College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang 110866, China.
School of Automation and Electrical Engineering, Shenyang Ligong University, Shenyang 110159, China.
Sensors (Basel). 2019 Dec 25;20(1):155. doi: 10.3390/s20010155.
The area covered by Chinese-style solar greenhouses (CSGs) has been increasing rapidly. However, only a few pyranometers, which are fundamental for solar radiation sensing, have been installed inside CSGs. The lack of solar radiation sensing will bring negative effects in greenhouse cultivation such as over irrigation or under irrigation, and unnecessary power consumption. We aim to provide accurate and low-cost solar radiation estimation methods that are urgently needed. In this paper, a method of estimation of solar radiation inside CSGs based on a least mean squares (LMS) filter is proposed. The water required for tomato growth was also calculated based on the estimated solar radiation. Then, we compared the accuracy of this method to methods based on knowledge of astronomy and geometry for both solar radiation estimation and tomato water requirement. The results showed that the fitting function of estimation data based on the LMS filter and data collected from sensors inside the greenhouse was y = 0.7634x + 50.58, with the evaluation parameters of R = 0.8384, rRMSE = 23.1%, RMSE = 37.6 Wm, and MAE = 25.4 Wm. The fitting function of the water requirement calculated according to the proposed method and data collected from sensors inside the greenhouse was y = 0.8550x + 99.10 with the evaluation parameters of R = 0.9123, rRMSE = 8.8%, RMSE = 40.4 mL plant, and MAE = 31.5 mL plant. The results also indicate that this method is more effective. Additionally, its accuracy decreases as cloud cover increases. The performance is due to the LMS filter's low pass characteristic that smooth the fluctuations. Furthermore, the LMS filter can be easily implemented on low cost processors. Therefore, the adoption of the proposed method is useful to improve the solar radiation sensing in CSGs with more accuracy and less expense.
中国式日光温室(CSG)的面积正在迅速增加。然而,CSG 内部仅安装了少量用于太阳辐射感测的辐射表。缺乏太阳辐射感测会给温室种植带来负面影响,例如过度灌溉或灌溉不足,以及不必要的电力消耗。我们旨在提供急需的准确且低成本的太阳辐射估算方法。在本文中,提出了一种基于最小均方(LMS)滤波器的 CSG 内太阳辐射估算方法。根据估算的太阳辐射,还计算了番茄生长所需的水量。然后,我们比较了该方法与基于天文学和几何知识的方法在太阳辐射估算和番茄需水量方面的准确性。结果表明,基于 LMS 滤波器的估算数据的拟合函数和温室内部传感器收集的数据的拟合函数为 y = 0.7634x + 50.58,评估参数为 R = 0.8384,rRMSE = 23.1%,RMSE = 37.6 Wm,MAE = 25.4 Wm。根据提出的方法和温室内部传感器收集的数据计算的需水量拟合函数为 y = 0.8550x + 99.10,评估参数为 R = 0.9123,rRMSE = 8.8%,RMSE = 40.4 mL 植物,MAE = 31.5 mL 植物。结果还表明,该方法更有效。此外,随着云量的增加,其准确性会降低。性能是由于 LMS 滤波器的低通特性,它可以平滑波动。此外,LMS 滤波器可以很容易地在低成本处理器上实现。因此,采用所提出的方法对于提高 CSG 内的太阳辐射感测的准确性和降低成本非常有用。