stmv__gstat = function( p=NULL, dat=NULL, pa=NULL, nu=NULL, phi=NULL, varObs=NULL, varSpatial=NULL, ... ) {
#\\ this is the core engine of stmv .. localised space (no-time) modelling interpolation
#\\ note: time is not being modelled and treated independently
#\\ .. you had better have enough data in each time slice .. essentially this is kriging
if (!exists( "stmv_gstat_formula", p)) p$stmv_gstat_formula = formula( paste( p$stmv_variables$Y, "~ 1 "))
sdTotal = sd(dat[[ p$stmv_variables$Y ]], na.rm=T)
approx_range = phi*sqrt( 8*nu)
dat$mean = NA
pa = data.table(pa)
pa$mean = NA
pa$sd = sdTotal # leave as this as sd estimation is too expensive
vns = c( p$stmv_variables$LOCS, p$stmv_variables$Y)
for ( ti in 1:p$nt ) {
if ( exists("TIME", p$stmv_variables) ) {
xi = which( dat[[p$stmv_variables$TIME ]] == p$prediction_ts[ti] )
pa_i = which( pa[[ p$stmv_variables$TIME]]==p$prediction_ts[ti])
} else {
xi = 1:nrow(dat) # all data as p$nt==1
pa_i = 1:nrow(pa)
}
xy = dat[xi, ..vns ]
vMod0 = vgm(psill=varSpatial, model="Mat", range=phi, nugget=varObs, kappa=nu ) # starting model parameters
gs = gstat(id = "hmk", formula=p$stmv_gstat_formula, locations=~plon+plat, data=xy[xi,], maxdist=approx_range, nmin=p$stmv_nmin, nmax=p$stmv_nmax, force=TRUE, model=vMod0 )
# this step adds a lot of time ..
preds = predict(gs, newdata=xy[xi,] )
dat$mean[xi] = as.vector( preds[,1] )
ss = try( lm( dat$mean[xi] ~ dat[xi] [[ p$stmv_variables$Y ]], na.action=na.omit))
if ( inherits(ss, "try-error") ) next()
rsquared = summary(ss)$r.squared
if (rsquared < p$stmv_rsquared_threshold ) next()
gsp = predict(gs, newdata=pa[pa_i,] ) # slow for large n
pa$mean[pa_i] = as.vector(gsp[,1] )
pa$sd[pa_i] = as.vector(gsp[,2] )
}
# plot(pred ~ z , dat)
# lattice::levelplot( mean ~ plon + plat, data=pa, col.regions=heat.colors(100), scale=list(draw=FALSE) , aspect="iso" )
ss = try( lm( dat$mean ~ dat[[p$stmv_variables$Y]], na.action=na.omit))
if ( inherits(ss, "try-error") ) return( NULL )
rsquared = summary(ss)$r.squared
if (rsquared < p$stmv_rsquared_threshold ) return(NULL)
stmv_stats = list( sdTotal=sdTotal, rsquared=rsquared, ndata=nrow(dat) )
return( list( predictions=pa, stmv_stats=stmv_stats ) )
}
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