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首页> 外文期刊>Journal of advanced transportation >Understanding City-Wide Ride-Sourcing Travel Flow: A Geographically Weighted Regression Approach
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Understanding City-Wide Ride-Sourcing Travel Flow: A Geographically Weighted Regression Approach

机译:了解城市广泛的乘坐旅行流程:地理加权回归方法

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摘要

The emerging ride-sourcing service has become an important element of urban mobility. A challenging question underlying the provision of such service is how and to what extent the built environment affects origin-destination (OD) travel flows. This paper employs the geographically weighted regression (GWR) model to analyze the OD-based ride-sourcing travel flow. It makes a comparison with the existing ordinary least square (OLS) model and spatial autocorrelation model (SAM). We have collected ride-sourcing order data in Hangzhou, China, to provide an accurate source for acquiring ride-sourcing travel flow. We investigate the effects of the residential area, points of interest (POIs), and transit stations on ride-sourcing travel flow among traffic analysis zones (TAZs). The results show the following: (a) GWR has better goodness-of-fit than SAM and OLS. (b) Residential area, enterprise, and bus stations have positive correlations with ride-sourcing OD flows, but education and subway stations have negative correlations. We have further investigated the issue and found that it is not a causal relationship between the bus station and OD flow, due to collinearity between the two variables. The bus station builds on locations with high demand, but its capacity is not large enough to reduce the ride-sourcing flow to a low level, which results in a positive coefficient. (c) Based on the estimated coefficients, the prediction of ride-sourcing flows is feasible, supporting the impact analysis for urban land use and transportation planning. This paper contributes to understanding OD-based ride-sourcing travel flow distributions and provides a framework of long-term OD flow prediction for urban land use and transportation planning.
机译:新兴的乘坐服务已成为城市移动性的重要因素。依据提供此类服务的挑战性问题是如何以及在何种程度上以及在多大程度上建立的环境影响原始目的地(OD)旅行流程。本文采用地理加权回归(GWR)模型来分析基于OP的乘坐行程。它与现有普通最小二乘(OLS)模型和空间自相关模型(SAM)进行了比较。我们收集了中国杭州的乘坐订单数据,为获取乘坐行程的旅行流程提供准确的来源。我们调查住宅区,兴趣点(POI)和运输站的效果在交通分析区(TAZS)之间的乘坐行程流动。结果表明以下内容:(a)GWR具有比SAM和OLS更好的健康状况。 (b)住宅区,企业和公交车站与乘坐OD流有正相关,但教育和地铁站具有负相关性。我们进一步调查了这个问题,发现它不是在两个变量之间的共同性的基本站和OD流之间的因果关系。公交车站在需求量很大的地方建立在位置,但其容量不足以将乘坐流量的流量降低到低水平,这导致正系数。 (c)基于估计系数,乘坐流动的预测是可行的,支持城市土地利用和运输规划的影响分析。本文有助于了解基于OP的乘坐行程流程分布,并为城市土地利用和运输规划提供了长期OD流程预测的框架。

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