Reference
A. Jamshidnejad and B. De Schutter, "A combined probabilistic-fuzzy approach
for dynamic modeling of traffic in smart cities: Handling imprecise and
uncertain traffic data,"
Computers and Electrical
Engineering, vol. 119-A, p. 109552, 2024.
Abstract
Humans and autonomous vehicles will jointly use the roads in smart cities.
Therefore, it is a requirement for autonomous vehicles to properly handle the
information and uncertainties that are introduced by humans (e.g., drivers,
pedestrians, traffic managers) into the traffic, to accordingly make proper
decisions. Such information is commonly available as linguistic, fuzzy
(non-quantified) terms. Thus, we need mathematical modeling approaches that, at
the same time, handle mixed (i.e., quantified and non-quantified) data. For
this, we introduce novel type-2 sets and membership functions to translate such
mixed traffic data into mathematical concepts that handle different levels and
types of uncertainties and that can undergo mathematical operations. Next, we
propose rule-based data processing and modeling approaches to exploit the
advantages of these sets. This is inspired by the rule-based reasoning of
humans, which has proven to be very effective and efficient in various
applications, especially in traffic. The resulting models, hence, handle more
than one level and type of uncertainty, which results in precise estimations of
traffic dynamics that are comparable in accuracy with similar analyses if only
one level of uncertainty (either probabilistic or fuzzy) would exist in the
dataset. This will significantly improve the analysis, prediction, management,
and safety of traffic in future smart cities.
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BibTeX
@article{JamDeS:24-018,
author = {Jamshidnejad, Anahita and De Schutter, Bart},
title = {A Combined Probabilistic-Fuzzy Approach for Dynamic Modeling of
Traffic in Smart Cities: {Handling} Imprecise and Uncertain
Traffic Data},
journal = {Computers and Electrical Engineering},
volume = {119-A},
pages = {109552},
year = {2024}
}