Back to Top

Paper Title

A bi-objective dynamic collaborative task assignment under uncertainty using modified MOEA/D with heuristic initialization

Authors

Panos M. Pardalos
Panos M. Pardalos
Chen Chen
Chen Chen
Wenqin Xu
Wenqin Xu
Shuxin Ding
Shuxin Ding

Article Type

Research Article

Research Impact Tools

Issue

Volume : 140 | Page No : 112844

Published On

February, 2020

Downloads

Abstract

The collaborative task assignment involved in Command and Control Systems is a key problem to be solved. The existing researches have their limitations to the natures of dynamic, uncertainty, flexibility and cooperation in a defensive scenario. Aiming at these, we formulate a bi-objective multi-stage task assignment model. The cooperation between sensor platforms and weapon platforms is considered. Also a Soyster robust model is introduced to handle uncertainty in a real time assignment process. Multi-objective evolutionary algorithm based on decomposition (MOEA/D) is adopted for the purpose of command flexibility. Currently, research focusing on multi-objective heuristics is relatively lacking. In this paper, we present a novel constructive heuristic for initializing the population. It successively adds quaternions into the assignment scheme to construct a solution set along the Pareto front, which is an interesting heuristic framework for multi-objective problems. We have also modified MOEA/D with nadir-based Tchebycheff and utilized the proposed neighbor matching strategy to gain better performance. Since algorithms are sensitive to their parameters, the Taguchi method with a novel response metric is utilized to calibrate the parameters. Numerical experiments demonstrate the superiority of the proposed algorithm and the necessity of a robust model.

View more >>

Uploded Document Preview