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Using an improved back propagation neural network to study spatial distribution of sunshine illumination from sensor network data

机译:使用改进的反向传播神经网络从传感器网络数据研究日照光照的空间分布

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摘要

The study of light distribution in orchards is very important for enhancing agricultural production. Nonlinear massive data, amounting to more than 190. MB, were collected over a 6-month period. Information such as the location, illumination, and time was obtained from wireless sensor networks, while that of canopy density and slope aspect was obtained through manual surveys. This paper proposes an improved back propagation (BP) neural network to study sunshine illumination distribution by exploiting these data. The basic BP neural network is divided into Q groups, each of which receives R samples and is trained individually using a gradient descent algorithm. Every grouped neural network records its error at the end of each training round. The new weights and thresholds, selected according to these error values, are employed in the next round of training, and the training process does not terminate until the error is within the desired goal. Finally, to verify the validity of the algorithm according to various criteria, the improved BP neural network is used to study sunshine illumination in an orchard. Our experiments show that the improved BP neural network algorithm performs better than traditional algorithms including the spline interpolation, Kriging, and basic neural network algorithms, and yields an accurate sunshine illumination distribution that can be used to improve agricultural production.
机译:果园中光分布的研究对于提高农业产量非常重要。在六个月的时间内收集了总计超过190 MB的非线性海量数据。位置,照明和时间等信息是从无线传感器网络获取的,而树冠密度和坡度的信息则是通过手动调查获得的。本文提出了一种改进的反向传播(BP)神经网络,通过利用这些数据来研究日照光照分布。基本的BP神经网络分为Q组,每个组接收R个样本,并使用梯度下降算法分别进行训练。每个分组的神经网络在每次训练结束时都会记录其错误。根据这些误差值选择的新权重和阈值将在下一轮训练中使用,并且训练过程直到误差在所需目标范围内才会终止。最后,根据各种标准验证算法的有效性,采用改进的BP神经网络对果园的日照进行研究。我们的实验表明,改进的BP神经网络算法比传统算法(包括样条插值法,克里格法和基本神经网络算法)性能更好,并且可以产生准确的阳光照度分布,可用于改善农业生产。

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