In this lecture, we introduce the three different simulation methodologies (agent-based modeling, system dynamics modeling, and discrete event system simulation) and then focus on how stochastic modeling is used within discrete-event system simulation.
Archived lectures from undergraduate course on stochastic simulation given at Arizona State University by Ted Pavlic
Thursday, August 25, 2022
Lecture A2 (2022-08-25): Introduction to Simulation Modeling
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Tempe, AZ, USA
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