Meteorological Administration of Yangling City, Yangling, 712100, China.
Yangling High-Tech Agricultural Meteorological Technology Combined Research Center, Yangling, 712100, China.
Sci Rep. 2023 Jan 28;13(1):1563. doi: 10.1038/s41598-022-24072-1.
Temperature has an important influence on plant growth and development. In protected agriculture production, accurate prediction of temperature environment is of great significance. However, due to the time series, nonlinear and multi coupling characteristics of temperature, it is difficult to achieve accurate prediction. We proposed a method for building a solar greenhouse temperature prediction model based on a timeseries analysis, that considers the time series characteristics and dynamic temperature changes in the greenhouse system. The method would predict the temperature of greenhouse, and provide reference for the temperature change law in protected agriculture. A parameter analysis was performed on the nonlinear autoregressive exogenous (NARX) neural network, and a solar greenhouse temperature time series prediction model was established using the NARX regression neural network. The results showed that the proposed model depicted a maximum absolute error of 0.67 °C, and model correlation coefficient of 0.9996. Compared with the wavelet and BP neural networks, the NARX regression neural network accurately predicted and significantly outperformed in the solar greenhouse temperature prediction model. Moreover, the prediction model can accurately predict temperature trends within the solar greenhouse and is pivotal to obtaining precise control of solar greenhouse temperature.
温度对植物的生长发育有重要影响。在设施农业生产中,准确预测温度环境具有重要意义。然而,由于温度的时间序列、非线性和多耦合特性,很难实现准确预测。我们提出了一种基于时间序列分析的太阳能温室温度预测模型的构建方法,该方法考虑了温室系统的时间序列特性和动态温度变化。该方法可以预测温室的温度,为设施农业的温度变化规律提供参考。对非线性自回归外生(NARX)神经网络进行参数分析,建立了基于 NARX 回归神经网络的太阳能温室温度时间序列预测模型。结果表明,所提出的模型最大绝对误差为 0.67°C,模型相关系数为 0.9996。与小波和 BP 神经网络相比,NARX 回归神经网络在太阳能温室温度预测模型中进行了准确预测,表现显著优于其他两种方法。此外,该预测模型可以准确预测太阳能温室内部的温度趋势,对于获得太阳能温室温度的精确控制至关重要。