Exploring patterns of demand in bike sharing systems via replicated point process models

02/13/2018
by   Daniel Gervini, et al.
0

Understanding patterns of demand is fundamental for fleet management of bike sharing systems. In this paper we analyze data from the Divvy system of the city of Chicago. We show that the demand of bicycles can be modeled as a multivariate temporal point process, with each variable corresponding to a bike station in the network. The availability of daily replications of the process allows nonparametric estimation of the intensity functions, even for stations with low daily counts, and straightforward estimation of the correlations between stations. These correlations are then used for clustering, which reveal different patterns of demand.

READ FULL TEXT

page 23

page 25

page 29

research
12/18/2022

Predicting Citi Bike Demand Evolution Using Dynamic Graphs

Bike sharing systems often suffer from poor capacity management as a res...
research
06/30/2021

Spatial kriging for replicated temporal point processes

This paper presents a kriging method for spatial prediction of temporal ...
research
09/09/2019

Analyzing the Spotify Top 200 Through a Point Process Lens

Every generation throws a hero up the pop charts. For the current genera...
research
08/26/2019

Role Detection in Bicycle-Sharing Networks Using Multilayer Stochastic Block Models

Urban spatial networks are complex systems with interdependent roles of ...
research
03/10/2019

Dynamic Demand Prediction for Expanding Electric Vehicle Sharing Systems: A Graph Sequence Learning Approach

Electric Vehicle (EV) sharing systems have recently experienced unpreced...
research
12/13/2017

Predicting Station-level Hourly Demands in a Large-scale Bike-sharing Network: A Graph Convolutional Neural Network Approach

Bike sharing is a vital piece in a modern multi-modal transportation sys...
research
06/07/2018

A Comprehensive Framework for Dynamic Bike Rebalancing in a Large Bike Sharing Network

Bike sharing is a vital component of a modern multi-modal transportation...

Please sign up or login with your details

Forgot password? Click here to reset