Alapfogalmak
The core message of this article is to develop a method for synthesizing an optimal policy that prioritizes the restoration of critical components in an earthquake-damaged electric distribution system. The proposed approach iteratively filters the applicable actions to maximize the probability of reaching each priority goal set and minimize the expected time to reach it.
Kivonat
The article presents a method for optimal policy synthesis from a sequence of goal sets, with an application to the problem of restoring an earthquake-damaged electric distribution system.
Key highlights:
- The authors model the restoration process as a Markov Decision Process (MDP), where the states represent the health status of the system components (buses), and the actions represent the energization of a set of buses.
- The goal is to synthesize an optimal policy that prioritizes the restoration of critical components, such as hospitals or base stations, over less critical ones.
- The authors formulate the problem as synthesizing a policy that maximizes the probability of reaching each goal set in the given order, and then minimizes the expected time to reach each goal set.
- The proposed method iteratively filters the applicable actions to ensure the optimal policy satisfies the prioritized objectives.
- The authors illustrate the method on sample distribution systems and disaster scenarios, and compare the results with previous approaches that do not consider prioritization.
- The key advantage of the proposed method is its ability to prioritize the restoration of critical components while still minimizing the overall restoration time.
Statisztikák
The article does not contain any explicit numerical data or statistics. The focus is on the policy synthesis methodology and its application to distribution system restoration.
Idézetek
"Motivated by the post-disaster distribution system restoration problem, in this paper, we study the problem of synthesizing the optimal policy for a Markov Decision Process (MDP) from a sequence of goal sets."
"Our aim is to generate a policy that is optimal with respect to the first goal set, and it is optimal with respect to the second goal set among the policies that are optimal with respect to the first goal set and so on."