The maximum independent union of cliques problem: complexity and exact approaches

2018 ◽  
Vol 76 (3) ◽  
pp. 545-562 ◽  
Author(s):  
Zeynep Ertem ◽  
Eugene Lykhovyd ◽  
Yiming Wang ◽  
Sergiy Butenko
2020 ◽  
Author(s):  
Niranjan Raghunathan ◽  
Mikhail Bragin ◽  
Bing Yan ◽  
Peter Luh ◽  
Khosrow Moslehi ◽  
...  

Unit commitment (UC) is an important problem solved on a daily basis within a strict time limit. While hourly UC problems are currently considered, they may not be flexible enough with the fast-changing demand and the increased penetration of intermittent renewables. Sub-hourly UC is therefore recommended. This, however, will significantly increase problem complexity even under the deterministic setting, and current methods may not be able to obtain good solutions within the time limit. In this paper, deterministic sub-hourly UC is considered, with the innovative exploitation of soft constraints – constraints that do not need to be strictly satisfied, but with predetermined penalty coefficients for their violations. The key idea is the “surrogate optimization” concept that ensures multiplier convergence within “surrogate” Lagrangian relaxation as long as the “surrogate optimality condition” is satisfied without the need to optimally solve the “relaxed problem.” Consequently, subproblems can still be formed and optimized when soft constraints are not relaxed, leading to a drastically reduced number of multipliers and improved performance. To further enhance the method, a parallel version is developed. Testing results on the Polish system demonstrate the effectiveness and robustness of both the sequential and parallel versions at finding high-quality solutions within the time limit.


2016 ◽  
Vol 15 (7) ◽  
pp. 1797-1811 ◽  
Author(s):  
Gianlorenzo DAngelo ◽  
Daniele Diodati ◽  
Alfredo Navarra ◽  
Cristina M. Pinotti

Author(s):  
José Carlos Almeida ◽  
Felipe de C. Pereira ◽  
Marina V. A. Reis ◽  
Breno Piva

Author(s):  
T. V. Thirumala Reddy ◽  
D. Sai Krishna ◽  
C. Pandu Rangan
Keyword(s):  

Author(s):  
Michael Mutingi

As problem complexity continues to increase in industry, developing efficient solution methods for solving hard problems, such as heterogeneous vehicle routing and integrated cell formation problems, is imperative. The focus of this chapter is to develop from the classical simulated evolution algorithm, a Fuzzy Simulated Evolution Algorithm (FSEA) that incorporates the concepts of fuzzy set theory, evolution, and constructive perturbation. The aim is to improve the search efficiency of the algorithm by enhancing the major phases of the algorithm through initialization, evaluation, selection, and reconstruction. Illustrative examples are provided to demonstrate the candidate application areas and to show the strength of the algorithm. Computational experiments are conducted based on benchmark problems in the literature. Results from the computational experiments demonstrate the strength of the algorithm. It is anticipated that the application of the FSEA metaheuristic can be extended to other hard large scale problems.


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