SDG-11.6.2 Indicator and Predictions of PM2.5 using LSTM Neural Network

S. Mahfooz, Ahmed Alhasani, A. Hassan
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引用次数: 1

Abstract

Smart cities can immensely benefit from the applications of Artificial Intelligence. These cities are highly attractive by their rich pull factors like the provision of facilities for safe and sustainable living. Sustainable Development Goals (SDGs) by the United Nations are the blueprint to improve the standards of sustainable living in all countries. The impact and achievement of SDGs are regularly assessed at country-level. To briefly describe a part of this process, we consider the current status of GCC countries regarding their achievements for SDG11.6.2 indicator that focuses on air quality. World Health organization regularly updates air quality database and when a source of reliable air quality data is missing, air quality in cities is modelled. We use LSTM neural network that learns from historical values of air quality data and predicts new values. This alternative approach may be used to confirm missing or inconsistent PM2.5 values. The objectives of our studies are to highlight one of the possible modern applications of AI to predict missing or unreported data and to leverage the concept of SDGs driven smart cities. We evaluate the performance of the LSTM model, and our results show that this model is capable of predicting data with acceptable accuracy.
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SDG-11.6.2基于LSTM神经网络的PM2.5指标及预测
智能城市可以从人工智能的应用中受益匪浅。这些城市因其丰富的拉动因素(如提供安全和可持续生活的设施)而极具吸引力。联合国的可持续发展目标(sdg)是提高所有国家可持续生活水平的蓝图。在国家一级定期评估可持续发展目标的影响和实现情况。为了简要描述这一过程的一部分,我们考虑了海湾合作委员会国家在关注空气质量的可持续发展目标11.6.2指标方面的成就现状。世界卫生组织定期更新空气质量数据库,在缺乏可靠空气质量数据来源时,建立城市空气质量模型。我们使用LSTM神经网络从空气质量数据的历史值中学习并预测新的值。这种替代方法可用于确认缺失或不一致的PM2.5值。我们研究的目的是强调人工智能在预测缺失或未报告数据方面的一种可能的现代应用,并利用可持续发展目标驱动的智慧城市概念。我们对LSTM模型的性能进行了评估,结果表明该模型能够以可接受的精度预测数据。
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