Thanks to the wonderful answers to my previous post, I used the procedures provided in the link below, to fit my data with three normal distributions:

After fitting my data , the parameters for the three normal distributions are as follows:

```
pi mu sigma
1 0.5552 -0.4868 2.044
2 0.2739 8.3846 1.399
3 0.1709 12.5317 1.036
```

To check the agreements between my data (x) and the model distribution (ee), I did the following steps:

```
e1 <- rnorm(5552, mean=-0.4868, sd=2.044)
e2 <- rnorm(2739, mean=8.3846, sd=1.399)
e3 <- rnorm(1709, mean=12.5317, sd=1.036)
ee <- c(e1,e2,e3)
qqplot(x, ee)
```

I got the qqplot as follows: (http://i.stack.imgur.com/3favy.png)

It seems not bad, so, I want to calculate the p-value of obtaining a value equal to or less than 2.0 for this model population. Could you mind to teach me how to calculate this p-value using R?

The density plot of the model population ee is attached herein (http://i.stack.imgur.com/pExhF.png).