Multiple measures-based chaotic time series for traffic flow prediction based on Bayesian theory
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Title
Multiple measures-based chaotic time series for traffic flow prediction based on Bayesian theory
Authors
Keywords
Traffic flow, Chaos theory, Phase space reconstruction, Bayesian estimation, Multi-measure time series, RBF neural network
Journal
NONLINEAR DYNAMICS
Volume 85, Issue 1, Pages 179-194
Publisher
Springer Nature
Online
2016-02-25
DOI
10.1007/s11071-016-2677-5
References
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