\documentclass[twoside]{article}
\pagestyle{myheadings} \setcounter{page}{105}
\markboth{\hfil Sorting and cost analysis of reworking items \hfil}%
{\hfil H. Y. Alkahby \& F. N. Jalbout \hfil}
\begin{document}
\title{\vspace{-1in}\parbox{\linewidth}{\footnotesize\noindent
{\sc 15th Annual Conference of Applied Mathematics, Univ. of Central Oklahoma},
\newline
Electronic Journal of Differential Equations, Conference~02, 1999, pp. 105--114. \newline
ISSN: 1072-6691. URL: http://ejde.math.swt.edu or http://ejde.math.unt.edu
\newline ftp  ejde.math.swt.edu (login: ftp)}
 \vspace{\bigskipamount} \\
  Sorting and cost analysis of reworking items
  in rejected lots based on non-destructive variable sampling plan 
\thanks{ {\em 1991 Mathematics Subject Classifications:} 62N10.
\hfil\break\indent
{\em Key words and phrases:} production cost of an item, \hfil\break\indent
upper and lower limit of quality characteristics.
\hfil\break\indent
\copyright 1999 Southwest Texas State University  and University of
North Texas. \hfil\break\indent
Published December 9, 1999.} }

\date{}
\author{H. Y. Alkahby \& F. N. Jalbout}
\maketitle

\begin{abstract} 
A mathematical model for a decision criterion for disposing
an inspection lot is developed. An expression of the posterior cost is
formulated in terms of the quality characteristics $X$ of the items
manufactured, the sample size $n$, the lot size $N$, the upper and
lower limits of $X$ ($U$, $L$) of the individual items, the sample
mean $\overline{x}$, the mean $\mu$ and variance $\sigma^2$ of $X$, also in
terms of the economical cost parameters, Optimizing the posterior cost
equation leads to the estimation of the decision points. A procedure
to accept, reject, screen or scrap the entire lot based on the values
of the decision points is developed. Mathematical expressions are
derived for the expected cost of lot acceptance, screening and
scrapping. In developing the model, the distribution of $X$ and $\mu$
are normal. The tested items can be used for their intended purposes
after testing. The defective items can be repaired or reworked.
Rejected lots are either screened or scrapped. The decision to accept
or reject a lot depends on the upper and lower limits of the sample
mean, which constitutes the decision points.
\end{abstract}

\section{Introduction}

In this work, different sample sizes are selected to compute the cost
for each tested sample. By comparing the costs, it is possible to
discover the fluctuations, if any, in the model selected due to
computational errors. It is logical to assume that the sample mean can
take four different values depending on its upper and lower limits.
These limits are relative to the acceptance and rejection values of
$X$. The cost in this case is a function of the number of defective
units in the accepted lot, the cost of replacing these items, and the
cost of inspecting the lot. The lot is screened to isolate the
defective units. The cost relative to this case consists of the cost
of inspecting each item in the uninspected portion of the lot and the
cost of replacing the defective items produced by the manufacturing
facility. The cost of scrapping consists of the cost of each unit
scrapped. The cost of scrapping items produced by the production
facility is reduced by the revenue of the salvaged material. After
reaching a decision on the rejected items that can be reworked, the
cost of reworking these items is derived. In this process of
screening, the expected value of the fraction of items that can be
reworked is evaluated and used as a standard for future production.
The work is concentrated on finding a set of upper and lower limits of
the quality characteristic $X$, namely $L_A$, $U_A$, $L_{sn}$,
$U_{sn}$. A control chart is constructed based on these values to test
the manufactured lots. Values of the sample mean above $U_A$ and below
$U_{sn}$, or below $L_A$ and above $L_{sn}$ are screened.

After screening the items produced, a decision can be made to scrap or
rework the defective items found. The main advantage of this procedure
are to: (1) reduce the cost due to penalty of producing defective
items, (2) satisfy the needs of both the producers and consumers, who
are seeking good products with a reasonable cost, (3) keep the quality
of the items produced at a very high standard at any stage of
production.


\section{Mathematical development of the model}

In estimating the expected posterior cost of rejecting and reworking
defective items the following assumptions are made: (1) The
probability that an individual measurement is above or below the upper
and lower specification limit when both the lot and the sample are
considered. (2) The costs of accepting and repairing items with
dimensions above or below the specification limits for both the lot
and the sample are considered. (3) The screening errors of types I and
II are negligible. (4) The process can exist in one statistical state.
The components of the cost are:



\subsection*{(A) Cost of Items Worked With or Without Success}

The cost per lot resulting from defective items found during
inspection and reworked with and without success. $K_{w1}(\overline{x},\mu)$, is
then:
\begin{eqnarray}
K_{w1}(\overline{x},\mu)&=&K_{c1}nP_{3_s}+K_{c2}nP_{4_s}+[(K_R-K_J)(1-K_Y)]P_{3_s}\nonumber\\
&&+n[(K_R-K_J)(1-K_Y)]P_{4_s}~,
\end{eqnarray}
where the symbols in this paper are defined in the Appendix. For the
remainder of the lot the cost $K_{w2}(\overline{x},\mu)$ is given as:
\begin{eqnarray}
K_{w2}(\overline{x},\mu)&=&K_{c1}(N-n)P_{1_u}+K_{c2}(N-n)P_{2L}\nonumber\\
&&+(N-n)P_{1_u}[(K_R-K_J)(1-K_Y)]\nonumber\\
&&+(N-n)P_{1_u}[(K_R-K_J)(1-K_Y)]~.
\end{eqnarray}
Assuming $K_{c1}=K_{c2}=K_c$ and $P_{1_u}=P_{2L}$, expression (1) can
be written as
\begin{equation}
K_{w1}(\overline{x},\mu)=n[K_c+(K_R-K_J)(1-K_Y)][P_{3_s}+P_{4_s}]~.
\end{equation}
Defining $K_{R1}$ as
\begin{equation}
K_{R1}=[K_c+(K_R-K_J)(1-K_Y)]~,
\end{equation}
and employing expression (4), then expressions (1) and (2) can be
written respectively as:
\begin{eqnarray}
K_{W1}(\overline{x},\mu)&=&nK_{R1}\Bigl[\int^\infty_U
t(x\mid\overline{x},\mu)+\int^L_{-\infty} t(x\mid\overline{x},\mu)\,dx\Bigr] \\
\noalign{\hbox{and}}
K_{W2}(\overline{x},\mu)&=&(N-n)K_{R1}\Bigl[\int^\infty_U
\left(f(x)\mu\right)\,dx\Bigr]+\Bigl[\int^L_{-\infty}
f(x\mid\mu)\,dx\Bigr]X.
\end{eqnarray}

\subsection*{(B) Cost of Reworked Defective Items}

The expected cost, $K_W(\overline{x},\mu)$, of reworking defective items success
can be obtained by adding expressions (5) and (6), thus
\begin{equation}
K_W(\overline{x},\mu)=NK_{R1}-nK_{R1}Q_{1D}(\overline{x},\mu)-(N-n)K_{R1}P_{1D}(\mu)~.
\end{equation}
where the two possibilities $P_{1D}(\mu)$ and $Q_{1D}(\overline{x},\mu)$ are
defined in the following form:
\begin{eqnarray}
{}&{}P_{1D}(\mu)=\int^U_L f(x\mid\mu)\,dx~,\\
\noalign{\hbox{and}}
{}&{}Q_{1D}(\overline{x},\mu)=\int^U_L t(x\mid\overline{x},\mu)\,dx~.
\end{eqnarray}
The total expected cost can be written as:
\begin{eqnarray}
K_T&=&\int^{{+}\infty}_{{-}\infty}
\left[\int^{U_A}_{L_A}n(K_A-K_P)Q_{1D}(\overline{x},\mu)T(\overline{x}_n\mid\mu)\,d\overline{x}\right]
h(\mu)\,d\mu\nonumber\\
&&-K_{A^n}\int^{{+}\infty}_{{-}\infty}\left[\int^{U_A}_{U_L}P_{1D}(\mu)T
(\overline{x}_n\mid\mu)\,d\overline{x}\right]h(\mu)\,d\mu\nonumber\\
&&+\left(K_A(N-n)+K_{pn}\right)\int^{{+}\infty}_{{-}\infty}
\left[\int^{U_A}_{U_L}T
(\overline{x}_n\mid\mu)\,d\overline{x}\right]h(\mu)\,d\mu\nonumber\\
&&+\int^{{+}\infty}_{{-}\infty}\left[\int^{L_{sn}}_{L_A}
K_W(\overline{x},\mu)T(\overline{x}_n\mid\mu)\,d\overline{x}\right]h(\mu)\,d\mu\nonumber\\
&&+\int^{{+}\infty}_{{-}\infty}\left[\int^{U_{sn}}_{L_A}
K_W(\overline{x},\mu)T(\overline{x}_n\mid\mu)\,d\overline{x}\right]h(\mu)\,d\mu+K_{I^n}~.
\end{eqnarray}
The decision points $L_A$, $U_A$, $L_{sn}$, $U_{sn}$, relative to a
lot acceptance and screening, respectively, are defined in the
Appendix. For estimating the decision points, the total cost must be
optimized relative to $U_A$. Taking the partial derivative of $K_T$
relative to $U_A$ yields:
\begin{eqnarray}
{\partial K_T\over{\partial U_A}}&=&n(K_{An}-K_P)\int^{{+}\infty}_{{-}\infty}Q_{1D}
\left((U_A,\mu)T(U_A)\mid\mu\right)h(\mu)\,d\mu\nonumber\\
&&-K_AN\int^{{+}\infty}_{{-}\infty}P_{1D}(\mu)T(U_A\mid\mu)h(\mu)\,d\mu\nonumber\\
&&-NK_{R1}\int^{{+}\infty}_{{-}\infty}T(U_A\mid\mu)h(\mu)\,d\mu\nonumber\\
&&+nK_{R1}\int^{{+}\infty}_{{-}\infty}Q_{1D}(U_A,\mu)T(U_A\mid\mu)h(\mu)\,d\mu\nonumber\\
&&+(N-n)K_{R1}\int^{{+}\infty}_{{-}\infty}P_{1D}(\mu)T(U_A\mid\mu)h(\mu)\,d\mu~.
\end{eqnarray}
Arranging the terms in expression (11) yields:
\begin{eqnarray}
{\partial K_T\over{\partial U_A}}&=&n\left[(K_{A}-K_P)+K_{R1}\right]\int^{{+}\infty}_{{-}\infty}
Q_{1D}(U_A,\mu)T(U_A,\mu)T(U_A\mid\mu)h(\mu\,d\mu)\nonumber\\
&&+\left[(N-n)K_{R1}-K_{A}n\right]
\int^{{+}\infty}_{{-}\infty}P_{1D}(\mu)T(U_A\mid\mu)h(\mu\,d\mu)\nonumber\\
&&+\left[K_A(N-n)+K_{pn}-nK_{R1}-NK_{R1}+nK_{R1}\right]\nonumber\\
&&\times \int^{{+}\infty}_{{-}\infty}T(U_A\mid\mu)h(\mu)\,d\mu~.
\end{eqnarray}
 Setting ${\partial K_T\over{\partial U_A}}=0$, and dividing each term of expression
(12) by\hfill\break
$\int^{{+}\infty}_{{-}\infty}T(U_A\mid\mu)h(\mu)\,d\mu$, the resulting
expression is
\begin{eqnarray}
\lefteqn{ { \int^{{+}\infty}_{{-}\infty}P_{1D}(\mu)T(U_A\mid\mu)h(\mu\,d\mu)
\over{\int^{{+}\infty}_{{-}\infty}T(U_A\mid\mu)h(\mu\,d\mu)}} }\nonumber\\
\lefteqn{ +{n\left[(K_{A}-K_P)+K_{R1}\right]\over{(N-n)K_{R1}-K_{A}n}} 
 {\int^{{+}\infty}_{{-}\infty}
Q_{1D}(U_A,\mu)T(U_A\mid\mu)h(\mu)\,d\mu\over{\int^{{+}\infty}_{{-}\infty}
T(U_A\mid\mu)h(\mu)\,d\mu}} }\nonumber\\
&=&{NK_{R1}-[K_A(N-n)+K_pn]\over{(N-n)K_{R1}-K_A N}}  \hspace{55mm}
\end{eqnarray}
Define the following qualities $Q_1(U_A,n)$ {\em and\/} $Q_2(U_A,n)$
as
\begin{eqnarray}
Q_1(U_A,n)&=&{\int^{{+}\infty}_{{-}\infty}
Q_{1D}(U_A,\mu)T(U_A\mid\mu)h(\mu)\,d\mu\over{\int^{{+}\infty}_{{-}\infty}
T(U_A\mid\mu)h(\mu)\,d\mu}}\\
\noalign{\hbox{and}}
Q_2(U_A,n)&=&{\int^{{+}\infty}_{{-}\infty}P_{1D}(\mu)T(U_A\mid\mu)h(\mu\,d\mu)
\over{\int^{{+}\infty}_{{-}\infty}T(U_A\mid\mu)h(\mu\,d\mu)}}~.
\end{eqnarray}
Also, expressions (14) and (15) can be written as
\begin{equation}
Q_1(U_A,n)={1\over{\sqrt{2\pi}\sqrt{\sigma^2+\sigma^2_n}}}\int^U_L
e^{-{1\over 2}{(x-m_n)^2\over{\sigma^2+\sigma^2_n}}}\,dx
\end{equation}
where
\begin{equation}
\delta^2_n={\sigma^2\over n}~~,~~m^2_n
={m\delta^2_n+\sigma^2_\mu
U_A\over{\delta^2_n+\sigma^2_\mu}}~~,~~
\sigma^2_n={\sigma^2_n\cdot\delta^2_n\over{\delta^2_n+\sigma^2_n}}~,
\end{equation}
and $U_A$ can be obtained by employing expression (17) and can be
written as
\begin{equation}
U_A={m^2_n(\delta^2_n+\sigma^2_n)-m\delta^2_n\over{\sigma^2_\mu}}
\end{equation}
and in the same way
\begin{equation}
Q_2(U_A,n)={\sigma_u\cdot\delta_n\over{\sqrt{2\pi}\sqrt{\sigma^2_\mu+\delta^2_n}}}\int^U_L
e^{-{1\over 2}{(x-U_A)^2\over{\sigma^2{(n-1)\over{n}}}}}\,dx~.
\end{equation}
Employing expressions (16), (17) and (20), expression (13) can be
\begin{eqnarray}
\lefteqn{ \Phi\left({U-m_n\over\sqrt{\sigma^2+\sigma^2_n}}\right)
-\Phi\left({L-m_n\over\sqrt{\sigma^2+\sigma^2_n}}\right) }\nonumber\\
\lefteqn{+{n[(K_A-K_P)+k_{r1}\over{(n-N)k_{R1}-K_AN}} 
 {\sigma_\mu\cdot\sigma^2\sqrt{n-1}\over{n\sqrt{\sigma^2_\mu+\delta^2_n}}}
\left[\Phi\left({U-U_A\over{\sigma\sqrt{n-1\over n}}}\right)
-\Phi\left({L-U_A\over{\sigma\sqrt{n-1\over
n}}}\right)\right] }\nonumber\\
&=&{NK_{R1}-[K_A(N-n)+K_{pn}]\over{(N-n)K_{R1}-K_AN}}~. \hspace{5cm}
\end{eqnarray}
Optimizing the total cost relative to the screening limit of $X$
yields the upper and lower limits for lot screening. Thus, taking the
partial derivative of $K_T$ relative to $U_{sn}$ yields
\begin{equation}
{\partial K_T\over{\partial
U_{sn}}}=\int^{+\infty}_{-\infty}K_W(U_{sn},\mu)T(U_{sn}\mid\mu)h(\mu)\,d\mu~.
\end{equation}
The partial derivative of $K_T$ relative to $U_{sn}$ is
\begin{eqnarray}
{\partial K_T\over{\partial U_{sn}}}&=&NK_{R1}{\partial K_T\over{\partial
U_{sn}}}-(N-n)K_{R1}\int^{+\infty}_{-\infty}P_{1D}(\mu)T(U_{sn}\mid\mu)h(\mu)
\,d\mu\nonumber\\
&&-nK_{R1}\int^{+\infty}_{-\infty}Q_{1D}(U_{sn},\mu)
T(U_{sn}\mid\mu)h(\mu)\,d\mu~.
\end{eqnarray}
Setting ${\partial K_T\over{\partial U_{sn}}}=0$, and dividing the
above expression by
$\int^{+\infty}_{-\infty}T(U_{sn}\mid\mu)h(\mu)\,d\mu$ and simplifying
yields
\begin{eqnarray}
\lefteqn{ {\int^{+\infty}_{-\infty}P_{1D}(\mu)T(U_{sn}\mid\mu)h(\mu)\,d\mu
\over{\int^{+\infty}_{-\infty}T(U_{sn}\mid\mu)h(\mu)\,d\mu}}  
 +{n\over{N-n}} 
{\int^{+\infty}_{-\infty}Q_{1D}(U_{sn},\mu)T(U_{sn}\mid\mu)h(\mu)\,d\mu
\over{\int^{+\infty}_{-\infty}T(U_{sn}\mid\mu)h(\mu)\,d\mu}} }\nonumber\\
&=&{N\over{N-n}}~. \hspace{9.5cm}
\end{eqnarray}
 Moreover, expression (23) can be written as
\begin{eqnarray}
\lefteqn{ \Phi\left({U-m_n\over\sqrt{\sigma^2+\sigma^2_n}}\right)
-\Phi\left({L-m_n\over\sqrt{\sigma^2+\sigma^2_n}}\right) }\nonumber \\
\lefteqn{ +{n\over{N-n}}\left[{\sigma_\mu\cdot\sigma^2
\sqrt{n-1}\over{n\sqrt{\sigma^2_\mu+\delta^2_n n}}}\right]
\left[\Phi\left({U-U_{sn}\over{\sigma\sqrt{n-1\over n}}}\right)
-\Phi\left({LU-U_{sn}\over{\sigma\sqrt{n-1\over
n}}}\right)\right]  }\nonumber\\
&=&{N\over{N-n}} \hspace{8cm} 
\end{eqnarray}
where
\begin{equation}
\delta^2_n={\sigma^2\over n}~~,~~m^2_n={m\delta^2_n+\sigma^2_\mu
U_{sn}\over{\delta^2_n+\sigma^2_\mu}}~~,~~
\sigma^2_n={\sigma^2_\mu\cdot\delta^2_n\over{\delta^2_n+\sigma^2_\mu}}~.
\end{equation}

\section{Example}

A manufacturer of an electronic device used as a temperature probe in
a space satellite, use fuses of high quality for the device. The
mission time of each of the fuses is intended to be six to seven
thousand hours. The quality control engineers constructed a control
chart in terms of the decision points relative to upper and lower
limits $X$ based on the statistical and economical cost parameters to
test the fuses. The chart is designed to keep the quality of the items
produced under control by accepting, rejecting or reworking the items
before installing them to meet their standard. The specifications and
the outcome of the test procedure are listed below.

\paragraph{Input:}\  

\begin{tabular}{{l}{r}}
\multicolumn{2}{c}{\sc model specifications} \\
Upper limit of the Q.C. $X$: & 7.50000\\ 
Lower limit of the Q.C. $X$: & 6.50000\\ 
Variance of $X$: & 0.06250\\ 
Variance of the mean of $X$: & 0.00420\\ 
Unit cost of screening: & 0.30000\\ 
Unit cost of acceptance: & 5.00000\\
Cost of scrapping or replacing a defective unit & \\
found during sampling or screening inspection: & 0.60000\\ 
Unit cost of scrapping: & 0.60000\\ 
Lot size: & 1000\\ 
\end{tabular}

\paragraph{Output 1:} Sample size, roots of the cost function, posterior and
sampling costs per unit.

\begin{tabular}{cl}
Column& Description\\ 
1& Sample size\\
2& $(a*b)/(b+n*a)$,  where  $a$ is the variance of the mean of $X$,\\ 
 &$b$ is the variance of $X$, and $n$ is the sample size \\ 
3& Lower disposition limit for lot screening \\
4& Upper disposition limit for lot screening \\
5& Upper disposition limit of the sample mean \\ 
6& Lower disposition limit of the sample mean \\
7& Screening cost per lot \\ 
8& P2 is the fraction defective at which the costs of screening\\
 &  and scrapping are equal \\
\end{tabular} \smallskip
\begin{center}
\begin{tabular}{|cccccccc|}\hline
1&2&3&4&5&6&7&8\\ \hline
52&0.00093&6.47421&7.52579&7.67626&6.32374&997.41631&0.33031\\
53&0.00092&6.47597&7.52403&7.67116&6.32884&997.36340&0.33025\\
54&0.00091&6.47765&7.52235&7.66629&6.33371&997.31037&0.33019\\
55&0.00089&6.47926&7.52074&7.66163&6.33837&997.25720&0.33013\\
56&0.00088&6.48081&7.51919&7.65716&6.34284&997.20392&0.33007\\
57&0.00087&6.48228&7.51772&7.65288&6.34712&997.15050&0.33001\\ \hline
\end{tabular}
\end{center}

\paragraph{Output 2:} \

\begin{tabular}{cl}
Column &Description\\ 
1& Sample size \\
2& Second derivative of the cost relative to the variables involved \\
3& Scrapping cost per lot \\
4& Value of the cumulative probability of $X$ given the mean of  \\
 & the lot between the limits $(-\infty\cdot LS)$ and $(US\cdot\infty)$\\
5& Expected value of the cost obtained by summing over all \\
 & sample means and lot means 
\end{tabular}

\begin{center}
\begin{tabular}{|ccccc|} \hline
1&2&3&4&5\\ \hline
52&0.0000\,E\,00&0.9974\,E\,03&0.6697E 00&0.1352\,E\,04\\
53&0.0000\,E\,00&0.9974\,E\,03&0.6697\,E\,00&0.1350\,E\,04\\
54&0.0000\,E\,00&0.9973\,E\,03&0.6698\,E\,00&0.1352\,E\,04\\
55&0.0000\,E\,00&0.9973\,E\,03&0.6699\,E\,00&0.1357\,E\,04\\
56&0.0000\,E\,00&0.9972\,E\,03&0.6699\,E\,00&0.1366\,E\,04\\ \hline
\end{tabular}  \end{center}
\bigskip 

The density product factor have the following values values: \\ 
0.6777283865338088, 0.6766359442639973, 0.6777177776626595, \\
0.6805999893591675, 0.6849525069706924, 0.6904866061698254.

\bigbreak

\paragraph{Output of program prog5aa}\quad\\
\begin{tabular}{cl}
Column & Description\\ 
1& Sample size \\ 
2& Second derivative relative of the variables involved (sample size, \\
 & upper and lower limits of the sample mean for lot acceptance, \\
 & the upper  and lower for lot screening) \\
3& Total expected cost 
\end{tabular}

\begin{center}
\begin{tabular}{|ccc|} \hline
1&2&3\\ \hline
52&0.4142\,E\,05&0.3451\,E\,04\\ 
53&0.4197\,E\,05&0.3443\,E\,04\\
54&0.4252\,E\,05&0.3438\,E\,04\\ 
55&0.4304\,E\,05&0.3437\,E\,04\\
56&0.4355\,E\,05&0.3439\,E\,04\\ \hline
\end{tabular} \end{center}


\section{Conclusions}

The data shows that the cost is optimum if the sample size if $52$.
Estimation of the upper and lower limits of $\overline{x}$ are $L_{sn}=6.47597$.
$U_{sn}=7.52597$, $L_A=6.85999$, $U_A=7.14001$. Select a sample size
of $n=52$ from a lot of size $N=1000$ out of a production line.
Estimate the sample mean $\overline{x}$. If $6.85999<\overline{x}<7.14001$, the entire lot
will be accepted. If $\overline{x}>7.14001$ or $\overline{x}<6.85999$, the lot requires
screening. If $7.14001<\overline{x}<7.5257$ or $6.47597<\overline{x}<6.8599$, the lot
should be screened. The items in a rejected lot can be either scrapped
or reworked with success. The fraction of items reworked is $13\%$ of
the total items rejected which is $26\%$. The total expected cost per
item is $1.799$ units. The cost per scrapped item is $0.330625$ units,
and that per item scrapped is $0.0341$. From the data generated it is
obvious that the cost of reworking defectives add to the total cost.
In this case the cost of acceptance is reduced. The cost of screening
is the same while the cost of scrapping is reduced. The quality of the
items manufactured in the while process is highly critical for both
the consumers and producers. Finally, the costs per item are
represented graphically by Figures 1 and 2.


\section{Appendix: Notation}

\begin{tabular}{ll}
$\overline{x}$ & Sample mean.\\ 
$L$ & Lower specification limit of the quality characteristic.\\ 
$U$ & Upper specification limit of the quality characteristic.\\ 
$\mu$ & Mean of the quality characteristic.\\ 
$\sigma$ & Standard deviation of the quality characteristic.\\ 
$\sigma_\mu$ & Standard deviation of the mean $\mu$.\\ 
$h(\mu)$ & Distribution of the lot mean $\mu$.\\
$L_A$ & Lower disposition limit of $\overline{x}$ for accepting the lot.\\ 
$U_A$ & Upper disposition limit of $\overline{x}$ for accepting the lot.\\ 
$L_{sn}$ & Lower disposition limit for $\overline{x}$ for screening inspection.\\ 
$U_{sn}$ & Upper disposition limit for $\overline{x}$ for inspection.\\ 
$K_{J}$ & Junk value of the scrapped item.\\
$K_{P}$ & Production cost of an item.\\ 
$K_{R}$ & Sale price of an item.\\ 
$K_{y}$ & Rework yield rate.\\ 
$K_{c}$ & Cost of an item reworked with success.\\ 
$K_{c1}$ & Cost per unit of repairing an item above the specification limit of \\
  & the lot acceptance.\\ 
$K_{c2}$ & Cost per unit of repairing an item below the specification limit of \\
  & the lot acceptance.\\ 
$K_{4}$ & Cost of an item reworked without success.\\ 
$P_{4s}$ & Probability that an individual measurement in a sample drawn \\
 & from  a lot is below the lower specification limit in a single variable \\
  & acceptance sampling plan.\\ 
$P_{3s}$ & Probability that an individual measurement in a sample drawn \\
 & from  a lot is above the upper specification limit in a single variable \\
 & acceptance sampling plan.\\ 
$P_{1u}$ & Probability that an individual measurement in a lot of mean $\mu$ is \\
 & above the upper specification limit when a single variable is involved.\\
$P_{2L}$ & Probability that an individual measurement in a lot of mean $\mu$ is \\
 & below the lower specification limit when a single variable is involved.\\
\end{tabular}




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\noindent{\sc Hadi Y. Alkahby }\\
Department of Mathematics \\ 
Dillard University, New Orleans, LA 70122 USA \\
Tel: 504-286-4731 e-mail: halkahby@aol.com
\medskip

\noindent{\sc Fouad N. Jalbout }\\ 
Department of Physics/Engineering \\
Dillard University, New Orleans, LA 70122 USA\\ 
Tel: 504-286-4730 e-mail: jalbout@aol.com



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