Title :
Do We Really Need to Calibrate All the Parameters? Variance-Based Sensitivity Analysis to Simplify Microscopic Traffic Flow Models
Author :
Punzo, V. ; Montanino, M. ; Ciuffo, B.
Author_Institution :
Inst. for Energy & Transp., Eur. Comm. Joint Res. Centre, Ispra, Italy
Abstract :
Automated calibration of microscopic traffic flow models is all but simple for a number of reasons, including the computational complexity of black-box optimization and the asymmetric importance of parameters in influencing model performances. The main objective of this paper is therefore to provide a robust methodology to simplify car-following models, that is, to reduce the number of parameters (to calibrate) without sensibly affecting the capability of reproducing reality. To this aim, variance-based sensitivity analysis is proposed and formulated in a “factor fixing” setting. Among the novel contributions are a robust design of the Monte Carlo framework that also includes, as an analysis factor, the main nonparametric input of car-following models, i.e., the leader´s trajectory, and a set of criteria for “data assimilation” in car-following models. The methodology was applied to the intelligent driver model (IDM) and to all the trajectories in the “reconstructed” Next Generation SIMulation (NGSIM) I80-1 data set. The analysis unveiled that the leader´s trajectory is considerably more important than the parameters in affecting the variability of model performances. Sensitivity analysis also returned the importance ranking of the IDM parameters. Basing on this, a simplified model version with three (out of six) parameters is proposed. After calibrations, the full model and the simplified model show comparable performances, in face of a sensibly faster convergence of the simplified version.
Keywords :
Monte Carlo methods; computational complexity; convergence; data assimilation; intelligent transportation systems; optimisation; IDM parameters; Monte Carlo framework; NGSIM; automated calibration; black-box optimization; computational complexity; convergence; data assimilation; intelligent driver model; microscopic traffic flow models; next generation simulation; nonparametric input; robust design; variance-based sensitivity analysis; Analytical models; Calibration; Computational modeling; Sensitivity analysis; Trajectory; Uncertainty; Calibration; Next Generation SIMulation (NGSIM); car-following; intelligent driver model (IDM); sensitivity analysis; traffic microsimulation; uncertainty management; vehicle trajectory;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2014.2331453