Title: Accounting for sediment sources and sinks in the linear regression analysis of the suspended sediment load of streams: The Rio Puerco, New Mexico, as an example
Abstract: This study addresses the effects of sediment sources and sinks on the simulation of the suspended sediment load in streams by linear regression. The study investigates the sediment load of the Rio Puerco, an ephemeral stream in central New Mexico, which produces one of the highest suspended sediment loads in the United States and the world.The suspended sediment load in the Rio Puerco is simulated by linear regression on a daily, monthly, and annual basis. The monthly regression relationship yielded the highest correlation coefficient (0.93) compared to the daily (0.87) and annual (0.90) relationships. Hence, the monthly relationship is chosen to investigate the impact of sources and sinks on the suspended sediment load.The effects of sources and sinks are determined by fitting three regression lines through the data. This has allowed the calculation of the amounts of sediment gained from sources and those lost to sinks. Accounting for the effects of sources and sinks has resulted in a significant increase in the correlation coefficient of the two regression variables, the monthly suspended sediment load (Y) and the monthly water discharge (X). The correlation coefficient has increased from 0.93 to 0.98. This, in turn, has led to substantial improvement in the accuracy of the prediction of the suspended load using linear regression. The absolute value of the percent deviation of the annual predicted loads from the observed values has a median of 12.9% and a mean of 20.2% for the proposed approach, which considers sources and sinks, compared to a median of 38.5% and a mean of 45.7% for the existing traditional approach, which does not account for sources and sinks.
Publication Year: 2007
Publication Date: 2007-03-01
Language: en
Type: article
Indexed In: ['crossref']
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Cited By Count: 9
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