Yıl: 2020 Cilt: 44 Sayı: 2 Sayfa Aralığı: 463 - 468 Metin Dili: İngilizce DOI: 10.3906/vet-1912-31 İndeks Tarihi: 04-05-2020

Mobile applications to obtain minimum cost feed mixes

Öz:
In this study, ration preparation software to minimize the cost of feed for ruminant livestock such as cattle, sheep, and goatsfor both milk and meat yield was developed for Web- and Android-based systems using genetic algorithms. To maximize accessibilityon PCs, smartphones, and tablet PCs, we used Web- and Android-based software to find cheaper feed mixes that satisfy the nutritionalrequirements of ruminants. With this novel system, farmers and scientists can obtain low-cost feed mixes via the Web or smartphones,regardless of time or location. This application is useful for feed producers and farmers because they can use this software from anylocation and at any time. Users can input their new feed resources for preparing rations.
Anahtar Kelime:

Konular: Ziraat Mühendisliği
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
  • 1. Tscharntke T, Clough Y, Wanger TC, Jackson L, Motzke I et al. Global food security, biodiversity conservation and the future of agricultural intensification. Biological Conservation 2012; 151: 53-59.
  • 2. Smith J, Sones K, Grace D, MacMillan S, Tarawali S et al. Beyond milk, meat, and eggs: Role of livestock in food and nutrition security. Animal Frontiers 2014; 3 (1): 6-13.
  • 3. Hegarty RS. Livestock nutrition – a perspective on future needs in a resource-challenged planet. Animal Production Science 2012; 52 (7): 406-415. doi: 10.1071/AN11346
  • 4. Sahman MA, Çunkaş M, İnal Ş, İnal F, Coşkun B et al. Cost optimization of feed mixes by genetic algorithms. Advances in Engineering Software 2009; 40: 965-974.
  • 5. Boga M, Çevik KK. Mixed feed preparation program for ruminant animals. In: Akademik Bilişim’12 - XIV. Academic Informatics Conference; Uşak, Turkey; 2012. pp. 249-256.
  • 6. Oladokun VO, Johnson A. Feed formulation problem in Nigerian poultry farms: a mathematical programming approach. American Journal of Scientific and Industrial Research 2012; 3 (1): 14-20.
  • 7. Saxena P. Comparison of linear and nonlinear programming techniques for animal diet. Applied Mathematics 2011; 1 (2): 106-108. doi: 10.5923/j.am.20110102.17
  • 8. Zheng DXM, Ng ST, Kumaraswamy MM. Applying a genetic algorithm-based multi objective approach for time-cost optimization. Journal of Construction Engineering and Management, 2004; 130: 168-176. doi: 10.1061/(ASCE)0733- 9364(2004)130:2(168)
  • 9. Hillier FS, Lieberman GJ. Introduction to Operations Research. 8th ed. New York, NY, USA: McGraw-Hill International Edition; 2005.
  • 10. Rahman RA, Ang CL, Ramli R. Investigating feed mix problem approaches: an overview and potential solution. World Academy of Science, Engineering and Technology 2010; 70: 467-475.
  • 11. Pillay P, Nolan R, Haquue T. Application of genetic algorithms to motor parameter determination for transient torque calculations. IEEE Transactions on Industry Applications 1997; 33: 1273-1282.
  • 12. Cunkas M. Intelligent design of induction motors by multi objective fuzzy genetic algorithm, Journal of Intelligent Manufacturing 2010; 21: 393-402. doi: 10.1007/s10845-008- 0187-0
  • 13. Lehmann RJ, Reiche R, Schiefer G. Future internet and the agri-food sector: state-of-the-art in literature and research. Computers and Electronics in Agriculture 2012; 89: 158-174.
  • 14. Olson S, Hunter J, Horgen B, Goers K. Professional Cross- Platform Mobile Development in C#. Indianapolis, IN, USA: John Wiley & Sons Inc.; 2012.
  • 15. NRC. Nutrient Requirements of Small Ruminants; Sheep, Goats, Cervids and New World Camelids, Animal Nutrition Series. Washington, DC, USA: National Research Council; 2007.
  • 16. CSIRO. Nutrient Requirements of Domesticated Ruminants. Melbourne, Australia: CSIRO Publishing; 2007.
  • 17. Sauvant D, Perez JM, Tran G. Tables of Composition and Nutritional Value of Feed Materials: Pigs, Poultry, Cattle, Sheep, Goats, Rabbits, Horses and Fish. Paris, France: INRA; 2004.
  • 18. Yeniay Ö. An overview of genetic algorithms. Anadolu University Journal of Science and Technology 2001; 2 (1): 37- 49.
  • 19. Emel GG, Taşkın Ç. Genetic algorithms and application areas. Uludağ University Journal of Faculty of Economics and Administrative Sciences 2002; 21 (1): 129-152.
  • 20. Figlali A, Engin O. Reproduction operator optimization of genetic algorithms in flow shop scheduling problems. Istanbul Technical University Journal 2002; 1 (1): 1-6.
  • 21. Yusof R, Khalid M, Khairuddin ASM. Application of kernel-genetic algorithm as nonlinear feature selection in tropical wood species recognition system. Computers and Electronics in Agriculture 2013; 93: 68-77. doi: 10.1016/j. compag.2013.01.007
  • 22. Perera RGSA, Udawatta L. Improving performance of genetic algorithms using diverse offspring and dynamic mutation rate. In: SAITM Research Symposium on Engineering Advancement; Malabe, Sri Lanka; 2011. pp. 111-115.
  • 23. Fung RYK, Tang J, Wang D. Extension of a hybrid genetic algorithm for nonlinear programming problems with equality and inequality constraints. Computers & Operations Research 2001; 29 (3): 261-274.
APA BOĞA M, ÇEVİK K, ÖNDER H (2020). Mobile applications to obtain minimum cost feed mixes. , 463 - 468. 10.3906/vet-1912-31
Chicago BOĞA Mustafa,ÇEVİK Kerim Kürşat,ÖNDER Hasan Mobile applications to obtain minimum cost feed mixes. (2020): 463 - 468. 10.3906/vet-1912-31
MLA BOĞA Mustafa,ÇEVİK Kerim Kürşat,ÖNDER Hasan Mobile applications to obtain minimum cost feed mixes. , 2020, ss.463 - 468. 10.3906/vet-1912-31
AMA BOĞA M,ÇEVİK K,ÖNDER H Mobile applications to obtain minimum cost feed mixes. . 2020; 463 - 468. 10.3906/vet-1912-31
Vancouver BOĞA M,ÇEVİK K,ÖNDER H Mobile applications to obtain minimum cost feed mixes. . 2020; 463 - 468. 10.3906/vet-1912-31
IEEE BOĞA M,ÇEVİK K,ÖNDER H "Mobile applications to obtain minimum cost feed mixes." , ss.463 - 468, 2020. 10.3906/vet-1912-31
ISNAD BOĞA, Mustafa vd. "Mobile applications to obtain minimum cost feed mixes". (2020), 463-468. https://doi.org/10.3906/vet-1912-31
APA BOĞA M, ÇEVİK K, ÖNDER H (2020). Mobile applications to obtain minimum cost feed mixes. Turkish Journal of Veterinary and Animal Sciences, 44(2), 463 - 468. 10.3906/vet-1912-31
Chicago BOĞA Mustafa,ÇEVİK Kerim Kürşat,ÖNDER Hasan Mobile applications to obtain minimum cost feed mixes. Turkish Journal of Veterinary and Animal Sciences 44, no.2 (2020): 463 - 468. 10.3906/vet-1912-31
MLA BOĞA Mustafa,ÇEVİK Kerim Kürşat,ÖNDER Hasan Mobile applications to obtain minimum cost feed mixes. Turkish Journal of Veterinary and Animal Sciences, vol.44, no.2, 2020, ss.463 - 468. 10.3906/vet-1912-31
AMA BOĞA M,ÇEVİK K,ÖNDER H Mobile applications to obtain minimum cost feed mixes. Turkish Journal of Veterinary and Animal Sciences. 2020; 44(2): 463 - 468. 10.3906/vet-1912-31
Vancouver BOĞA M,ÇEVİK K,ÖNDER H Mobile applications to obtain minimum cost feed mixes. Turkish Journal of Veterinary and Animal Sciences. 2020; 44(2): 463 - 468. 10.3906/vet-1912-31
IEEE BOĞA M,ÇEVİK K,ÖNDER H "Mobile applications to obtain minimum cost feed mixes." Turkish Journal of Veterinary and Animal Sciences, 44, ss.463 - 468, 2020. 10.3906/vet-1912-31
ISNAD BOĞA, Mustafa vd. "Mobile applications to obtain minimum cost feed mixes". Turkish Journal of Veterinary and Animal Sciences 44/2 (2020), 463-468. https://doi.org/10.3906/vet-1912-31