I did searched the questions here before posting and I found only one question in this regard but it doesn't apply to my case.

I have uploaded the data for `PRD`

, `INJ`

, `tao`

and `lambda`

with the links below, which shall be used to reproduce the code:

the code:

```
PRD=read.csv(file="PRD.csv")
INJ=read.csv(file="INJ.csv")
PRD=do.call(cbind, PRD)
INJ=do.call(cbind, INJ)
tao=do.call(cbind, read.csv(file="tao.csv",header=FALSE))
lambda=do.call(cbind, read.csv(file="lambda.csv",header=FALSE))
fn1 <- function (tao,lambda) {
#perparing i.dash
i.dash=matrix(ncol=ncol(INJ), nrow=(nrow(INJ)))
for (i in 1:ncol(INJ)){
for (j in 1:nrow (INJ)){
temp=0
for (k in 1:j){
temp=(1/tao[i])*exp((k-j)/tao[i])*INJ[k,i]+temp
}
i.dash[j,i]=temp
}
#preparing lambdaXi.dash
lambda.i=matrix(ncol=ncol(INJ),nrow=nrow(INJ))
for (i in 1: ncol(INJ)){
lambda.i[,i]=lambda[i+1]*i.dash[,i]
}
#calc. q. hat (I need to add the pp term)
q.hat=matrix(nrow=nrow(INJ),1 )
for (i in 1:nrow(INJ)){
q.hat[i,1]=sum(lambda.i[i,1:ncol(INJ)])
target= sum((PRD[,1]-q.hat[,1])^2)
}
}
}
```

what I am trying to do is to minimize the value `target`

by optimizing `lambda`

and `tao`

which the starting values will be the same as the ones uploaded above. I've used `optim`

to do so but I still receive the error `cannot coerce type 'closure' to vector of type double`

I've used many variations of `optim`

and still recieve the same error.

the last syntax I've used was `optim(fn1, tao=tao, lambda=lambda, hessian=T)`

Thanks