Re: [R] Plotting Very Large lat-lon data in x-y axes graph

2018-12-13 Thread Jim Lemon
Hi Ogbos,
Back on the air after a few days off. I don't have your data ("QUERY
2"), but I think this will fix your problem.

library(maps)
map("world")
box()
library(plotrix)
color.legend(-180,-150,100,-130,legend=c(0,25000,5,75000,10),
 rect.col=color.scale(1:5,extremes=c("blue","red")),gradient="x")

Notice that I have swapped the "yb" and "yt" values so that they are
in increasing order. If they are reversed, the numbers will appear
within the color bar. Also you don't need to call color.gradient, just
pass the output of a five increment color scale from blue to red (or
whatever you like) to the rect.col argument.

Jim

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Re: [R] Plotting Very Large lat-lon data in x-y axes graph

2018-12-11 Thread Ogbos Okike
Dear All,

Thank you for your advice.

I have looked at the plotrix package and with what I gathered, I
tinkered with the code below and obtain the attached graph:
oolt<-read.table("QUERY2",col.names=c("Lat","Lon"))
 latlim<-c(20,45)
lonlim<-c(-180,180)
latbreaks<-seq(latlim[1],latlim[2],by=5)
lonbreaks<-seq(lonlim[1],lonlim[2],by=10)

mids<-function(x) {
 lenx<-length(x)
 return((x[1:(lenx-1)]+x[2:lenx])/2)
}
lonmids<-mids(lonbreaks)
latmids<-mids(latbreaks)
oolt$loncuts<-cut(oolt$Lon,lonbreaks)
oolt$latcuts<-cut(oolt$Lat,latbreaks)
counts<-table(oolt$latcuts,oolt$loncuts)
png("test.png")
library(plotrix)
countcol<-color.scale(counts,extremes=c("blue","red"))
library(maps)
map("world",xlim=c(-180,180),ylim=c(20,45))
w = map("world")
for(lon in 1:length(lonmids)) {
 for(lat in 1:length(latmids)) {
  if(counts[lat,lon] > 0)
   draw.circle(lonmids[lon],latmids[lat],radius=sqrt(counts[lat,lon]),
border=countcol[lat,lon],col=countcol[lat,lon])
 }
}
box()
axis(1)
axis(2)
 x<-seq(-180,180,30)
 y<-seq(-90,90,30)
nx = 12
 ny = 6
grid(nx,ny,col = "red",lty="dotted",lwd=par("lwd"),equilogs=TRUE)
testcol<-color.gradient(c(10,30),0,c(30,10),nslices=5)
color.legend(-180,-130,100,-150,countcol,testcol,gradient="x")

I now have the horizontal color legend.

But I have two major problems still.
(1) The black line on top of the color bar is meaningless and I want it go.
(2) I want the numerical values plotted to appear on the color bar
(see the color.legend.png attached please) such that it can be used to
interpret the map.

I would be most grateful for any further assistance.

Very best wishes
Ogbos
On Tue, Dec 11, 2018 at 11:14 AM Jim Lemon  wrote:
>
> Hi Ogbos,
> I have been off the air for a couple of days. Look at the color.legend
> function in the plotrix package.
>
> Jim
> On Tue, Dec 11, 2018 at 12:39 PM Ogbos Okike  wrote:
> >
> > Dear Jim,
> > I am still having trouble with the colour code. I await your help when
> > you are less busy.
> >
> > Thank you.
> > Best
> > Ogbos
> > On Mon, Dec 10, 2018 at 6:25 AM Ogbos Okike  
> > wrote:
> > >
> > > Dear Jim,
> > >
> > > I used a bit of my data in my attempt to follow the code.
> > >
> > > I got the attached plot after some tweaks.
> > >
> > > I would like to add horizontal color bar legend that could be used to
> > > explain the number of lightning counts at different points on the
> > > latitude band as plotted.
> > >
> > > Thank you
> > > Warm regards
> > > Ogbos
> > >
> > > On Sun, Dec 9, 2018 at 9:46 PM Jim Lemon  wrote:
> > > >
> > > > Hi Ogbos,
> > > > Here is a slight modification of a method I use to display trip
> > > > density on a map:
> > > >
> > > > oolt<-read.table(text="Lat Lon
> > > > 30.1426 104.7854
> > > > 30.5622 105.0837
> > > > 30.0966 104.6213
> > > > 29.9795 104.8430
> > > > 39.2802 147.7295
> > > > 30.2469 104.6543
> > > > 26.4428 157.7293
> > > > 29.4782 104.5590
> > > > 32.3839 105.3293
> > > > 26.4746 157.8411
> > > > 25.1014 159.6959
> > > > 25.1242 159.6558
> > > > 30.1607 104.9100
> > > > 31.4900 -71.8919
> > > > 43.3655 -74.9994
> > > > 30.0811 104.8462
> > > > 29.0912 -85.5138
> > > > 26.6204 -80.9342
> > > > 31.5462 -71.9638
> > > > 26.8619 97.3844
> > > > 30.2534 104.6134
> > > > 29.9311 -85.3434
> > > > 26.1524 159.6806
> > > > 26.5112 158.0233
> > > > 26.5441 158.0565
> > > > 27.8901 -105.8554
> > > > 30.3175 104.7135
> > > > 26.4822 157.6127
> > > > 30.1887 104.5986
> > > > 29.5058 104.5661
> > > > 26.4010 157.5749
> > > > 30.2281 104.7585
> > > > 31.4556 110.5619
> > > > 30.1700 104.5861
> > > > 26.3911 157.4776
> > > > 30.6493 104.9949
> > > > 30.2209 104.6629
> > > > 26.0488 97.3608
> > > > 30.2142 104.8023
> > > > 30.1806 104.8158
> > > > 25.2107 160.1690
> > > > 30.6708 104.9385
> > > > 30.4152 104.7002
> > > > 30.2446 104.7804
> > > > 29.5760 -85.1535
> > > > 26.4484 92.4312
> > > > 26.3914 157.4189
> > > > 26.3986 157.4421
> > > > 30.4903 -88.2271
> > > > 30.6727 104.8768
> > > > 30.2518 104.6466
> > > > 41.6979 -78.4136
> > > > 33.7575 72.1089
> > > > 26.8333 -80.9485
> > > > 25.3103 124.0978
> > > > 30.1742 104.7554
> > > > 30.6345 104.9739
> > > > 30.2075 104.7960
> > > > 30.2226 104.7517
> > > > 30.5948 105.0532",
> > > > header=TRUE)
> > > > latlim<-c(20,45)
> > > > lonlim<-c(-90,160)
> > > > latbreaks<-seq(latlim[1],latlim[2],by=5)
> > > > lonbreaks<-seq(lonlim[1],lonlim[2],by=10)
> > > >
> > > > mids<-function(x) {
> > > >  lenx<-length(x)
> > > >  return((x[1:(lenx-1)]+x[2:lenx])/2)
> > > > }
> > > > lonmids<-mids(lonbreaks)
> > > > latmids<-mids(latbreaks)
> > > > oolt$loncuts<-cut(oolt$Lon,lonbreaks)
> > > > oolt$latcuts<-cut(oolt$Lat,latbreaks)
> > > > counts<-table(oolt$latcuts,oolt$loncuts)
> > > > library(plotrix)
> > > > countcol<-color.scale(counts,extremes=c("blue","red"))
> > > > map("world",xlim=c(-90,160),ylim=c(20,45))
> > > > for(lon in 1:length(lonmids)) {
> > > >  for(lat in 1:length(latmids)) {
> > > >   if(counts[lat,lon] > 0)
> > > >

Re: [R] Plotting Very Large lat-lon data in x-y axes graph

2018-12-11 Thread Jim Lemon
Hi Ogbos,
I have been off the air for a couple of days. Look at the color.legend
function in the plotrix package.

Jim
On Tue, Dec 11, 2018 at 12:39 PM Ogbos Okike  wrote:
>
> Dear Jim,
> I am still having trouble with the colour code. I await your help when
> you are less busy.
>
> Thank you.
> Best
> Ogbos
> On Mon, Dec 10, 2018 at 6:25 AM Ogbos Okike  wrote:
> >
> > Dear Jim,
> >
> > I used a bit of my data in my attempt to follow the code.
> >
> > I got the attached plot after some tweaks.
> >
> > I would like to add horizontal color bar legend that could be used to
> > explain the number of lightning counts at different points on the
> > latitude band as plotted.
> >
> > Thank you
> > Warm regards
> > Ogbos
> >
> > On Sun, Dec 9, 2018 at 9:46 PM Jim Lemon  wrote:
> > >
> > > Hi Ogbos,
> > > Here is a slight modification of a method I use to display trip
> > > density on a map:
> > >
> > > oolt<-read.table(text="Lat Lon
> > > 30.1426 104.7854
> > > 30.5622 105.0837
> > > 30.0966 104.6213
> > > 29.9795 104.8430
> > > 39.2802 147.7295
> > > 30.2469 104.6543
> > > 26.4428 157.7293
> > > 29.4782 104.5590
> > > 32.3839 105.3293
> > > 26.4746 157.8411
> > > 25.1014 159.6959
> > > 25.1242 159.6558
> > > 30.1607 104.9100
> > > 31.4900 -71.8919
> > > 43.3655 -74.9994
> > > 30.0811 104.8462
> > > 29.0912 -85.5138
> > > 26.6204 -80.9342
> > > 31.5462 -71.9638
> > > 26.8619 97.3844
> > > 30.2534 104.6134
> > > 29.9311 -85.3434
> > > 26.1524 159.6806
> > > 26.5112 158.0233
> > > 26.5441 158.0565
> > > 27.8901 -105.8554
> > > 30.3175 104.7135
> > > 26.4822 157.6127
> > > 30.1887 104.5986
> > > 29.5058 104.5661
> > > 26.4010 157.5749
> > > 30.2281 104.7585
> > > 31.4556 110.5619
> > > 30.1700 104.5861
> > > 26.3911 157.4776
> > > 30.6493 104.9949
> > > 30.2209 104.6629
> > > 26.0488 97.3608
> > > 30.2142 104.8023
> > > 30.1806 104.8158
> > > 25.2107 160.1690
> > > 30.6708 104.9385
> > > 30.4152 104.7002
> > > 30.2446 104.7804
> > > 29.5760 -85.1535
> > > 26.4484 92.4312
> > > 26.3914 157.4189
> > > 26.3986 157.4421
> > > 30.4903 -88.2271
> > > 30.6727 104.8768
> > > 30.2518 104.6466
> > > 41.6979 -78.4136
> > > 33.7575 72.1089
> > > 26.8333 -80.9485
> > > 25.3103 124.0978
> > > 30.1742 104.7554
> > > 30.6345 104.9739
> > > 30.2075 104.7960
> > > 30.2226 104.7517
> > > 30.5948 105.0532",
> > > header=TRUE)
> > > latlim<-c(20,45)
> > > lonlim<-c(-90,160)
> > > latbreaks<-seq(latlim[1],latlim[2],by=5)
> > > lonbreaks<-seq(lonlim[1],lonlim[2],by=10)
> > >
> > > mids<-function(x) {
> > >  lenx<-length(x)
> > >  return((x[1:(lenx-1)]+x[2:lenx])/2)
> > > }
> > > lonmids<-mids(lonbreaks)
> > > latmids<-mids(latbreaks)
> > > oolt$loncuts<-cut(oolt$Lon,lonbreaks)
> > > oolt$latcuts<-cut(oolt$Lat,latbreaks)
> > > counts<-table(oolt$latcuts,oolt$loncuts)
> > > library(plotrix)
> > > countcol<-color.scale(counts,extremes=c("blue","red"))
> > > map("world",xlim=c(-90,160),ylim=c(20,45))
> > > for(lon in 1:length(lonmids)) {
> > >  for(lat in 1:length(latmids)) {
> > >   if(counts[lat,lon] > 0)
> > >draw.circle(lonmids[lon],latmids[lat],radius=sqrt(counts[lat,lon]),
> > > border=countcol[lat,lon],col=countcol[lat,lon])
> > >  }
> > > }
> > >
> > > If you have very large counts in some places you may need to adjust
> > > the radius of the circles.
> > >
> > > Jim
> > > On Mon, Dec 10, 2018 at 2:50 AM Ogbos Okike  
> > > wrote:
> > > >
> > > > Dear Contributors,
> > > >
> > > > I have a data of the form:
> > > > Lat  Lon
> > > > 30.1426 104.7854
> > > > 30.5622 105.0837
> > > > 30.0966 104.6213
> > > > 29.9795 104.8430
> > > > 39.2802 147.7295
> > > > 30.2469 104.6543
> > > > 26.4428 157.7293
> > > > 29.4782 104.5590
> > > > 32.3839 105.3293
> > > > 26.4746 157.8411
> > > > 25.1014 159.6959
> > > > 25.1242 159.6558
> > > > 30.1607 104.9100
> > > > 31.4900 -71.8919
> > > > 43.3655 -74.9994
> > > > 30.0811 104.8462
> > > > 29.0912 -85.5138
> > > > 26.6204 -80.9342
> > > > 31.5462 -71.9638
> > > > 26.8619 97.3844
> > > > 30.2534 104.6134
> > > > 29.9311 -85.3434
> > > > 26.1524 159.6806
> > > > 26.5112 158.0233
> > > > 26.5441 158.0565
> > > > 27.8901 -105.8554
> > > > 30.3175 104.7135
> > > > 26.4822 157.6127
> > > > 30.1887 104.5986
> > > > 29.5058 104.5661
> > > > 26.4010 157.5749
> > > > 30.2281 104.7585
> > > > 31.4556 110.5619
> > > > 30.1700 104.5861
> > > > 26.3911 157.4776
> > > > 30.6493 104.9949
> > > > 30.2209 104.6629
> > > > 26.0488 97.3608
> > > > 30.2142 104.8023
> > > > 30.1806 104.8158
> > > > 25.2107 160.1690
> > > > 30.6708 104.9385
> > > > 30.4152 104.7002
> > > > 30.2446 104.7804
> > > > 29.5760 -85.1535
> > > > 26.4484 92.4312
> > > > 26.3914 157.4189
> > > > 26.3986 157.4421
> > > > 30.4903 -88.2271
> > > > 30.6727 104.8768
> > > > 30.2518 104.6466
> > > > 41.6979 -78.4136
> > > > 33.7575 72.1089
> > > > 26.8333 -80.9485
> > > > 25.3103 124.0978
> > > > 30.1742 104.7554
> > > > 30.6345 104.9739
> > > > 30.2075 104.7960
> > > > 30.2226 104.7517
> > > > 30.5948 105.0532.
> > > > The record is for 

Re: [R] Plotting Very Large lat-lon data in x-y axes graph

2018-12-09 Thread Ogbos Okike
Dear Jim,

I used a bit of my data in my attempt to follow the code.

I got the attached plot after some tweaks.

I would like to add horizontal color bar legend that could be used to
explain the number of lightning counts at different points on the
latitude band as plotted.

Thank you
Warm regards
Ogbos

On Sun, Dec 9, 2018 at 9:46 PM Jim Lemon  wrote:
>
> Hi Ogbos,
> Here is a slight modification of a method I use to display trip
> density on a map:
>
> oolt<-read.table(text="Lat Lon
> 30.1426 104.7854
> 30.5622 105.0837
> 30.0966 104.6213
> 29.9795 104.8430
> 39.2802 147.7295
> 30.2469 104.6543
> 26.4428 157.7293
> 29.4782 104.5590
> 32.3839 105.3293
> 26.4746 157.8411
> 25.1014 159.6959
> 25.1242 159.6558
> 30.1607 104.9100
> 31.4900 -71.8919
> 43.3655 -74.9994
> 30.0811 104.8462
> 29.0912 -85.5138
> 26.6204 -80.9342
> 31.5462 -71.9638
> 26.8619 97.3844
> 30.2534 104.6134
> 29.9311 -85.3434
> 26.1524 159.6806
> 26.5112 158.0233
> 26.5441 158.0565
> 27.8901 -105.8554
> 30.3175 104.7135
> 26.4822 157.6127
> 30.1887 104.5986
> 29.5058 104.5661
> 26.4010 157.5749
> 30.2281 104.7585
> 31.4556 110.5619
> 30.1700 104.5861
> 26.3911 157.4776
> 30.6493 104.9949
> 30.2209 104.6629
> 26.0488 97.3608
> 30.2142 104.8023
> 30.1806 104.8158
> 25.2107 160.1690
> 30.6708 104.9385
> 30.4152 104.7002
> 30.2446 104.7804
> 29.5760 -85.1535
> 26.4484 92.4312
> 26.3914 157.4189
> 26.3986 157.4421
> 30.4903 -88.2271
> 30.6727 104.8768
> 30.2518 104.6466
> 41.6979 -78.4136
> 33.7575 72.1089
> 26.8333 -80.9485
> 25.3103 124.0978
> 30.1742 104.7554
> 30.6345 104.9739
> 30.2075 104.7960
> 30.2226 104.7517
> 30.5948 105.0532",
> header=TRUE)
> latlim<-c(20,45)
> lonlim<-c(-90,160)
> latbreaks<-seq(latlim[1],latlim[2],by=5)
> lonbreaks<-seq(lonlim[1],lonlim[2],by=10)
>
> mids<-function(x) {
>  lenx<-length(x)
>  return((x[1:(lenx-1)]+x[2:lenx])/2)
> }
> lonmids<-mids(lonbreaks)
> latmids<-mids(latbreaks)
> oolt$loncuts<-cut(oolt$Lon,lonbreaks)
> oolt$latcuts<-cut(oolt$Lat,latbreaks)
> counts<-table(oolt$latcuts,oolt$loncuts)
> library(plotrix)
> countcol<-color.scale(counts,extremes=c("blue","red"))
> map("world",xlim=c(-90,160),ylim=c(20,45))
> for(lon in 1:length(lonmids)) {
>  for(lat in 1:length(latmids)) {
>   if(counts[lat,lon] > 0)
>draw.circle(lonmids[lon],latmids[lat],radius=sqrt(counts[lat,lon]),
> border=countcol[lat,lon],col=countcol[lat,lon])
>  }
> }
>
> If you have very large counts in some places you may need to adjust
> the radius of the circles.
>
> Jim
> On Mon, Dec 10, 2018 at 2:50 AM Ogbos Okike  wrote:
> >
> > Dear Contributors,
> >
> > I have a data of the form:
> > Lat  Lon
> > 30.1426 104.7854
> > 30.5622 105.0837
> > 30.0966 104.6213
> > 29.9795 104.8430
> > 39.2802 147.7295
> > 30.2469 104.6543
> > 26.4428 157.7293
> > 29.4782 104.5590
> > 32.3839 105.3293
> > 26.4746 157.8411
> > 25.1014 159.6959
> > 25.1242 159.6558
> > 30.1607 104.9100
> > 31.4900 -71.8919
> > 43.3655 -74.9994
> > 30.0811 104.8462
> > 29.0912 -85.5138
> > 26.6204 -80.9342
> > 31.5462 -71.9638
> > 26.8619 97.3844
> > 30.2534 104.6134
> > 29.9311 -85.3434
> > 26.1524 159.6806
> > 26.5112 158.0233
> > 26.5441 158.0565
> > 27.8901 -105.8554
> > 30.3175 104.7135
> > 26.4822 157.6127
> > 30.1887 104.5986
> > 29.5058 104.5661
> > 26.4010 157.5749
> > 30.2281 104.7585
> > 31.4556 110.5619
> > 30.1700 104.5861
> > 26.3911 157.4776
> > 30.6493 104.9949
> > 30.2209 104.6629
> > 26.0488 97.3608
> > 30.2142 104.8023
> > 30.1806 104.8158
> > 25.2107 160.1690
> > 30.6708 104.9385
> > 30.4152 104.7002
> > 30.2446 104.7804
> > 29.5760 -85.1535
> > 26.4484 92.4312
> > 26.3914 157.4189
> > 26.3986 157.4421
> > 30.4903 -88.2271
> > 30.6727 104.8768
> > 30.2518 104.6466
> > 41.6979 -78.4136
> > 33.7575 72.1089
> > 26.8333 -80.9485
> > 25.3103 124.0978
> > 30.1742 104.7554
> > 30.6345 104.9739
> > 30.2075 104.7960
> > 30.2226 104.7517
> > 30.5948 105.0532.
> > The record is for lightning flashes in the continental U.S. and
> > surrounding waters within the latitudinal band between
> > 258 and 458N.
> >
> > I want to display the result in x-y co-ordinate plot. However, the
> > data is very large such that when plotted, everything just appeared
> > blurred.
> >
> >
> > Is there a way of using color codes to  indicate the regions of higher
> > or lower flash densities?
> >
> > I can attach the plot I generated but I am not sure if the moderator
> > will allow it to go with this.
> >
> > I will send it in a separate email if required.
> >
> > Thank you so much for sparing your time.
> >
> > Best
> > Ogbos
> >
> > __
> > R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
> > https://stat.ethz.ch/mailman/listinfo/r-help
> > PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
> > and provide commented, minimal, self-contained, reproducible code.
__
R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see

Re: [R] Plotting Very Large lat-lon data in x-y axes graph

2018-12-09 Thread Jim Lemon
Hi Ogbos,
Here is a slight modification of a method I use to display trip
density on a map:

oolt<-read.table(text="Lat Lon
30.1426 104.7854
30.5622 105.0837
30.0966 104.6213
29.9795 104.8430
39.2802 147.7295
30.2469 104.6543
26.4428 157.7293
29.4782 104.5590
32.3839 105.3293
26.4746 157.8411
25.1014 159.6959
25.1242 159.6558
30.1607 104.9100
31.4900 -71.8919
43.3655 -74.9994
30.0811 104.8462
29.0912 -85.5138
26.6204 -80.9342
31.5462 -71.9638
26.8619 97.3844
30.2534 104.6134
29.9311 -85.3434
26.1524 159.6806
26.5112 158.0233
26.5441 158.0565
27.8901 -105.8554
30.3175 104.7135
26.4822 157.6127
30.1887 104.5986
29.5058 104.5661
26.4010 157.5749
30.2281 104.7585
31.4556 110.5619
30.1700 104.5861
26.3911 157.4776
30.6493 104.9949
30.2209 104.6629
26.0488 97.3608
30.2142 104.8023
30.1806 104.8158
25.2107 160.1690
30.6708 104.9385
30.4152 104.7002
30.2446 104.7804
29.5760 -85.1535
26.4484 92.4312
26.3914 157.4189
26.3986 157.4421
30.4903 -88.2271
30.6727 104.8768
30.2518 104.6466
41.6979 -78.4136
33.7575 72.1089
26.8333 -80.9485
25.3103 124.0978
30.1742 104.7554
30.6345 104.9739
30.2075 104.7960
30.2226 104.7517
30.5948 105.0532",
header=TRUE)
latlim<-c(20,45)
lonlim<-c(-90,160)
latbreaks<-seq(latlim[1],latlim[2],by=5)
lonbreaks<-seq(lonlim[1],lonlim[2],by=10)

mids<-function(x) {
 lenx<-length(x)
 return((x[1:(lenx-1)]+x[2:lenx])/2)
}
lonmids<-mids(lonbreaks)
latmids<-mids(latbreaks)
oolt$loncuts<-cut(oolt$Lon,lonbreaks)
oolt$latcuts<-cut(oolt$Lat,latbreaks)
counts<-table(oolt$latcuts,oolt$loncuts)
library(plotrix)
countcol<-color.scale(counts,extremes=c("blue","red"))
map("world",xlim=c(-90,160),ylim=c(20,45))
for(lon in 1:length(lonmids)) {
 for(lat in 1:length(latmids)) {
  if(counts[lat,lon] > 0)
   draw.circle(lonmids[lon],latmids[lat],radius=sqrt(counts[lat,lon]),
border=countcol[lat,lon],col=countcol[lat,lon])
 }
}

If you have very large counts in some places you may need to adjust
the radius of the circles.

Jim
On Mon, Dec 10, 2018 at 2:50 AM Ogbos Okike  wrote:
>
> Dear Contributors,
>
> I have a data of the form:
> Lat  Lon
> 30.1426 104.7854
> 30.5622 105.0837
> 30.0966 104.6213
> 29.9795 104.8430
> 39.2802 147.7295
> 30.2469 104.6543
> 26.4428 157.7293
> 29.4782 104.5590
> 32.3839 105.3293
> 26.4746 157.8411
> 25.1014 159.6959
> 25.1242 159.6558
> 30.1607 104.9100
> 31.4900 -71.8919
> 43.3655 -74.9994
> 30.0811 104.8462
> 29.0912 -85.5138
> 26.6204 -80.9342
> 31.5462 -71.9638
> 26.8619 97.3844
> 30.2534 104.6134
> 29.9311 -85.3434
> 26.1524 159.6806
> 26.5112 158.0233
> 26.5441 158.0565
> 27.8901 -105.8554
> 30.3175 104.7135
> 26.4822 157.6127
> 30.1887 104.5986
> 29.5058 104.5661
> 26.4010 157.5749
> 30.2281 104.7585
> 31.4556 110.5619
> 30.1700 104.5861
> 26.3911 157.4776
> 30.6493 104.9949
> 30.2209 104.6629
> 26.0488 97.3608
> 30.2142 104.8023
> 30.1806 104.8158
> 25.2107 160.1690
> 30.6708 104.9385
> 30.4152 104.7002
> 30.2446 104.7804
> 29.5760 -85.1535
> 26.4484 92.4312
> 26.3914 157.4189
> 26.3986 157.4421
> 30.4903 -88.2271
> 30.6727 104.8768
> 30.2518 104.6466
> 41.6979 -78.4136
> 33.7575 72.1089
> 26.8333 -80.9485
> 25.3103 124.0978
> 30.1742 104.7554
> 30.6345 104.9739
> 30.2075 104.7960
> 30.2226 104.7517
> 30.5948 105.0532.
> The record is for lightning flashes in the continental U.S. and
> surrounding waters within the latitudinal band between
> 258 and 458N.
>
> I want to display the result in x-y co-ordinate plot. However, the
> data is very large such that when plotted, everything just appeared
> blurred.
>
>
> Is there a way of using color codes to  indicate the regions of higher
> or lower flash densities?
>
> I can attach the plot I generated but I am not sure if the moderator
> will allow it to go with this.
>
> I will send it in a separate email if required.
>
> Thank you so much for sparing your time.
>
> Best
> Ogbos
>
> __
> R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
> https://stat.ethz.ch/mailman/listinfo/r-help
> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
> and provide commented, minimal, self-contained, reproducible code.

__
R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
https://stat.ethz.ch/mailman/listinfo/r-help
PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
and provide commented, minimal, self-contained, reproducible code.


Re: [R] Plotting Very Large lat-lon data in x-y axes graph

2018-12-09 Thread Bert Gunter
Yes, there are many ways to do this. Search rseek.org for "2d density
plots". Also check the CRAN "Spatial" task view. Also see the kde2d
function in the MASS package and especially the examples there that use the
image() function to plot densities.

Cheers,
Bert

Bert Gunter

"The trouble with having an open mind is that people keep coming along and
sticking things into it."
-- Opus (aka Berkeley Breathed in his "Bloom County" comic strip )


On Sun, Dec 9, 2018 at 7:50 AM Ogbos Okike  wrote:

> Dear Contributors,
>
> I have a data of the form:
> Lat  Lon
> 30.1426 104.7854
> 30.5622 105.0837
> 30.0966 104.6213
> 29.9795 104.8430
> 39.2802 147.7295
> 30.2469 104.6543
> 26.4428 157.7293
> 29.4782 104.5590
> 32.3839 105.3293
> 26.4746 157.8411
> 25.1014 159.6959
> 25.1242 159.6558
> 30.1607 104.9100
> 31.4900 -71.8919
> 43.3655 -74.9994
> 30.0811 104.8462
> 29.0912 -85.5138
> 26.6204 -80.9342
> 31.5462 -71.9638
> 26.8619 97.3844
> 30.2534 104.6134
> 29.9311 -85.3434
> 26.1524 159.6806
> 26.5112 158.0233
> 26.5441 158.0565
> 27.8901 -105.8554
> 30.3175 104.7135
> 26.4822 157.6127
> 30.1887 104.5986
> 29.5058 104.5661
> 26.4010 157.5749
> 30.2281 104.7585
> 31.4556 110.5619
> 30.1700 104.5861
> 26.3911 157.4776
> 30.6493 104.9949
> 30.2209 104.6629
> 26.0488 97.3608
> 30.2142 104.8023
> 30.1806 104.8158
> 25.2107 160.1690
> 30.6708 104.9385
> 30.4152 104.7002
> 30.2446 104.7804
> 29.5760 -85.1535
> 26.4484 92.4312
> 26.3914 157.4189
> 26.3986 157.4421
> 30.4903 -88.2271
> 30.6727 104.8768
> 30.2518 104.6466
> 41.6979 -78.4136
> 33.7575 72.1089
> 26.8333 -80.9485
> 25.3103 124.0978
> 30.1742 104.7554
> 30.6345 104.9739
> 30.2075 104.7960
> 30.2226 104.7517
> 30.5948 105.0532.
> The record is for lightning flashes in the continental U.S. and
> surrounding waters within the latitudinal band between
> 258 and 458N.
>
> I want to display the result in x-y co-ordinate plot. However, the
> data is very large such that when plotted, everything just appeared
> blurred.
>
>
> Is there a way of using color codes to  indicate the regions of higher
> or lower flash densities?
>
> I can attach the plot I generated but I am not sure if the moderator
> will allow it to go with this.
>
> I will send it in a separate email if required.
>
> Thank you so much for sparing your time.
>
> Best
> Ogbos
>
> __
> R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
> https://stat.ethz.ch/mailman/listinfo/r-help
> PLEASE do read the posting guide
> http://www.R-project.org/posting-guide.html
> and provide commented, minimal, self-contained, reproducible code.
>

[[alternative HTML version deleted]]

__
R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
https://stat.ethz.ch/mailman/listinfo/r-help
PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
and provide commented, minimal, self-contained, reproducible code.