Content deleted Content added
m →Algorithm: MOS:INDENT; delete stray letters; decap "particle swarm optimization" |
|||
(24 intermediate revisions by 12 users not shown) | |||
Line 1:
In
== Algorithm ==
Line 14 ⟶ 5:
'''Begin'''
1) Objective function: {{nowrap|<math>f(\mathbf{x}), \quad \mathbf{x}=(x_1,x_2,...,x_d) </math>;}}
2) Generate an initial population of fireflies {{nowrap|<math> \mathbf{x}_i \quad (i=1,2,\dots,n)</math>;.}}
3) Formulate light intensity {{mvar|I}} so that it is associated with {{nowrap|<math>f(\mathbf{x})</math>}}
(for example, for maximization problems, {{nowrap|<math>I \propto f(\mathbf{x})</math> or simply <math>I=f(\mathbf{x})</math>;)}}
4) Define absorption coefficient {{mvar|γ}}
'''While''' (t < MaxGeneration)▼
'''for''' i = 1 : n (all n fireflies)▼
'''for''' j = 1 : n (n fireflies)▼
{{nowrap|'''if''' (<math>I_j>I_i </math>),}}▼
Vary attractiveness with distance r via {{nowrap|<math> \exp(-\gamma \; r) </math>;}}▼
move firefly i towards j; ▼
Evaluate new solutions and update light intensity;▼
'''end if''' ▼
'''end for''' j▼
'''end for''' i▼
Rank fireflies and find the current best;▼
'''end while'''▼
▲ '''for''' i = 1 : n (all n fireflies)
▲ {{nowrap|'''if''' (<math>I_j>I_i </math>),}}
▲ Vary attractiveness with distance r via {{nowrap|<math> \exp(-\gamma \; r) </math>;}}
▲ move firefly i towards j;
▲ Evaluate new solutions and update light intensity;
▲ '''end if'''
▲ Rank fireflies and find the current best;
▲ '''end while'''
'''end'''
Note that the number of objective function evaluations per loop is one evaluation per firefly, even though the above pseudocode suggests it is ''n
The main update formula for any pair of two fireflies <math>\mathbf{x}_i </math> and <math>\mathbf{x}_j </math> is
where <math>\alpha_t </math> is a parameter controlling the step size, while <math>\boldsymbol{\epsilon}_t </math> is a vector drawn from a Gaussian or other
distribution.
It can be shown that the limiting case <math>\gamma \rightarrow 0 </math> corresponds to the standard [[
== Criticism ==
Nature-inspired [[metaheuristic]]s in general have attracted [[List of metaphor-inspired metaheuristics#Criticism of the metaphor methodology|criticism in the research community]] for hiding their lack of novelty behind metaphors. The firefly algorithm has been criticized as differing from the well-established [[particle swarm optimization]] only in a negligible way.<ref>{{cite journal|
▲<ref>{{cite journal|first=Michael A.|last=Lones|year=2014|title=Metaheuristics in Nature-Inspired Algorithms|Journal=[[Genetic and Evolutionary Computation Conference|GECCO '14]]|url=http://www.macs.hw.ac.uk/~ml355/common/papers/lones-gecco2014-metaheuristics.pdf|doi=10.1145/2598394.2609841|quote=FA, on the other hand, has little to distinguish it from PSO, with the inverse-square law having a similar effect to crowding and fitness sharing in EAs, and the use of multi-swarms in PSO.}}</ref><ref>{{cite journal|first=Dennis|last=Weyland|year=2015|url=http://www.sciencedirect.com/science/article/pii/S221471601500010X|title=A critical analysis of the harmony search algorithm—How not to solve sudoku|journal=Operations Research Perspectives|volume=2|pages=97–105|doi=10.1016/j.orp.2015.04.001|quote=For example, the differences between the particle swarm optimization metaheuristic and "novel" metaheuristics like the firefly algorithm, the fruit fly optimization algorithm, the fish swarm optimization algorithm or the cat swarm optimization algorithm seem negligible.}}</ref>
==See also==
Line 56 ⟶ 42:
== References ==
{{Reflist|<ref>Ariyaratne MKA, Pemarathne WPJ (2015) A review of recent advancements of firefly algorithm: a modern nature inspired algorithm. In: Proceedings of the 8th international research conference, 61–66, KDU, Published November 2015, http://ir.kdu.ac.lk/bitstream/handle/345/1038/com-047.pdf?sequence=1&isAllowed=y</ref>}}
==External links==
* [https://www.mathworks.com/matlabcentral/fileexchange/29693-firefly-algorithm] Files of the Matlab programs included in the book: Xin-She Yang, Nature-Inspired Metaheuristic Algorithms, Second Edition, Luniver Press, (2010).
{{Optimization algorithms}}
|