Arid
Neural Network Predictive Control in a Naturally Ventilated and Fog Cooled Greenhouse
Fitz-Rodriguez, E.1; Kacira, M.1; Villarreal-Guerrero, F.1; Giacomelli, G. A.1; Linker, R.2; Kubota, C.3; Arbel, A.4
通讯作者Fitz-Rodriguez, E.
会议名称International Symposium on Advanced Technologies and Management Towards Sustainable Greenhouse Ecosystems - Greensys
会议日期JUN 01, 2012
会议地点Athens, GREECE
英文摘要

Passive ventilation in greenhouse production systems is predominant worldwide, limiting its usability and profitability to specific regions or for short production cycles. Evaporative fogging systems have increasingly been implemented in Arid and Semi-Arid regions to extend the production cycle during the warmest season, and also to achieve near-optimum environments for year-round production. However, appropriate control strategies for evaporative fogging systems are still lacking or limited despite its reported benefits in terms of environmental uniformity and potential savings in water and energy usage, when compared to fan and pad systems. The present research proposes a neural network predictive control approach for optimizing water and energy usage in a naturally ventilated and fog cooled greenhouse while providing a near-optimum and uniform environment for plant growth. As a first step the dynamic behavior of the greenhouse environment, defined by air temperature and relative humidity, was characterized by means of system identification using a recurrent dynamic network (NARMX). The multi-step ahead prediction capability of NARMX allows for the optimization of the control actions (vent configuration and fogging rate) for its implementation in the NN predictive control scheme. Greenhouse environmental data from a set of experiments consisting of several vent configurations (0/50, 0/100, 50/50, 50/100 and 100/100, percent opening of the side/roof vents) and three fogging rates (17.5, 22.3 and 27.0 g m(-2) min(-1)) during several days throughout the year were used in the system identification process. The resulting NN model accurately predicted the dynamic behavior of the greenhouse environment, having coefficients of determination (R-2) of 0.99 for each parameter (air temperature and relative humidity). These NN model will be incorporated into the NN predictive control scheme and its feasibility is in a naturally ventilated greenhouse equipped with a variable-rate fogging system is discussed, while achieving a greenhouse environment within defined permissible ranges of air temperature and relative humidity.


英文关键词greenhouse climate control dynamic neural network model evaporative fog cooling
来源出版物INTERNATIONAL SYMPOSIUM ON ADVANCED TECHNOLOGIES AND MANAGEMENT TOWARDS SUSTAINABLE GREENHOUSE ECOSYSTEMS: GREENSYS2011
ISSN0567-7572
EISSN2406-6168
出版年2012
卷号952
页码45-52
EISBN978-90-66053-38-0
出版者INT SOC HORTICULTURAL SCIENCE
类型Proceedings Paper
语种英语
国家USA;Israel
收录类别CPCI-S
WOS记录号WOS:000307442100002
WOS关键词AIR-TEMPERATURE ; SYSTEM ; MODEL ; CLIMATE
WOS类目Horticulture
WOS研究方向Agriculture
资源类型会议论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/301432
作者单位1.Univ Arizona, Dept Agr & Biosyst Engn, Tucson, AZ 85719 USA;
2.Civil & Environm Engn Techn, Haifa, Israel;
3.Univ Arizona, Sch Plant Sci, Tucson, AZ 85721 USA;
4.Agr Res Org, Bet Dagan, Israel
推荐引用方式
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Fitz-Rodriguez, E.,Kacira, M.,Villarreal-Guerrero, F.,et al. Neural Network Predictive Control in a Naturally Ventilated and Fog Cooled Greenhouse[C]:INT SOC HORTICULTURAL SCIENCE,2012:45-52.
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