한국농업기계학회:학술대회논문집 (Proceedings of the Korean Society for Agricultural Machinery Conference)
- 한국농업기계학회 2017년도 춘계공동학술대회
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- Pages.135-135
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- 2017
Recurrent Neural Network Models for Prediction of the inside Temperature and Humidity in Greenhouse
- Jung, Dae-Hyun (Convergence Research Center for Smart Farm Solution, Korea Institute of Science and Technology(KIST)) ;
- Kim, Hak-Jin (Department of Biosystems and Biomaterial Engineering, College of Agriculture and Life Sciences, Seoul National University) ;
- Park, Soo Hyun (Convergence Research Center for Smart Farm Solution, Korea Institute of Science and Technology(KIST)) ;
- Kim, Joon Yong (Department of Biosystems and Biomaterial Engineering, College of Agriculture and Life Sciences, Seoul National University)
- 발행 : 2017.04.06
초록
Greenhouse have been developed to provide the plants with good environmental conditions for cultivation crop, two major factors of which are the inside air temperature and humidity. The inside temperature are influenced by the heating systems, ventilators and for systems among others, which in turn are geverned by some type of controller. Likewise, humidity environment is the result of complex mass exchanges between the inside air and the several elements of the greenhouse and the outside boundaries. Most of the existing models are based on the energy balance method and heat balance equation for modelling the heat and mass fluxes and generating dynamic elements. However, greenhouse are classified as complex system, and need to make a sophisticated modeling. Furthermore, there is a difficulty in using classical control methods for complex process system due to the process are non linear and multi-output(MIMO) systems. In order to predict the time evolution of conditions in certain greenhouse as a function, we present here to use of recurrent neural networks(RNN) which has been used to implement the direct dynamics of the inside temperature and inside humidity of greenhouse. For the training, we used algorithm of a backpropagation Through Time (BPTT). Because the environmental parameters are shared by all time steps in the network, the gradient at each output depends not only on the calculations of the current time step, but also the previous time steps. The training data was emulated to 13 input variables during March 1 to 7, and the model was tested with database file of March 8. The RMSE of results of the temperature modeling was