The Impact of Built Environment on Bike Commuting: Utilising Strava Bike Data and Geographically Weighted Models

Hyesop Shin, Costanza Cagnina, A. Basiri
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引用次数: 1

Abstract

Abstract. Active travel provides significant public health benefits including improving physical and mental health and air quality. Given the geography of congested roads, availability of required infrastructure and cost of transportation in cities, promoting active travel, including cycling, can be a good solution for commuting within built environments. Having a better understanding of the key drivers that may influence bike ridership can help with designing cities that accommodate cyclists’ needs for healthier citizens. This paper examines the built environment features that may affect commuting cyclists. We respectively employ Ordinary Linear Square (OLS) regression and Geographically Weighted Regression (GWR) for 136 Intermediate Zones of the city of Glasgow, UK. The results of GWR show that the significant local variation in green areas suggests that even though the global regression showed a negative association between the greenness and commute cycling, over half of the IZ areas had a strong positive association with the green areas. Building height and Public Transport Availability Index show geographic patterns where the residuals are fairly stationary across the study area with some clusters of high residuals. Performance wise, the results from GWR provided an R2 of 0.73 which was higher than OLS at 0.3. Our results can provide insights into how to use crowdsourced cycling data when there are spatially and temporally limited resources available.
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建筑环境对自行车通勤的影响:基于Strava自行车数据和地理加权模型
摘要主动旅行对公众健康有重大好处,包括改善身心健康和空气质量。考虑到拥堵道路的地理位置、所需基础设施的可用性和城市交通成本,促进包括骑自行车在内的主动出行可能是在建筑环境中通勤的一个很好的解决方案。更好地了解可能影响自行车使用的主要驱动因素可以帮助设计城市,以满足骑自行车者对健康市民的需求。本文研究了可能影响通勤骑自行车者的建成环境特征。我们分别采用普通线性平方(OLS)回归和地理加权回归(GWR)对英国格拉斯哥市的136个中间区进行了分析。GWR结果表明,绿地面积的显著局部差异表明,尽管全球回归显示绿地面积与通勤骑行之间存在负相关,但超过一半的IZ区域与绿地面积存在强烈的正相关。建筑高度和公共交通可用性指数显示了研究区内残差相对稳定的地理格局,残差高的区域有一些集群。在性能方面,GWR结果的R2为0.73,高于OLS的0.3。我们的研究结果可以为如何在空间和时间资源有限的情况下使用众包骑行数据提供见解。
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