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Predicting Spatial Patterns in Precipitation Isotope ( δ 2 H and δ 18 O) Seasonality Using Sinusoidal Isoscapes
Author(s) -
Allen Scott T.,
Kirchner James W.,
Goldsmith Gregory R.
Publication year - 2018
Publication title -
geophysical research letters
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.007
H-Index - 273
eISSN - 1944-8007
pISSN - 0094-8276
DOI - 10.1029/2018gl077458
Subject(s) - seasonality , precipitation , stable isotope ratio , isotope , environmental science , amplitude , tracer , spatial variability , atmospheric sciences , spatial ecology , sine , climatology , ecology , mathematics , meteorology , statistics , biology , geology , physics , geometry , quantum mechanics , nuclear physics
Understanding how precipitation isotopes vary spatially and temporally is important for tracer applications. We tested how well month‐to‐month variations in precipitation δ 18 O and δ 2 H were captured by sinusoidal cycles, and how well spatial variations in these seasonal cycles could be predicted, across Switzerland. Sine functions representing seasonal cycles in precipitation isotopes explained between 47% and 94% of the variance in monthly δ 18 O and δ 2 H values at each monitoring site. A significant sinusoidal cycle was also observed in line‐conditioned excess. We interpolated the amplitudes, phases, and offsets of these sine functions across the landscape, using multiple linear regression models based on site characteristics. These interpolated maps, here referred to as a sinusoidal isoscape, reproduced monthly observations with prediction errors that were smaller than or similar to those of other isoscapes. Sinusoidal isoscapes are likely broadly useful because they concisely describe seasonal isotopic behavior and can be estimated efficiently from sparse or irregular data.