Let's say $x$ is a random variable drawn from a normally distributed population with mean $\mu$ and variance $\sigma^2$. Then we can write $x$ in terms of $\mu$ and a random error component $\epsilon$ as: $$ x = \mu + \epsilon $$
Can someone explain (or point me to some resources) which proves this.
More specifically, what does the noise term $\epsilon$ consist of, and is it related somehow to the variance $\sigma^2$ of the distribution?