Addressing Uncertainty by Designing an Intelligent Fuzzy System to Help Decision Support Systems for Winter Road Maintenance
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https://hdl.handle.net/10037/26713Date
2022-02-17Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
One of the main challenges in developing efficient and effective winter road maintenance
is to design an accurate prediction model for the road surface friction coefficient. A reliable and
accurate prediction model of road surface friction coefficient can help decision support systems to
significantly increase traffic safety, while saving time and cost. High dynamicity in weather and road
surface conditions can lead to the presence of uncertainties in historical data extracted by sensors. To
overcome this issue, this study uses an adaptive neuro-fuzzy inference system that can appropriately
address uncertainty using fuzzy logic neural networks. To investigate the ability of the proposed
model to predict the road surface friction coefficient, real data were measured at equal time intervals
using optical sensors and road-mounted sensors. Then, the most critical features were selected based
on the Pearson correlation coefficient, and the dataset was split into two independent training and
test datasets. Next, the input variables were fuzzified by generating a fuzzy inference system using
the fuzzy c-means clustering method. After training the model, a testing set was used to validate the
trained model. The model was evaluated by means of graphical and numerical metrics. The results
show that the constructed adaptive neuro-fuzzy model has an excellent ability to learn and accurately
predict the road surface friction coefficient.
Publisher
MDPICitation
Hatamzad, Polanco Pinerez, Casselgren. Addressing Uncertainty by Designing an Intelligent Fuzzy System to Help Decision Support Systems for Winter Road Maintenance. Safety. 2022;8(1)Metadata
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