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首页> 外文期刊>Neural Computing & Applications >The behaviour of the multi-layer perceptron and the support vector regression learning methods in the prediction of NO and NO2 concentrations in Szeged, Hungary
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The behaviour of the multi-layer perceptron and the support vector regression learning methods in the prediction of NO and NO2 concentrations in Szeged, Hungary

机译:多层感知器的行为和支持向量回归学习方法在匈牙利塞格德NO和NO 2 浓度预测中的行为

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摘要

The main aim of this paper is to predict NO and NO2 concentrations 4 days in advance by comparing two artificial intelligence learning methods, namely, multi-layer perceptron and support vector machines, on two kinds of spatial embedding of the temporal time series. Hourly values of NO and NO2 concentrations, as well as meteorological variables were recorded in a cross-road monitoring station with heavy traffic in Szeged, in order to build a model for predicting NO and NO2 concentrations several hours in advance. The prediction of NO and NO2 concentrations was performed partly on the basis of their past values, and partly on the basis of temperature, humidity and wind speed data. Since NO can be predicted more accurately, its values were considered primarily when forecasting NO2. Time series prediction can be interpreted in a way that is suitable for artificial intelligence learning. Two effective learning methods, namely, multi-layer perceptron and support vector regression are used to provide efficient non-linear models for NO and NO2 time series predictions. Multi-layer perceptron is widely used to predict these time series, but support vector regression has not yet been applied for predicting NO and NO2 concentrations. Three commonly used linear algorithms were considered as references: 1-day persistence, average of several day persistence and linear regression. Based on the good results of the average of several day persistence, a prediction scheme was introduced, which forms weighted averages instead of simple ones. The optimization of these weights was performed with linear regression in linear case and with the learning methods mentioned in non-linear case. Concerning the NO predictions, the non-linear learning methods give significantly better predictions than the reference linear methods. In the case of NO2, the improvement of the prediction is considerable, however, it is less notable than for NO.
机译:本文的主要目的是通过比较两种空间嵌入的两种人工智能学习方法,即多层感知器和支持向量机,提前4天预测NO和NO 2 的浓度。时间序列的时间。在塞格德(Szeged)交通繁忙的十字路口监测站记录NO和NO 2 浓度的每小时值以及气象变量,以建立一个预测NO和NO 的模型2 浓度要提前几个小时。 NO和NO 2 浓度的预测部分根据其过去的值进行,部分根据温度,湿度和风速数据进行。由于可以更准确地预测NO,因此在预测NO 2 时主要考虑其值。可以以适合人工智能学习的方式来解释时间序列预测。多层感知器和支持向量回归是两种有效的学习方法,可为NO和NO 2 时间序列预测提供有效的非线性模型。多层感知器被广泛用于预测这些时间序列,但是支持向量回归尚未用于预测NO和NO 2 的浓度。三种常用的线性算法被视为参考:1天持续时间,几天持续时间的平均值和线性回归。基于几天持续时间平均值的良好结果,引入了一种预测方案,该方案形成了加权平均值而不是简单平均值。这些权重的优化是在线性情况下通过线性回归进行的,而在非线性情况下则采用上述学习方法进行的。关于NO预测,与参考线性方法相比,非线性学习方法可提供更好的预测。在NO 2 的情况下,预测的改进是相当大的,但是,与NO相比,它的引人注目。

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