Litcius/Paper detail

An optimization–simulation closed-loop feedback framework for modeling the airport capacity management problem under uncertainty

Paolo Scala, Miguel Mújica Mota, Cheng‐Lung Wu, Daniel Delahaye

2020Transportation Research Part C Emerging Technologies38 citationsDOIOpen Access PDF

Abstract

This paper presents an innovative approach that combines optimization and simulation techniques for solving scheduling problems under uncertainty. We introduce an Opt–Sim closed-loop feedback framework (Opt–Sim) based on a sliding-window method, where a simulation model is used for evaluating the optimized solution with inherent uncertainties for scheduling activities. The specific problem tackled in this paper, refers to the airport capacity management under uncertainty, and the Opt–Sim framework is applied to a real case study (Paris Charles de Gaulle Airport, France). Different implementations of the Opt–Sim framework were tested based on: parameters for driving the Opt–Sim algorithmic framework and parameters for driving the optimization search algorithm. Results show that, by applying the Opt–Sim framework, potential aircraft conflicts could be reduced up to 57% over the non-optimized scenario. The proposed optimization framework is general enough so that different optimization resolution methods and simulation paradigms can be implemented for solving scheduling problems in several other fields.

Topics & Concepts

Scheduling (production processes)Mathematical optimizationComputer scienceImplementationOptimization problemMathematicsProgramming languageAir Traffic Management and OptimizationAviation Industry Analysis and TrendsSimulation Techniques and Applications