I am solving the following problem:
An electronic tablet producer claims that the batteries on their tablets lasts for 10 hours but from my experience I think it is less than that. It is known that the battery life-span follows an exponential distribution. A random sample of size 100 (supposed to be independent) is tested, for which the mean battery life is found to be 9 hours. Test whether the producer's claim is true at a 5% significance level using the critical value method.
My Work
We can model the $i$th tablet battery life-span as $X_i \sim Exp(\lambda)$ where the lifespan is measured in hours. Each $X_i$ has mean $\dfrac{1}{\lambda}$ and standard deviation $\dfrac{1}{\lambda}$. A sensible estimator of $\mu = \dfrac{1}{\lambda}$ is then just $\bar{X}_n$.
The null hypothesis is $H_0 : \mu = 10 = \dfrac{1}{\lambda}$,
and the alternative hypothesis is $H_1 : \mu = \dfrac{1}{\lambda} < 10$.
The appropriate test statistic is $Z = \dfrac{\bar{X}_n - \mu}{\dfrac{\sigma}{\sqrt{n}}} = \dfrac{\bar{X}_n - 10}{\dfrac{10}{\sqrt{100}}}$
Assuming the sample size is large enough for the CLT to apply, we can get our observed test statistic::
$Z = \dfrac{9 - 10}{\dfrac{10}{10}} = -1$
I now calculate the critical value at a 5% level of significance:
$P(z > z_{0.05}) = 0.05$
$\implies 1 - P(z < z_{0.05}) = 0.05$
$\implies 0.95 = P(Z < Z_{0.05})$
$\implies Z_{0.05} = 1.64$
This is my point of confusion: How do I deal with the negative value for $Z$ (the test statistic)? When doing these types of problems, I have always derived a positive value for the test statistic, so I'm unsure of how to proceed.
I would greatly appreciate it if people could please take the time to explain what one does (and why) when they derive a negative value for the test statistic, as done above.
EDIT:
My understanding is that, when hypothesis testing using the critical value method, we are seeking to reject the null hypothesis if it falls inside an arbitrary interval along the tails of the standard normal distribution, based on the indicated level of significance. When we calculate the test statistic, $Z$, we get a value of $-1$. This is the same $Z$ that is used in calculating quantiles: $P(Z > a_\alpha) = \alpha$. The numerical value of $Z$ for quantiles is irrelevant, but the sign (+ or -) IS relevant. Therefore, we have, in this case, that $P(-Z > a_{0.05}) = 0.05$, which implies that $P(Z < -a_{0.05}) = 0.05$. After doing further simple calculations, we find that $P(Z < a_{0.05}) = 0.95$; therefore, $a_{0.05} = 1.64$.
Now, since we want to reject the null hypothesis if the test statistic is on the tails of the standard normal distribution (too unlikely in either direction), we reject values that are $< -1.64$ or $> 1.64$?