Author/Authors :
Dubi، نويسنده , , A.; Gurvitz، نويسنده , , N، نويسنده ,
Abstract :
The behavior of systems in the time domain is of essential importance in many
applications of System Engineering such as risk assessment, reliability, logistics and
maintenance. The behavior of systems, with constant transitions rates between states, is well
known. Such systems are described by the Markov equations. In most realistic systems the
state transition rates are time dependent and the Markov equations are inadequate. Such systems
are characterized by non exponential distributions which govern the events in the systems.
These systems are non markovian i.e future events depend not only on the ʹpresentʹ state of the
system but also on past events. No general state equations are available for the analysis of such
systems. The main purpose of this work is to suggest such equations. The concept of ʹevent
densityʹ of the system is introduced and shown to be of fundamental importance. In particular,
the ʹ,event densityʹ fulfills a set of integral equations suitable for the analysis of systems with
time dependent transition rates. These equations are shown to unify some aspects of system
engineering currently treated as independent categories, such as reliability analysis and renewal
theOly. The equations may support the development of Monte-Carlo methods which are
increasingly recognized to be of considerable value in approaching realistic systems. Analytic
and numerical aspects of these equations are discussed in some detail.