A hybrid modeling approach for parking and traffic prediction in urban simulations
Authored by Rahmatollah Beheshti, Gita Sukthankar
Date Published: 2015
DOI: 10.1007/s00146-013-0530-7
Sponsors:
United States National Science Foundation (NSF)
Platforms:
NetLogo
Model Documentation:
Pseudocode
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
https://code.google.com/archive/p/ucf-abm/
Abstract
Urban simulations are an important tool for analyzing many policy
questions relating to the usage of public space, roads, and communal
transportation; they can be used to predict the long-term impact of new
construction projects, traffic restrictions, and zoning laws. However, it is unwise to rely upon predictions from a single model since each
technique possesses different strengths and weaknesses and can be highly
sensitive to the choice of parameters and initial conditions. In this
article, we describe a hybrid approach for combining agent-based and
stochastic simulations (Markov chain Monte Carlo, MCMC) to improve the
accuracy and reduce the variance of long-term predictions. In our
proposed approach, the agent-based model is used to bootstrap the
proposal distribution for the MCMC estimator. To demonstrate the
applicability of our modeling technique, this article presents a case
study describing the usage of our hybrid simulation method for
forecasting transportation patterns and parking lot utilization on a
large university campus. A comparison of our simulation results against
an independently collected dataset reveals that our hybrid approach
accurately predicts parking lot usage and performs significantly better
than other comparable modeling techniques. Developing novel
architectures for combining the predictions of agent-based models can
produce insights that are different than simply selecting the best
model.
Tags
Agent-based model
algorithms
systems
Societies
Mcmc