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8 June, 21:49

A bearing used in an automotive application is suppose to have a nominal inside diameter of 1.5 inches. A random sample of 25 bearings is selected and the average inside diameter of these bearings is 1.4975 inches. Bearing diameter is known to be normally distributed with standard deviation / sigma = 0.01 inch.

Test the hypotheses H0: / mu = 1.5 versus H1: / mu / neq 1.5 using / alpha = 0.01

(-) What sample size would be required to detect a true mean diameter as low as 1.495 inches if we wanted the power of the test to be at least 0.88?

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  1. 8 June, 22:10
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    We solve the issue in the following steps:-

    Step-by-step explanation:

    1) Interest parameter: the interest parameter is 'mu.' The value inside the Diameter.

    2) Null hypotheses H0 = => H0: u=1.5 inches

    3) Alternative hypotheses: H1 u not equal 1.5 inches

    4) Test statistics are

    z0 = (x

    5) Reject H0 if: rejects H0 if the P-value is less than 0.05. The limits of the critical region would be Z0.025 = 0.01 and-Z0.025 = - 0.01 to use the fixed significance level test.

    6) Computation:

    Since x = 1.4975, n=25 and Sigma = 0.01

    Z0 = (1.4975-1.5) / (0.01 / route of 25) = - 1.25

    7) Conclusion : since Z0=-1.25 the P value is

    p value = 2[1-? (1.25) ] = 0.2113

    We deny H0: u=1.5 at a value of 0.01.
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