4.5 Article

Estimation of suspended sediment concentration in the Saint John River using rating curves and a machine learning approach

Journal

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/02626667.2015.1051982

Keywords

suspended sediment; model; model tree; machine learning; regression; sediment rating curve

Funding

  1. Saint John Port Authority
  2. Natural Sciences and Engineering Research Council of Canada
  3. WATER CREATE program

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Sedimentation in navigable waterways and harbours is of concern for many water and port managers. One potential source of variability in sedimentation is the annual sediment load of the river that empties in the harbour. The main objective of this study was to use some of the regularly monitored hydro-meteorological variables to compare estimates of hourly suspended sediment concentration in the Saint John River using a sediment rating curve and a model tree (M5') with different combinations of predictors. Estimated suspended sediment concentrations were multiplied by measured flows to estimate suspended sediment loads. Best results were obtained using M5' with four predictors, returning an R-2 of 0.72 on calibration data and an R-2 of 0.46 on validation data. Total load was underestimated by 1.41% for the calibration period and overestimated by 2.38% for the validation period. Overall, the model tree approach is suggested for its relative ease of implementation and constant performance.

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