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Neuro-Dynamic Programming-Based Optimal Control for Crop Growth in Precision Agriculture

Authors:Pucheta Julian, Instituto de Automatica, Argentina
Patiño Daniel, Instituto de Automatica, Argentina
Fullana Rogelio, Instituto de Automatica, Argentina
Schugurensky Carlos, Instituto de Automatica, Argentina
Kuchen Benjamín, Instituto de Automatica, Argentina
Topic:8.1 Control in Agriculture
Session:Control for Agricultural Facilities
Keywords: optimal control, neural networks, dynamic programming, agricultural production management

Abstract

The agricultural sector is one activity of the major importance in the Argentinean economy, and their production management and control systems are an important subject of research and development. In this paper, a neuro-dynamic programming based optimal controller for crop-greenhouse systems is pro-posed. The neurocontroller drives the crop-growth development minimizing a predefined performance index, which considers minimization of the greenhouse operative costs and the final state errors under physi-cal constraints on process variables and actuator sig-nals. In particular, it is applied to guide the tomato-seedling crop development through control of a green-house microclimate. In the neurocontroller design pro-cess nonlinear dynamic behavior of the crop-greenhouse system and the July climate data of 1999 of San Juan, Argentina, are considered. The obtained control law is suboptimal due to the use of neural net-works to approximate both the optimal cost-to-go function and optimal policy. In order to show the prac-tical feasibility and performance of the proposed neu-rocontroller, simulation studies were carried out for the tomato-seedling crop development, which would ease the transition to experimentations on a scale model of a greenhouse available in the Instituto de Automática’s laboratory.