Abstract
Motivated by the needs of on-line optimization of real-world engineering systems, we studied single sample path-based algorithms for Markov decision problems (MDP). The sample path used in the algorithms can be obtained by observing the operation of a real system. We give a simple example to explain the advantages of the sample path-based approach over the traditional computation-based approach: matrix inversion is not required; some transition probabilities do not have to be known; it may save storage space; and it gives the flexibility of iterating the actions for a subset of the state space in each iteration. The effect of the estimation errors and the convergence property of the sample path-based approach are studied. Finally, we propose a fast algorithm, which updates the policy whenever the system reaches a particular set of states and prove that the algorithm converges to the true optimal policy with probability one under some conditions. The sample path-based approach may have important applications to the design and management of engineering systems, such as high speed communication networks.
| Original language | English |
|---|---|
| Pages (from-to) | 527-548 |
| Number of pages | 22 |
| Journal | Journal of Optimization Theory and Applications |
| Volume | 100 |
| Issue number | 3 |
| Publication status | Published - Mar 1999 |
Keywords
- Markov decision processes
- On-line optimization
- Performance potentials
- Perturbation analysis