A Schedule Optimization of Ant Colony Optimization to Arrange Scheduling Process at Certainty Variables

Abstract

This research aims to get optimal collision of schedule by using certainty variables. Courses scheduling is conducted by ant colony algorithm. Setting parameters for intensity is bigger than 0, visibility track is bigger than 0, and evaporation of ant track is 0.03. Variables are used such as a number of lecturers, courses, classes, timeslot and time. Performance of ant colony algorithms is measured by how many schedules same time and class collided. Based on executions, with a total of 175 schedules, the average of a cycle is 9 cycles (exactly is 9.2 cycles) and an average of time process is 29.98 seconds. Scheduling, in nine experiments, has an average of time process of 19.99 seconds. Performance of ant colony algorithm is given scheduling process more efficient and predicted schedule collision.

Authors and Affiliations

Rangga Sidik, Mia Fitriawati, Syahrul Mauluddin, A Nursikuwagus

Keywords

Related Articles

A Modified Clustering Algorithm in WSN

Nowadays many applications use Wireless Sensor Networks (WSN) as their fulfill the purpose of collection of data from a particular phenomenon. Their data centric behavior as well as harsh restrictions on energy makes WSN...

An Investigation and Comparison of Invasive Weed, Flower Pollination and Krill Evolutionary Algorithms

Being inspired by natural phenomena and available biological processes in the nature is one of the difficult methods of problem solving in computer sciences. Evolutionary methods are a set of algorithms that are inspired...

Combination of Neural Networks and Fuzzy Clustering Algorithm to Evalution Training Simulation-Based Training

With the advancement of computer technology, computer simulation in the field of education are more realistic and more effective. The definition of simulation is to create a virtual environment that accurately and real e...

Explore the Major Characteristics of Learning Management Systems and their Impact on e-Learning Success

Today, there are many educational institutions and organizations around the world, especially the universities have adopted the e-learning and learning management system concepts because they want to enhance and support...

A Convolutional Neural Network for Automatic Identification and Classification of Fall Army Worm Moth

To combat the problem caused by the Fall Army Worm in the country there is a need to come up with robust early warning and monitoring systems as the current manual system is labor intensive and time consuming. The automa...

Download PDF file
  • EP ID EP429195
  • DOI 10.14569/IJACSA.2018.091246
  • Views 77
  • Downloads 0

How To Cite

Rangga Sidik, Mia Fitriawati, Syahrul Mauluddin, A Nursikuwagus (2018). A Schedule Optimization of Ant Colony Optimization to Arrange Scheduling Process at Certainty Variables. International Journal of Advanced Computer Science & Applications, 9(12), 318-323. https://europub.co.uk/articles/-A-429195