SYST 417: OPTIMIZATION METHODS IN SYSTEMS ENGINEERING
Fall 2001
tel: 703 993 1658��� email: [email protected]
HOMEWORK: Homework will be assigned and randomly graded; homework will be the primary source of questions for the exams. Following the due dates for homework assignments, solutions of most homework problems will be presented during the lectures.
EXAMS: Two midterms and a final exam. The exams will be in-class exams. See �Special Information� below.
PROJECT: Every student will be required to do a term paper or an approved project. The nature and details of this requirement will be described during the first lecture.
GRADING: Your homework will constitute 25% of you grade; each of the three exams will constitute 25%.
RECOMMENDED TEXT: The following text is recommended:
1. Bhatti: Practical Optimization Methods, Springer, 2000 (isbn 0 387 98631 6)
RECOMMENDED SOFTWARE: You must acquire and learn how to use the
linear and nonlinear mathematical programming utilities contained in one
of the following commercial software packages:
1.
GAMS
2.
MATLAB
3.
AMPL
4.
MAPLE
5.
Scientific Work
Place (http://www.mackichan.com)
IMPRORTANCE OF LECTURES: Lectures will be the single most important source of information. The book will be used for suggested readings to reinforce the classroom presentation and sometimes as a source of homework, exam problems and the term paper/project. Although there are no explicit penalties for missing a lecture, experience has shown that students who miss the lectures are unable to fully comprehend the material and do extremely poorly on exams. Much of each classroom presentation is extemporaneous and geared to the particular difficulties of the class on the day of the lecture; as a consequence notes are of great importance.
PREVIOUS COURSE EVALUATIONS: In
Fall 1998 this course received an overall rating of 4.94; in Fall 1999 the
rating was 4.65; in Spring 2001 the rating was 4.85. A summary of student
evaluations may be found at
����������� http://ratings.gmu.edu/
OUTLINE
1. Introduction������������������������������������������������������������
2. Definition of a Mathematical Program������������
3. Optimality Defined���������������������������������������������������
4. Necessary and Sufficient Conditions�
5. Algorithms for Unconstrained Nonlinear Programs
6. Linear Programming Algorithms
7. Algorithms for Constrained Nonlinear Programs
8. Case Studies in Applications of Mathematical Programming
9. Equilibrium Problems
10. Case Studies in Equilibrium Modeling
11. Optimal Control Problem Defined
12. Necessary Conditions for Deterministic Optimal Control: The Minimum Principle
13. Optimal Control Case Studies