Title :
A penalized maximum likelihood approach for m-year precipitation return values estimation with lattice spatial data
Author :
Wei Zheng ; Jun Zhang ; Hengchang Liu ; Jinyang Li
Abstract :
Climate models are useful tools for simulating the uncertainties of climate change under different emission scenarios. Regional Climate Models are high resolution climate models which generate high-dimensional spatio-temporal output. To effectively summarize such output without subsampling is important but difficult. One important aspect in climate assessment is the characteristic of extreme precipitation events and m-year precipitation return values are often computed as the summary statistics of the extreme precipitation events. In this paper we present a Penalized Maximum Likelihood (PML) method to estimate precipitation return values with Generalized Extreme Value distribution (GEV). With PML models, we have a different set of GEV parameters at each spatial location and we add smoothness penalties on parameters based on prior belief that the neighboring parameters should vary smoothly. The penalization terms are selected by data-driven approaches. We evaluate the uncertainty of the estimates using pointwise standard deviations.
Keywords :
atmospheric precipitation; atmospheric techniques; maximum likelihood estimation; spatiotemporal phenomena; climate assessment; climate change; data-driven approaches; emission scenarios; extreme precipitation events; generalized extreme value distribution; high resolution climate models; high-dimensional spatiotemporal output; lattice spatial data; m-year precipitation return values estimation; penalization terms; penalized maximum likelihood approach; pointwise standard deviations; regional climate models; smoothness penalties; spatial location; subsampling; Bayes methods; Biological system modeling; Maximum likelihood estimation; Meteorology; Shape; Standards;
Conference_Titel :
Communications in China - Workshops (CIC/ICCC), 2014 IEEE/CIC International Conference on
DOI :
10.1109/ICCChinaW.2014.7107859