Computationally Efficient Offline Demand Calibration Algorithms for Large-scale Stochastic Traffic Simulation Models

Computationally Efficient Offline Demand Calibration Algorithms for Large-scale Stochastic Traffic Simulation Models
Author :
Publisher :
Total Pages : 181
Release :
ISBN-10 : OCLC:1087506909
ISBN-13 :
Rating : 4/5 (09 Downloads)

Book Synopsis Computationally Efficient Offline Demand Calibration Algorithms for Large-scale Stochastic Traffic Simulation Models by : Chao Zhang (Ph. D.)

Download or read book Computationally Efficient Offline Demand Calibration Algorithms for Large-scale Stochastic Traffic Simulation Models written by Chao Zhang (Ph. D.) and published by . This book was released on 2018 with total page 181 pages. Available in PDF, EPUB and Kindle. Book excerpt: This thesis introduces computationally efficient, robust, and scalable calibration algorithms for large-scale stochastic transportation simulators. Unlike a traditional "black-box" calibration algorithm, a macroscopic analytical network model is embedded through a metamodel simulation-based optimization (SO) framework. The computational efficiency is achieved through the analytical network model, which provides the algorithm with low-fidelity, analytical, differentiable, problem-specific structural information and can be efficiently evaluated. The thesis starts with the calibration of low-dimensional behavioral and supply parameters, it then addresses a challenging high-dimensional origin-destination (OD) demand matrix calibration problem, and finally enhances the OD demand calibration by taking advantage of additional high-resolution traffic data. The proposed general calibration framework is suitable to address a broad class of calibration problems and has the flexibility to be extended to incorporate emerging data sources. The proposed algorithms are first validated on synthetic networks and then tested through a case study of a large-scale real-world network with 24,335 links and 11,345 nodes in the metropolitan area of Berlin, Germany. Case studies indicate that the proposed calibration algorithms are computationally efficient, improve the quality of solutions, and are robust to both the initial conditions and to the stochasticity of the simulator, under a tight computational budget. Compared to a traditional "black-box" method, the proposed method improves the computational efficiency by an average of 30%, as measured by the total computational runtime, and simultaneously yields an average of 70% improvement in the quality of solutions, as measured by its objective function estimates, for the OD demand calibration. Moreover, the addition of intersection turning flows further enhances performance by improving the fit to field data by an average of 20% (resp. 14%), as measured by the root mean square normalized (RMSN) errors of traffic counts (resp. intersection turning flows).


Computationally Efficient Offline Demand Calibration Algorithms for Large-scale Stochastic Traffic Simulation Models Related Books

Computationally Efficient Offline Demand Calibration Algorithms for Large-scale Stochastic Traffic Simulation Models
Language: en
Pages: 181
Authors: Chao Zhang (Ph. D.)
Categories:
Type: BOOK - Published: 2018 - Publisher:

DOWNLOAD EBOOK

This thesis introduces computationally efficient, robust, and scalable calibration algorithms for large-scale stochastic transportation simulators. Unlike a tra
Real-Time Calibration of Large-Scale Traffic Simulators: Achieving Efficiency Through the Use of Analytical Mode
Language: en
Pages: 203
Authors: Kevin Zhang (Ph. D.)
Categories:
Type: BOOK - Published: 2020 - Publisher:

DOWNLOAD EBOOK

Stochastic traffic simulators are widely used in the transportation community to model real-world urban road networks in applications ranging from real-time con
Methods for Robust Calibration of Traffic Simulation Models
Language: en
Pages: 150
Authors: Sandeep Mudigonda
Categories: Monte Carlo method
Type: BOOK - Published: 2014 - Publisher:

DOWNLOAD EBOOK

Well-calibrated traffic simulation model predictions can be highly valid if various conditions arising due to time-of-day, work zones, weather, etc. are appropr
W-SPSA
Language: en
Pages: 111
Authors: Lu Lu (S.M.)
Categories:
Type: BOOK - Published: 2014 - Publisher:

DOWNLOAD EBOOK

The off-line calibration is a crucial step for the successful application of Dynamic Traffic Assignment (DTA) models in transportation planning and real time tr
Probabilistic Models and Optimization Algorithms for Large-scale Transportation Problems
Language: en
Pages: 186
Authors: Jing Lu (Ph.D.)
Categories:
Type: BOOK - Published: 2020 - Publisher:

DOWNLOAD EBOOK

This thesis tackles two major challenges of urban transportation optimization problems: (i) high-dimensionality and (ii) uncertainty in both demand and supply.