OCAICEAug 4, 2025

An Efficient Continuous-Time MILP for Integrated Aircraft Hangar Scheduling and Layout

arXiv:2508.02640v21 citationsh-index: 4
Originality Incremental advance
AI Analysis

This provides a computationally viable exact optimization tool for large-scale hangar planning, benefiting aircraft maintenance operations with improved efficiency and reduced delays.

The paper tackled the problem of integrating spatial layout and time-continuous scheduling for aircraft MRO hangars to minimize operational costs, achieving orders-of-magnitude speedups (e.g., solving a congested instance in 0.11 seconds) and increasing hangar throughput by up to 33% compared to a heuristic.

Efficient management of aircraft MRO hangars requires the integration of spatial layout with time-continuous scheduling to minimize operational costs. We propose a continuous-time mixed-integer linear program that jointly optimizes aircraft placement and timing, overcoming the scalability limits of prior formulations. A comprehensive study benchmarks the model against a constructive heuristic, probes large-scale performance, and quantifies its sensitivity to temporal congestion. The model achieves orders-of-magnitude speedups on benchmarks from the literature, solving a long-standing congested instance in 0.11 seconds, and finds proven optimal solutions for instances with up to 40 aircraft. Within a one-hour limit for large-scale problems, the model finds solutions with small optimality gaps for instances up to 80 aircraft and provides strong bounds for problems with up to 160 aircraft. Optimized plans consistently increase hangar throughput (e.g., +33% serviced aircraft vs. a heuristic on instance RND-N030-I03), leading to lower delay penalties and higher asset utilization. These findings establish that exact optimization has become computationally viable for large-scale hangar planning, providing a validated tool that balances solution quality and computation time for strategic and operational decisions.

Foundations

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

Your Notes