I have a data frame with two factors (`distance`

) and years (`years`

). I would like to complete all `years`

values for every factor by 0.

i.e. from this:

```
distance years area
1 NPR 3 10
2 NPR 4 20
3 NPR 7 30
4 100 1 40
5 100 5 50
6 100 6 60
```

get this:

```
distance years area
1 NPR 1 0
2 NPR 2 0
3 NPR 3 10
4 NPR 4 20
5 NPR 5 0
6 NPR 6 0
7 NPR 7 30
8 100 1 40
9 100 2 0
10 100 3 0
11 100 4 0
12 100 5 50
13 100 6 60
14 100 7 0
```

I tried to apply `expand`

function:

```
library(tidyr)
library(dplyr, warn.conflicts = FALSE)
expand(df, years = 1:7)
```

but this just produces one column data frame and does not expand the original one:

```
# A tibble: 7 x 1
years
<int>
1 1
2 2
3 3
4 4
5 5
6 6
7 7
```

or `expand.grid`

does not working neither:

```
require(utils)
expand.grid(df, years = 1:7)
Error in match.names(clabs, names(xi)) :
names do not match previous names
In addition: Warning message:
In format.data.frame(x, digits = digits, na.encode = FALSE) :
corrupt data frame: columns will be truncated or padded with NAs
```

Is there a simple way to `expand`

my data frame? And how to expand it based on two categories: `distance`

and `uniqueLoc`

?

```
distance <- rep(c("NPR", "100"), each = 3)
years <-c(3,4,7, 1,5,6)
area <-seq(10,60,10)
uniqueLoc<-rep(c("a", "b"), 3)
df<-data.frame(uniqueLoc, distance, years, area)
> df
uniqueLoc distance years area
1 a NPR 3 10
2 b NPR 4 20
3 a NPR 7 30
4 b 100 1 40
5 a 100 5 50
6 b 100 6 60
```