Biased results are generally caused by (1) too coarse a resolution of the model domain in which small-scale details are excluded or smoothed, (2) biased parameterization and boundary inputs, which can lead to significant differences between the model results even
if they are based on the same equations; such effects can be greatly amplified during a long-term run, (3) scant knowledge of interactions between different scale processes, and (4) the deterministic results of process-based models, in which the stochastic dimension inherent to the natural systems we are working with is ignored (de Vriend 2001). Climate change is assumed to be linear, and short-term MI-773 concentration fluctuations are excluded from our current modelling work. The authors BMS-754807 mouse admit that there is large uncertainty of climate change in the future and it is not possible to specify accurate climate input conditions for future predictions. Thus, our results are projection results based on certain particular climate scenarios rather than accurate future predictions. The aim of this study is to identify the key coastal areas most vulnerable to climate change impacts, such as accelerated sea level rise and increased storm frequency, and reveal the nonlinear
effects on the coastal morphological evolution caused by these climate factors. Although uncertainty of climate change exists, the hypothesis of linear climate change
seems to be acceptable for the simulation of the Darss-Zingst peninsula from 1696 to 2300. This is probably due to two main reasons: (1) the research area has a relatively stable coastline boundary, which does not allow for much change caused by stochastic climate fluctuations; (2) studies of the North Atlantic Oscillation N-acetylglucosamine-1-phosphate transferase (NAO), which turns out to be an important factor influencing the climate of the Baltic Sea in winter (Klavins et al. 2009), indicate that although variability has existed on an annual scale during the last two centuries (HELCOM 2006), the 30-year averaged NAO index series of the last three centuries fluctuates slightly from the value of zero (Trouet et al. 2009). This supports the feasibility of periodic climate inputs generated on the basis of the 50-year wind data analysis for the historical hindcast or future projection on a centennial scale in the model. However, this hypothesis may be violated when the model is applied to a longer time span (millennial scale), as the model boundary is more variable and the non-linear effects caused by the linear parameterization of climate conditions can accumulate and may ultimately dominate the results. The estimation and quantification of these uncertainties for the simulation of millennial-scale coastal evolution (either hindcast or prediction) remain a challenge for our model work.