Ant colony Optimization Algorithms : Introduction …Introduction Main ACO Algorithms Applications...
Transcript of Ant colony Optimization Algorithms : Introduction …Introduction Main ACO Algorithms Applications...
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Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Outline
1 IntroductionAnt Colony OptimizationMeta-heuristic OptimizationHistoryThe ACO Metaheuristic
2 Main ACO AlgorithmsMain ACO AlgorithmsAnt SystemAnt Colony SystemMAX-MIN Ant System
3 Applications of ACO4 Advantages and Disadvantages
AdvantagesDisadvanatges
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony Optimization
What is Ant Colony Optimization?
ACOProbabilistic technique.Searching for optimal path in the graph based onbehaviour of ants seeking a path between their colony andsource of food.Meta-heuristic optimization
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony Optimization
ACO Concept
Overview of the ConceptAnts navigate from nest to food source. Ants are blind!Shortest path is discovered via pheromone trails.Each ant moves at randomPheromone is deposited on pathMore pheromone on path increases probability of pathbeing followed
2- path symmetric bridge
Real Ants
Prof. J.-L. Deneubourg (ULB Bruxelles)
Constrained Optimization – 2 pathasymmetric bridge
Nest
2
1
nest
food Foraging area
Foraging area
Nest
12.5
cm
4 mn 8 mn
Real Ant Experiment
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony Optimization
2- path symmetric bridge
Real Ants
Prof. J.-L. Deneubourg (ULB Bruxelles)
Constrained Optimization – 2 pathasymmetric bridge
Nest
2
1
nest
food Foraging area
Foraging area
Nest
12.5
cm
4 mn 8 mn
Real Ant Experiment
Shortest Path - unconstrained
source 1
source 2
source 3
nest
a b
c d
The virtual colony exploits the nearestfood sources first.
When the nearest food sources havebeen exhausted, the colony then startsexploiting remote sources.
Searching a Graph by Smell-OrientedVertex Process (Wagner99)
• Ant walks along edges of a graph G leavingpheromone at nodes
• Pheromone used to guide search - Ant sensesamount of pheromone on nearest neighbors andchooses minimum
• Pheromone on a node depends on number of visitsand time since last visit (pheromone decays)
• Can cover graph in order nd• n=vertices• d =diameter of G (max dist between any pair of
vertices)• Multiple ants can be used with no modification• Simulation (vaw.html)
Shortest Path – constrained tographs
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony Optimization
Travelling Salesman Problem (TSP)Problem: given N cities, and a distance function dbetween cities, find a tour that:
(1) goes through every city once and only once
(2) minimizes the total distance
! Problem is NP-complete
! Classical combinatorialoptimization problemto test algorithms
Seattle
San Francisco
Salt Lake City
Los Angeles
Las Vegas
San Diego Phoenix Albuquerque
Houston
Oklahoma City
Indianapolis
Miami
New York
Atlanta
Boston
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony Optimization
ACO System
Overview of the SystemVirtual trail accumulated on path segmentsPath selected at random based on amount of "trail" presenton possible paths from starting nodeAnt reaches next node, selects next pathContinues until reaches starting nodeFinished tour is a solution.Tour is analyzed for optimality
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Meta-heuristic Optimization
Meta-heuristic
1 Heuristic method for solving a very general class ofcomputational problems by combining user-given heuristicsin the hope of obtaining a more efficient procedure.
2 ACO is meta-heuristic3 Soft computing technique for solving hard discrete
optimization problems
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
History
History
1 Ant System was developed by Marco Dorigo (Italy) in hisPhD thesis in 1992.
2 Max-Min Ant System developed by Hoos and Stützle in1996
3 Ant Colony was developed by Gambardella Dorigo in 1997
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
The ACO Metaheuristic
The ACO Meta-heuristic
ACOSet Parameters, Initialize pheromone trails
SCHEDULE ACTIVITIES1 Construct Ant Solutions2 Daemon Actions (optional)3 Update Pheromones
Virtual trail accumulated on path segments
Ant System Solution
Salt Lake City
Las Vegas
Phoenix
Albu
quer
que
Houston
Oklahoma City
?
•In AS ants are launched at cities and build solutions to theTSP by traversing the graph until they complete a tour.
•At each step a probabilistic transition rule is applied.
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
The ACO Metaheuristic
ACO - Construct Ant Solutions
ACO - Construct Ant SolutionsAn ant will move from node i to node j with probability
pi,j =(⌧↵
i,j )(⌘�i,j )P
(⌧↵i,j )(⌘
�i,j )
where⌧i,j is the amount of pheromone on edge i , j↵ is a parameter to control the influence of ⌧i,j⌘i,j is the desirability of edge i , j (typically 1/di,j )� is a parameter to control the influence of ⌘i,j
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
The ACO Metaheuristic
ACO - Pheromone Update
ACO - Pheromone UpdateAmount of pheromone is updated according to the equation
⌧i,j = (1� ⇢)⌧i,j + �⌧i,j
where⌧i,j is the amount of pheromone on a given edge i , j⇢ is the rate of pheromone evaporation�⌧i,j is the amount of pheromone deposited, typically given by
�⌧ ki,j =
(1/Lk if ant k travels on edge i , j0 otherwise
where Lk is the cost of the kth ant’s tour (typically length).
Performance
• Algorithm found best solutions on small problems(30 city)
• On larger problems converged to good solutions –but not the best
• On “static” problems like TSP hard to beatspecialist algorithms
• Ants are “dynamic” optimizers – should we evenexpect good performance on static problems
• Coupling ant with local optimizers gave worldclass results….
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Main ACO Algorithms
ACO
ACOMany special cases of the ACO metaheuristic have beenproposed.The three most successful ones are: Ant System, AntColony System (ACS), and MAX-MIN Ant System (MMAS).For illustration, example problem used is TravellingSalesman Problem.
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant System
ACO - Ant System
ACO - Ant SystemFirst ACO algorithm to be proposed (1992)Pheromone values are updated by all the ants that havecompleted the tour.
⌧ij (1� ⇢) · ⌧ij +Pm
k=1 �⌧ kij ,
where⇢ is the evaporation ratem is the number of ants�⌧ k
ij is pheromone quantity laid on edge (i , j) by the kth ant
�⌧ ki,j =
(1/Lk if ant k travels on edge i , j0 otherwise
where Lk is the tour length of the kth ant.
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony System
ACO - Ant Colony System
ACO - Ant Colony SystemFirst major improvement over Ant SystemDifferences with Ant System:
1 Decision Rule - Pseudorandom proportional rule2 Local Pheromone Update3 Best only offline Pheromone Update
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony System
ACO - Ant Colony System
ACO - Ant Colony SystemAnts in ACS use the pseudorandom proportional ruleProbability for an ant to move from city i to city j dependson a random variable q uniformly distributed over [0, 1],and a parameter q0.If q q0, then, among the feasible components, thecomponent that maximizes the product ⌧il⌘
�il is chosen,
otherwise the same equation as in Ant System is used.This rule favours exploitation of pheromone information
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony System
ACO - Ant Colony System
ACO - Ant Colony SystemDiversifying component against exploitation: localpheromone update.The local pheromone update is performed by all ants aftereach step.Each ant applies it only to the last edge traversed:
⌧ij = (1� ') · ⌧ij + ' · ⌧0
where' 2 (0, 1] is the pheromone decay coefficient⌧0 is the initial value of the pheromone (value kept smallWhy?)
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Ant Colony System
ACO - Ant Colony System
ACO - Ant Colony SystemBest only offline pheromone update after constructionOffline pheromone update equation
⌧ij (1� ⇢) · ⌧ij + ⇢ · �⌧bestij
where
⌧bestij =
(1/Lbest if best ant k travels on edge i , j0 otherwise
Lbest can be set to the length of the best tour found in thecurrent iteration or the best solution found since the start ofthe algorithm.
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
MAX-MIN Ant System
ACO - MAX-MIN Ant System
ACO - MAX-MIN Ant SystemDifferences with Ant System:
1 Best only offline Pheromone Update2 Min and Max values of the pheromone are explicitly limited
⌧ij is constrained between ⌧min and ⌧max (explicitly set byalgorithm designer).After pheromone update, ⌧ij is set to ⌧max if ⌧ij > ⌧max and to⌧min if ⌧ij < ⌧min
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Applications of ACO
ACORouting in telecommunication networksTraveling SalesmanGraph ColoringSchedulingConstraint Satisfaction
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Advantages
Advantages of ACO
ACOInherent parallelismPositive Feedback accounts for rapid discovery of goodsolutionsEfficient for Traveling Salesman Problem and similarproblemsCan be used in dynamic applications (adapts to changessuch as new distances, etc)
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Disadvanatges
Disadvantages of ACO
ACOTheoretical analysis is difficultSequences of random decisions (not independent)Probability distribution changes by iterationResearch is experimental rather than theoreticalTime to convergence uncertain (but convergence isgauranteed!)
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
Summary
Artificial Intelligence technique used to develop a newmethod to solve problems unsolvable since last manyyearsACO is a recently proposed metaheuristic approach forsolving hard combinatorial optimization problems.Artificial ants implement a randomized constructionheuristic which makes probabilistic decisionsACO shows great performance with the “ill-structured”problems like network routing
Introduction Main ACO Algorithms Applications of ACO Advantages and Disadvantages Summary References
References
M. Dorigo, M. Birattari, T. Stützle, “Ant Colony Optimization– Artificial Ants as a Computational IntelligenceTechnique”, IEEE Computational Intelligence Magazine,2006M. Dorigo K. Socha, “An Introduction to Ant ColonyOptimization”, T. F. Gonzalez, Approximation Algorithmsand Metaheuristics, CRC Press, 2007M. Dorigo T. Stützle, “The Ant Colony OptimizationMetaheuristic: Algorithms, Applications, and Advances”,Handbook of Metaheuristics, 2002