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Prediction of air pollutant concentration based on sparse response back-propagation training feedforward neural networks

机译:基于稀疏响应反向传播训练前馈神经网络的空气污染物浓度预测

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摘要

In this paper, we predict air pollutant concentration using a feedforward artificial neural network inspired by the mechanism of the human brain as a useful alternative to traditional statistical modeling techniques. The neural network is trained based on sparse response back-propagation in which only a small number of neurons respond to the specified stimulus simultaneously and provide a high convergence rate for the trained network, in addition to low energy consumption and greater generalization. Our method is evaluated on Hong Kong air monitoring station data and corresponding meteorological variables for which five air quality parameters were gathered at four monitoring stations in Hong Kong over 4 years (2012-2015). Our results show that our training method has more advantages in terms of the precision of the prediction, effectiveness, and generalization of traditional linear regression algorithms when compared with a feedforward artificial neural network trained using traditional back-propagation.
机译:在本文中,我们使用受人脑机制启发的前馈人工神经网络预测空气污染物的浓度,以此作为传统统计建模技术的有用替代方法。该神经网络是基于稀疏响应反向传播进行训练的,在这种稀疏响应反向传播中,除了低能耗和更高的泛化能力之外,只有少数神经元同时对指定的刺激做出响应,并为训练后的网络提供了高收敛速度。我们的方法是根据香港空气监测站的数据和相应的气象变量进行评估的,在过去的四年中(2012-2015年)在香港的四个监测站收集了五个空气质量参数。我们的结果表明,与使用传统反向传播训练的前馈人工神经网络相比,我们的训练方法在预测精度,有效性和泛化传统线性回归算法方面更具优势。

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