In auto racing a pit stop is is where a racing vehicle stops for new tires and repairs and other mechanical adjustments. The efficiency of a pit crew that makes these adjustments can effect the outcome of a race. A pit crew that its mean pit stop time ( for 4 new tireds and fuel) is 13 seconds. A random sample of 32 pit stops has a sample mean of 12.9 Seconds. Assume that the populations standard deviation is is 0.19 seconds. Using α= 0.01 level of significance, test the pit crew's claim. a. State the hypotheses. b. Find the critical value(s). c. Compute the test statistic. d. Make the decision. d. Summarize the results.

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Answer:

a) [tex]H_{0}[/tex]: t=13 seconds

   [tex]H_{a}[/tex]: t<13 seconds

b) At α= 0.01, one-tailed critical value is -2.33

c) Test statistic is −2,98

d) since -2.98<-2.33, we can reject the null hypothesis. There is significant evidence that mean pit stop time for the pit crew is less than 13 seconds at α= 0.01.

Step-by-step explanation:

according to the web search, the question is missing some words, one part should be like this:

"A pit crew claims that its mean pit stop time ( for 4 new tires and fuel) is less than 13 seconds."

Let t be the mean pit stop time of the pit crew.

[tex]H_{0}[/tex]: t=13 seconds

[tex]H_{a}[/tex]: t<13 seconds

At α= 0.01, one-tailed critical value is -2.33

Test statistic can be calculated using the equation:

[tex]z=\frac{X-M}{\frac{s}{\sqrt{N} } }[/tex] where

  • X is the sample mean pit stop time (12.9 sec)
  • M is the mean pit stop time assumed under null hypothesis (13 sec)
  • s is the population standard deviation (0.19 sec.)
  • N is the sample size (32)

Then [tex]z=\frac{12.9-13}{\frac{0.19}{\sqrt{32} } }[/tex] ≈ −2,98

since -2.98<-2.33, we can reject the null hypothesis. There is significant evidence that mean pit stop time for the pit crew is less than 13 seconds at α= 0.01.

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