Classification 411

20.4.4 Flood Hazard Mapping for Identification of Safe Islands 411

20.4.4.1 Flood Inundation Mapping 411

20.4.4.2 Validation of Flood Extent 412

20.4.4.3 Damage Assessment 412

20.5 Results and Discussions 413

20.5.1 Feature Selection and Classification 413

20.5.2 Flood Hazard Mapping 418

20.5.3 HEC-RAS Processing and Model Validation 419

20.5.4 Flood Damage Assessment 421

20.6 Conclusion 424

Acknowledgment 426

References 426

21 Numerical Simulation and Comparison of Tsunami Inundation for Different Satellite-Derived Datasets for the Gujarat Coast of India 431
Shafique Matin and S.S. Praveen

21.1 Introduction 431

21.2 Study Area 432

21.3 Methodology 432

21.3.1 Extraction of Different Satellite-Derived Datasets 432

21.3.2 Numerical Modeling 434

21.4 Results and Discussion 436

21.4.1 Analysis of Datasets 439

21.4.2 Parallel Transects 440

21.4.3 Perpendicular Transects 440

21.5 Conclusions 442

Acknowledgments 442

References 443

Section VI Future Aspect of Natural Resource Monitoring 445

22 Future Aspects and Potential of the Remote Sensing Technology to Meet the Natural Resource Needs 447
Laxmi Kant Sharma, Rajit Gupta, and Prem Chandra Pandey

22.1 Introduction 447

22.2 Advances in Remote Sensing for Natural Resources Monitoring 449

22.3 Potential Applications in Natural Resource Monitoring 451

22.4 Challenges and Future Aspects 453

22.5 Conclusion 455

Acknowledgment 456

References 456

Index 465

Advances in Remote Sensing for Natural Resource

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      Publisher: John Wiley and Sons Ltd
      Publication Date: 18/02/2021
      ISBN13: 9781119615972, 978-1119615972
      ISBN10: 1119615976

      Description

      Book Synopsis
      Sustainable management of natural resources is an urgent need, given the changing climatic conditions of Earth systems. The ability to monitor natural resources precisely and accurately is increasingly important. New and advanced remote sensing tools and techniques are continually being developed to monitor and manage natural resources in an effective way. Remote sensing technology uses electromagnetic sensors to record, measure and monitor even small variations in natural resources. The addition of new remote sensing datasets, processing techniques and software makes remote sensing an exact and cost-effective tool and technology for natural resource monitoring and management. Advances in Remote Sensing for Natural Resources Monitoring provides a detailed overview of the potential applications of advanced satellite data in natural resource monitoring. The book determines how environmental and - ecological knowledge and satellite-based information can be effectively combined to addre

      Table of Contents

      List of Abbreviations xix

      List of Contributors xxix

      List of Editors xxxv

      Preface xxxvii

      Section I General Section 1

      1 Introduction to Natural Resource Monitoring Using Remote Sensing Technology 3
      Prem Chandra Pandey and Laxmi Kant Sharma

      1.1 Introduction 3

      References 6

      2 Spectroradiometry: Types, Data Collection, and Processing 9
      Prem Chandra Pandey, Manish Kumar Pandey, Ayushi Gupta, Prachi Singh, and Prashant K. Srivastava

      2.1 Introduction 9

      2.2 Literature Review 10

      2.3 The Types of Spectroradiometry 12

      2.3.1 Spectroradiometry 13

      2.3.2 Photometry and Colorimetry 13

      2.4 Principle of the Spectroradiometer 13

      2.5 Radiance Measurement 16

      2.5.1 Factors Affecting Spectral Reflectance Measurements 17

      2.5.2 Data Processing 18

      2.5.2.1 Radiometric Calibration 18

      2.5.2.2 Reflectance/Transmittance 19

      2.5.2.3 Radiance/Irradiance/Emissivity 20

      2.5.2.4 1st Derivative 20

      2.5.2.5 2nd Derivative 20

      2.5.2.6 Parabolic Correction 20

      2.5.2.7 Other Methods 21

      2.6 Data Collection 21

      2.7 Generation of the Metadata 21

      2.7.1 Continuum Removal 22

      2.8 Applications of ASD in Agriculture and Forestry 23

      2.9 Future Importance, Limitations, and Recommendations 23

      Acknowledgment 24

      References 24

      3 Geometric-Optical Modeling of Bidirectional Reflectance Distribution Function for Trees and Forest Stands 28
      Nour El Islam Bachari, Salim Lamine, and Khaled Meharrar

      3.1 Introduction 28

      3.2 Model Description 29

      3.2.1 Sunlit Surfaces 31

      3.2.2 Shaded Surfaces 31

      3.2.3 Forest Stand Modeling 32

      3.3 General Shape of the Apparent Luminance 33

      3.4 Simulation and Discussion 35

      References 39

      Section II Vegetation Resource Monitoring (Forest and Agriculture) 43

      4 Mapping Stand Age of Indonesian Rubber Plantation Using Fully Polarimetric L-Band Synthetic Aperture Radar 45
      Bambang H. Trisasongko

      4.1 Introduction 45

      4.2 Methodology 46

      4.2.1 Test Site and Dataset 46

      4.2.2 Processing 47

      4.3 Results and Discussion 48

      4.3.1 Scattering Behavior 48

      4.3.2 Classification Using Backscatter Coefficients 50

      4.3.3 Classification Using Model-Based Decomposition 51

      4.3.4 The Role of Combining Datasets 51

      4.3.5 The Best Subset 52

      4.4 Conclusion 55

      Acknowledgments 55

      References 55

      5 Responses of Multi-Frequency Remote Sensing to Forest Biomass 58
      Suman Sinha, A. Santra, Laxmi Kant Sharma, Anup Kumar Das, C. Jeganathan, Shiv Mohan, S.S. Mitra, and M.S. Nathawat

      5.1 Background 58

      5.1.1 Optical Remote Sensing 59

      5.1.2 Microwave Remote Sensing 62

      5.1.3 LiDAR Remote/Sensing 63

      5.1.4 Synergic Use of Multi-Sensor Data 65

      5.2 A Case Study in the Mixed Tropical Deciduous Forest of India 66

      5.2.1 Study Area 66

      5.2.2 Datasets 67

      5.2.3 Methodology 67

      5.2.4 Results 67

      5.2.5 Conclusion 67

      5.3 Uncertainties and Future Scope of Research in Biomass Estimation 71

      5.3.1 Summary 71

      Acknowledgment 72

      References 72

      6 Crop Water Requirements Analysis Using Geoinformatics Techniques in the Water-Scarce Semi-Arid Watershed 81
      K. Ibrahim-Bathis, S.A. Ahmed, V. Nischitha, and M.A. Mohammed-Aslam

      6.1 Introduction 81

      6.1.1 Crop Calendar 82

      6.1.2 Crop Type Classification 83

      6.1.3 Crop Water Requirements 86

      6.1.4 CROPWAT Model 86

      6.1.5 Meteorological Data 86

      6.2 Reference Evapotranspiration (ETo) 86

      6.2.1 Effective Rainfall 88

      6.2.2 Crop Coefficient (Kc) 89

      6.3 Soil Data 89

      6.4 Crop Evapotranspiration (ETc) 90

      6.5 Irrigation Water Requirement 90

      6.6 Conclusion 91

      Acknowledgment 92

      References 92

      7 Biophysical Characterization and Monitoring Large-Scale Water and Vegetation Anomalies by Remote Sensing in the Agricultural Growing Areas of the Brazilian Semi-Arid Region 94
      Antônio Heriberto de Castro Teixeira, Janice Freitas Leivas, Edson Patto Pacheco, Edlene Aparecida Monteiro Garçon, and Celina Maki Takemura

      7.1 Introduction 94

      7.2 Material and Methods 96

      7.3 Results and Discussion 99

      7.4 Conclusions 104

      Acknowledgments 105

      References 105

      Section III Soil and Land Resource Monitoring 111

      8 SMOS L4 Downscaled Soil Moisture Product Evaluation Over a Two Year – Period in a Mediterranean Setting 113
      Patrick N.L. Lamptey, George P. Petropoulos, and Prashant K. Srivastava

      8.1 Introduction 113

      8.2 Experimental Setup 116

      8.3 Datasets Description 116

      8.3.1 SMOS L4 SM Product (1 km) 116

      8.3.2 In-situ Soil Moisture Data 118

      8.4 Methodology 119

      8.4.1 SSM Extraction from SMOS 119

      8.4.2 Pre-Processing of SMOS 119

      8.4.3 Agreement Evaluation 119

      8.5 Results 120

      8.5.1 Station ES-CPA 120

      8.5.2 Station N9 122

      8.5.3 Station M5 123

      8.5.4 Station H7 123

      8.5.5 Station K9 124

      8.6 Discussion 126

      8.7 Conclusions 127

      Acknowledgments 128

      References 128

      9 Estimating Urban Population Density Using Remotely Sensed Imagery Products 132
      Dimitris Triantakonstantis, Demetris Stathakis, and Zoi Papadopoulou

      9.1 Introduction 132

      9.2 Spatial Data Disaggregation–MAUP Problem 134

      9.2.1 Spatial Interpolation 135

      9.3 Materials and Methods 136

      9.3.1 Study Area and Data Sources 136

      9.3.2 Areal Interpolation Using Cokriging 137

      9.4 Areal Interpolation Using Geographically Weighted Regression (GWR) 138

      9.5 Results and Discussion 139

      9.6 Conclusions 144

      References 145

      10 Impact of Land Cover Change on Surface Runoff 150
      Apoorv Sood, S.K. Ghosh, and Priyadarshi Upadhyay

      10.1 Introduction 150

      10.2 Literature 151

      10.3 Methodology 152

      10.3.1 Supervised Classification 152

      10.3.2 SWAT Model 153

      10.3.3 SWAT Inputs 153

      10.3.4 SWAT Outputs 154

      10.4 Methodology 154

      10.5 Study Area 154

      10.5.1 Justification for Study Area Selection 154

      10.6 Data Used 155

      10.6.1 Weather Data 156

      10.6.2 Satellite Data 158

      10.6.2.1 LANDSAT Dataset 158

      10.6.3 Digital Elevation Model 158

      10.6.4 Soil Map 158

      10.7 Results and Discussion 158

      10.7.1 LU/LC Classification 158

      10.7.2 LU/LC Map 1987 161

      10.7.3 LU/LC Map 1997 161

      10.7.4 LU/LC Map 2007 161

      10.7.5 LU/LC Map 2017 161

      10.7.6 Watershed Delineation 163

      10.8 SWAT Results 164

      10.8.1 HRU Analysis Report 164

      10.8.2 Runoff Generated in Sub Basins 164

      10.9 Conclusion 167

      Acknowledgment 168

      References 168

      11 Delineation of Groundwater Potential Zone and Site Suitability of Rainwater Harvesting Structures Using Remote Sensing and In Situ Geophysical Measurements 170
      Prachi Singh, Akash Anand, Prashant K. Srivastava, Arjun Singh, and Prem Chandra Pandey

      11.1 Introduction 170

      11.2 Study Area 171

      11.3 Data Used and Methodology 172

      11.3.1 Data Used 172

      11.3.2 Methodology 173

      11.3.3 Vertical Electrical Sounding 173

      11.3.4 Weightage Calculation 174

      11.4 Results and Discussion 175

      11.4.1 Land Use and Land Cover (LULC) 175

      11.4.2 Soil 175

      11.4.3 Hydro-Geomorphology 176

      11.4.4 Lithology 176

      11.4.5 Drainage Density 178

      11.4.6 Lineament Density 178

      11.5 Resistivity Survey 179

      11.5.1 VES Survey and Cross Section 179

      11.5.2 Interpolated Subsurface Soil Profile 181

      11.5.3 Groundwater Potential Zone 181

      11.5.4 Suitable Sites for Rainwater Harvesting Structures 182

      11.6 Conclusions 185

      Acknowledgment 186

      References 186

      12 Structural Control on the Landscape Evolution of Son Alluvial Fan System in Ganga Foreland Basin 189
      Manish Pandey, Yogesh Ray, Aman Arora, U.K. Shukla, and Shyam Ranjan

      12.1 Introduction 189

      12.2 Study Area 192

      12.2.1 Geomorphological Setting of SAFS 192

      12.2.2 Geology of the Son Valley and SAFS 196

      12.2.3 Drainage 196

      12.2.4 Climate 197

      12.3 Materials and Methods 198

      12.3.1 Data Used 198

      12.3.2 Preprocessing of DEM 199

      12.3.3 DEM Derived Parameters 199

      12.3.4 Conceptual Background 199

      12.3.4.1 Quantitative Measure of River Basin Dynamics/Reorganization 200

      12.3.4.2 X (χ)-Metrics and Cross-Divide χ-Anomaly 200

      12.3.4.3 Rationale Behind Experimental Use of χ-Transform for Alluvial Stream Long Profiles 203

      12.3.5 Normalized Channel Steepness Index (ksn) and Channel Concavity Index (θ) Computation 205

      12.3.6 Stream Sinuosity 205

      12.3.7 Hypsometric Curve (HC) 206

      12.4 Results and Discussion 206

      12.4.1 Zones of (dis)equilibrium Over SAFS in Ganga Foreland Basin (GFB) 206

      12.4.2 Sinuosity of Streams and Drainage Behavior Over SAFS 211

      12.4.3 Extent of SAFS vis-à-vis Evolution of Ganga Plain 212

      12.5 Conclusion and Recommendations 214

      Acknowledgments 215

      References 215

      12.A Appendix A: Supplementary Figures 226

      12.B Field Evidences of Neotectonic Activity (Source: Google Earth Pro) 240

      12.C Longitudinal Profile of the Ganga and its Right Bank Tributaries Flowing over SAFS 242

      12.D Lines of Cross-Sectional and Longitudinal Profiles 244

      12.E SAFS Profiles from Pandey 2014 245

      Section IV Water Resource Monitoring 247

      13 Managing the Blue Carbon Ecosystem: A Remote Sensing and GIS Approach 249
      Parul Maurya, Anup Kumar Das, and Rina Kumari

      13.1 Introduction 249

      13.2 Blue Carbon Ecosystem 249

      13.2.1 Distribution 250

      13.2.2 Mangrove 251

      13.2.3 Seagrass 251

      13.2.4 Salt Marshes 252

      13.3 Factors Affecting Carbon Storage in Blue Carbon Ecosystems 253

      13.4 Carbon Storage in the Blue Carbon Ecosystem 254

      13.5 Pathways of Carbon in the Blue Carbon Ecosystem 254

      13.6 Evaluation of Long-Term Carbon Deposition in Sediments 255

      13.7 Ecosystem Services 256

      13.8 Threats to Coastal Blue Carbon Ecosystems 256

      13.9 Economy of Blue Carbon Ecosystems 257

      13.10 Management 258

      13.11 Conservation of Blue Carbon Ecosystem: A Remote Sensing Approach 258

      13.11.1 Role of Optical Remote Sensing 259

      13.11.2 Mapping the Mangrove Cover and Change Detection 259

      13.12 Quantification of Biophysical Variables 260

      13.12.1 Phenology 260

      13.12.2 Role of Hyperspectral Remote Sensing 260

      13.12.3 Mangrove-Mapping and Dynamics Studies Using Radar Data 261

      13.12.4 Dependence on Frequency 261

      13.12.5 Species Identification 261

      13.13 Conclusion 262

      Acknowledgment 262

      References 262

      14 Appraising the Changing Climate and Extent of Snow in the Kashmir Himalaya Using MODIS Data 269
      Seema Rani

      14.1 Introduction 269

      14.2 Study Area 270

      14.3 Materials and Methods 271

      14.4 Results and Discussions 273

      14.4.1 Trend in Air Temperature 273

      14.4.2 Trend in Snow Cover Area 275

      14.4.3 Variations in SCA Under Elevation Zones 278

      14.5 Conclusion 282

      Acknowledgments 283

      References 283

      15 Knowledge-Based Mapping of Debris-Covered Glaciers in the Greater Himalayan Range 287
      Swagata Ghosh and Raaj Ramsankaran

      15.1 Introduction 287

      15.1.1 Overview of Ablation Pattern of Glaciers in the Western Himalaya 288

      15.1.2 Overview of Glacier Mapping Techniques 288

      15.2 Study Area 290

      15.3 Data Sources 291

      15.4 Methodology 292

      15.4.1 Pre-Processing of Satellite Data 293

      15.4.2 Knowledge-Based Approach 295

      15.4.2.1 Segregation of Snow and Ice from Other Land Covers Using Spectral Index 295

      15.4.2.2 Segregation Between Snow and Ice Types Using Spectral Indices 298

      15.4.2.3 Segregation of Supraglacial Debris Types from Non-Glacier Area 298

      15.5 Results and Discussions 299

      15.5.1 Accuracy Assessment of Supraglacial Covers Mapping of Pensilungpa Glacier 303

      15.5.2 Knowledge-Based Approach Versus Manual Digitization for Mapping Pensilungpa Glacier 304

      15.5.3 Uncertainty Analysis 306

      15.5.4 Knowledge-Based Approach Versus Supervised Classification for Mapping Pensilungpa Glacier 307

      15.5.5 Evaluation of Spatiotemporal Application Potential of the Knowledge-Based Approach 311

      15.6 Summary and Conclusions 312

      15.7 Future Scope 315

      References 315

      16 Seawater Intrusion and Salinity Mapping in Coastal Aquifers: A Geospatial Approach 323
      Tanushree and Rina Kumari

      16.1 Introduction 323

      16.1.1 Water Stress in Coastal Aquifers Due to Salinity: A Global Concern 323

      16.1.2 Salinization of Aquifers in Semiarid Regions 324

      16.1.3 Seawater Intrusion: Basic Concept 324

      16.1.4 Various Approaches to Study Seawater Intrusion 325

      16.2 Aquifer Vulnerability Concept 326

      16.2.1 Vulnerability Types 327

      16.2.1.1 Intrinsic Vulnerability 327

      16.2.1.2 Specific Vulnerability 327

      16.2.2 Aquifer Vulnerability Due to Seawater Intrusion 327

      16.2.3 Methods to Assess Vulnerability 327

      16.2.3.1 Sensitivity Analysis 328

      16.2.4 Significance 331

      16.2.5 Geophysical Approaches 332

      16.2.5.1 Electromagnetic Surveys 332

      16.2.5.2 Time Domain Electromagnetic (TDEM) 333

      16.2.5.3 Frequency Domain Electromagnetic (FEM) 333

      16.2.5.4 Self-Potential 333

      16.2.5.5 Ground Penetrating Radar 333

      16.2.6 Numerical Model for Explaining Seawater Intrusion 334

      16.2.7 Remote Sensing for Salinity Mapping 334

      16.2.7.1 Optical Remote Sensing for Salinity Mapping 334

      16.2.7.2 Hyperspectral Remote Sensing 335

      16.2.7.3 Microwave Remote Sensing for Salinity Mapping 335

      16.3 Conclusion 336

      Acknowledgments 337

      References 337

      17 Wetland-Inundated Area Modeling and Monitoring Using Supervised and Machine Learning Classifiers 346
      Swapan Talukdar, Sakshi Mankotia, Md Shamimuzzaman, Shahfahad, and Susanta Mahato

      17.1 Introduction 346

      17.2 Study Area 348

      17.3 Data Sources and Methods 349

      17.3.1 Data Sources 349

      17.3.2 Methods for Wetland-Inundated Area Mapping 349

      17.3.2.1 Methods for Machine Learning Classifiers 350

      17.3.2.2 Method for Supervised Classifiers 352

      17.3.3 Methods for Accuracy Assessment of Wetland-Inundation Area Mapping 352

      17.3.4 Methods of Modeling Wetland Landscape Transformation 353

      17.4 Results and Discussion 353

      17.4.1 Wetland Mapping Using Different Classifiers 353

      17.4.2 Validation of the Methods 354

      17.4.3 Spatiotemporal Analysis of Hydrological Variability of the Wetlands 356

      17.4.4 Fragmentation Analysis of the Hydrological Variability 357

      17.5 Conclusion 360

      Acknowledgment 360

      References 360

      18 A Focus on Reaggregation of Playa Wetland scapes in the Face of Global Ecological Disconnectivity 366
      Laxmi Kant Sharma, Rajashree Naik, and Prem Chandra Pandey

      18.1 Introduction 366

      18.2 Global Ecological Disconnectivity 367

      18.3 Playa Wetland scapes 367

      18.3.1 Importance 368

      18.3.2 Threats 368

      18.3.3 Playas of India 370

      18.4 Indian Playa Wetland scapes for Global Ecological Connectivity 371

      18.5 Reaggregation of Playa Wetland scapes 374

      18.6 Recent Approaches Used for Wetland scape Studies 375

      18.7 Limitations of Current Wetland scape Studies 377

      18.8 Scope of Integrated Playa Wetland scape Modeling 380

      Acknowledgment 381

      References 381

      Section V Disaster Monitoring of Natural Resources 389

      19 Flood Damage Assessment in a Part of the Ganga-Brahmaputra Plain Region, India 391
      Rajesh Kumar

      19.1 Introduction 391

      19.2 Study Area 393

      19.3 Materials and Methods 393

      19.4 Results and Discussion 395

      19.4.1 Flood-Prone and Flooded Areas 395

      19.4.2 Flood Damage and Flood Protection Works 396

      19.4.3 Trends in Flood Damage and Peak Flood Discharge 398

      19.5 Conclusions 400

      Acknowledgments 401

      Declaration 401

      References 401

      20 Texture-Based Riverine Feature Extraction and Flood Mapping Using Satellite Images 405
      Kuldeep, P.K. Garg, and R.D. Garg

      20.1 Introduction 405

      20.2 Related Work 406

      20.3 The Study Area and Data Resources 408

      20.4 Methodology 408

      20.4.1 Geometric Correction and Image Enhancement 408

      20.4.2 Texture Feature Extraction and Optimal Feature Selection 409

      20.4.3 Texture-Based Classification 411

      20.4.4 Flood Hazard Mapping for Identification of Safe Islands 411

      20.4.4.1 Flood Inundation Mapping 411

      20.4.4.2 Validation of Flood Extent 412

      20.4.4.3 Damage Assessment 412

      20.5 Results and Discussions 413

      20.5.1 Feature Selection and Classification 413

      20.5.2 Flood Hazard Mapping 418

      20.5.3 HEC-RAS Processing and Model Validation 419

      20.5.4 Flood Damage Assessment 421

      20.6 Conclusion 424

      Acknowledgment 426

      References 426

      21 Numerical Simulation and Comparison of Tsunami Inundation for Different Satellite-Derived Datasets for the Gujarat Coast of India 431
      Shafique Matin and S.S. Praveen

      21.1 Introduction 431

      21.2 Study Area 432

      21.3 Methodology 432

      21.3.1 Extraction of Different Satellite-Derived Datasets 432

      21.3.2 Numerical Modeling 434

      21.4 Results and Discussion 436

      21.4.1 Analysis of Datasets 439

      21.4.2 Parallel Transects 440

      21.4.3 Perpendicular Transects 440

      21.5 Conclusions 442

      Acknowledgments 442

      References 443

      Section VI Future Aspect of Natural Resource Monitoring 445

      22 Future Aspects and Potential of the Remote Sensing Technology to Meet the Natural Resource Needs 447
      Laxmi Kant Sharma, Rajit Gupta, and Prem Chandra Pandey

      22.1 Introduction 447

      22.2 Advances in Remote Sensing for Natural Resources Monitoring 449

      22.3 Potential Applications in Natural Resource Monitoring 451

      22.4 Challenges and Future Aspects 453

      22.5 Conclusion 455

      Acknowledgment 456

      References 456

      Index 465

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