Agentic AI for Trip Planning Optimization Application
For intelligent vehicle trip planning, this work provides a novel optimization approach with ground-truth benchmarks, addressing the lack of objective evaluation in existing feasibility-oriented systems.
The paper introduces an agentic AI framework for trip planning optimization that uses an orchestration agent to coordinate specialized agents, achieving 77.4% accuracy on the TOP Benchmark, outperforming single-agent and workflow-based multi-agent baselines.
Trip planning for intelligent vehicles increasingly requires selecting optimal routes rather than merely producing feasible itineraries, as interacting factors such as travel time, energy consumption, and traffic conditions directly affect plan quality. Yet existing systems are largely designed for feasibility-oriented planning, and current benchmarks provide only reference answers without ground truth, preventing objective evaluation of optimization performance. In our paper, we address these limitations with an agentic AI framework that enables dynamic refinement through an orchestration agent coordinating specialized agents for traffic, charging, and points of interest, and with the Trip-planning Optimization Problems Dataset, which supplies definitive optimal solutions and category-level task structure for fine-grained analysis. Experiments show that our system achieves 77.4\% accuracy on the TOP Benchmark, significantly outperforming single-agent and workflow-based multi-agent baselines, demonstrating the importance of orchestrated agentic reasoning for robust trip planning optimization.