Zhang Jiangshe, Ding Weifu
School of Mathematics and Statistics, Xi'an Jiaotong University, Xi'an 710049, China.
School of Mathematics and Information, BeiFang University of Nationalities, Yinchuan 750021, China.
Int J Environ Res Public Health. 2017 Jan 24;14(2):114. doi: 10.3390/ijerph14020114.
With the development of the economy and society all over the world, most metropolitan cities are experiencing elevated concentrations of ground-level air pollutants. It is urgent to predict and evaluate the concentration of air pollutants for some local environmental or health agencies. Feed-forward artificial neural networks have been widely used in the prediction of air pollutants concentration. However, there are some drawbacks, such as the low convergence rate and the local minimum. The extreme learning machine for single hidden layer feed-forward neural networks tends to provide good generalization performance at an extremely fast learning speed. The major sources of air pollutants in Hong Kong are mobile, stationary, and from trans-boundary sources. We propose predicting the concentration of air pollutants by the use of trained extreme learning machines based on the data obtained from eight air quality parameters in two monitoring stations, including Sham Shui Po and Tap Mun in Hong Kong for six years. The experimental results show that our proposed algorithm performs better on the Hong Kong data both quantitatively and qualitatively. Particularly, our algorithm shows better predictive ability, with R 2 increased and root mean square error values decreased respectively.
随着全球经济和社会的发展,大多数大城市地面空气中污染物的浓度都在升高。对于一些当地环境或卫生机构来说,预测和评估空气污染物的浓度迫在眉睫。前馈人工神经网络已被广泛应用于空气污染物浓度的预测。然而,存在一些缺点,比如收敛速度慢和局部最小值问题。单隐藏层前馈神经网络的极限学习机往往能以极快的学习速度提供良好的泛化性能。香港空气污染物的主要来源是移动源、固定源和跨境源。我们建议利用基于香港两个监测站(包括深水埗和塔门)六年期间八个空气质量参数所获得的数据,通过训练后的极限学习机来预测空气污染物的浓度。实验结果表明,我们提出的算法在香港数据上无论是在定量还是定性方面都表现得更好。特别是,我们的算法显示出更好的预测能力,决定系数(R²)分别有所增加,均方根误差值有所降低。