Parking demand forecasting and behaviour analysis have received increasing attention in recent years because of their critical role in mitigating traffic congestion and understanding travel behaviours. However, previous studies usually only consider temporal dependence but ignore the spatial correlations among parking lots for parking prediction. This is mainly due to the lack of direct physical connections or observable interactions between them. Thus, how to quantify the spatial correlation remains a significant challenge. To bridge the gap, in this study, we propose a spatial-aware parking prediction framework, which includes two steps, i.e. spatial connection graph construction and spatio-temporal forecasting. A case study in Ningbo, China is conducted using parking data of over one million records before and during COVID-19. The results show that the approach is superior on parking occupancy forecasting than baseline methods, especially for the cases with high temporal irregularity such as during COVID-19. Our work has revealed the impact of the pandemic on parking behaviour and also accentuated the importance of modelling spatial dependence in parking behaviour forecasting, which can benefit future studies on epidemiology and human travel behaviours.
翻译:近年来,由于在减少交通堵塞和理解旅行行为方面的关键作用,泊车需求预测和行为分析受到越来越多的关注,然而,以往的研究通常只考虑时间依赖,而忽略了停车场空间的关联,以进行泊车预测,这主要是因为停车场之间缺乏直接的有形联系或可观测的互动,因此,如何量化空间相关性仍是一个重大挑战。为缩小差距,我们在本研究报告中提议了一个空间认知停车预测框架,其中包括两个步骤,即空间连接图的构造和空间时空预测。中国宁波的案例研究利用了100多万记录在COVID-19之前和期间的泊车数据。研究结果表明,泊车占用预测方法优于基线方法,特别是在COVID-19期间等时间性极不正常的情况下。我们的工作揭示了该大流行病对泊车行为的影响,并突出了空间依赖建模在泊车行为预测中的重要性,这有利于今后对流行病学和人类旅行行为的研究。