Submitted:
31 May 2025
Posted:
02 June 2025
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Abstract
Keywords:
I. Introduction
II. Related Work and Identified Gaps
III. Methodology
1. System Architecture
2. Pathfinding with A* Algorithm
3. Dynamic Obstacle Avoidance
4. Real-Time Simulation and User Interaction
5. System Performance and Evaluation
IV. Mathematical Modeling and Equations
1. A* Algorithm Pathfinding
- f(n): Total estimated cost of node n.
- g(n): Actual cost to reach node n from the start.
- h(n): Heuristic estimate cost from node n to the goal.
2. Manhattan Distance (Heuristic Function)
3. Conflict Resolution for Multi-Agent Systems
4. Cost of Movement
5. Rerouting Efficiency
V. Results and Discussion
1. Pathfinding Efficiency
2. Rerouting Efficiency
3. Conflict Resolution
4. Performance Under Dynamic Conditions
5. Comparison with Traditional Systems

VI. Future Scope
VII. Conclusion
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