I want to fit a mixed model using nlme package in R which is equivalent to following SAS codes:

```
proc mixed data = one;
class var1 var2 year loc rep;
model yld = var1 * var2;
random loc year(loc) rep*year(loc);
```

EDITS: Explanation of what is experiment about

the same combination of var1 and var2 were tested in replicates (rep- replicates are numbered 1:3). The replicates (rep) is considered random. This set of experiment is repeated over locations (loc) and years (year). Although replicates are numbered 1:3 within each location and year for covinience because they do not have any name, replication 1 within a location and a year doesnot have correlation replication 1 within other location and other year

I tried the following codes:

```
require(nlme)
fm1 <- lme(yld ~ var1*var2, data = one, random = loc + year / loc + rep * year / loc)
```

Is my codes correct?

EDITS: data and model based on suggestions you can download the example data file from the following link: https://sites.google.com/site/johndatastuff/mydata1.csv

```
data$var1 <- as.factor(data$var1)
data$var2 <- as.factor(data$var2)
data$year <- as.factor(data$year)
data$loc <- as.factor(data$loc)
data$rep <- as.factor(data$rep)
following suggestions from the comments below:
fm1 <- lme(yld ~ var1*var2, data = data, random = ~ loc + year / loc + rep * year / loc)
Error in getGroups.data.frame(dataMix, groups) :
Invalid formula for groups
```

EXPECTED BASED ON SAS OUTPUT

```
Type 3 tests of fixed effects
var1*var2 14 238 F value 16.12 Pr >F = < 0.0001
Covariance parameters:
loc = 0, year(loc) = 922161, year*rep(loc) = 2077492, residual = 1109238
```

I tried the following model, I still getting some errors:

```
Edits: Just for information I tried the following model
require(lme4)
fm1 <- lmer(yld ~ var1*var2 + (1|loc) + (1|year / loc) + (1|rep : (year / loc)),
data = data)
Error in rep:`:` : NA/NaN argument
In addition: Warning message:
In rep:`:` : numerical expression has 270 elements: only the first used
```