The humanoid ant algorithm (HUMANT) [1] is an ant colony optimization algorithm. The algorithm is based on a priori approach to multi-objective optimization (MOO), which means that it integrates decision-makers preferences into optimization process.[2] Using decision-makers preferences, it actually turns multi-objective problem into single-objective. It is a process called scalarization of a multi-objective problem.[3] The first multi-objective ant colony optimization (MOACO) algorithm was published in 2001,[4] but it was based on a posteriori approach to MOO.

The idea of using the preference ranking organization method for enrichment evaluation to integrate decision-makers preferences into MOACO algorithm was born in 2009.[5] HUMANT is the only known fully operational optimization algorithm that successfully integrates PROMETHEE method into ACO.[6]

The HUMANT algorithm has been experimentally tested on the traveling salesman problem and applied to the partner selection problem with up to four objectives (criteria).[7]

References

edit
  1. ^ Mladineo, Marko; Veza, Ivica; Gjeldum, Nikola (2015). "Single-Objective and Multi-Objective Optimization using the HUMANT algorithm". Croatian Operational Research Review. 6 (2): 459–473. doi:10.17535/crorr.2015.0035.
  2. ^ Talbi, El-Ghazali (2009). Metaheuristics – From Design to Implementation. John Wiley & Sons.
  3. ^ Eppe, Stefan (2009). "Application of the Ant Colony Optimization Metaheuristic to multi-objective optimization problems". Technical Report – ULB, Bruxelles.
  4. ^ Iredi, Steffen; Merkle, Daniel; Middendorf, Martin (2001). "Bi-Criterion Optimization with Multi Colony Ant Algorithms". Evolutionary Multi-Criterion Optimization. Lecture Notes in Computer Science. 1993: 359–372. doi:10.1007/3-540-44719-9_25. ISBN 978-3-540-41745-3.
  5. ^ Eppe, Stefan (2009). "Integrating the decision maker's preferences into Multi Objective Ant Colony Optimization". Proceedings of the 2nd Doctoral Symposium on.
  6. ^ Al-Janabi, Rana JumaaSarih; Al-Jubouri, Ali Najam Mahawash (2022), "Multi-key Encryption Based on RSA and Block Segmentation", Biologically Inspired Techniques in Many Criteria Decision Making, Singapore: Springer Nature Singapore, pp. 687–695, ISBN 978-981-16-8738-9, retrieved 2023-11-03{{citation}}: CS1 maint: work parameter with ISBN (link)
  7. ^ Mladineo, Marko; Veza, Ivica; Gjeldum, Nikola (2017). "Solving partner selection problem in cyber-physical production networks using the HUMANT algorithm". International Journal of Production Research. 55 (9): 2506–2521. doi:10.1080/00207543.2016.1234084.

📚 Artikel Terkait di Wikipedia

Outline of machine learning

kernel Gremlin (programming language) Growth function HUMANT (HUManoid ANT) algorithm Hammersley–Clifford theorem Harmony search Hebbian theory Hidden

Marco Dorigo

thesis titled Optimization, learning, and natural algorithms. He is the leading proponent of the ant colony optimization metaheuristic (see his book published

Outline of artificial intelligence

Particle swarm optimization – Iterative simulation method Ant colony optimization – Optimization algorithmPages displaying short descriptions of redirect targets

Mobile robot

guarded to autonomous modes. Ant robot Autonomous robot Autonomous Underwater Vehicle DARPA LAGR Program Domestic robot Humanoid robot Hexapod robot Industrial

Index of robotics articles

Animatronics Ant robotics Anthony Daniels Anthrobotics Anticipation (artificial intelligence) Any-angle path planning Anybots Anytime algorithm Aphrodite

Robot

can be guided by an external or internal control device. Robots may be humanoid, but most are task-performing machines prioritizing functionality over

Bio-inspired robotics

complex terrain. Humanoid robots are robots that look human-like or are inspired by the human form. There are many different types of humanoid robots for applications

Characters of the Marvel Cinematic Universe: M–Z

has appeared in four projects: the films Ant-Man (2015), Ant-Man and the Wasp (2018), Avengers: Endgame, and Ant-Man and the Wasp: Quantumania. Alternate