Accurate prediction of short-term OD Matrix (i.e. the distribution of passenger flows from various origins to destinations) is a crucial task in metro systems. It is highly challenging due to the constantly changing nature of many impacting factors and the real-time de- layed data collection problem. Recently, some deep learning-based models have been proposed for OD Matrix forecasting in ride- hailing and high way traffic scenarios. However, these models can not sufficiently capture the complex spatiotemporal correlation between stations in metro networks due to their different prior knowledge and contextual settings. In this paper we propose a hy- brid framework Multi-view TRGRU to address OD metro matrix prediction. In particular, it uses three modules to model three flow change patterns: recent trend, daily trend, weekly trend. In each module, a multi-view representation based on embedding for each station is constructed and fed into a transformer based gated re- current structure so as to capture the dynamic spatial dependency in OD flows of different stations by a global self-attention mecha- nism. Extensive experiments on three large-scale, real-world metro datasets demonstrate the superiority of our Multi-view TRGRU over other competitors.
翻译:对短期OD矩阵(即从不同来源到不同目的地的旅客流动的分布)的准确预测是地铁系统的一项关键任务,由于许多影响因素的性质不断变化,以及实时脱线数据收集问题,这是极具挑战性的,最近提出了一些深层次的学习模型,用于在乘车中和高速交通情景中对OD矩阵进行短期预测,然而,这些模型无法充分捕捉地铁网络各站之间复杂的空间时空关系,因为其先前的知识和背景背景背景不同。在本文件中,我们提出一个超强框架多视TRRU应对OD气象矩阵预测。特别是,它使用三个模块来模拟三种流量变化模式:最新趋势、每日趋势、每周趋势。在每个模块中,基于每个站嵌入的多视角代表制成并输入基于封闭式当前结构的变压器,以便通过全球自留式调式的调控式调控系统模型来捕捉不同台站在OD流动中的动态空间依赖性。在三个大规模、真实的RRRRM数据系统上,对三个大型、真实的高级性、超强的多视域国进行广泛的实验。