A Mean-Field Matrix-Analytic Method for Bike Sharing Systems under Markovian Environment
To reduce automobile exhaust pollution, traffic congestion and parking difficulties, bike-sharing systems are rapidly developed in many countries and more than 500 major cities in the world over the past decade. In this paper, we discuss a large-scale bike-sharing system under Markovian environment,...
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Zusammenfassung: | To reduce automobile exhaust pollution, traffic congestion and parking
difficulties, bike-sharing systems are rapidly developed in many countries and
more than 500 major cities in the world over the past decade. In this paper, we
discuss a large-scale bike-sharing system under Markovian environment, and
propose a mean-field matrix-analytic method in the study of bike-sharing
systems through combining the mean-field theory with the time-inhomogeneous
queues as well as the nonlinear QBD processes. Firstly, we establish an
empirical measure process to express the states of this bike-sharing system.
Secondly, we apply the mean-field theory to establishing a time-inhomogeneous
MAP(t)/MAP(t)/1/K+2L+1 queue, and then to setting up a system of mean-field
equations. Thirdly, we use the martingale limit theory to show the asymptotic
independence of this bike-sharing system, and further analyze the limiting
interchangeability as N goes to infinity and t goes to infinity. Based on this,
we discuss and compute the fixed point in terms of a nonlinear QBD process.
Finally, we analyze performance measures of this bike-sharing system, such as,
the mean of stationary bike number at any station and the stationary
probability of problematic stations. Furthermore, we use numerical examples to
show how the performance measures depend on the key parameters of this
bike-sharing system. We hope the methodology and results of this paper are
applicable in the study of more general large-scale bike-sharing systems. |
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DOI: | 10.48550/arxiv.1610.01302 |