An Optimal BP Neural Network Track Prediction Method Based on a GA–ACO Hybrid Algorithm

Ship position prediction is the key to inland river and sea navigation warning. Maritime traffic control centers, according to ship position monitoring, ship position prediction and early warning, can effectively avoid collisions. However, the prediction accuracy and computational efficiency of the...

Full description

Saved in:
Bibliographic Details
Published inJournal of marine science and engineering Vol. 10; no. 10; p. 1399
Main Authors Zheng, Yuanzhou, Lv, Xuemeng, Qian, Long, Liu, Xinyu
Format Journal Article
LanguageEnglish
Published Basel MDPI AG 01.10.2022
Subjects
Online AccessGet full text
ISSN2077-1312
2077-1312
DOI10.3390/jmse10101399

Cover

More Information
Summary:Ship position prediction is the key to inland river and sea navigation warning. Maritime traffic control centers, according to ship position monitoring, ship position prediction and early warning, can effectively avoid collisions. However, the prediction accuracy and computational efficiency of the ship’s future position are the key problems to be solved. In this paper, a path prediction model (GA–ACO–BP) combining a genetic algorithm, an ant colony algorithm and a BP neural network is proposed. The model is first used to perform deep pretreatment of raw AIS data, with the main body of the BP neural network as a prediction model, focused on the complementarity between genetic and ant colony algorithms, to determine the ant colony initialization pheromone concentration by the genetic algorithm, design the hybrid genetic–ant colony algorithm, and optimize this to the optimal weight and threshold of the BP neural network, in order to improve the convergence speed and effect of the traditional BP neural network. The test results show that the model greatly improves the fitness of track prediction, with higher accuracy and within a shorter time, and has a certain real-time and extensibility for track prediction of different river segments.
Bibliography:ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
ISSN:2077-1312
2077-1312
DOI:10.3390/jmse10101399