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LOCAL MAXIMUM OZONE CONCENTRATION PREDICTION USING SOFT COMPUTING METHODOLOGIES

机译:使用软计算方法进行局部最大臭氧浓度预测

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The prediction of ozone levels is an important task because this toxic gas can produce harmful effects to the population health especially of children. This article describes the application of the Fuzzy Inductive Reasoning methodology and a Recurrent Neural Network (RNN) approach, the Long Short Term Memory (LSTM) architecture, to a signal forecasting task in an environmental domain. More specifically, we have applied FIR and LSTM to the prediction of maximum ozone(O_3) concentrations in the East Austrian region. In this article the results of FIR and LSTM on this task are compared with those obtained previously using other types of neural networks (Multilayer Perceptrons (MLPs), Elman Networks (ENs) and Modified Elman Networks (MENs)). The performance of the best LSTM networks inferred are equivalent to the best FIR models identified and both are slightly better than the other Neural Networks studied (MENs, ENs and MLPs, in decreasing order of performance). Cross validation tests are included in this research in order to study more deeply the accuracy of the FIR models and to extract as much information as possible from the available data.
机译:臭氧含量的预测是一项重要的任务,因为这种有毒气体会对尤其是儿童的人口健康产生有害影响。本文介绍了模糊归纳推理方法和递归神经网络(RNN)方法(长短期记忆(LSTM)体系结构)在环境领域中的信号预测任务中的应用。更具体地说,我们将FIR和LSTM应用于预测东奥地利地区的最大臭氧(O_3)浓度。在本文中,将FIR和LSTM在此任务上的结果与以前使用其他类型的神经网络(多层感知器(MLP),Elman网络(EN)和Modified Elman网络(MEN))获得的结果进行了比较。推断出的最佳LSTM网络的性能等同于确定的最佳FIR模型,并且两者均比其他研究的神经网络(MEN,EN和MLP,按性能降序)稍好。交叉验证测试包括在本研究中,以便更深入地研究FIR模型的准确性并从可用数据中提取尽可能多的信息。

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