课程名称 (Course Name) : Stochastic Processes and Queueing Theory
课程代码 (Course Code): X034501
学分/学时 (Credits/Credit Hours):32
开课时间 (Course Term ):Autumn
开课学院(School Providing the Course): SEIEE
任课教师(Teacher): Jianhong Shi
课程讨论时数(Course Discussion Hours): 0
课程实验数(Lab Hours): 0
课程内容简介(Course Introduction):
This course will introduce the student to a basic set of mathematical tools which are appropriate for dealing with the randomness / stochasticity that underlies the operation of many technological, economic and social systems.
教学大纲(Course Teaching Outline):
Introduction
1. Overview
– Definition of Probability, Random Variable, Stochastic Process
– Classification of Stochastic Processes
– Overview of Queueing Theory
Part I:Stochastic Processes Theory
2. Conditional Probability and Conditional Expections
-- Math Definition
-- Applications
3. Markov Processes and Poisson Process
-- Definition
-- Chapman-Kolmogorov Equations
-- Limiting Probability
-- Time Reversibility
-- Markov Decision Process
-- Kolmogorov Forward and Backward Equation
-- Definition of Exponential Distribution
-- Properties of Exponential Random Variable
-- Convolutions of Exponential Random Variable
-- Defintiation of Counting Process, Poisson
-- Properties of Poisson Process
-- Variations of Poisson Process (nonhomogenous, Compound, Conditional)
4. Renew Processes, Random Walk, Brownian Motion
-- Definition of Renewal Process
-- Distribution of N(t)
-- Wald's Equatioin
-- Insights of Renewal
-- Variations on Brownina Motion
-- Absorbed Brownian Motion
-- Reflected Brownian Motion
-- Geometric Brownian Motion
-- Integrated Brownian Motion
-- Brownian Motion with drift
-- Analyze Brownian Motion through Martingale
-- Kolmogrov Differential Equations for Brownian Motion
5. Martingale Processes, Stationary Processes
-- Supper Martiginale, Sub Martingale
-- Fundamental Martingale Inequalities
-- Doob's Martingale Convergence Theorem
-- Definition of Stationary Process
-- Limiting Theorems and Ergodic Theory
Part II:Queueing Theory
6. M/M/1, M/M/C, etc
7. M/Er/1, Er/M/1, etc
8. M/G/1
9. G/M/1
10. Priority Queue
11. G/G/1
12. Queueing Networks (Jackson Networks, Wittle Networks)
课程进度计划(Course Schedule):
1st week:Overview
2nd week:Conditional Probability and Conditional Expections
3rd Week:Poisson Process
4th Week:Markov Processes
5Th Week:Renew Processes
6th Week:Random Walk
7th Week:Brownian Motion
8th Week:Martingale Processes
9th Week:Stationary Processes
10th Week:Queueing Theory
11th Week:Review
课程考核要求(Course Assessment Requirements):
1.Class performance 20%
2.Home work 30%
3.Final project 50%
参考文献(Course References):
Introduction to Probability Models, 10th Edition", by Sheldon Ross
预修课程(Prerequisite Course)
Understanding of elementary probability