2017
DOI: 10.1109/tevc.2016.2567644
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Continuous Dynamic Constrained Optimization With Ensemble of Locating and Tracking Feasible Regions Strategies

Abstract: Dynamic Constrained Optimization Problems (DCOPs) are difficult to solve because both the objective function and constraints can vary with time. Although DCOPs have drawn attention in recent years, little work has been performed to solve DCOPs with multiple dynamic feasible regions from the perspective of locating and tracking multiple feasible regions in parallel. Moreover, few benchmarks have been proposed to simulate the dynamics of multiple disconnected feasible regions. In this paper, first, the idea of t… Show more

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Cited by 69 publications
(39 citation statements)
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“…Other performance measurements were proposed exclusively to evaluate the ability of the algorithms to track and locate feasible regions such as: feasible time ratio, optimal region tracking measure, local search cover, number of evaluations for constraints. In addition, existing measurements were modified for dynamic constrained optimization problems such as: the peak cover to count the number of only feasible regions in each period and the offline error to consider the best error as normal but if there is no feasible solution; then the current worst possible value is considered [56].…”
Section: Measurementsmentioning
confidence: 99%
See 1 more Smart Citation
“…Other performance measurements were proposed exclusively to evaluate the ability of the algorithms to track and locate feasible regions such as: feasible time ratio, optimal region tracking measure, local search cover, number of evaluations for constraints. In addition, existing measurements were modified for dynamic constrained optimization problems such as: the peak cover to count the number of only feasible regions in each period and the offline error to consider the best error as normal but if there is no feasible solution; then the current worst possible value is considered [56].…”
Section: Measurementsmentioning
confidence: 99%
“…Bu et al [56] applied a variation of the SPSO with an ensemble of strategies to locate and track feasible regions. The strategies include: a gradient-based repair, an adaptive local search, constraint handling, memory and prediction strategy.…”
Section: Si In Dynamic Constrained Optimizationmentioning
confidence: 99%
“…Our algorithms were tested on two benchmarks for DCOPs [12,21], which contains 22 problems in total. The first 18 test cases are from [21] that captures different characteristics of DCOPs like multiple disconnected feasible regions, gradually moving feasible regions and global optimum switching between different feasible regions.…”
Section: Test Problemsmentioning
confidence: 99%
“…The first 18 test cases are from [21] that captures different characteristics of DCOPs like multiple disconnected feasible regions, gradually moving feasible regions and global optimum switching between different feasible regions. The last 4 test cases are from [12] in which Bu used a parameter in the original test cases in [21] that controls the size and the number of disconnected feasible regions. In the experiments, medium severity is chosen for the objective function (k = 0.5) and the constraints (S = 20).…”
Section: Test Problemsmentioning
confidence: 99%
“…One of the of the most important aspects of solving DCOPs is using an effective constraint handling technique to deal with the dynamic constraints in order to guide the search to those regions with feasible solutions and quickly adapt if constraints are changing. In the specialized literature about DCOPs, the constraint handling techniques that have been applied include penalty function [4], repair methods [1,5,6] and feasibility rules [7].…”
Section: Introductionmentioning
confidence: 99%