# Problems with nonlinear regression (nls) in R

I am trying to solve a non-linear regression in R and am getting syntax error messages. I have tried to debug and also recruited a co-worker to no avail. I am not sure that the procedure is set up properly as I am new to R.

Any insight would be great-

Thanks

``````## read in files from snotel sites to develop parameters

## work with the base file first
attach(BASE1)

## set parameters
S1 <- seq(-10,10,0.5)
S2 <- seq(0.1,2.5,0.2)
M1 <- seq(-10,10,0.5)
M2 <- seq(0.1,2.5,0.2)

## define the sub-functions used in the model
S_EXP <- (exp(-(PRISM_T + S1)/S2))
M_EXP <- (exp(-(PRISM_T + M1)/M2))
C_SNOW <- (1 - (1/(1 + S_EXP)))
C_MELT <-(1/(1 + M_EXP))

swe.mod <- nls(SNOTEL_SWE ~ SURPLUS * C_SNOW + PREV_SWE * (1 - C_MELT),data=BASE1,
+ start=list(S1 = -10, S2 = 0.1, M1 = -10, M2 = 0.1) , trace=TRUE)
``````

toy_data_set:

``````BASE1<-structure(list(OBS = 1:61, SURPLUS = c(55.9, 124.5, 138.4, 124.1, 107.8, 102.9, 84.8, 74.4, 40.1, -23.1, -23.1, 20.7, 73.8, 267.9, 282.6, 244.2, 234.9, 199, 118.9, 55, -8.1, -59.4, -51.7, -10.4, 23.6, 111, 111.7, 107.7, 88.2, 88.1, 54.1, 18.8, -17.1, -65.4, -54.1, -16, 62.6, 178.5, 201, 192.8, 170.5, 173.5, 85.6, 30.4, -15.3, -69.7, -50.5, -4.8, 90, 243.2, 247.7, 234.6, 213.7, 194, 105.5, 16.6, -21.9, -73.8, -62.7, -6.8, 74.8), PRISM_T = c(1.9, -3.6, -6.3, -7, -5.7, -4.2, -1.3, 2.4, 5.8, 10.2, 10.4, 6.5, 5.9, 0.4, -2.3, -2.9, -2.1, -0.7, 1.4, 4.7, 8.6, 13.2, 13.3, 10.4, 5, -0.2, -3, -4.3, -2, 0, 2.1, 5.8, 9.8, 14.6, 14.4, 10.9, 7.1, 1.7, -0.3, -1.2, -0.6, 0.4, 2.2, 6.1, 9.7, 14.8, 14.8, 12, 8.5, 3, 1.3, 0.3, 1.3, 1.5, 2.8, 6.6, 10.6, 15.2, 15.7, 13.3, 7), SNOTEL_SWE = c(7.62, 50.8, 180.34, 317.5, 434.34, 562.61, 660.4, 622.3, 306.07, 36.83, 0, 0, 2.54, 49.53, 241.3, 488.95, 711.2, 895.35, 1093.47, 957.58, 372.11, 0, 0, 0, 1.27, 25.4, 137.16, 256.54, 379.73, 501.65, 549.91, 287.02, 8.89, 0, 0, 0, 2.54, 27.94, 177.8, 318.77, 459.74, 612.14, 730.25, 584.2, 142.24, 0, 0, 0, 0, 6.35, 91.44, 167.64, 256.54, 330.2, 267.97, 129.54, 0, 0, 0, 0, 10.16), PREV_SWE = c(0, 7.62, 50.8, 180.34, 317.5, 434.34, 562.61, 660.4, 622.3, 306.07, 36.83, 0, 0, 2.54, 49.53, 241.3, 488.95, 711.2, 895.35, 1093.47, 957.58, 372.11, 0, 0, 0, 1.27, 25.4, 137.16, 256.54, 379.73, 501.65, 549.91, 287.02, 8.89, 0, 0, 0, 2.54, 27.94, 177.8, 318.77, 459.74, 612.14, 730.25, 584.2, 142.24, 0, 0, 0, 0, 6.35, 91.44, 167.64, 256.54, 330.2, 267.97, 129.54, 0, 0, 0, 0)), .Names = c("OBS", "SURPLUS", "PRISM_T", "SNOTEL_SWE", "PREV_SWE"), class = "data.frame", row.names = c(NA, -61L))
``````
-
instead of `BASE1 <- read.csv("base_data.csv")`, give us a toy dataset with `dput()` so we can actually run the code –  Michael Jul 25 '12 at 23:16
We will need to see some details about those data held in BASE1, please include ?str, ?head, and/or ?dput. (PS: `attach` is well known for mucking things up, instead, use the data argument to nls) –  Brandon Bertelsen Jul 25 '12 at 23:19
`dput(toy_data_set)` will return a result that we can read into R –  Michael Jul 25 '12 at 23:37

It was a little hard to understand what you were trying to do, but I think I can guess. You can't define the "subfunctions" as you are doing. You must specify them explicitly in the model. For example, your formula should be:

``````swe.mod <-
nls(
SNOTEL_SWE ~ SURPLUS * (1-(1/(1 + (exp(-(PRISM_T + S1)/S2)))))
+ PREV_SWE * (1 - 1/(1 + (exp(-(PRISM_T + M1)/M2)))),
data=BASE1,
start=list(S1 = -10, S2 = 0.1, M1 = -10, M2 = 0.1))
``````

If you find that a little ugly, you can use functions to define your "subfunctions" as shown in the examples in `?nls`. Try this:

``````S_EXP  <- function(PRISM_T,S1,S2) (exp(-(PRISM_T + S1)/S2))
C_SNOW <- function(PRISM_T,S1,S2) (1 - (1/(1 + S_EXP(PRISM_T,S1,S2) )))
M_EXP  <- function(PRISM_T,M1,M2) (exp(-(PRISM_T + M1)/M2))
C_MELT <- function(PRISM_T,M1,M2) (1/(1 + M_EXP(PRISM_T,M1,M2)))

swe.mod <- nls(SNOTEL_SWE ~ SURPLUS * C_SNOW(PRISM_T,S1,S2)
+ PREV_SWE * (1 - C_MELT(PRISM_T,M1,M2)),
data=BASE1,start=list(S1 = -10, S2 = 0.1, M1 = -10, M2 = 0.1), trace=TRUE)
``````

What I couldn't figure out is what you meant by:

``````## set parameters
S1 <- seq(-10,10,0.5)
S2 <- seq(0.1,2.5,0.2)
M1 <- seq(-10,10,0.5)
M2 <- seq(0.1,2.5,0.2)
``````

Those parameters are what you are trying to fit, right? You only need to specify initial parameters, as you did. Also, avoid `attach`. You don't need it, and it will lead to very hard to find bugs.

Here are the results:

``````Formula: SNOTEL_SWE ~ SURPLUS * C_SNOW(PRISM_T, S1, S2) + PREV_SWE * (1 -
C_MELT(PRISM_T, M1, M2))

Parameters:
Estimate Std. Error t value Pr(>|t|)
S1  -0.6546     0.4222  -1.550  0.12657
S2   1.4182     0.4907   2.890  0.00543 **
M1  -7.4500     0.2335 -31.906  < 2e-16 ***
M2   1.6118     0.2046   7.879 1.09e-10 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 51.01 on 57 degrees of freedom

Number of iterations to convergence: 20
Achieved convergence tolerance: 6.617e-06
``````
-
This worked great. Thanks for your time and expertise. –  user1553041 Jul 26 '12 at 17:22