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APPLYING TIME SERIES ANALYSIS FOR ARTIFICIAL INTELLIGENCE BASED PARTICULATE MATTER PREDICTION

机译:时间序列分析在基于人工智能的粒子预测中的应用

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Artificial intelligence based prediction models provide good air pollution forecasters, proper to real time forecasting systems. Among them, artificial neural networks are the most used ones, being universal approximators. Usually, the identification of the best neural model (i.e. most accurate one) is based on experiments and results of time series analysis. The paper focuses on time series analysis for particulate matter (PM) air pollutant prediction with artificial neural networks in the Ploiesti city. Two types of neural models were used: feed forward and radial basis function. For each model we have experimented several architectures in order to identify the most accurate one in terms of root mean square error and average square error. The experimental datasets include five time series with concentration measurements of five air pollutants, PM_(10), CO, NO_2, NO_X, and SO_2 in the period 2008-2012 at PH-6 air quality monitoring station from the Ploiesti city.
机译:基于人工智能的预测模型可提供适用于实时预测系统的良好空气污染预测器。其中,人工神经网络是最常用的网络,是通用逼近器。通常,最佳神经模型(即最准确的模型)的识别是基于实验和时间序列分析的结果。本文着重于时间序列分析,通过人工神经网络对普洛耶什蒂市的颗粒物(PM)空气污染物进行预测。使用了两种类型的神经模型:前馈和径向基函数。对于每种模型,我们已经尝试了几种体系结构,以便从均方根误差和均方根误差方面识别出最准确的一种。实验数据集包括五个时间序列,其中测量了普洛耶什蒂市PH-6空气质量监测站在2008-2012年期间对五种空气污染物PM_(10),CO,NO_2,NO_X和SO_2的浓度。

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