4.7 Article

Towards a generic benchmarking platform for origin-destination flows estimation/updating algorithms: Design, demonstration and validation

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.trc.2015.08.009

关键词

Traffic modelling; Origin-Destination (OD) estimation/updating; Benchmarking platform; Simulation-based DTA

资金

  1. Action: ARISTEIA-II (Action's Beneficiary: General Secretariat for Research and Technology)
  2. European Union (European Social Fund - ESF)
  3. EU COST Action TU0903 MULTITUDE - Methods and tools

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Estimation/updating of Origin Destination (OD) flows and other traffic state parameters is a classical, widely adopted procedure in transport engineering, both in off-line and in online contexts. Notwithstanding numerous approaches proposed in the literature, there is still room for considerable improvements, also leveraging the unprecedented opportunity offered by information and communication technologies and big data. A key issue relates to the unobservability of OD flows in real networks except from closed highway systems thus leading to inherent difficulties in measuring performance of OD flows estimation/updating methods and algorithms. Starting from these premises, the paper proposes a common evaluation and benchmarking framework, providing a synthetic test bed, which enables implementation and comparison of OD estimation/updating algorithms and methodologies under standardized conditions. The framework, implemented in a platform available to interested parties upon request, has been flexibly designed and allows comparing a variety of approaches under various settings and conditions. Specifically, the structure and the key features of the framework are presented, along with a detailed experimental design for the application of different dynamic OD flow estimation algorithms. By way of example, applications to both off-line/planning and on-line algorithms are presented, together with a demonstration of the extensibility of the presented framework to accommodate additional data sources. (C) 2015 Elsevier Ltd. All rights reserved.

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