Efficient transport simulation with restricted Batch-Mode Active Learning

Date

2018-07-24

Embargo

Advisor

Coadvisor

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE
Language
English

Research Projects

Organizational Units

Journal Issue

Alternative Title

Abstract

Simulation modeling is a well-known and recurrent approach to study the performance of urban systems. Taking into account the recent and continuous transformations within increasingly complex and multidimensional cities, the use of simulation tools is, in many cases, the only feasible and reliable approach to analyze such dynamic systems. However, simulation models can become very time consuming when detailed input-space exploration is needed. To tackle this problem, simulation metamodels are often used to approximate the simulators' results. In this paper, we propose an active learning algorithm based on the Gaussian process (GP) framework that gathers the most informative simulation data points in batches, according to both their predictive variances and to the relative distance between them. This allows us to explore the simulators' input space with fewer data points and in parallel, and thus in a more efficient way, while avoiding computationally expensive simulation runs in the process. We take advantage of the closeness notion encoded into the GP to select batches of points in such a way that they do not belong to the same high-variance neighborhoods. In addition, we also suggest two simple and practical user-defined stopping criteria so that the iterative learning procedure can be fully automated. We illustrate this methodology using three experimental settings. The results show that the proposed methodology is able to improve the exploration efficiency of the simulation input space in comparison with non-restricted batch-mode active learning procedures

Keywords

Active learning, transport simulation, simula- tion metamodels, Gaussian processes.

Document Type

Journal article

Citation

F. Antunes, B. Ribeiro, F. C. Pereira, & R. Gomes (2018). Efficient Transport Simulation With Restricted Batch-Mode Active Learning. IEEE Transactions on Intelligent Transportation Systems, 19(11), 3642-3651. https://doi.org/10.1109/TITS.2018.2842695. Repositório Institucional UPT. https://hdl.handle.net/11328/6457

TID

Designation

Access Type

Restricted Access

Sponsorship

Description