IMPLEMENTASI DUA MODEL CROSSOVER PADA ALGORITMA GENETIKA UNTUK OPTIMASI PENGGUNAAN RUANG PERKULIAHAN

Authors

  • I Wayan Supriana Universitas Udayana
  • Made Agung Raharja Universitas Udayana
  • I Made Satria Bimantara Universitas Udayana
  • Devan Bramantya Universitas Udayana

DOI:

https://doi.org/10.31598/jurnalresistor.v4i2.758

Keywords:

Optimization, Genetic Algorithms, Lecture Rooms

Abstract

The lecture mapping process is often hampered by the number and capacity of rooms, this condition often occurs because of the many obstacles that must be fulfilled. For example, there are courses offered in one semester that cannot be slots in space and time and the lecturer can teach at the same time for different courses. This is experienced by the Informatics Engineering Study Program of the Faculty of Mathematics and Natural Sciences, Udayana University, which offers a fairly large subject in each semester, causing optimization of the lecture space to often experience problems. The Genetic Algorithm (GA) is a model in the optimization of lecture space based on the natural selection mechanism through; coding problem, generate initial population, calculate fitness value, selection, crossover, mutation and optimal population. In this research, the optimization process implements two crossover models in the genetic algorithm, namely the n-point crossover and the cycle crossover. Based on the research that has been carried out, two crossover models provide optimal space usage mapping. From testing the n-point crossover model system gives the best fitness 1 in the 361 generation with a computation time of 11.08 while the cycle crossover model produces the best fitness 1 in the 361 generation with a computation time of 15.08.

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References

A. Qoiriah, “Penjadwalan Ujian Akhir Semester Dengan Algoritma Genetika (Studi Kasus Jurusan Teknik Informatika UNESA),” J. Manaj. Inf., vol. 03, no. 02, pp. 33–38, 2014.

E. Suhartono, “Optimasi Penjadwalan Mata Kuliah Dengan Algoritma Genetika (Studi Kasus AMIK JTC Semarang,” INFOKAM, vol. II, no. XI, pp. 132–146, 2015.

E. Ferawaty, “Optimasi Penjadwalan Mata Kuliah Pada Perguruan Tinggi Dengan Menggunakan Algoritma Genetika.,” 2010.

A. I. K. Dewi, “Rancangan Aplikasi Penjadwalan Perkuliahan Menggunakan Metode Brute Force,” J. Tek. Ibnu Sina, vol. 3, no. 1, pp. 21–28, 2018.

C. R. A. P. I P. G. H. Suputra, “Rekomendasi Rute Perjalan Wisata Berbasia Web Menggunakan Algoritma Genetika,” J. Ilmu Komput., vol. XIII, no. 1, pp. 21–27, 2020.

I P. G. H. Suputra, “Implemantasi Algoritma Slope One untuk Rekomendasi Perjalanan Wisata,” in Prosiding Seminar Nasional Teknologi Informasi dan Aplikasinya, 2018, pp. 33–36.

R. A. L. N. Hayati, Ansari, “Sistem Pendukung Keputusan Pemilihan Peserta Olimpiade Mipa Tingkat Sd Menggunakan Metode Saw (Simple Additive Weighting),” J. Resist., vol. 3, no. 2, pp. 82–88, 2018.

Muliadi, “Pemodelan Algoritma Genetikan pada Sistem Penjadwalan Perkuliahan Prodi Ilmu Komputer Universitas Lambungmangkurat,” Kumpul. J. Ilmu Komput., vol. 01, no. 01, pp. 67–78, 2014.

S. D. N. L. G. P. Suwirmayanti, I. M. Sudarsana, “Penerapan Algoritma Genetika untuk Penjadwalan Mata Pelajaran,” J. Appl. Intell. Syst., vol. 1, no. 3, pp. 220–233, 2016.

W. F. M. N. N. Priandani, “Optimasi Travelling Salesman Problem With Time Windows (TSP-Tw) Pada Penjadwalan Paket Rute Wisata Di Pulau Bali Menggunakan Algoritma Genetika,” in Seminar Nasional Sistem Informasi Indonesia (SESINDO), 2015.

H. P. R. F. Astuti, N. Satyahadewi, “Penyusunan Penjadwalan Ujian Menggunakan Algoritma Rank Base Ant System,” Bul. Ilm. Mat. Stat dan Ter., vol. 6, no. 02, pp. 151–158, 2017.

L. H. S. L. W. F. Mahmudi, R. M. Mariana, “Solving Part Type Selection and Loading Problem in Flexible Manufacturing System using Real Coded Genetic Algorithms-Part II: Optimization,” Int. J. Ind. Manuf. Eng., vol. 6, no. 9, pp. 1929–1933, 2012.

L. Y. Heli, Shanshan, “No TitlThe Application of Genetich Algorithm Based on Multi-dimension Code Scheme on Course Scheduling In Adult Educatione,” in Proceedings of the Third Inrenational Syposium on Electronic Commerce and Security Workshop (ISECS’10), 2010.

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Published

2021-10-28

How to Cite

Supriana, I. W., Raharja, M. A., Bimantara, I. M. S., & Bramantya, D. (2021). IMPLEMENTASI DUA MODEL CROSSOVER PADA ALGORITMA GENETIKA UNTUK OPTIMASI PENGGUNAAN RUANG PERKULIAHAN. Jurnal RESISTOR (Rekayasa Sistem Komputer), 4(2), 167-177. https://doi.org/10.31598/jurnalresistor.v4i2.758