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reproduce.R
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reproduce.R
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# reproduce the results of the paper
library(devtools)
install_github("mengluchu/multibandsBFAST/multibandsBFAST")
library(multibandsBFAST)
require(zoo)
require(stargazer)
require(plyr)
#data
data(Boliviaarrno)
data(Brazilarrno)
data(Boliviaarr)
data(Brazilarr)
data(Braziltime)
data(time_B1000)
# for validation
data(BDbo)
data(BDbr)
data(bobo5)
data(brbo5)
data(valichartbo)
data(valichartbr)
## Bolivia site
## can increase the mc.cores for paralle processing
historypca <- mcwrap(multibandsarr = Boliviaarr, multibandsarrno = Boliviaarrno, timearr = time_B1000,
history = "all", lastordetect = "last", scoreselect = F, sca = F, hisweight = T,
moy = 1, mc.cores = 1)
pcascore <- mcwrap(multibandsarr = Boliviaarr, multibandsarrno = Boliviaarrno, timearr = time_B1000,
history = "all", lastordetect = "last", scoreselect = T, sca = F, hisweight = F,
moy = 1, mc.cores = 1)
# vegetation indices
# preprocess # note: preprocess each bands instead of the vegetation indices
Boliviaarrno <- aaply(Boliviaarrno, c(1, 2), rmsat) #remove extreme value outside valid range (1-10000)
Boliviaarrno <- aaply(Boliviaarrno, c(1, 2), removedips) # remove low value
Boliviaarr <- aaply(Boliviaarr, c(1, 2), rmsat) #remove extreme value outside valid range (1-10000)
Boliviaarr <- aaply(Boliviaarr, c(1, 2), removedips) # remove low value
ndmiarr <- (Boliviaarr[4, , ] - Boliviaarr[5, , ])/(Boliviaarr[4, , ] + Boliviaarr[5,
, ])
ndviarr <- (Boliviaarr[4, , ] - Boliviaarr[3, , ])/(Boliviaarr[4, , ] + Boliviaarr[3,
, ])
ndmiarrno <- (Boliviaarrno[4, , ] - Boliviaarrno[5, , ])/(Boliviaarrno[4, , ] + Boliviaarrno[5,
, ])
ndviarrno <- (Boliviaarrno[4, , ] - Boliviaarrno[3, , ])/(Boliviaarrno[4, , ] + Boliviaarrno[3,
, ])
# tct indices
tctbo <- tct(Boliviaarr, 236)
tctbono <- tct(Boliviaarrno, 236)
#
NDVI <- wrapVI(multibandsarr = ndviarr, multibandsarrno = ndviarrno, timearr = time_B1000,
history = "all", moy = 1)
NDMI <- wrapVI(multibandsarr = ndmiarr, multibandsarrno = ndmiarrno, timearr = time_B1000,
history = "all", moy = 1)
tctbright <- wrapVI(multibandsarr = tctbo[[1]], multibandsarrno = tctbono[[1]], timearr = time_B1000,
history = "all", moy = 1)
tctgreen <- wrapVI(multibandsarr = tctbo[[2]], multibandsarrno = tctbono[[2]], timearr = time_B1000,
history = "all", moy = 1)
tctwet <- wrapVI(multibandsarr = tctbo[[3]], multibandsarrno = tctbono[[3]], timearr = time_B1000,
history = "all", moy = 1)
##### Brazil site ################################
historypcabr <- mcwrap(multibandsarr = Brazilarr, multibandsarrno = Brazilarrno, timearr = Braziltime,
history = "all", lastordetect = "last", scoreselect = F, sca = F, hisweight = T,
moy = 1, mc.cores = 1)
pcascorebr <- mcwrap(multibandsarr = Brazilarr, multibandsarrno = Brazilarrno, timearr = Braziltime,
history = "all", lastordetect = "last", scoreselect = T, sca = F, hisweight = F,
moy = 1, mc.cores=1)
## vegetation indices
Brazilarr <- aaply(Brazilarr, c(1, 2), rmsat) #remove extreme value outside valid range (1-10000)
Brazilarr <- aaply(Brazilarr, c(1, 2), removedips) # remove low value
Brazilarrno <- aaply(Brazilarrno, c(1, 2), rmsat) #remove extreme value outside valid range (1-10000)
Brazilarrno <- aaply(Brazilarrno, c(1, 2), removedips) # remove low value
ndmiarrbr <- (Brazilarr[4, , ] - Brazilarr[5, , ])/(Brazilarr[4, , ] + Brazilarr[5,
, ])
ndviarrbr <- (Brazilarr[4, , ] - Brazilarr[3, , ])/(Brazilarr[4, , ] + Brazilarr[3,
, ])
ndmiarrnobr <- (Brazilarrno[4, , ] - Brazilarrno[5, , ])/(Brazilarrno[4, , ] + Brazilarrno[5,
, ])
ndviarrnobr <- (Brazilarrno[4, , ] - Brazilarrno[3, , ])/(Brazilarrno[4, , ] + Brazilarrno[3,
, ])
# tct
tctbr <- tct(Brazilarr, 120)
tctbrno <- tct(Brazilarrno, 120)
NDVIbr <- wrapVI(multibandsarr = ndviarrbr, multibandsarrno = ndviarrnobr, timearr = Braziltime,
history = "all", moy = 1)
NDMIbr <- wrapVI(multibandsarr = ndmiarrbr, multibandsarrno = ndmiarrnobr, timearr = Braziltime,
history = "all", moy = 1)
tctbrightbr <- wrapVI(multibandsarr = tctbr[[1]], multibandsarrno = tctbrno[[1]],
timearr = Braziltime, history = "all", moy = 1)
tctgreenbr <- wrapVI(multibandsarr = tctbr[[2]], multibandsarrno = tctbrno[[2]],
timearr = Braziltime, history = "all", moy = 1)
tctwetbr <- wrapVI(multibandsarr = tctbr[[3]], multibandsarrno = tctbrno[[3]], timearr = Braziltime,
history = "all", moy = 1)
valichartbo[, "historyPCA"] <- historypca
valichartbo[, "PCAscore"] <- pcascore
valichartbo[, "ndvi2"] <- NDVI
valichartbo[, "ndmi2"] <- NDMI
valichartbo[, "tctbright"] <- tctbright
valichartbo[, "tctgreen"] <- tctgreen
valichartbo[, "tctwet"] <- tctwet
valichartbr[, "historyPCA"] <- historypcabr
valichartbr[, "PCAscore"] <- pcascorebr
valichartbr[, "ndvi"] <- NDVIbr
valichartbr[, "ndmi"] <- NDMIbr
valichartbr[, "tctbright"] <- tctbrightbr
valichartbr[, "tctgreen"] <- tctgreenbr
valichartbr[, "tctwet"] <- tctwetbr
# validation bolivia
bovali <- valitable(cx2 = valichartbo, oridensetime = time_B1000, EarlyDateIsCommission = T,
oritemplate = bobo5, totalp = 1136, nofchange = 103, colmWith = 2)
# Brazil
brvali <- valitable(valichartbr, Braziltime, brbo5, totalp = 470, EarlyDateIsCommission = T,
nofchange = 141, colmWith = 2)
# generate table
stargazer(brvali, summary = FALSE)
stargazer(bovali, summary = FALSE)
#####################################
# return ts tts <- returnts2(inputarr = Boliviaarrno, timearr = time_B1000,
# tctl1=256, loca = i, preprocess = F, monitoryear = 2005 )
# reproduce pc loading figure
rep_figloading <- function(arr, timearr, varname = "bands", plotw = "bands", xaxisname = "bands",
obsname = "temporal spatial points", preprocess=F) {
if(preprocess){
b1 <- aaply(arr, c(1, 2), rmsat) #remove extreme value outside valid range (1-10000)
b2 <- aaply(b1, c(1, 2), removedips) # remove low value
} else b2=arr
Boliviaarr2 <- rearrange_array(b2, flatten = c(2, 3) )
fit <- prcomp(na.omit(t(Boliviaarr2)), scale. = T)
plotloading(PCfit = fit, varname = varname, obsname = obsname, xaxisname = xaxisname,
addline = 0, nl = 4, plotw = plotw)
}
rep_figloading(arr = Boliviaarrno, timearr = time_B1000, preprocess = F)
rep_figloading(arr = Brazilarrno, timearr = Braziltime, preprocess = F)
# reproduce plot time series figures, image is stored, name specified in the
# nameplot
for (i in c(1, 27)) {
plotts2(arr = Boliviaarr, tctl1 = 236, timearr = time_B1000, id = i, BTestchangeDate = BDbo,
nameplot = "boli_", monitoryear = 2005)
}
for (i in c(2, 9)) {
plotts2(arr = Brazilarr, tctl1 = 120, timearr = Braziltime, id = i, BTestchangeDate = BDbr,
nameplot = "br_", monitoryear = 2005)
}
# check seasonatlity of PC
library(zoo)
arrpc2no <- c() # save results
# i can be 1: 1033
for (i in 1:1033) {
tts <- returnpc2(inputarr = Boliviaarrno, timearr = time_B1000, loca = i, preprocess = F,
monitoryear = 2005)
time1 <- time_B1000[-tts[[1]]] # when compute PCA, the NA values are removed. time1 is the time of PC scors.
otss <- zoo(tts[[3]], time1)
rs <- checkseats(coredata(otss), order = 1, time1 = time(otss))
arrpc2no[i] <- rs
}
summary(arrpc2no)
# check periodogram
pc2sa <- c()
for (i in 1:1033) {
tts <- returnpc2(inputarr = Boliviaarrno, timearr = time_B1000, loca = i, preprocess = F,
monitoryear = 2005)
time1 <- time_B1000[-tts[[1]]] # when compute PCA, the NA values are removed. time1 is the time of PC scors.
otss <- zoo(tts[[3]], time1)
trimts <- window(otss, start = as.Date("2003-01-01"), end = as.Date("2014-12-31"))
monthts <- aggregate(trimts, as.yearmon, mean)
rt <- as.Date(range(time(monthts)))
z1 <- zoo(, as.yearmon(seq(from = rt[1], to = rt[2], by = "month")))
zm1 <- merge(monthts, z1)
zm <- na.approx(zm1)
sazm <- spec.ar(zm)
mf <- sazm$freq[which.max(sazm$spec)]
# rs<-checkseats(coredata(otss), order=1, time1=time(otss))
pc2sa[i] <- mf
}
summary(pc2sa)