Metropolitan scale vehicular traffic modeling is used by a variety of private and public sector urban mobility stakeholders to inform the design and operations of road networks. High-resolution stochastic traffic simulators are increasingly used to describe detailed demand-supply interactions. The design of efficient calibration techniques remains a major challenge. This paper considers a class of high-dimensional calibration problems known as origin-destination (OD) calibration. We formulate the problem as a continuous simulation-based optimization problem. Our proposed algorithm builds upon recent metamodel methods that tackle the simulation-based problem by solving a sequence of approximate analytical optimization problems, which rely on the use of analytical network models. In this paper, we formulate a network model defined as a system of linear equations, the dimension of which scales linearly with the number of roads with field data and independently of the dimension of the route choice set. This makes the approach suitable for large-scale metropolitan networks. The approach has enhanced efficiency compared with past metamodel formulations that are based on systems of nonlinear, rather than linear, equations. It also has enhanced efficiency compared to traditional calibration methods that resort to simulation-based estimates of traffic assignment matrices, while the proposed approach uses analytical approximations of these matrices. We benchmark the approach considering a peak period Salt Lake City case study and calibrate based on field vehicular count data. The new formulation yields solutions with good performance and is suitable for large-scale road networks.
翻译:· 设计高效校准技术仍是一项重大挑战。本文认为,有一类称为原产地目的地(OD)校准的高度校准问题。我们将这一问题作为一个连续模拟优化问题提出来。我们提议的算法以最近的模型方法为基础,通过解决一系列近似的分析优化分析问题来解决模拟问题,这取决于分析网络模型的使用。在本文件中,我们设计了一个网络模型,定义为线性方程式系统,其范围与拥有实地数据的道路数量成线,独立于路线选择的层面。这样,就适合大型大都市网络。与以往基于非线性系统而非线性等式的模型设计相比,我们的方法提高了效率。它也提高了效率,与传统的校准方法相比,即采用基于模拟网络的模式,采用基于模型的准确度等式网络,采用基于模型的准确度矩阵方法,并采用基于模型的实地基准分析模式,同时考虑基于数据库的实地基准矩阵,同时考虑基于模型的实地基准分析基准分析模式,并采用基于数据库的实地基准分析模型,同时考虑基于数据库的实地基准分析基准分析阶段。