Student Solutions Manual for Devore's Probability and Statistics for Engineering and the Sciences, 9th
Student Solutions Manual for Devore's Probability and Statistics for Engineering and the Sciences, 9th
9th Edition
ISBN: 9798214004020
Author: Jay L. Devore
Publisher: Cengage Learning US
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Textbook Question
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Chapter 16.2, Problem 7E

Consider a 3-sigma control chart with a center line at µ0 and based on n = 5. Assuming normality, calculate the probability that a single point will fall outside the control limits when the actual process mean is

a. µ0 + .5σ

b. µ0σ

c. µ0 + 2σ

a.

Expert Solution
Check Mark
To determine

Find the probability that a single point will fall outside the control limits when the actual process mean is (μ0+0.5σ).

Answer to Problem 7E

The probability that a single point will fall outside the control limits when the actual process mean is (μ0+0.5σ),  is 0.0301.

Explanation of Solution

Given info:

Consider, a 3-sigma control chart based on center line μ0 for sample of size 5.

Calculation:

It is known that for a 3-sigma chart the probability that a single point will fall outside the control limits when the actual process mean is (μ0+0.5σ), is defined as,

P(X¯>μ0+3σnorX¯<μ03σn) , where the sample mean X¯ has normal probability distribution with mean μ0+0.5σ and standard deviation σ.

It is known that, for a random variable X that follows normal distribution with mean μ and standard deviation σ, the standard normal variable is defines as Z=Xμσ , where Z follows standard normal distribution.

Thus,

P(X¯>μ0+3σnorX¯<μ03σn)=1P(μ03σn<X¯<μ0+3σn)=1P(μ03σnμ00.5σσn<X¯μ00.5σσn<μ0+3σnμ00.5σσn)=1P(3n0.51n<Z<3n0.51n)

=1P(30.5n<Z<30.5n)

Now, for n=5,

P(X¯>μ0+3σnorX¯<μ03σn)=1P(30.55<Z<30.55)=1P(31.12<Z<31.12)=1P(4.12<Z<1.88)=1(Φ(1.88)Φ(4.12))

According to table A.3, “Standard Normal Curve Areas” of Appendix the standard normal variable value for z=1.88 and z=4.12  are 0.9699 and 0, respectively.

Thus,

P(X¯>μ0+3σnorX¯<μ03σn)=1Φ(1.88)+Φ(4.12)=10.96990=0.0301

Thus, the probability that a single point will fall outside the control limits when the actual process mean is (μ0+0.5σ),  is 0.0301.

b.

Expert Solution
Check Mark
To determine

Find the probability that a single point will fall outside the control limits when the actual process mean is (μ0σ).

Answer to Problem 7E

The probability that a single point will fall outside the control limits when the actual process mean is (μ0σ),  is 0.2236.

Explanation of Solution

Calculation:

It is known that for a 3-sigma chart the probability that a single point will fall outside the control limits when the actual process mean is (μ0σ), is defined as,

P(X¯>μ0+3σnorX¯<μ03σn) , where the sample mean X¯ has normal probability distribution with mean μ0σ and standard deviation σ.

It is known that, for a random variable X that follows normal distribution with mean μ and standard deviation σ, the standard normal variable is defines as Z=Xμσ , where Z follows standard normal distribution.

Thus,

P(X¯>μ0+3σnorX¯<μ03σn)=1P(μ03σn<X¯<μ0+3σn)=1P(μ03σnμ0+σσn<X¯μ0+σσn<μ0+3σnμ0+σσn)=1P(3n+11n<Z<3n+11n)

=1P(3+n<Z<3+n)

Now, for n=5,

P(X¯>μ0+3σnorX¯<μ03σn)=1P(3+5<Z<3+5)=1P(3+2.24<Z<3+2.24)=1P(0.76<Z<5.24)=1(Φ(5.24)Φ(0.76))

According to table A.3, “Standard Normal Curve Areas” of Appendix the standard normal variable value for z=5.24 and z=0.76  are 1 and 0.2236, respectively.

Thus,

P(X¯>μ0+3σnorX¯<μ03σn)=1Φ(5.24)+Φ(0.76)=11+0.2236=0.2236

Thus, the probability that a single point will fall outside the control limits when the actual process mean is (μ0σ),  is 0.2236.

c.

Expert Solution
Check Mark
To determine

Find the probability that a single point will fall outside the control limits when the actual process mean is (μ0+2σ).

Answer to Problem 7E

The probability that a single point will fall outside the control limits when the actual process mean is (μ0+2σ),  is 0. 9292.

Explanation of Solution

Calculation:

It is known that for a 3-sigma chart the probability that a single point will fall outside the control limits when the actual process mean is (μ0+2σ), is defined as,

P(X¯>μ0+3σnorX¯<μ03σn) , where the sample mean X¯ has normal probability distribution with mean (μ0+2σ) and standard deviation σ.

It is known that, for a random variable X that follows normal distribution with mean μ and standard deviation σ, the standard normal variable is defines as Z=Xμσ , where Z follows standard normal distribution.

Thus,

P(X¯>μ0+3σnorX¯<μ03σn)=1P(μ03σn<X¯<μ0+3σn)=1P(μ03σnμ02σσn<X¯μ02σσn<μ0+3σnμ02σσn)=1P(3n21n<Z<3n21n)

=1P(32n<Z<32n)

Now, for n=5,

P(X¯>μ0+3σnorX¯<μ03σn)=1P(325<Z<325)=1P(34.47<Z<34.47)=1P(7.47<Z<1.47)=1(Φ(1.47)Φ(7.47))

According to table A.3, “Standard Normal Curve Areas” of Appendix the standard normal variable value for z=1.47 and z=7.47  are 0.0708 and 0, respectively.

Thus,

P(X¯>μ0+3σnorX¯<μ03σn)=1Φ(1.47)+Φ(7.47)=10.0708+0=0.9292

Thus, the probability that a single point will fall outside the control limits when the actual process mean is (μ0+2σ),  is 0.9292.

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Chapter 16 Solutions

Student Solutions Manual for Devore's Probability and Statistics for Engineering and the Sciences, 9th

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