|
Showing 1 - 4 of
4 matches in All Departments
Continues to focuses specifically on probability rather than
probability and statistics Offers a conversational presentation
rather than theorem/proof and includes examples based on
engineering applications as it highlights Excel computations
Presents a review of set theory and updates all descriptions so
they are more understandable such as events versus outcomes
Additional new material includes distributions such as beta and
lognormal, a section on counting principles for defining
probabilities, a section on mixture distributions, and a pair of
distribution summary tables A solutions manual is available for
qualified textbook adoptions
Industrial engineering has expanded from its origins in
manufacturing to transportation, health care, logistics, services,
and more. A common denominator among all these industries, and one
of the biggest challenges facing decision-makers, is the
unpredictability of systems. Probability Models in Operations
Research provides a comprehensive overview of the probabilistic and
stochastic modeling approaches commonly used to capture the
randomness in industrial and systems engineering.
Industrial engineering has expanded from its origins in
manufacturing to transportation, health care, logistics, services,
and more. A common denominator among all these industries, and one
of the biggest challenges facing decision-makers, is the
unpredictability of systems. Probability Models in Operations
Research provides a comprehensive overview of the probabilistic and
stochastic modeling approaches commonly used to capture the
randomness in industrial and systems engineering.
Without proper reliability and maintenance planning, even the most
efficient and seemingly cost-effective designs can incur enormous
expenses due to repeated or catastrophic failure and subsequent
search for the cause. Today's engineering students face increasing
pressure from employers, customers, and regulators to produce
cost-efficient designs that are less prone to failure and that are
safe and easy to use. The second edition of Reliability Engineering
aims to provide an understanding of reliability principles and
maintenance planning to help accomplish these goals. This edition
expands the treatment of several topics while maintaining an
integrated introductory resource for the study of reliability
evaluation and maintenance planning. The focus across all of the
topics treated is the use of analytical methods to support the
design of dependable and efficient equipment and the planning for
the servicing of that equipment. The argument is made that
probability models provide an effective vehicle for portraying and
evaluating the variability that is inherent in the performance and
longevity of equipment. With a blend of mathematical rigor and
readability, this book is the ideal introductory textbook for
graduate students and a useful resource for practising engineers.
|
|