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Application of radial basis function neural networks to a greenhouse inside air temperature model

机译:径向基函数神经网络在温室内部气温模型中的应用

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The problem of the adequacy of radial basis function neural networks to model the inside air temperature as a function of the outside air temperature and solar radiation, and the inside relative humidity in an hydroponic greenhouse is addressed. This type of network is structurally simple and suitable to be integrated in real-time greenhouse environmental control systems. Due to the time variability of the porocess, training methods with on-line adaptation capabilities are needed. Three of such methods are analysed in terms of fitness and network size. The model-predictive outputs obtained showed very close fittings to the measured values.
机译:解决了径向基函数神经网络是否足以根据室内空气温度和太阳辐射以及室内水培温室中的内部相对湿度进行建模的问题。这种类型的网络结构简单,适合集成在实时温室环境控制系统中。由于加工过程的时间可变性,因此需要具有在线适应能力的训练方法。就适合度和网络规模分析了其中三种方法。获得的模型预测输出显示非常接近测量值。

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