نتایج جستجو برای: aco beamsearch

تعداد نتایج: 3072  

2011
John Jefferson Seymour Joseph Tuzo Marie desJardins

Ant colony optimization (ACO) algorithms are computational problem-solving methods that are inspired by the complex behaviors of ant colonies; specifically, the ways in which ants interact with each other and their environment to optimize the overall performance of the ant colony. Our eventual goal is to develop and experiment with ACO methods that can more effectively adapt to dynamically chan...

Journal: :Expert Syst. Appl. 2012
Nan Zhao Xianwang Lv Zhilu Wu

A hybrid ant colony optimization algorithm is proposed by introducing extremal optimization localsearch algorithm to the ant colony optimization (ACO) algorithm, and is applied to multiuser detection in direct sequence ultra wideband (DS-UWB) communication system in this paper. ACO algorithms have already successfully been applied to combinatorial optimization; however, as the pheromone accumul...

Journal: :Chest 2010
Alfredo García-Arieta

D lco and the D lco VA ratio change with lung volume as would be expected with changes in surface area for diffusion. Percent predicted for D lco adjusted for lung volume (D aco ) and D lco VA ratio adjusted for lung volume (K aco ) also should be reported, using the following equations: D aco predicted 5 D lco predicted 3 (0.58 1 0.42 3 VA VAtlc) and K aco predicted 5 K co predicted 3 (0.42 1 ...

2015
Yu Chen Yanmin Jia

In this paper, we prompt a new multi-dimensional algoithm to solve the traveling salesman problem based on the ant colony optimization algorithm and genetic algorithm. Ant Colony Optimization (ACO) is a heuristic algorithm which has been proven a successful technique and applied to a number of combinatorial optimization (CO) problems. The traveling salesman problem (TSP) is one of the most impo...

Journal: :J. Inf. Sci. Eng. 2005
Yoon-Teck Bau Chin Kuan Ho Hong Tat Ewe

This paper presents the design of two Ant Colony Optimization (ACO) approaches and their improved variants on the degree-constrained minimum spanning tree (d-MST) problem. The first approach, which we call p-ACO, uses the vertices of the construction graph as solution components, and is motivated by the well-known Prim’s algorithm for constructing MST. The second approach, known as k-ACO, uses ...

2005
Walter J. Gutjahr

Two general-purpose metaheuristic algorithms for solving multiobjective stochastic combinatorial optimization problems are introduced: SP-ACO (based on the Ant Colony Optimization paradigm) which combines the previously developed algorithms S-ACO and P-ACO, and SPSA, which extends Pareto Simulated Annealing to the stochastic case. Both approaches are tested on random instances of a TSP with tim...

Journal: :Appl. Soft Comput. 2011
Martín Pedemonte Sergio Nesmachnow Héctor Cancela

Ant Colony Optimization (ACO) is a well-known swarm intelligence method, inspired in the social behavior of ant colonies for solving optimization problems. When facing large and complex problem instances, parallel computing techniques are usually applied to improve the efficiency, allowing ACO algorithms to achieve high quality results in reasonable execution times, even when tackling hard-to-s...

Journal: :CoRR 2017
Darren M. Chitty

Ant Colony Optimisation (ACO) is a well known metaheuristic that has proven successful at solving Travelling Salesman Problems (TSP). However, ACO suffers from two issues; the first is that the technique has significant memory requirements for storing pheromone levels on edges between cities and second, the iterative probabilistic nature of choosing which city to visit next at every step is com...

Journal: :Expert Syst. Appl. 2012
Guang-Feng Deng Woo-Tsong Lin

To build awareness of the development of ant colony optimization (ACO), this study clarifies the citation and bibliometric analysis of research publications of ACO during 1996–2010. This study analysed 12,960 citations from a total of 1372 articles dealing with ACO published in 517 journals based on the databases of SCIE, SSCI and AH&CI, retrieved via the Web of Science. Bradford Law and Lotka’...

2006
Daniel Angus Jason Brownlee

Ant Colony Optimisation (ACO) algorithms are inspired by the foraging behaviour of real ants and are a relatively new class of algorithm which have shown promise when applied to combinatorial optimisation problems. In recent years ACO algorithms have begun to gain popularity and as such are beginning to be applied to more complex problem domains including (but not limited to) dynamic problems. ...

نمودار تعداد نتایج جستجو در هر سال

با کلیک روی نمودار نتایج را به سال انتشار فیلتر کنید