Scaling, Similarity, and the Fourth Paradigm for Hydrology
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Luis Samaniego | Remko Uijlenhoet | Ross Woods | Niko E C Verhoest | Martyn Clark | Kevin Achieng | Trenton E Franz | Tim van Emmerik | N. Verhoest | M. Clark | R. Woods | R. Uijlenhoet | C. Peters-Lidard | L. Samaniego | T. Franz | Christa D Peters-Lidard | T. V. van Emmerik | K. Achieng
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