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Virtual Sensors for Designing Irrigation Controllers in Greenhouses

机译:用于设计温室灌溉控制器的虚拟传感器

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摘要

Monitoring the greenhouse transpiration for control purposes is currently a difficult task. The absence of affordable sensors that provide continuous transpiration measurements motivates the use of estimators. In the case of tomato crops, the availability of estimators allows the design of automatic fertirrigation (irrigation + fertilization) schemes in greenhouses, minimizing the dispensed water while fulfilling crop needs. This paper shows how system identification techniques can be applied to obtain nonlinear virtual sensors for estimating transpiration. The greenhouse used for this study is equipped with a microlysimeter, which allows one to continuously sample the transpiration values. While the microlysimeter is an advantageous piece of equipment for research, it is also expensive and requires maintenance. This paper presents the design and development of a virtual sensor to model the crop transpiration, hence avoiding the use of this kind of expensive sensor. The resulting virtual sensor is obtained by dynamical system identification techniques based on regressors taken from variables typically found in a greenhouse, such as global radiation and vapor pressure deficit. The virtual sensor is thus based on empirical data. In this paper, some effort has been made to eliminate some problems associated with grey-box models: advance phenomenon and overestimation. The results are tested with real data and compared with other approaches. Better results are obtained with the use of nonlinear Black-box virtual sensors. This sensor is based on global radiation and vapor pressure deficit (VPD) measurements. Predictive results for the three models are developed for comparative purposes.
机译:出于控制目的,监测温室蒸腾目前是一项艰巨的任务。缺乏提供连续蒸腾量测量的可负担得起的传感器促使了估算器的使用。就番茄作物而言,估算器的可用性允许设计温室中的自动施肥(灌溉+施肥)方案,在满足作物需求的同时,将分配的水量降至最低。本文展示了如何将系统识别技术应用于获得用于估算蒸腾作用的非线性虚拟传感器。这项研究使用的温室配有微量测微计,使人们可以连续采样蒸腾值。尽管微量测微仪是用于研究的有利设备,但它也很昂贵并且需要维护。本文介绍了虚拟传感器的设计和开发,以模拟农作物的蒸腾作用,因此避免了使用这种昂贵的传感器。通过基于从温室中通常存在的变量(例如全局辐射和蒸气压赤字)中提取的回归变量,通过动力学系统识别技术获得最终的虚拟传感器。因此,虚拟传感器基于经验数据。在本文中,已经做出一些努力来消除与灰箱模型相关的一些问题:提前现象和高估。使用真实数据测试结果,并与其他方法进行比较。使用非线性黑盒虚拟传感器可获得更好的结果。该传感器基于整体辐射和蒸汽压差(VPD)测量。出于比较目的,开发了这三种模型的预测结果。

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