Title :
Study of intelligent load analysis system using genetic algorithm
Author :
Jo, Byung-Wan ; Yoon, Kwang-Won ; Lee, Yi-Shu ; Choi, Ji-Sun
Author_Institution :
Dept. of Civil Eng., Hanyang Univ., Seoul, South Korea
Abstract :
Roads play a crucial role in societal infrastructure as a main artery for the economy and lives of people. However, numerous deformations are caused by an increasing number of overloaded vehicles. Accordingly, an efficient managing system for preventing overloaded vehicles could be organised by using the road as a scale by applying a genetic algorithm to analyse the load and drive information of vehicles. First, accurate analysis of loads by using the behaviour of the road itself is needed to solve illegal axle manipulation problems of overloaded vehicles and to install intelligent embedded load analysis systems. Accordingly, to use the road behaviour, the transformation in this way was measured by installing an underground box-type indoor model, and an indoor experiment was conducted by using a genetic algorithm. After five driving sessions with each vehicle, 50 sets of dynamic responding data were attained. The recognition variables were calculated to be within the error range of 10%.
Keywords :
automated highways; genetic algorithms; road vehicles; drive vehicle information; driving sessions; genetic algorithm; illegal axle manipulation problems; indoor experiment; intelligent embedded load analysis systems; load vehicle information; managing system; overloaded vehicles; road behaviour; societal infrastructure; underground box-type indoor model;
Journal_Title :
Intelligent Transport Systems, IET
DOI :
10.1049/iet-its.2012.0142