利用时间序列模型推进阿联酋阿布扎比的空气质量预报工作

Mona S. Ramadan, Abdelgadir Abuelgasim, Naeema Al Hosani
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摘要

本研究通过对 2015 年至 2023 年收集的综合空气质量数据采用自回归综合移动平均(ARIMA)模型,加强了对阿布扎比空气质量的预测。我们从 19 个位置良好的地面监测站收集了二氧化氮(NO2)、颗粒物(PM10)和细颗粒物(PM2.5)的每小时数据。我们的方法利用 ARIMA 模型来预测未来的污染物水平,并使用 R 语言进行了大量的数据准备和探索性分析。我们的结果发现,二氧化氮水平在 2020 年后显著下降,颗粒物水平在 2022 年达到最高值。我们的研究结果证实了模型的有效性,平均绝对百分比误差 (MAPE) 值从 7.71 到 8.59 不等。此外,我们的研究还为空气污染的历史演变提供了宝贵的时空洞察,确定了污染加剧的关键时间和地区,有助于制定有针对性的空气质量管理策略。这项研究展示了 ARIMA 模型在精确预测空气质量方面的潜力,有助于积极主动地开展公共卫生活动和制定环境政策,这与阿布扎比 2030 年愿景是一致的。
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Advancing air quality forecasting in Abu Dhabi, UAE using time series models
This research enhances air quality predictions in Abu Dhabi by employing Autoregressive Integrated Moving Average (ARIMA) models on comprehensive air quality data collected from 2015 to 2023. We collected hourly data on nitrogen dioxide (NO2), particulate matter (PM10), and fine particulate matter (PM2.5) from 19 well-placed ground monitoring stations. Our approach utilized ARIMA models to forecast future pollutant levels, with extensive data preparation and exploratory analysis conducted in R. Our results found a significant drop in NO2 levels after 2020 and the highest levels of particulate matter observed in 2022. The findings of our research confirm the effectiveness of the models, indicated by Mean Absolute Percentage Error (MAPE) values ranging from 7.71 to 8.59. Additionally, our study provides valuable spatiotemporal insights into air pollution historical evolution, identifying key times and areas of heightened pollution, which can help in devising focused air quality management strategies. This research demonstrates the potential of ARIMA models in precise air quality forecasting, aiding in proactive public health initiatives and environmental policy development, consistent with Abu Dhabi’s Vision 2030.
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