基于深度学习的时空数据分析用于空气质量预测

A. Alsaedi, L. Liyakathunisa
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引用次数: 6

摘要

空气质量在世界各地的许多社会和政治层面都是一个活跃的话题。政府、环保人士甚至数据科学家都非常关注这一日益严重的全球问题。近年来大量数据的可用性使得使用机器学习技术可以更好地预测空气质量。在这项研究中,我们使用长短期记忆(LSTM)神经网络进行时空分析,以估计北京和伦敦之间二氧化氮的浓度,二氧化氮被认为是一种危险的空气污染物。在我们提出的方法中,空间和时间数据被收集,预处理,归一化,并与LSTM分类,然后与其他机器学习技术进行比较分析。结果表明,与其他预测伦敦和北京之间污染率的方法相比,我们采用的LSTM方法的性能更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial and Temporal Data Analysis with Deep Learning for Air Quality Prediction
Air quality is an active topic at many social and political scales around the world. It is a significant concern for governments, environmentalists, and even data scientists who are raising awareness about this growing global problem. The availability of the massive amount of data in recent years enables better predictions of air quality using machine learning techniques. In this study, we perform spatial and temporal analysis using Long-Short Term Memory (LSTM) neural networks to estimate the nitrogen dioxide concentration that is considered a dangerous air pollutant between Beijing and London. In our proposed approach, spatial and temporal data are collected, preprocessed, normalised, and classified with LSTM followed by a comparative analysis with alternate machine learning techniques. The results show that the performance from our adapted approach of LSTM is higher compared to other techniques for predicting pollution rates between London and Beijing.
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