Neuro-fuzzy Model with Neighborhood Component Analysis for Air Quality Prediction

Krittakom Srijiranon, Narissara Eiamkanitchat
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Abstract

The issue of air contamination influencing wellbeing is a worldwide issue. The development of a health alarm system benefits not only the general public but also those requiring high levels of health surveillance. The challenge of this research is to develop a system that is highly accurate and improves its efficiency by selecting the appropriate features. This study presents the Neuro-fuzzy model by applying Neighborhood Component Analysis. The proposed model is used to classify the air quality index. The NCA method can specify past periods of data which high efficiency to optimize the prediction model performance. There are a total of 14 input features of meteorological and air pollution data from sensors plus short-term variation data. Various experiments are used to find an appropriate structure of the proposed model. In addition, four other different structures are utilized to confirm the efficacy of the proposed model. The result shows that the proposed model outperforms. Finally, the proposed model can be implemented to create a notification system to forecast air quality index up to three hours ahead.
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基于邻域成分分析的神经模糊空气质量预测模型
影响健康的空气污染问题是一个世界性的问题。健康警报系统的发展不仅有利于普通公众,也有利于那些需要高水平健康监测的人。本研究的挑战在于通过选择合适的特征来开发一个高度精确并提高其效率的系统。本研究运用邻域成分分析法提出神经模糊模型。采用该模型对空气质量指数进行了分类。NCA方法可以指定过去时间段的数据,从而高效地优化预测模型的性能。气象和空气污染数据加上短期变化数据总共有14个输入特征。为了找到合适的模型结构,我们进行了各种实验。此外,还使用了另外四种不同的结构来验证所提出模型的有效性。结果表明,该模型具有较好的性能。最后,建议的模型可以用来建立一个通知系统,提前三小时预测空气质量指数。
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