A Digital Twin for Decision Making on Livestock Feeding

Published Online:https://doi.org/10.1287/inte.2021.1110

References

  • Alves RG, Souza G, Maia RF, Tran ALH, Kamienski C, Soininen J, Aquino PT, Lima F (2019) A digital twin for smart farming. Proc. 2019 IEEE Global Humanitarian Tech. Conf. (GHTC) (IEEE, Piscataway, NJ), 1–4.Google Scholar
  • Azadeh A, Farrokhi-Asl H (2019) The close–open mixed multi depot vehicle routing problem considering internal and external fleet of vehicles. Transportation Lett. 11(2):78–92.Google Scholar
  • Boschert S, Rosen R (2016) Digital twin—the simulation aspect. Hehenberger P, Bradley D, eds. Mechatronic Futures (Springer, Cham, Switzerland), 59–74.Google Scholar
  • Brossard L, Nieto R, Charneca R, Araujo JP, Pugliese C, Radovic C, Čandek Potokar M (2019) Modelling nutritional requirements of growing pigs from local breeds using InraPorc. Animals 9(4):169.Google Scholar
  • Carson JW (2000) Feeding of bulk solids: A review. Bulk Solids Handling 20(3):279–282.Google Scholar
  • Chandra SS, Sravanthi GS, Prasanthi B, Rangan R V (2019) IoT based garbage monitoring system. Proc. 1st International Conference on Innovations in Information and Communication Technology (ICIICT) (IEEE, Piscataway, NJ), 1–4.Google Scholar
  • Christensen J (2019) BinMaster: 3D level sensors can solve the toughest food storage challenges. Bulk-Blog (February 25), https://news.bulk-online.com/whitepaper/binmaster-3d-level-sensors-can-solve-the-toughest-food-storage-challenges.html.Google Scholar
  • Coelho LC, Laporte G (2015) Classification, models and exact algorithms for multi-compartment delivery problems. Eur. J. Oper. Res. 242(3):854–864.Google Scholar
  • FEFAC (2018) Feed and food statistical yearbook 2018. https://fefac.eu/wp-content/uploads/2021/12/FF_2021_final.pdf.Google Scholar
  • FEFAC (2019) FEFAC vision on animal feed industry. https://fefac.eu/wp-content/uploads/2020/07/16_pr_7_vision_paper_feed_industry_final_draft.pdf.Google Scholar
  • Folianto F, Low YS, Yeow WL (2015) Smartbin: Smart waste management system. Proc. 10th Internat. Conf. Intelligent Sensors Sensor Networks Inform. Processing (ISSNIP) (IEEE, Piscataway, NJ) 1–2.Google Scholar
  • Haque E (2013) Estimating bulk density of compacted grains in storage bins and modifications of Janssen’s load equations as affected by bulk density. Food Sci. Nutrition 1(2):150–156.Google Scholar
  • Hübner A, Ostermeier M (2019) A multi-compartment vehicle routing problem with loading and unloading costs. Transportation Sci. 53(1):282–300.LinkGoogle Scholar
  • Johannesson T, Ladewig J (2000) The effect of irregular feeding times on the behaviour and growth of dairy calves. Appl. Animal Behav. Sci. 69(2):103–111.Google Scholar
  • Juan AA, Faulin J, Jorba J, Riera D, Masip D, Barrios B (2011) On the use of Monte Carlo simulation, cache and splitting techniques to improve the Clarke and Wright savings heuristics. J. Oper. Res. Soc. 62(6):1085–1097.Google Scholar
  • Lahyani R, Khemakhem M, Semet F (2015) Rich vehicle routing problems: From a taxonomy to a definition. Eur. J. Oper. Res. 241(1):1–14.Google Scholar
  • Londoño JC, Tordecilla RD, Martins Ld C, Juan AA (2021) A biased-randomized iterated local search for the vehicle routing problem with optional backhauls. TOP 29(2):387–416.Google Scholar
  • Lugaresi G, Matta A (2018) Real-time simulation in manufacturing systems: Challenges and research directions. Proc. 2018 Winter Simulation Conference (WSC) (IEEE, Piscataway, NJ), 3319–3330.Google Scholar
  • Madni A, Madni C, Lucero S (2019) Leveraging digital twin technology in model-based systems engineering. Systems 7(1):7.Google Scholar
  • Martí R, Resende MGC, Ribeiro CC (2013) Multi-start methods for combinatorial optimization. Eur. J. Oper. Res. 226(1):1–8, ISSN 03772217.Google Scholar
  • Muyldermans L, Pang G (2010) On the benefits of co-collection: Experiments with a multi-compartment vehicle routing algorithm. European J. Oper. Res. 206(1):93–103.Google Scholar
  • Onggo BS, Corlu CG, Juan AA, Monks T, de la Torre R (2020) Combining symbiotic simulation systems with enterprise data storage systems for real-time decision-making. Enterprise Inform. Systems 15(2):230–247.Google Scholar
  • Oppen J, Løkketangen A, Desrosiers J (2010) Solving a rich vehicle routing and inventory problem using column generation. Comput. Oper. Res. 37(7):1308–1317.Google Scholar
  • Pandelis DG, Kyriakidis EG, Dimitrakos TD (2012) Single vehicle routing problems with a predefined customer sequence, compartmentalized load and stochastic demands. Eur. J. Oper. Res. 217(2):324–332.Google Scholar
  • Popović D, Vidović M, Radivojević G (2012) Variable neighborhood search heuristic for the inventory routing problem in fuel delivery. Expert Systems Appl. 39(18):13390–13398.Google Scholar
  • Reed M, Yiannakou A, Evering R (2014) An ant colony algorithm for the multi-compartment vehicle routing problem. Appl. Soft Comput. 15:169–176.Google Scholar
  • Rehber PDE (1998) Vertical integration in agriculture and contract farming. Working paper 46, Food Marketing Policy Center, University of Connecticut, Storrs, CT.Google Scholar
  • Silvestrin PV, Ritt M (2017) An iterated tabu search for the multi-compartment vehicle routing problem. Comput. Oper. Res. 81(C):192–202.Google Scholar
  • Taş D (2020) Electric vehicle routing with flexible time windows: a column generation solution approach. Transportation Lett. 13(2):97–103.Google Scholar
  • Tordecilla-Madera R, Polo A, Cañón A (2018) Vehicles allocation for fruit distribution considering CO2 emissions and decisions on subcontracting. Sustainability 10(7):2449.Google Scholar
  • Vlajic JV, der Vorst JGAJ, Haijema R (2012) A framework for designing robust food supply chains. Internat. J. Production Econom. 137(1):176–189.Google Scholar
INFORMS site uses cookies to store information on your computer. Some are essential to make our site work; Others help us improve the user experience. By using this site, you consent to the placement of these cookies. Please read our Privacy Statement to learn more.