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      기계학습모형을 이용한 다분광 위성 영상 기반 낙동강 부유 물질 농도 계측 기법 개발 = Development of suspended solid concentration measurement technique based on multi-spectral satellite imagery in Nakdong River using machine learning model

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      https://www.riss.kr/link?id=A107341924

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      다국어 초록 (Multilingual Abstract)

      Suspended Solids (SS) generated in rivers are mainly introduced from non-point pollutants or appear naturally in the water body, and are an important water quality factor that may cause long-term water pollution by being deposited. However, the conven...

      Suspended Solids (SS) generated in rivers are mainly introduced from non-point pollutants or appear naturally in the water body, and are an important water quality factor that may cause long-term water pollution by being deposited. However, the conventional method of measuring the concentration of suspended solids is labor-intensive, and it is difficult to obtain a vast amount of data via point measurement. Therefore, in this study, a model for measuring the concentration of suspended solids based on remote sensing in the Nakdong River was developed using Sentinel-2 data that provides high-resolution multi-spectral satellite images. The proposed model considers the spectral bands and band ratios of various wavelength bands using a machine learning model, Support Vector Regression (SVR), to overcome the limitation of the existing remote sensing-based regression equations. The optimal combination of variables was derived using the Recursive Feature Elimination (RFE) and weight coefficients for each variable of SVR. The results show that the 705nm band belonging to the red-edge wavelength band was estimated as the most important spectral band, and the proposed SVR model produced the most accurate measurement compared with the previous regression equations. By using the RFE, the SVR model developed in this study reduces the variable dependence compared to the existing regression equations based on the single spectral band or band ratio and provides more accurate prediction of spatial distribution of suspended solids concentration.

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      참고문헌 (Reference)

      1 Du, Y., "Water bodies’ mapping from Sentinel-2 imagery with modified normalized difference water index at 10-m spatial resolution produced by sharpening the swir band" 8 (8): 354-, 2016

      2 Pham, Q. V., "Using landsat-8 images for quantifying suspended sediment concentration in red river (Northern Vietnam)" 10 (10): 1841-, 2018

      3 Umar, M., "Use of multispectral satellite remote sensing to assess mixing of suspended sediment downstream of large river confluences" 556 : 325-338, 2018

      4 Joshi, I. D., "Turbidity in Apalachicola Bay, Florida from Landsat 5 TM and field data: Seasonal patterns and response to extreme events" 9 : 367-, 2017

      5 Dethier, E. N., "Toward Improved accuracy of remote sensing approaches for quantifying suspended sediment: Implications for suspended sediment monitoring" 125 (125): e2019JF005-, 2020

      6 Shi, H., "The spatiotemporal evolution of river island based on Landsat satellite imagery, hydrodynamic numerical simulation and observed data" 10 (10): 2046-, 2018

      7 Lodhi, M. A., "The potential for remote sensing of loess soils suspended in surface waters" 33 (33): 111-117, 1997

      8 Vapnik, V., "The nature of statistical learning theory" Springer-Verlag 1995

      9 Chen, Z. M., "The form of the relationship between suspended sediment concentration and spectral reflectance‒Its implications for the use of Daedalus 1268 data" 12 (12): 215-222, 1991

      10 Novo, E. M. M., "The effect of sediment type on the relationship between reflectance and suspended sediment concentration" 10 (10): 1283-1289, 1989

      1 Du, Y., "Water bodies’ mapping from Sentinel-2 imagery with modified normalized difference water index at 10-m spatial resolution produced by sharpening the swir band" 8 (8): 354-, 2016

      2 Pham, Q. V., "Using landsat-8 images for quantifying suspended sediment concentration in red river (Northern Vietnam)" 10 (10): 1841-, 2018

      3 Umar, M., "Use of multispectral satellite remote sensing to assess mixing of suspended sediment downstream of large river confluences" 556 : 325-338, 2018

      4 Joshi, I. D., "Turbidity in Apalachicola Bay, Florida from Landsat 5 TM and field data: Seasonal patterns and response to extreme events" 9 : 367-, 2017

      5 Dethier, E. N., "Toward Improved accuracy of remote sensing approaches for quantifying suspended sediment: Implications for suspended sediment monitoring" 125 (125): e2019JF005-, 2020

      6 Shi, H., "The spatiotemporal evolution of river island based on Landsat satellite imagery, hydrodynamic numerical simulation and observed data" 10 (10): 2046-, 2018

      7 Lodhi, M. A., "The potential for remote sensing of loess soils suspended in surface waters" 33 (33): 111-117, 1997

      8 Vapnik, V., "The nature of statistical learning theory" Springer-Verlag 1995

      9 Chen, Z. M., "The form of the relationship between suspended sediment concentration and spectral reflectance‒Its implications for the use of Daedalus 1268 data" 12 (12): 215-222, 1991

      10 Novo, E. M. M., "The effect of sediment type on the relationship between reflectance and suspended sediment concentration" 10 (10): 1283-1289, 1989

      11 Islam, M. R., "Suspended sediment in the Ganges and Brahmaputra Rivers in Bangladesh:Observation from TM and AVHRR data" 15 : 493-509, 2001

      12 Peterson, K. T., "Suspended sediment concentration estimation from landsat imagery along the lower missouri and middle Mississippi Rivers using an extreme learning machine" 10 (10): 1503-, 2018

      13 Beschta, R. L., "Streamside management forestry and fishery interactions" University of Washington, Institute of Forest Resources 191-232, 1987

      14 Gin, K. Y. H., "Spectral irradiance profiles of suspended marine clay for the estimation of suspended sediment concentration in tropical waters" 24 : 3235-3245, 2003

      15 Wright, D, "Sentinel-2 as a tool for quantifying suspended particulate matter in the Tamar Estuary" 11 : 3-33, 2018

      16 Chu, V. W., "Sediment plume response to surface melting and supraglacial lake drainages on the Greenland ice sheet" 55 (55): 1072-1082, 2009

      17 Wang, J. J., "Retrieval of suspended sediment concentrations in large turbid rivers using Landsat ETM+: An example from the Yangtze River, China" 34 (34): 1082-1092, 2009

      18 Doxaran, D., "Remote-sensing reflectance of turbid sediment-dominated waters, reduction of sediment type variations and changing illumination conditions effects by use of reflectance ratios" 42 (42): 2623-2634, 2003

      19 Arisanty, D., "Remote sensing studies of suspended sediment concentration variation in barito delta" 98 : 0-6, 2017

      20 Wang, J. J., "Remote sensing of suspended sediment concentrations of large rivers using multi-temporal MODIS images: An example in the middle and lower Yangtze River, China" 31 (31): 1103-1111, 2010

      21 Bhargava, D. S., "Light penetration depth, turbidity and reflectance related relationships and models" 46 (46): 217-230, 1991

      22 Ma, R., "Investigation of chlorophyll-a and total suspended matter concentrations using landsat ETM and field spectral measurement in Taihu Lake, China" 26 : 2779-2795, 2005

      23 Islam, A., "Image calibration to like- values in mapping shallow water quality from multi temporal data" 69 (69): 567-575, 2003

      24 Guyon, I., "Gene selection for cancer classification using support vector machines" 46 : 389-422, 2002

      25 Pal, M., "Feature selection for classification of hyperspectral data by SVM" 48 : 2297-2307, 2010

      26 Caballero, I., "Evaluation of the first year of operational Sentinel-2A data for retrieval of suspended solids in medium- to high-turbidity waters" 10 (10): 982-, 2018

      27 Ismail, K., "Evaluating the potential of Sentinel-2 satellite images for water quality characterization of artificial reservoirs: The Bin El Ouidane Reservoir case study (Morocco)" 7 (7): 31-39, 2019

      28 Wang, J. J., "Estimation of suspended sediment concentrations using Terra MODIS: An example from the Lower Yangtze River, China" 408 (408): 1131-1138, 2010

      29 Fang, G., "Detecting marine intrusion into rivers using EO-1 ALI satellite imagery:Modaomen Waterway, Pearl River Estuary, China" 31 (31): 4125-4146, 2010

      30 Dekkera, A. G., "Comparison of remote sensing data, model results and in-situ data for to- tal suspended matter žTSM/in the southern Frisian lakes" 268 : 197-214, 2001

      31 Chi, M., "Classification of hyperspectral remote-sensing data with primal SVM for small-sized training dataset problem" 41 : 1793-1799, 2008

      32 Svab, E., "Characterizing the spectral reflectance of algae in lake waters with high suspended sediment concentrations" 26 : 919-928, 2005

      33 Lim, J., "Assessment of water quality based on Landsat 8 operational land imager associated with human activities in Korea" 187 : 1-17, 2015

      34 Liu, H., "Application of sentinel 2 MSI images to retrieve suspended particulate matter concentrations in Poyang Lake" 9 : 761-, 2017

      35 Vanhellemont, Q., "Advantages of high quality SWIR bands for ocean colour processing: Examples from Landsat-8" 161 : 89-106, 2015

      36 Vanhellemont, Q., "ACOLITE For Sentinel-2:Aquatic Applications of MSI Imagery" 740 : 55-, 2016

      37 Osadchiev, A., "A method for quantifying freshwater discharge rates from satellite observations and Lagrangian numerical modeling of river plumes" 10 : 085009-, 2015

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      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      2027 평가예정 재인증평가 신청대상 (재인증)
      2021-01-01 평가 등재학술지 유지 (재인증) KCI등재
      2018-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2015-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2011-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2009-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2007-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2005-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2002-07-01 평가 등재학술지 선정 (등재후보2차) KCI등재
      2000-01-01 평가 등재후보학술지 선정 (신규평가) KCI등재후보
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      학술지 인용정보

      학술지 인용정보
      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 0.5 0.5 0.57
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      0.55 0.54 0.781 0.22
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