Real-Time Forecasting of Metro Origin-Destination Matrices with High-Order Weighted Dynamic Mode Decomposition

Zhanhong Cheng, M. Trépanier, Lijun Sun
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引用次数: 22

Abstract

Forecasting short-term ridership of different origin-destination pairs (i.e., OD matrix) is crucial to the real-time operation of a metro system. However, this problem is notoriously difficult due to the large-scale, high-dimensional, noisy, and highly skewed nature of OD matrices. In this paper, we address the short-term OD matrix forecasting problem by estimating a low-rank high-order vector autoregression (VAR) model. We reconstruct this problem as a data-driven reduced-order regression model and estimate it using dynamic mode decomposition (DMD). The VAR coefficients estimated by DMD are the best-fit (in terms of Frobenius norm) linear operator for the rank-reduced full-size data. To address the practical issue that metro OD matrices cannot be observed in real time, we use the boarding demand to replace the unavailable OD matrices. Moreover, we consider the time-evolving feature of metro systems and improve the forecast by exponentially reducing the weights for historical data. A tailored online update algorithm is then developed for the high-order weighted DMD model (HW-DMD) to update the model coefficients at a daily level, without storing historical data or retraining. Experiments on data from two large-scale metro systems show that the proposed HW-DMD is robust to noisy and sparse data, and significantly outperforms baseline models in forecasting both OD matrices and boarding flow. The online update algorithm also shows consistent accuracy over a long time, allowing us to maintain an HW-DMD model at much low costs.
基于高阶加权动态模态分解的地铁始发-目的地矩阵实时预测
预测不同始发目的地对的短期客流量(即OD矩阵)对地铁系统的实时运行至关重要。然而,由于OD矩阵的大规模、高维、嘈杂和高度偏斜的性质,这个问题非常困难。本文通过估计一个低秩高阶向量自回归(VAR)模型来解决短期OD矩阵预测问题。我们将该问题重构为数据驱动的降阶回归模型,并使用动态模态分解(DMD)对其进行估计。DMD估计的VAR系数是最适合(就Frobenius范数而言)的线性算子,用于降阶的全尺寸数据。为了解决地铁OD矩阵无法实时观察的实际问题,我们使用登机需求来代替不可用的OD矩阵。此外,我们还考虑了地铁系统的时变特征,并通过指数降低历史数据的权重来改进预测。然后为高阶加权DMD模型(HW-DMD)开发了定制的在线更新算法,以每日更新模型系数,无需存储历史数据或重新训练。在两个大型地铁系统数据上的实验表明,所提出的HW-DMD对噪声和稀疏数据具有鲁棒性,在预测OD矩阵和上车流量方面都明显优于基线模型。在线更新算法在很长一段时间内也显示出一致的准确性,使我们能够以低得多的成本维护HW-DMD模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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