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Improved Multi-objective Ant Colony Optimization Algorithm and Its Application in Complex Reasoning
作者姓名:WANG Xinqing  ZHAO Yang  WANG Dong  ZHU Huijie  ZHANG Qing
作者单位:University of Science and Technology of Chinese People’s Liberation Army;School of Mechanical Engineering,Tianjin University
基金项目:supported by Sub-project of Key National Science and Technology Special Project of China(Grant No.2011ZX05056)
摘    要:The problem of fault reasoning has aroused great concern in scientific and engineering fields.However,fault investigation and reasoning of complex system is not a simple reasoning decision-making problem.It has become a typical multi-constraint and multi-objective reticulate optimization decision-making problem under many influencing factors and constraints.So far,little research has been carried out in this field.This paper transforms the fault reasoning problem of complex system into a paths-searching problem starting from known symptoms to fault causes.Three optimization objectives are considered simultaneously: maximum probability of average fault,maximum average importance,and minimum average complexity of test.Under the constraints of both known symptoms and the causal relationship among different components,a multi-objective optimization mathematical model is set up,taking minimizing cost of fault reasoning as the target function.Since the problem is non-deterministic polynomial-hard(NP-hard),a modified multi-objective ant colony algorithm is proposed,in which a reachability matrix is set up to constrain the feasible search nodes of the ants and a new pseudo-random-proportional rule and a pheromone adjustment mechinism are constructed to balance conflicts between the optimization objectives.At last,a Pareto optimal set is acquired.Evaluation functions based on validity and tendency of reasoning paths are defined to optimize noninferior set,through which the final fault causes can be identified according to decision-making demands,thus realize fault reasoning of the multi-constraint and multi-objective complex system.Reasoning results demonstrate that the improved multi-objective ant colony optimization(IMACO) can realize reasoning and locating fault positions precisely by solving the multi-objective fault diagnosis model,which provides a new method to solve the problem of multi-constraint and multi-objective fault diagnosis and reasoning of complex system.

关 键 词:fault  reasoning  ant  colony  algorithm  Pareto  set  multi-objective  optimization  complex  system

Improved multi-objective ant colony optimization algorithm and its application in complex reasoning
WANG Xinqing,ZHAO Yang,WANG Dong,ZHU Huijie,ZHANG Qing.Improved Multi-objective Ant Colony Optimization Algorithm and Its Application in Complex Reasoning[J].Chinese Journal of Mechanical Engineering,2013,26(5):1031-1040.
Authors:WANG Xinqing  ZHAO Yang  WANG Dong  ZHU Huijie  ZHANG Qing
Affiliation:1. University of Science and Technology of Chinese People's Liberation Army, Nanjing 210007, China
2. School of Mechanical Engineering, Tianjin University, Tianjin 300072, China
Abstract:The problem of fault reasoning has aroused great concern in scientific and engineering fields. However, fault investigation and reasoning of complex system is not a simple reasoning decision-making problem. It has become a typical multi-constraint and multi-objective reticulate optimization decision-making problem under many influencing factors and constraints. So far, little research has been carried out in this field. This paper transforms the fault reasoning problem of complex system into a paths-searching problem starting from known symptoms to fault causes. Three optimization objectives are considered simultaneously: maximum probability of average fault, maximum average importance, and minimum average complexity of test. Under the constraints of both known symptoms and the causal relationship among different components, a multi-objective optimization mathematical model is set up, taking minimizing cost of fault reasoning as the target function. Since the problem is non-deterministic polynomial-hard(NP-hard), a modified multi-objective ant colony algorithm is proposed, in which a reachability matrix is set up to constrain the feasible search nodes of the ants and a new pseudo-random-proportional rule and a pheromone adjustment mechinism are constructed to balance conflicts between the optimization objectives. At last, a Pareto optimal set is acquired. Evaluation functions based on validity and tendency of reasoning paths are defined to optimize noninferior set, through which the final fault causes can be identified according to decision-making demands, thus realize fault reasoning of the multi-constraint and multi-objective complex system. Reasoning results demonstrate that the improved multi-objective ant colony optimization(IMACO) can realize reasoning and locating fault positions precisely by solving the multi-objective fault diagnosis model, which provides a new method to solve the problem of multi-constraint and multi-objective fault diagnosis and reasoning of complex system.
Keywords:fault reasoning  ant colony algorithm  Pareto set  multi-objective optimization  complex system
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