AIMAFeb 24, 2024

A New Dynamic Distributed Planning Approach: Application to DPDP Problems

arXiv:2403.00805v1h-index: 5
Originality Synthesis-oriented
AI Analysis

This addresses distributed planning problems for agents in dynamic environments, but appears incremental as it builds on existing methods like genetic algorithms.

The paper tackles dynamic distributed planning by proposing an approach where agents generate new plans using genetic algorithms to incorporate changes in action sets and environment, and demonstrates its utility with a concrete case.

In this work, we proposed a new dynamic distributed planning approach that is able to take into account the changes that the agent introduces on his set of actions to be planned in order to take into account the changes that occur in his environment. Our approach fits into the context of distributed planning for distributed plans where each agent can produce its own plans. According to our approach the generation of the plans is based on the satisfaction of the constraints by the use of the genetic algorithms. Our approach is to generate, a new plan by each agent, whenever there is a change in its set of actions to plan. This in order to take into account the new actions introduced in its new plan. In this new plan, the agent takes, each time, as a new action set to plan all the old un-executed actions of the old plan and the new actions engendered by the changes and as a new initial state; the state in which the set of actions of the agent undergoes a change. In our work, we used a concrete case to illustrate and demonstrate the utility of our approach.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes