[go: up one dir, main page]

Chu et al., 2014 - Google Patents

AHPS2: an optimizer using adaptive heterogeneous particle swarms

Chu et al., 2014

Document ID
15260281727596362193
Author
Chu X
Hu M
Wu T
Weir J
Lu Q
Publication year
Publication venue
Information Sciences

External Links

Snippet

Particle swarm optimization (PSO) has suffered from premature convergence and lacked diversity for complex problems since its inception. An emerging advancement in PSO is multi- swarm PSO (MS-PSO) which is designed to increase the diversity of swarms. However, most …
Continue reading at www.sciencedirect.com (other versions)

Similar Documents

Publication Publication Date Title
Chu et al. AHPS2: an optimizer using adaptive heterogeneous particle swarms
Tanweer et al. Dynamic mentoring and self-regulation based particle swarm optimization algorithm for solving complex real-world optimization problems
Lim et al. An adaptive two-layer particle swarm optimization with elitist learning strategy
Yeh et al. Parallel-machine scheduling to minimize makespan with fuzzy processing times and learning effects
Shen et al. Mathematical modeling and multi-objective evolutionary algorithms applied to dynamic flexible job shop scheduling problems
Luo et al. Fast algorithms for computing rough approximations in set-valued decision systems while updating criteria values
Chiandussi et al. Comparison of multi-objective optimization methodologies for engineering applications
CY1123254T1 (en) METHODS FOR CELL TRANSFORMATION AND PROCESSING
Elsayed et al. On an evolutionary approach for constrained optimization problem solving
Wang et al. Improving particle swarm optimization using multi-layer searching strategy
Shang et al. A multi-population cooperative coevolutionary algorithm for multi-objective capacitated arc routing problem
Cai et al. A clustering-ranking method for many-objective optimization
Teichert et al. The filamentous fungus Sordaria macrospora as a genetic model to study fruiting body development
Akpinar et al. Modeling and solving mixed-model assembly line balancing problem with setups. Part II: A multiple colony hybrid bees algorithm
Qin et al. Biomimicry of parasitic behavior in a coevolutionary particle swarm optimization algorithm for global optimization
Xue et al. IBED: Combining IBEA and DE for optimal feature selection in software product line engineering
EP3007065A3 (en) Parallelization in virtual machine operation
EA201491537A1 (en) Increase in Drought Resistance in Plants: UPL3
Zhou et al. Differential evolution with guiding archive for global numerical optimization
Dai et al. A new evolutionary algorithm based on contraction method for many-objective optimization problems
Laukkanen et al. Bilevel heat exchanger network synthesis with an interactive multi-objective optimization method
Boney et al. μ-abstract elementary classes and other generalizations
Parouha et al. An efficient hybrid technique for numerical optimization and applications
Li et al. A hybrid algorithm based on particle swarm and chemical reaction optimization for multi-object problems
JP2013164704A5 (en)