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Python based reader for SnowMicroPen® .pnt measurements
...The SMP can be used in different application areas as snow profiling (avalanche forecasting, snow stratigraphy, remote sensing ground truth), ski track characterization (ski racing) or snow runway characterization (stability testing).
A detailed nitrogen model inside of a simple ecological model
This is an simple ecological model for lakes and reservoirs that contains a very detailed description of the most relevant nitrogen processes.
The model is not very complete, but the main intention is to develop a library to be coupled with other models and use the full-mixed model as a testing version.
A lot of things can be improved. I will read all the suggestions but I cannot promise that I will include all of them. Every new part of the code will contain the name of the author. If someone contributes improving the capabilities of this model in a substantial way, I will include that person as co-author of the model in the next version release. ...
Methods and testing of methods for automatic analysis of in situ cyclic
voltammetry data.
This, at least initially, is the code from my masters thesis, which was
done as a contribution to a larger project called Aevum. Aevum is being
developed at t