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Space-time processes NRCSE. Separability Separable covariance structure: Cov(Z(x,t),Z(y,s))=C S (x,y)C T (s,t) Nonseparable alternatives Temporally varying.

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Presentation on theme: "Space-time processes NRCSE. Separability Separable covariance structure: Cov(Z(x,t),Z(y,s))=C S (x,y)C T (s,t) Nonseparable alternatives Temporally varying."— Presentation transcript:

1 Space-time processes NRCSE

2 Separability Separable covariance structure: Cov(Z(x,t),Z(y,s))=C S (x,y)C T (s,t) Nonseparable alternatives Temporally varying spatial covariances Fourier approach Completely monotone functions

3 SARMAP revisited Spatial correlation structure depends on hour of the day:

4 Bruno’s seasonal nonseparability Nonseparability generated by seasonally changing spatial term (uniformly modulated at each time) Z 1 large-scale feature Z 2 separable field of local features (Bruno, 2004)

5 General stationary space-time covariances Cressie & Huang (1999): By Bochner’s theorem, a continuous, bounded, symmetric integrable C(h;u) is a space- time covariance function iff is a covariance function for all . Usage: Fourier transform of C  (u) Problem: Need to know Fourier pairs

6 Spectral density Under stationarity and separability, If spatially nonstationary, write Define the spatial coherency as Under separability this is independent of frequency τ

7 Estimation Let (variance stabilizing) where R is estimated using

8 Models-3 output

9 ANOVA results ItemdfrssP-value Between points 10.1290.68 Between freqs 511.140.0008 Residual50.346

10 Coherence plot a 3,b 3 a 6,b 6

11 A class of Matérn-type nonseparable covariances  =1: separable  =0: time is space (at a different rate) scale spatial decay temporal decay space-time interaction

12

13 Chesapeake Bay wind field forecast (July 31, 2002)

14 Fuentes model Prior equal weight on  =0 and  =1. Posterior: mass (essentially) 0 for  =0 for regions 1, 2, 3, 5; mass 1 for region 4.

15 Another approach Gneiting (2001): A function f is completely monotone if (-1) n f (n) ≥0 for all n. Bernstein’s theorem shows that for some non- decreasing F. In particular,is a spatial covariance function for all dimensions iff f is completely monotone. The idea is now to combine a completely monotone function and a function  with completey monotone derivative into a space-time covariance

16 Some examples

17 A particular case  =1/2,  =1/2  =1/2,  =1  =1,  =1/2  =1,  =1

18 Velocity-driven space-time covariances C S covariance of purely spatial field V (random) velocity of field Space-time covariance Frozen field model: P(V=v)=1 (e.g. prevailing wind)

19 Irish wind data Daily average wind speed at 11 stations, 1961-70, transformed to “velocity measures” Spatial: exponential with nugget Temporal: Space-time: mixture of Gneiting model and frozen field

20 Evidence of asymmetry Time lag 1 Time lag 2 Time lag 3

21 A national US health effects study

22

23 Trend model where V ik are covariates, such as population density, proximity to roads, local topography, etc. where the f j are smoothed versions of temporal singular vectors (EOFs) of the TxN data matrix. We will set  1 (s i ) =  0 (s i ) for now.

24 SVD computation

25 EOF 1

26 EOF 2

27 EOF 3

28

29 Kriging of  0

30 Kriging of  2

31 Quality of trend fits

32 Observed vs. predicted

33 A model for counts Work by Monica Chiogna, Carlo Gaetan, U. Padova Blue grama (Bouteloua gracilis)

34 The data Yearly counts of blue grama plants in a series of 1 m 2 quadrats in a mixed grass prairie (38.8N, 99.3W) in Hays, Kansas, between 1932 and1972 (41 years).

35 Some views

36 Modelling Aim: See if spatial distribution is changing with time. Y(s,t)  (s,t) ~ Po( (s,t)) log( (s,t)) = constant + fixed effect of temp & precip + trend + weighted average of principal fields

37 Principal fields

38 Coefficients

39 Years


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