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首页> 外文期刊>Journal of Cleaner Production >Energy utilization assessment of a semi-closed greenhouse using data-driven model predictive control
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Energy utilization assessment of a semi-closed greenhouse using data-driven model predictive control

机译:利用数据驱动模型预测控制的半闭温室能源利用评估

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With the global increase in food demand, closed and controlled greenhouses are an essential source for yearround crop production. Maintaining the optimum conditions inside the greenhouse throughout the year is critical to improving crop quality and yield. However, greenhouses consume more resources than other commercial buildings due to their inefficient operation and structure. Therefore, a data-driven model predictive control approach for a semi-closed greenhouse is proposed for temperature control and reducing energy consumption in this study. The proposed method consists of a multilayer perceptron model representing the greenhouse system integrated with an objective function and an optimization algorithm. The multilayer perceptron model is trained using historical data from the greenhouse with solar radiation, outside temperature, humidity difference, fan speed, HVAC control as the input parameters to predict the temperature. The greenhouse model's performance is evaluated under varying scenarios, such as increasing the prediction time step and changing the number of samples in the training data set. Results illustrated that the MPC approach had a better temperature control than the greenhouse adaptive control system for winter and summer with an RMSE value of 0.33 degrees C and 0.36 degrees C, respectively. Similarly, model predictive control resulted in an energy reduction of 7.70% for winter and 16.57% for the summer season. The proposed model predictive control framework is flexible and can be applied to other greenhouse systems by tuning the model on the new data set.
机译:随着粮食需求的全球增加,封闭和控制的温室是逐渐减少作物生产的重要来源。全年保持温室内的最佳条件对于提高作物质量和产量至关重要。然而,由于其效率和结构,温室消耗了比其他商业建筑更多的资源。因此,提出了一种用于半闭温室的数据驱动模型预测控制方法,用于温度控制和降低该研究的能量消耗。所提出的方法包括表示集成的具有目标函数和优化算法的温室系统的多层的Perceptron模型。多层的Perceptron模型采用温室的历史数据培训,具有太阳辐射,外部温度,湿度差,风扇速度,HVAC控制作为预测温度的输入参数。温室模型的性能在不同的场景下评估,例如增加预测时间步骤并改变训练数据集中的样本数量。结果表明,MPC方法比温室自适应控制系统为冬季和夏季的温度控制,分别为0.33摄氏度和0.36摄氏度。同样,模型预测性控制导致冬季的能量减少7.70%,夏季为16.57%。所提出的模型预测控制框架是灵活的,可以通过在新数据集上调整模型来应用于其他温室系统。

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