Some advanced methods in extreme value analysis Peter Guttorp NR and UW.

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Some advanced methods in extreme value analysis Peter Guttorp NR and UW

Transcript of Some advanced methods in extreme value analysis Peter Guttorp NR and UW.

Page 1: Some advanced methods in extreme value analysis Peter Guttorp NR and UW.

Some advanced methods in extreme

value analysis

Peter Guttorp

NR and UW

Page 2: Some advanced methods in extreme value analysis Peter Guttorp NR and UW.

Outline

Nonstationary models

Extreme dependence (Cooley)

When a POT approach is better than a block max approach (Wehner and Paciorek)

A Bayesian space-time model

An extreme climate event

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Trends

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What do we mean by trends in extreme

values?

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Time-dependent location estimates

Stockholm data(Guttorp and Xu, Environmetrics 2011)

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Simple model

Model Estimate -LLR

Fixed μ, all -16.6 706.0

Fixed μ, early -18.1336.8

Fixed μ, late -14.2 350.2

Early + late 687.0

Linear model in μ (-18.9,-14.0) 687.9

A linear change in mean value for annual minima seems a good model.

Modal prediction for 2050: -11.5°C

2100: -10.5°C

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Extreme dependence

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Measuring dependence

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Storm surges and wave heights

Risk region

Most of these data are not extreme!

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Describing “tail dependence”

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Estimating H

Transform margins to Frechet; keep largest 150 obs (95th %ile)

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Density of H

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Probability of risk region

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Block extremes vs peaks over threshold

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Climate model output

Daily precip from 450 year control run of climate model (long stationary series)

Fit GEV to seasonal max

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POT analysis

99th percentile

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Why are the two analyses so different?

Desert regions: large amount of lack of precipitation. GEV therefore will include many zeros, while GPD only uses data where high values are actually recorded.

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Space-time data

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Some temperature data

SMHI synoptic stations in south central Sweden, 1961-2008

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Annual minimum temperatures and

rough trends

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Location slope vs latitude

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Dependence between stations

Sveg Malung Karlstad

Sundsvall 19 12 13

Sveg 25 11

Malung 10

Common coldest day in 48 years5 common to all 4 northern stations

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Max stable processes

Independent processes Yi(x)

(e.g. space-time processes with weak temporal dependence)

A difficulty is that we cannot compute the joint distribution of more than 2-3 locations. So no likelihood.

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Spatial model

where

Allows borrowing estimation strength from other sites

Can include more sites in analysis

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Trend estimates

Posterior probability of slope ≤ 0 is very small everywhere

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Spatial structure of parameters

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Location slope vs latitude

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Prediction Borlänge

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A different kindof extreme event

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What made Gudrun so destructive?

Hurricane Gudrun, Sweden, January 2005. 15 deaths, 340 000 households without power up to 4 weeks.

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Consequences

75 million cubic feet of forest fell (normal annual production)

Wind speeds up to 40 m/s

Forest damage due to large amounts of precipitation, temperatures around 0°C, high winds

Much work on multivariate extreme asymptotics needs all components to be extreme–here temperature is not.

Want (limiting) conditional distribution of wind given temperature and previous precipitation

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The Heffernan-Tawn approach

Assume we can find normalizing factors a-i(yi), b-i(yi) so that

where G-i has non-degenerate margins.

Pick aji(yi) so that

and

where hji is the conditional hazard function of Yj given Yi=yi.

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Asymptotic properties

Let .

Then given Yi>u,

Yi - u and Z-i are asymptotically independent as . Furthermore

Fitting using observed data; forecasting using regional model output

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Some R software

ExtRemes

ismev

evlr

SpatialExtremes