Application of Data Mining Tools for Long-Term Quantitative and Qualitative Prediction of Streamflow

作者:Mirzaei Nodoushan Fahimeh; Bozorg Haddad Omid*; Fallah Mehdipour Elahe; Loaiciga Hugo A
来源:Journal of Irrigation and Drainage Engineering, 2016, 142(12): 04016061.
DOI:10.1061/(ASCE)IR.1943-4774.0001096

摘要

This paper evaluates the performances of two long-term prediction approaches for streamflow and riverine total dissolve solids (TDS) and compares their results with observed data and with short-term predicted values. The future values predicted by the first, long-term, prediction approach (Approach 1) depend on data corresponding to time steps prior to the prediction time step. The future values predicted by the second, long-term, prediction approach (Approach 2) depend on data comprised within the observational period. Each long-term prediction approach calculates streamflow and TDS over a 12-month period ranging from April through March (Scheme 1) and by agricultural water year (December through November, Scheme 2). Genetic programming (GP) is implemented for long-term prediction. Prediction is applied to the streamflow and TDS of the Karoon River in southwestern Iran. The long-term Approach 1 was found to be more accurate than the long-term Approach 2 judged by the values of several diagnostic statistics. The root mean square error (RMSE), correlation coefficient (R-2), and Nash-Sutcliffe efficiency (E) statistics of long-term predictions of streamflow and TDS with Approach 1 are lower than those obtained with the long-term prediction Approach 2 for April-March and for the agricultural water-year predictions. It is concluded that prediction of the Karoon River's streamflow and TDS is best accomplished using GP in combination with the long-term prediction Approach 1.

  • 出版日期2016-12

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