I have multiple sets of time history data collected at approximately 500 Hz for 12 hours at a time.
I've plotted this data using an
type="l" on a log time scale, as the phenomenon is largely a logarithmic decay.
The resulting plots are enormous pdf files that take a long time to render and inflate the file size of my sweaved document, as I assume each individual data point is being plotted, which is total overkill. The plots could be reasonably reproduced with orders of magnitude fewer points.
type="smooth" fixes the rendering and file size issue, but the loess smoothing drastically alters the shape of the lines, even after toying with the loess smoothing parameters, so I've given up on loess smoothing as an option here.
Is there a simple way to either post-process the plot to simplify it, or to sub-sample the data before plotting?
If subsampling the data, I would think that it would be beneficial to do so in a sort of inverse-log way, where data near zero has a high time frequency (use all 500 Hz from the source data), but as time goes on the frequency of data decreases (even 0.01 Hz would be more than sufficient near t=12 hours)--this would give a more-or-less equal plot resolution across the log time scale.