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The Southern Hemisphere at glacial terminations: insights from the Dome C ice core

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Figure

Fig. 1.Figure 1. Overview of entire data set. Shown are 0.55 m averages of δD (green) and 100 year averages of the logarithm of nssCa Overview of entire data set
Figure 2. Example of RAMPFIT results for δD at Termination II. The black line represents the ramp that best fits the data based on weighted least-squares regression
Figure 2. Example of RAMPFIT results for δD at Termination II. The black line represents
Fig. 4. Glacial terminations and ramps (black) estimated by RAMPFIT. δD in ‰(green), nssCa2+ (blue) and ssNafluxes (red) in+ 2+ and nssCa2+ Figure 4
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