Abstract:
Smart cities aie part ofthe continuous advancement oftechnology aimed at providing
a bettei quality of life for their inhabitants. Urban transportation is one of the most
important components of a smart city. Finding a suitable parking in a congested city is
a time-consuming and fuel-intensive process. It affects the daily stress levels ofdrivers
and citizens, since urban traffic congestion has been more common due to the
increasing number of vehicles in these cities. Furthermore, even in the parking lot, it
is difficult to find a parking space, and it is not an easy task for drivers in circles.
Studies have shown that drivers looking for a parking space cause up to 30% oftraffic
congestion. In this case, it is necessary to predict the available space in the parking lot
where the driver wants to park. In this project, we propose a new system that combines
I°T (internet ofthings) and an ensemble-based predictive model to optimize predictive
availability of parking spaces. The project allows drivers to know, in advance, the
status ofthe parking system in real time via wireless networks ofsensor devices. This
work is devoted to the study of data generated by parking systems with the aim of
developing predictive models that generate predictive information. This can be useful
for improving the management of parking spaces, especially street parking, while
significantly impacting city traffic. In this project, we propose an intelligent parking
space prediction model, using a long-term short-term memory (LSTM) neural network.