杨卫中, 王一鸣, 董乔雪, 章小涛. 大型连栋温室环境参数的线性时不变系统建模[J]. 农业工程学报, 2010, 26(14): 285-289.
    引用本文: 杨卫中, 王一鸣, 董乔雪, 章小涛. 大型连栋温室环境参数的线性时不变系统建模[J]. 农业工程学报, 2010, 26(14): 285-289.
    Yang Weizhong, Wang Yiming※, Dong Qiaoxue, Zhang Xiaotao, Wang Yiming, Dong Qiaoxue, Zhang Xiaotao. Modeling of environmental parameters in greenhouse with Linear Time-Invariant System theory[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2010, 26(14): 285-289.
    Citation: Yang Weizhong, Wang Yiming※, Dong Qiaoxue, Zhang Xiaotao, Wang Yiming, Dong Qiaoxue, Zhang Xiaotao. Modeling of environmental parameters in greenhouse with Linear Time-Invariant System theory[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2010, 26(14): 285-289.

    大型连栋温室环境参数的线性时不变系统建模

    Modeling of environmental parameters in greenhouse with Linear Time-Invariant System theory

    • 摘要: 华北地区大型连栋温室夏季强制通风降温的水、能消耗很大,为了使环境调控既能适宜作物生长又能降低调控消耗,迫切需要精确有效的环境温度和湿度动态模型。该文采用线性时不变系统的ARX模型及系统辨识方法,对华北地区连栋温室夏季强制通风降温动态过程进行室内温度和湿度建模。试验在2003年夏季6-7月进行,以1 min的时间间隔连续采集室内温度、湿度、室外温度、湿度、光照强度、风速、风机运行状态和数据采集时刻8个参数,将采集的数据分成辨识集和证实集两组,用辨识集数据采用最小二乘法进行模型系数回归,用证实集数据进行模型验证,验证指标为最大绝对误差(MAE)、最大相对误差(MRE)、均方误差(RMSE)和可解释方差(vaf)。证实结果显示,温度模型的最大预测误差(MAE)为3.57 ℃,均方误差(RMSE)小于0.198 ℃;湿度模型的最大预测误差(MAE)为7.3%,均方误差(RMSE)小于0.624%;温度和湿度模型的vaf均大于98.9%。说明尽管模型在个别点的预测误差稍大,但总体的预测精度较高,能够满足一般情况下作物栽培对环境预测的要求。

       

      Abstract: In order to reduce the massive consumption of water and energy on greenhouse environmental control in summer. The environmental model is needed for precisely control of temperature and humidity. In the paper an Auto-Regression (ARX) model of indoor temperature and humidity under forced ventilation in summer was established by utilization of system identification technology. The model has 8 input parameters: the indoor/outdoor temperature and humidity, the outdoor solar radiation intensity, the outdoors instantaneous wind rate, the state of the forced ventilation system(on or off) and time readings within a 24-hour cycle. All data was acquired with one minute interval from June to July in 2003. The data was divided into two sets: one is identification set, which was used to identify the models, another is confirmation set which was used to verify the models. Model parameters were identified by least square method. The model was verified by the indices of maximum absolute error(MAE), maximum relative error(MRE), RMSE and variance accounted for (vaf). The confirmation showed that the MAE of the temperature models was 3.57℃, RMSE was less than 0.198℃; the MAE of the humidity models was 7.3%, RMSE was less than 0.624%; the vaf of models was up to 98.9%. The Models have higher precision in general, whereas the predicted error of the models is large a little bit at several samples, and can satisfy the demand of greenhouse environmental control.

       

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