Knowledge Agora



Similar Articles

Title Smart application for traffic excess prediction
ID_Doc 42710
Authors Ruzicka, J; Purkrábková, Z; Korec, V
Title Smart application for traffic excess prediction
Year 2020
Published
Abstract The prediction of traffic excesses (traffic congestions and traffic accidents) is become a very important topic for many cities and regions. The number of cars in cities and the total traffic volumes in cities are increasing over time, and solutions will be needed to eliminate traffic accidents and prevent secondary excesses. This will ideally lead to time savings for transport users and, above all, to an increase in the safety, fluidity and environmental performance of the transport itself. The article deals with a research activity that aims to develop a separate module in the form of a traffic application that will be able to predict traffic excesses. The neural networks were the main tool for the development of traffic applications for prediction, namely multilayer neural networks with activation function sigmoidou. With regard to the focus of the conference Smart City, the article does not focus on extensive development and testing of neural network, but primarily on the description of the functionalities of the result, including a critical commentary on the problems of the current state of the application. The transport application is developed in collaboration with the scientific and commercial spheres and its future integration into the management platform for smart city management is expected.
PDF

Similar Articles

ID Score Article
40296 Culita, J; Caramihai, SI; Dumitrache, I; Moisescu, MA; Sacala, IS An Hybrid Approach for Urban Traffic Prediction and Control in Smart Cities(2020)Sensors, 20, 24
42330 Bilotta, S; Nesi, P; Paoli, I Real-time System for Short- and Long-Term Prediction of Vehicle Flow(2020)
43916 Nagy, AM; Simon, V Survey on traffic prediction in smart cities(2018)
42749 Tian, YX; Pan, L Predicting Short-term Traffic Flow by Long Short-Term Memory Recurrent Neural Network(2015)
38517 Shanthi, DL; Prasanna, K; Desai, V; Agarwal, S; Shetty, VMM; Rakesh, AS Traffic Prediction System using IoT in Smart City Perspective(2021)
41674 Tiwari, P The machine learning framework for traffic management in smart cities(2024)Management Of Environmental Quality, 35, 2
43947 Berlotti, M; Di Grande, S; Cavalieri, S Proposal of a Machine Learning Approach for Traffic Flow Prediction(2024)Sensors, 24, 7
41320 Saleem, M; Abbas, S; Ghazal, TM; Khan, MA; Sahawneh, N; Ahmad, M Smart cities: Fusion-based intelligent traffic congestion control system for vehicular networks using machine learning techniques(2022)Egyptian Informatics Journal, 23, 3
41087 Chahal, A; Gulia, P; Gill, NS; Priyadarshini, I A Hybrid Univariate Traffic Congestion Prediction Model for IoT-Enabled Smart City(2023)Information, 14, 5
36999 Dymora, P; Mazurek, M; Jucha, M Examining the possibility of short-term prediction of traffic volume in smart city control systems with the use of regression models(2024)International Journal Of Electronics And Telecommunications, 70.0, 1
Scroll