Assessment of Neural Networks for Stream-Water-Temperature Prediction
- URL: http://arxiv.org/abs/2110.04254v1
- Date: Fri, 8 Oct 2021 17:04:42 GMT
- Title: Assessment of Neural Networks for Stream-Water-Temperature Prediction
- Authors: Stefanie Mohr and Konstantina Drainas and Juergen Geist
- Abstract summary: A mechanistic understanding of the drivers and magnitude of expected changes is essential in identifying system resilience and mitigation measures.
We present a selection of state-of-the-art Neural Networks (NN) for the prediction of water temperatures in six streams in Germany.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Climate change results in altered air and water temperatures. Increases
affect physicochemical properties, such as oxygen concentration, and can shift
species distribution and survival, with consequences for ecosystem functioning
and services. These ecosystem services have integral value for humankind and
are forecasted to alter under climate warming. A mechanistic understanding of
the drivers and magnitude of expected changes is essential in identifying
system resilience and mitigation measures. In this work, we present a selection
of state-of-the-art Neural Networks (NN) for the prediction of water
temperatures in six streams in Germany. We show that the use of methods that
compare observed and predicted values, exemplified with the Root Mean Square
Error (RMSE), is not sufficient for their assessment. Hence we introduce
additional analysis methods for our models to complement the state-of-the-art
metrics. These analyses evaluate the NN's robustness, possible maximal and
minimal values, and the impact of single input parameters on the output. We
thus contribute to understanding the processes within the NN and help
applicants choose architectures and input parameters for reliable water
temperature prediction models.
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