Liddle Jack, Jiang Wenhua, Malleson Nick
School of Geography, University of Leeds, Leeds, UK.
Alan Turing Institute, London, UK.
J Geogr Syst. 2025;27(3):425-453. doi: 10.1007/s10109-025-00469-0. Epub 2025 Jun 10.
As the world rapidly urbanises and cities become larger and more complex, understanding pedestrian dynamics is paramount. New data sources, particularly those that measure pedestrian counts (i.e. 'footfall'), offer potential as a means of better understanding the fundamental spatio-temporal structures that characterise aggregate pedestrian behaviour. However, footfall data are often complex and influenced by a wide range of social, spatial and temporal factors, which complicates interpretation. This paper applies principal component analysis (PCA) to hourly pedestrian count data from Melbourne, Australia, to extract the key temporal signatures that underpin observed urban footfall patterns. PCA can reduce the dimensionality of noisy pedestrian flow data, revealing dominant activity patterns such as weekday commuting cycles and weekend leisure activities. By subsequently analysing pedestrian volumes through the lens of these components, we start to expose the underlying types of pedestrian activities that characterise different neighbourhoods. In addition, we can distinguish multiple overlapping activity patterns within a single location, identifying changes in urban functionality and detecting shifts in mobility trends. The impacts of external shocks, such as the COVID-19 pandemic, are particularly stark. These findings shed light on the intricacies of urban mobility and suggest that there is value in the use of PCA as a means to better understand urban dynamics.
随着世界迅速城市化,城市规模不断扩大且日益复杂,了解行人动态至关重要。新的数据来源,尤其是那些测量行人数量(即“客流量”)的数据源,有望成为更好理解表征总体行人行为的基本时空结构的一种手段。然而,客流量数据往往很复杂,且受到广泛的社会、空间和时间因素影响,这使得解读变得复杂。本文将主成分分析(PCA)应用于澳大利亚墨尔本每小时的行人计数数据,以提取支撑所观察到的城市客流量模式的关键时间特征。主成分分析可以降低嘈杂行人流量数据的维度,揭示诸如工作日通勤周期和周末休闲活动等主要活动模式。通过随后从这些成分的角度分析行人数量,我们开始揭示表征不同社区的行人活动的潜在类型。此外,我们可以区分单个地点内多个重叠的活动模式,识别城市功能的变化并检测出行趋势的转变。外部冲击(如新冠疫情)的影响尤为明显。这些发现揭示了城市交通的复杂性,并表明使用主成分分析作为更好理解城市动态的一种手段具有价值。