• Tidak ada hasil yang ditemukan

Perbandingan Model Algoritma Particle Swarm Optimization Dan Algoritma Genetika Pada Penjadwalan Perkuliahan

N/A
N/A
Protected

Academic year: 2017

Membagikan "Perbandingan Model Algoritma Particle Swarm Optimization Dan Algoritma Genetika Pada Penjadwalan Perkuliahan"

Copied!
5
0
0

Teks penuh

(1)

DAFTAR PUSTAKA

1. Adrianto., Dennise. 2012. Timetable Scheduling Menggunakan Particle Swarm Optimization. Tesis. Universitas Bina Nusantara Jakarta.

2. Aldasht, M.M., Saheb, M., Najjar, Tamimi. & M.H., Takruri, T.O. 2005. University Course Scheduling Using Parallel Multi-Objective Evolutionary Algorithms. Journal of Theoretical and Applied Information Technology.

www.jatit.org. 129-136.

3. Amirthagadeswaran, K. S. & Arunachalam, V. P. 2006. Improved solutions for job shop scheduling problems through genetic algorithm with a different method of schedule deduction. International Journal of Advanced Manufacturing Technology. 532-540.

4. Ariani, Dian., Fahriza, Arna. & Prasetyaningrum, Ira. 2011. Optimasi Penjadwalan Mata Kuliah Dengan Menggunakan Algoritma Particle Swarm Optimization (PSO). Politeknik Elektronika Negeri Surabaya-Institut Teknologi Sepuluh Nopember: Surabaya.

5. Bai, Qinghai. 2010. Analysis Of Particle Swarm Optimization Algorithm. CCSE, Computer and Information Science. www.ccsenet.org/cis College of Computer Science and Technology. Inner Mongolia University for Nationalities. Tongliao 028043: China.

6. Chu, S.C. H.L. Fang, 1999. Genetic Algorithms vs Tabu Search in Timetable Schedulling. Jurnal terpublikasi. National Kaohsiung Institute of Technology, AI Application Group: Taiwan.

7. Chen, R.M. & Shih, H.F. 2013. Solving University Course Timetabling Problems Using Constriction Particle Swarm Optimization with Local Search. Article Algorithms 2013, 6, 227-244; doi:10.3390/a6020227. ISSN 1999-4893

8. Ciptayani, PI. Mahmudy, WF. & Widodo, AW. 2009. Penerapan Algoritma Genetika Untuk Kompresi Citra Fractal. Jurnal Ilmu Komputer.vol. 2. no. 1, April. pp. 1-9.

(2)

10. Defersha, F & Chen, M. 2010. A Parallel Genetic Algorithm For A Flexible Job-Shop Scheduling Problem With Sequence Dependent Setups. The International Journal of Advanced Manufacturing Technology, vol. 49, no. 1, pp. 263-279.

11. Eberhart, R. C., & Shi, Y. 2001. Particle swarm optimization: developments, applications and resources. Proceedings of Congress on Evolutionary Computation, 1, 27-30.

12. Engelbrecht, A.P. 2006. Fundamentals of Computational Swarm Intelligence. Wiley.

13. Ferdian, T., Afriyudi, B. & Mutakin. 2013. Optimasi penjadwalan perkuliahan di Universitas Tridinanti Palembang. Jurnal Ilmiah Teknik Informatika Ilmu Komputer.Vol. 11 No.2 Maret: 1-11.

14. Gen, M. & Cheng, R. 1997. Genetic Algorithms and Engineering Design, John Wiley & Sons, Inc: New York.

15. Goldberg, D. E. (1989). Genetic Algorithms in Search, Optimization, and Machine Learning. Massachusetts: AddisonWesley Publishing Company, Inc

16. Gunawan, Aldy, Hoon Liong Ong and Kien Ming Ng. 2004. Applying Metaheuristics For The Course Scheduling Problem. Proceedings of the Fifth Asia Pacific Industrial Engineering and Management Systems Conference 2004.

17. Hanita, M. 2011. Penerapan Algoritma Genetika Pada Penjadwalan Mata Kuliah (Studi Kasus: Program Studi Matematika FMIPA Universitas Bengkulu). Jurusan Matematika Fakultas Matematika dan Ilmu Pengetahuan Alam, Universitas Bengkulu.

18. Haupt, R.L & Haupt, S.E. 2004, Practical Genetic Algorithm, 2 edn, John Wiley & Sons, Inc., Hoboken: New Jersey. ISBN 0-471-45565-2

19. Hsieh, L.F., Huang, C.J. & Huang, C.L. 2007. Applying Particle Swarm Optimization To Schedule Order Picking Routes In A Distribution Center.

Asian Journal of Management and Humanity Sciences. Vol. 1, No. 4. pp. 558-576.

20. Hu, X. H. 2002. PSO Tutorial. (diakses Juni 2014 dari: http://www.swarmintelligence.org/tutorials.php).

(3)

22. Jain, A.D.S. & Chande, D.P. 2010. Formulation of Genetic Algorithm to Generate Good

Quality Course Timetable. International Journal of Innovation, Management and

Technology 1, 248-251.

23. Jamnezhad, M.E., Javidan, R. & Dezfouli , M.A. 2011. Optimization of timetabling structures based on evolutionary algorithms. 5th Symposium on Advances in Science and Technology (5thsastech) Mashhad: Iran.

24. Jatmiko,W., Febrian, A., Jovan, F., Suryana, M.E., Alvisalim, M.S. & Insani, A. 2010. Swarm Robot Dalam Pencarian Sumber Asap. Perpustakaan Nasional. ISBN: 978-979-1421-08-9

25. Kennedy, J. & Eberhart, R.C. 1995. Particle swarm optimization. InProceedings of the 1995 IEEE International Conference on Neural Networks. IEEE Service Center, Piscataway.

26. Liliana, D.Y. & Mahmudy, W.F. 2006. Penerapan Algoritma Genetika pada Otomatisasi Penjadwalan Kuliah. FMIPA. Universitas Brawijaya: Malang.

27. Mahmudy, W.F. 2006. Penerapan algoritma genetika pada optimasi model penugasan. Natural. vol. 10, no. 3. pp. 197-207.

28. Mahmudy, W.F. 2008a. Optimasi Multi Travelling Salesman Problem (M-TSP) Dengan Algoritma Genetika. Seminar Nasional Basic Science V. FMIPA. Universitas Brawijaya: Malang.

29. Mahmudy, W.F & Rahman, M.A. 2011. Optimasi Fungsi Multi-Obyektif Berkendala Menggunakan Algoritma Genetika Adaptif Dengan Pengkodean Real. Kursor, vol. 6, no. 1, pp. 19-26.

30. Mahmudy, W.F., Marian, R.M. & Luong, L.H.S. 2012a. Solving part type selection and loading problem in flexible manufacturing system using real coded genetic algorithms – Part II: optimization. International Conference on Control, Automation and Robotics, Singapore, 12-14 September. World Academy of Science. Engineering and Technology, pp. 706-710.

31. Mahmudy, W.F. 2013. Optimisation of Integrated Multi-Period Production Planning and Scheduling Problems in Flexible Manufacturing Systems (FMS) Using Hybrid Genetic Algorithms. School of Engineering. University of South Australia.

32. Mahmudy, W.F., Marian, R.M. & Luong, L.H.S. 2013b. Hybrid Genetic Algorithms For Multi-Period Part Type Selection And Machine Loading Problems In Flexible Manufacturing System. IEEE International Conference on Computational Intelligence and Cybernetics. Yogyakarta. Indonesia. 3-4 December. pp. 126-130.

(4)

Flexible Manufacturing System Using Hybrid Genetic Algorithms – Part 2: Genetic Operators & Results. 5th International Conference on Knowledge and Smart Technology (KST), Chonburi, Thailand, 31 Jan - 1 Feb, pp. 81-85.

34. Mahmudy, W.F., Marian, R.M. & Luong, L.H.S. 2013e. Real Coded Genetic Algorithms For Solving Flexible Job-Shop Scheduling Problem – Part II: Optimization. Advanced Materials Research, vol. 701, pp. 364-369.

35. Marian, R.M. 2003. Optimisation Of Assembly Sequences Using Genetic Algorithms. School of Advanced Manufacturing And Mechanical Engineering. University of South Australia.

36. Mawaddah, N.K. & Mahmudy, W.F. 2006. Optimasi Penjadwalan Ujian Menggunakan Algoritma Genetika. Kursor. vol. 2. no. 2. pp. 1-8.

37. Michalewicz, Z. 1996. Genetic Algorithms + Data Structures = Evolution Programs, Springer-Verlag, Heidelberg.

38. Oner, A., Ozcan,S. & Dengi, D. 2011. Optimization Of University Course Scheduling Problem With A Hybrid Artificial Bee Colony Algorithm. Evolutionary Computation (CEC). IEEE Congress on. 339-345.

39. Pinedo, M. L. 2012. Scheduling: Theory, Algorithms, and Systems. New York: Springer.

40. Rahayuningsih, D.A. 2010. Lecturing Scheduling System at Informatic Engineering Major Islamic University Syarif Hidayatullah Jakarta Using Genetic Algorithm. Tesis: Jakarta

41. Raisha A.R, Dadang Syarif & Rika P.S. 2012. Analisa dan Penerapan Metode

Particle Swarm Optimization Pada Optimasi Penjadwalan Kuliah, Jurnal Teknik Informatika, Vol 1 September, Program Studi Teknik Informatika Politeknik Caltex Riau: Pekanbaru.

42. Rosca, Andrew. 2001. Room Scheduling Using a Genetic Algorithm. University of Bridgeport.

43. Schutte, J., & Groenwold, A. 2005. A study of global optimization using particle swarms. Journal of Global Optimization, 31(1), 93-108.

44. Shi, Y., & Eberhart, R.C. 1998. A Modified Particle Swarm Optimizer.

Proceedings of IEEE International Conference on Evolutionary Computation, Anchorage, Alaska: USA.

45. Simamora, P. 2013. Penjadwalan Kuliah dengan Menggunakan Algoritma Genetika Studi Kasus Fakultas Teknik Universitas Sumatera Utara. Tesis. FT USU.

(5)

47. Wati, Dwi Ana Ratna, 2011. Sistem Kendali Cerdas: Bandung

48. Widodo, AW. & Mahmudy, WF. 2010. Penerapan algoritma genetika pada sistem rekomendasi wisata kuliner. Kursor. vol. 5. no. 4. pp. 205-211.

49. Xia, W. & Wu, Z. 2006. A Hybrid Particle Swarm Optimization Approach For The Jobshop Scheduling Problem. International Journal of Advanced Manufacturing Technology. 360366.

50. Yogeswaran, M, Ponnambalam, SG & Tiwari, MK. 2009. An Efficient Hybrid Evolutionary Heuristic Using Genetic Algorithm And Simulated Annealing Algorithm To Solve Machine Loading Problem In FMS. International Journal of Production Research, vol. 47, no. 19, pp. 5421-5448.

51. Yu, J. 2006. Scheduling Of An Assembly Line With A Multi-Objective Genetic Algorithm. International Journal of Advanced Manufacturing Technology.

Referensi

Dokumen terkait

Sedangkan proses pencocokan menggunakan metode backpropagation, koefisien yang didapatkan dari hasil ekstraksi ciri pada data uji, akan diproses dengan menggunakan

berbantuan media konkret dan materi yang akan diajarkan. 4) Menyiapkan perangkat pembelajaran (RPP, lembar kerja siswa, lembar observasi,.. dan alat evaluasi) dan tim pengamat atau

Penyakit asma dan alergi lainnya diduga lebih sering terjadi pada anak yang. tidak pernah/jarang terkena penyakit

Melakukan kerja sama yang baik antar guru satu dengan guru lainnya baik staf, kepala sekolah dan pegawai lainnya dalam menyelesaikan masalah yang sedang dihadapi

Penelitian ini bertujuan untuk meningkatkan hasil belajar siswa kelas X-3 SMA Muhammadiyah Gombong mata pelajaran Geografi materi Atmosfer menggunakan model pembelajaran

 T ujuan program Seminari dan Insti- tut adalah untuk membantu para remaja dan dewasa muda memahami serta bersandar pada ajaran- ajaran dan Pendamaian Yesus Kristus, memenuhi

Localizer yang diperoleh dari laporan pilot yang tidak menerima pancaran signal dari Localizer, yakni pesawat yang gagal melakukan pendaratan karena saat itu

Analisis deskriptif, data yang diolah yaitu data pretest dan posttest murid kelas V yang diterapkan dengan menggunakan media kartu hitung pada pembelajaran matematika