Publication details
- Publisher: Norsk Regnesentral
- Series: NR-notat ()
- Year: 2017
- Number of pages: 27
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Link:
- ARKIV: hdl.handle.net/11250/5097725
Climate studies often fit linear trends to data. In many cases simplifying assumptions such as independent errors and constant variance are used. We review a variety of approaches to estimating linear trends, and illustrate with US temperature data how oversimplified assumptions may lead to false significance. We outline a variety of methods to fit nonlinear trend models. Using the Berkeley Earth global data set we show that a bent cable fit is better than a linear fit for this series. We also review spatial and spatiotemporal trend models in mean, variance and extremes, as well as models with long term memory structure.