RBF神经网络对菊花微弱电信号的预测

Jinli Ding, Miao Wang, Lanzhou Wang, Qiao Li
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引用次数: 1

摘要

以菊花(Dendranthema morifolium)电信号为时间序列,采用高斯径向基函数(RBF),选择延迟输入窗口为50,通过小波软阈值后向去噪,建立了一个智能RBF预测系统。可见,菊花的电信号是一种微弱的、不稳定的低频信号。振幅最大值为1093.44 muV,最小值为-605.35 muV,平均值为-11.94 muV;在菊花中的频率分别低于0.3 Hz。结果表明,利用RBF神经网络对植物电信号进行定时预测是可行的。预测数据可作为基于植物自适应特性的智能自动控制系统实现温室和/或塑料棚农业生产节能的重要参数。
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Prediction to the Weak Electrical Signal in Chrysanthemum by RBF Neural Networks
Taking electrical signals in the chrysanthemum (Dendranthema morifolium) as the time series and using the Gaussian radial base function (RBF) and a delayed input window chosen at 50, an intelligent RBF forecast system is set up to forecast signals by the wavelet soft-threshold de-noised backward. It is obvious that the electrical signal in chrysanthemum is a sort of weak, unstable and low frequency signals. There is the maximum amplitude at 1093.44 muV, minimum -605.35 muV, average value -11.94 muV; and below 0.3 Hz at frequency in the chrysanthemum respectively. A result shows that it is feasible to forecast plant electrical signals for the timing by using of the RBF neural network. The forecast data can be used as the important preferences for the intelligent automatic control system based on the adaptive characteristic of plants to achieve the energy saving on the agricultural production in the greenhouse and/or the plastic lookum.
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