The purpose of this research is to identify correlates of bike station activity for Nice Ride Minnesota, a bike share system in Minneapolis - St. Paul Metropolitan Area in Minnesota. We obtained the number of trips to and from each of the 116 bike share stations operating in 2011 from Nice Ride Minnesota. Data for independent variables included in models come from a variety of sources; including the 2010 US Census, the Metropolitan Council, a regional planning agency, and the cities of Minneapolis and St. Paul. We use log-linear and negative binomial regression models to evaluate the marginal effects of these factors on average daily station trips. Our models have high goodness of fit, and each of 13 independent variables is significant at the 10% level or higher. The number of trips at Nice Ride stations is associated with neighborhood socio demographics (i.e., age and race), proximity to the central business district, proximity to water, accessibility to trails, distance to other bike share stations, and measures of economic activity. Analysts can use these results to optimize bike share operations, locate new stations, and evaluate the potential of new bike share programs.
翻译:这项研究的目的是确定明尼苏达州明尼苏达州Nice Ride Minnesotix(明尼苏达州圣保罗大都会地区圣保罗市市的自行车共享系统)自行车站活动的相关关系,我们从明尼苏达州Nice Ride Minnex获得2011年运行的116个自行车共享站中每个站的往返次数,来自明尼苏达州Nice Ride Minnes,模型中包含的独立变量数据来自多种来源,包括2010年美国人口普查、大都会委员会、区域规划机构、明尼阿波利斯市和圣保罗市。我们使用日志线和负双向回归模型来评估这些因素对平均日交通的边际效应。我们的模型非常适合,13个独立变量中的每个变量都占10%或以上。尼斯Ride站的旅行次数与周边的社会人口统计(即年龄和种族)、靠近中央商业区、靠近水、接近足迹、距离其他自行车共享站以及经济活动措施有关。分析员可以利用这些结果优化自行车共享操作、定位新站以及评估新自行车共享方案的潜力。