4.7 Article

Leaf area index estimation for a greenhouse transpiration model using external climate conditions based on genetics algorithms, back-propagation neural networks and nonlinear autoregressive exogenous models

期刊

AGRICULTURAL WATER MANAGEMENT
卷 183, 期 -, 页码 107-115

出版社

ELSEVIER SCIENCE BV
DOI: 10.1016/j.agwat.2016.11.021

关键词

Tomato; Leaf area index; Crop transpiration; Irrigation; Model

资金

  1. National R+D+i Plan Project of the Spanish Ministry of Economy and Competitiveness [DPI2014-56364-C2-1-R]
  2. ERDF funds
  3. National Natural Science Foundation of China [31401683]
  4. FP7 International Research Staff Exchange Scheme Project TEAT [PIRSES-GA-2013-612659]
  5. Plan Propio of the University of Almeria

向作者/读者索取更多资源

A precise transpiration prediction model thus becomes an important tool for greenhouse automatic irrigation management. Moreover, leaf is an organ of transpiration, and leaf area index is a basic variable to estimate this water lost, but it is still a weak spot in the crop growth estimation. In this paper, two different leaf area index models are established and compared with the evolution of the real crop determined with an electronic planimeter: (1) Considering the temperature and photosynthetically active radiation (PAR) as the main impact factors over crop growth, a TEP-LAI model based on product of thermal effectiveness and PAR is built to estimate the leaf area index dynamics; and (2) TOM-LAI model based on a tomato growth model is also used to estimate the leaf area index as an explicit function of the number of leaves and vines. Finally, the results of both simulation models (TEP-LAI and TOM-LAI) are compared with the measured values. Moreover, a crop transpiration model is established using the empirical data sampled in a multi-span greenhouse in Almeria (Spain). In this greenhouse, a microlysimeter (two different weight scales) was used to obtain the transpiration and the drainage values. Thus, the data collected is used to obtain a model of the estimated water lost by transpiration, that it is based on Back Propagation-Neural Network was optimized using genetic algorithm and Nonlinear Auto-regressive model with Exogenous Inputs model. Once described the different models, the estimated values of leaf area index are compared satisfactorily with the measured ones. TEP-LAI is the model chosen to be introduced as input of the final transpiration model. As expected, the transpiration estimation with inside conditions generates better results, but the outside climate based model shows that it could be used as an irrigation predictor with data from cheaper outside meteorological stations.(C) 2016 Elsevier B.V. All rights reserved.

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