# Equal size for multiple panels with different y-axis scales in lattice

I have multiple variables of a time series that differ in their scales. I want to plot each variable over time in a single-page, and each plot will have its own y-axis. Seems to be easy, but I have a symmetry problem, since the plots that have higher values for y-axis were flattened to the right compared with the ones with smaller values for y-axis. Another problem with the panel size appeared when I decided to keep the x-axis only in two plots. These panels became more flattened than the others.

I'm relatively new to lattice and I have searched a lot with no success. First I tried to arrange the plots with `grid.arrange`, but I can't modify a specific panel with this function. So I tried to arrange plots with `print` and then use `panel.widths` and `panel.heights`. but it doesn't give the exactly equal size for all panels. Any suggestions to get multiple panels with equal sizes considering different y-axis and x-axis presence/absence? Example below:

``````#Data
a<-c(1058.2557,821.2002,1004.5201,296.8243,374.3730,746.0718,954.6511,264.7352)
b<-c(100,60,40,36,42,32,42,32)
c<-c(116.610418,164.462337,47.862511,12.613479,4.253702,39.868584,21.591731,6.037917)
d<-c(4,10,3,2,1,5,11,13)
e<-c(20,30,10,50,21,60,20,70)
est1<-c("16:00","19:00","22:00","01:00","04:00","07:00","10:00","13:00")

trellis.device(windows, height=6, width=7)
print(plo1, split=c(1,1,2,3),more=T)
print(plo2, split=c(2,1,2,3),more=T)
print(plo3, split=c(1,2,2,3),more=T)
print(plo4, split=c(2,2,2,3),more=T)
print(plo5, split=c(1,3,2,3),more=F)
``````
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@Henrik I think it was supposed to be `e` rather than `f`. I went ahead and changed it. It runs without error now. –  MrFlick Jul 23 at 18:45

I am sure someone will post a nice `lattice` solution. Meanwhile, you may consider a `ggplot` alternative.

``````library(reshape2)
library(ggplot2)
``````

First, collect your vectors in a data frame, and reshape data from a wide to a long format:

``````df <- data.frame(newest1, a, b, c, d, e)
df2 <- melt(df, id.var = "newest1")
``````

Plot the data in separate `facets`, one facet for each of the original vectors (which in the `melt`ed data ("df2") appear as different levels of the "variable" variable). We allow independent ("`free`") y axis `scales` in each facet:

``````ggplot(data = df2, aes(x = newest1, y = value)) +
geom_bar(stat = "identity") +
facet_wrap(~ variable, scales = "free_y") +
theme(axis.text.x  = element_text(angle = 45, vjust = 1, hjust = 1))
``````

-

Generally you wouldn't layout related plots like that in lattice. You would typically use a grouping variable. For this to work, you need all your data in one data.frame

``````dd <- data.frame(make.groups(a=a,b=b,c=c,d=d,e=e), newest1=newest1)
``````

And to make things look a bit nicer i'll define a custom axis function

``````axis.yout<- function(side, ...) {
if(side %in% c("left", "right")) {
if (panel.number() %% 2 == which(c("right","left")==side)-1) {
panel.axis(side = side, outside =TRUE)
}
} else {
axis.default(side = side, ...)
}
}
``````

now I plot with

``````barchart(data~newest1 | which, dd, layout=c(2,3),
scales=list(alternating=T, y=list(relation="free")),