It looks like you're using Internet Explorer 11 or older. This website works best with modern browsers such as the latest versions of Chrome, Firefox, Safari, and Edge. If you continue with this browser, you may see unexpected results.
  • AWARDS
  • WORKS
      • ALL
      • SCHOOLS & OFFICES
          • SCHOOL OF ARTS AND SOCIAL SCIENCES
          • LEE SHAU KEE SCHOOL OF BUSINESS AND ADMINISTRATION
          • SCHOOL OF EDUCATION AND LANGUAGES
          • SCHOOL OF NURSING AND HEALTH STUDIES
          • SCHOOL OF SCIENCE AND TECHNOLOGY
          • LI KA SHING SCHOOL OF PROFESSIONAL AND CONTINUING EDUCATION (LiPACE)
          • LIBRARY
          • STUDENT AFFAIRS OFFICE
      • COLLECTIONS
  • ABOUT
Search
Advanced Search
Log In
繁
简
close×
  • Home
  • S&T Best Computing Projects

An investigation of multi-objective particle swarm optimization algorithm for better performance and its application to signalized traffic problem

Twitter logo Weibo logo Whatsapp logo Facebook logo Mail logo
Part of: An investigation of multi-objective particle swarm optimization algorithm for better performance and its application to signalized traffic problem (2 objects)
Previous2 of 2
An investigation of multi-objective particle swarm optimization algorithm for better performance and its application to signalized traffic problem - PDF
An investigation of multi-objective particle swarm optimization algorithm for better performance and its application to signalized traffic problem - video
Collection
  • S&T Best Computing Projects
Record Details
Record ID
stcompfyp:13
Title
An investigation of multi-objective particle swarm optimization algorithm for better performance and its application to signalized traffic problem
Type of Work
Final Year Project/Work
Collection
S&T Best Computing Projects
Contributor
Yuen, Man Chung (creator)
Ng, Sin Chun Vanessa 吳倩珍 (supervisor)
School / Unit
School of Science and Technology (S&T) 
Program
Bachelor of Computing with Honours in Internet Technology
Date
2020
Abstract
In this project, we are going to study and improve the state-of-the-art MOPSO algorithms. The proposed algorithm was based on the competitive mechanism MOPSO that guides the particles by the current population. We aim to achieve better performance that balances between exploration and exploitation of the whole swarm, avoid premature convergence, and maintain a well-distributed Pareto front. The proposed algorithm was applied to the signalized traffic problem to optimize the effective green time of each phase in real-world problems.
Type of Resource
Mixed
Language
English
Physical Description
This work includes 1 PDF file and 1 video clip.
Keywords
traffic congestion; traffic signs and signals; swarm intelligence; computational intelligence; mathematical optimization; multiple criteria decision making
Access Eligibility
Public Access
Permanent Link
https://repository.lib.hkmu.edu.hk/sw/islandora/object/stcompfyp:13
Object Details
Record ID
stcompfyp:15
Title
An investigation of multi-objective particle swarm optimization algorithm for better performance and its application to signalized traffic problem - video
Collection
S&T Best Computing Projects
Type of Resource
Video
Physical Description
3 minutes 54 seconds.
Access Eligibility
Public Access
Permanent Link
https://repository.lib.hkmu.edu.hk/sw/islandora/object/stcompfyp:15
Responsible Use of Electronic Resources
Internet Policy and Disclaimer
© Hong Kong Metropolitan University. All Rights Reserved.