I have a function that calculates soil water for a single day (from the ZeBook package)

```
water.update <- function(WAT0, RAIN, ETo){
S = 25400/CN - 254; IA = 0.2*S
if(RAIN > IA){RO = (RAIN - 0.2 * S)^2/(RAIN + 0.8 * S)
} else {
RO = 0
}
if(WAT0 + RAIN - RO > FC) {DR = DC * (WAT0 + RAIN - RO - FC)
} else {
DR = 0
}
dWAT = RAIN - RO - DR - ETo
WAT1 = WAT0 + dWAT
return(c(WAT1,RO,DR))
}
```

this function takes three arguments: `WAT0`

: water content of day i - 1
`RAIN`

: Rainfall of day i,`ETo`

: Evapotranspration of day i, `CN`

, `DC`

and `FC`

which are constants.

It returns a dataframe with WAT1 which is the water content of day i, RO and DR

An example:

```
CN <- 60;FC <- 42;DC <- 0.02
water.update(WAT0 = 23, RAIN = 5, ETo = 2)
# 26, 0, 0
```

Now I want to run this function for day 1 till day 10. Sample data

```
weather <- data.frame(day = 1:10 ,rain = sample(1:100, 10, replace = T), ETo = sample(1:10, 10, replace = T))
```

The below function uses the `water.update`

function to calculate the soil water from day 1 till day 10.

```
water.model <- function(weather, FC, DC,CN, WAT0){
WAT <- data.frame(matrix(NA, nrow = nrow(weather), ncol = 3))
WAT[1,1] <- WAT0 # WAT0 is a constant
for(day in 1:(nrow(weather)-1)){
WAT[day + 1,] = water.update(WAT[day,1],weather$rain[day],weather$ETo[day])
}
return(WAT)
}
WAT0 <- 20
water.model(weather = weather, FC = FC, CN = CN, WAT0 = WAT0)
```

This gives me three columns: first column with water content, second column is the RO and third is DR.

My issue is I need to run the 'water.model' function for multiple years and locations

```
big.data <- data.frame(loc.id = rep(1:3, each = 10*3),
year = rep(rep(1981:1983, each = 10),times = 3),
day = rep(1:10, times = 3*3),
CN = rep(c(50,55,58), each = 10*3), # each location has a contant CN, FC and DC
FC = rep(c(72,76,80),each = 10*3),
DC = rep(c(0.02,0.5,0.8), each = 10*3),
WAT0 = rep(c(20,22,26), each = 10*3),
rain = sample(1:100,90, replace = T),
eto = sample(1:10,90, replace = T))
```

I have two questions:

1) How do I run the `water.model`

for each location and year from day 1 till day 10.

```
big.data %>% group_by(loc.id, year) %>% do??
```

2) Any suggestions on making the above functions faster are welcome. Maybe using Rcpp? :)

**EDIT**

The function also takes a variable `DC`