Missing precipitation data estimation using optimal proximity metric-based imputation,nearest-neighbour classification and cluster-based interpolation methods |
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Authors: | Ramesh S. V. Teegavarapu |
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Affiliation: | 1. Department of Civil, Environmental and Geomatics, Florida Atlantic University, Boca Raton, Florida, USArteegava@fau.edu |
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Abstract: | ![]() AbstractNew optimal proximity-based imputation, K-nearest neighbour (K-NN) classification and K-means clustering methods are proposed and developed for estimation of missing daily precipitation records. Mathematical programming formulations are developed to optimize the weighting, classification and clustering schemes used in these methods. Ten different binary and real-valued distance metrics are used as proximity measures. Two climatic regions, Kentucky and Florida, (temperate and tropical) in the USA, with different gauge density and network structure, are used as case studies to evaluate the new methods. A comprehensive exercise is undertaken to compare the performances of the new methods with those of several deterministic and stochastic spatial interpolation methods. The results from these comparisons indicate that the proposed methods performed better than existing methods. Use of optimal proximity metrics as weights, spatial clustering of observation sites and classification of precipitation data resulted in improvement of missing data estimates.Editor D. Koutsoyiannis; Associate editor C. Onof |
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Keywords: | missing precipitation records K-nearest neighbour imputation K-means clustering proximity metrics optimization deterministic and stochastic interpolation methods |
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