Go top
Paper information

Two altenative models for farm management: Discrete versus continuous time horizon

B. Vitoriano, M.T. Ortuño Sánchez, B. Recio, F. Rubio, A. Alonso-Ayuso

European Journal of Operational Research Vol. 144, nº. 3, pp. 613 - 628

Summary:

The agricultural production process entails taking a large number of decisions aimed at improving productivity and achieving the best yield from available resources, which are usually limited. Assuming that there is a certain technical path of tasks to be carried out within a period, and that each task can be done in different ways, the problem consists on choosing how and when to carry out each one, in such a way that the tasks are scheduled in sequence at the lowest possible cost, taking account of any relationships of precedence among them, and in such a way that each task is done within its time window and with the resources being assigned in a feasible way. This paper presents two alternative mathematical programming modeling frameworks to attain the proposed objective. The first model takes the approach of dividing time into discrete units spread throughout the planning horizon, and a model is presented based on the models developed in connection with flexible manufacture. In the second model, time is kept continuous, and a scheduling model is used for which a family of incompatibility conditions is developed to avoid the simultaneous use of resources.


Keywords: Planning, Scheduling, Integer Programming, Farm Management


JCR Impact Factor and WoS quartile: 6,400 - Q1 (2022)

DOI reference: DOI icon https://doi.org/10.1016/S0377-2217(02)00143-1

Published on paper: February 2003.

Published on-line: January 2011.



Citation:
B. Vitoriano, M.T. Ortuño Sánchez, B. Recio, F. Rubio, A. Alonso-Ayuso, Two altenative models for farm management: Discrete versus continuous time horizon. European Journal of Operational Research. Vol. 144, nº. 3, pp. 613 - 628, February 2003. [Online: January 2011]


pdf Preview
Request Request the document to be emailed to you.