Discrete Event Dynamic Systems resources: Difference between revisions
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* Chapter 2: [[Media:chap2_deds.pdf|Languages and Automata]] | * Chapter 2: [[Media:chap2_deds.pdf|Languages and Automata]] | ||
* Notes on [[Media:DFARE.pdf|conversion between DFSA and Regular Expressions]] [from Hopcroft, John E.; Ullman, Jeffrey D. (1979). Introduction to Automata Theory, Languages, and Computation (1st ed.) Addison-Wesley] | * Notes on [[Media:DFARE.pdf|conversion between DFSA and Regular Expressions]] [from Hopcroft, John E.; Ullman, Jeffrey D. (1979). Introduction to Automata Theory, Languages, and Computation (1st ed.) Addison-Wesley] | ||
* Chapter 3: [[Media:chap3_deds.pdf|Supervisory Control]] | |||
* Chapter 4: [[Media:chap4_deds.pdf|Petri Nets]] | |||
* Chapter 5: [[Media:chap5_deds.pdf|Timed DES]] | |||
* Chapter 6: [[Media:chap6_deds.pdf|Stochastic Timed Automata and Petri Nets]] | |||
* Notes on [[Media:ETPN-MC.pdf|equivalence of ETPNs and MCs]] [from N. Viswanadham, Y. Narahari. Performance Modeling of Automated Manufacturing Systems , 1992, Prentice Hall] | |||
* Chapter 7: [[Media:chap7_deds.pdf|Markov Chains]] | |||
* Chapter 8: [[Media:chap8_deds.pdf|Controlled Markov Chains]] | |||
* Chapter 9: [[Media:chap8-RL_deds.pdf|Reinforcement Learning MDP solution]] |
Latest revision as of 16:33, 17 December 2009
- Chapter 1: Introduction to DEDS
- Chapter 2: Languages and Automata
- Notes on conversion between DFSA and Regular Expressions [from Hopcroft, John E.; Ullman, Jeffrey D. (1979). Introduction to Automata Theory, Languages, and Computation (1st ed.) Addison-Wesley]
- Chapter 3: Supervisory Control
- Chapter 4: Petri Nets
- Chapter 5: Timed DES
- Chapter 6: Stochastic Timed Automata and Petri Nets
- Notes on equivalence of ETPNs and MCs [from N. Viswanadham, Y. Narahari. Performance Modeling of Automated Manufacturing Systems , 1992, Prentice Hall]
- Chapter 7: Markov Chains
- Chapter 8: Controlled Markov Chains
- Chapter 9: Reinforcement Learning MDP solution