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Books > Business & Economics > Business & management > Management of specific areas > Production & quality control management
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Run Related Probability Functions and their Application to Industrial Statistics - Ph.D. Thesis (Paperback)
Loot Price: R497
Discovery Miles 4 970
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Run Related Probability Functions and their Application to Industrial Statistics - Ph.D. Thesis (Paperback)
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Loot Price R497
Discovery Miles 4 970
Expected to ship within 18 - 22 working days
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Various procedures that are used in the field of industrial
statistics, include switching/stopping rules between different
levels of inspection. These rules are usually based on a sequence
of previous inspections, and involve the concept of runs. A run is
a sequence of identical events, such as a sequence of successes in
a slot machine. However, waiting for a run to occur is not merely a
superstitious act. In quality control, as in many other fields
(e.g. reliability of engineering systems, DNA sequencing,
psychology, ecology, and radar astronomy), the concept of runs is
widely applied as the underlying basis for many rules. Rules that
are based on the concept of runs, or "run-rules," are very
intuitive and simple to apply (for example: "use reduced inspection
following a run of 5 acceptable batches"). In fact, in many cases
they are designed according to empirical rather than probabilistic
considerations. Therefore, there is a need to investigate their
theoretical properties and to assess their performance in light of
practical requirements. In order to investigate the properties of
such systems their complete probabilistic structure should be
revealed. Various authors addressed the occurrence of runs from a
theoretical point of view, with no regard to the field of
industrial statistics or quality control. The main problem has been
to specify the exact probability functions of variables which are
related to runs. This problem was tackled by different methods
(especially for the family of order k distributions"), some of them
leading to expressions for the probability function. In this work
we present a method for computing the exact probability functions
of variables which originate in systems with switching or stopping
rules that are based on runs (including k-order variables as a
special case). We use Feller's (1968) methods for obtaining the
probability generating functions of run related variables, as well
as for deriving the closed form of the probability function from
its generating function by means of partial fraction expansion. We
generalize Feller's method for other types of distributions that
are based on runs, and that are encountered in the field of
industrial statistics. We overcome the computational complexity
encountered by Feller for computing the exact probability function,
using efficient numerical methods for finding the roots of
polynomials, simple recursive formulas, and popular mathematical
software packages (e.g. Matlab and Mathematica). We then assess
properties of some systems with switching/stopping run rules, and
propose modifications to such rules.
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