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Assessment of Machine Learning Algorithms in Short-term Forecasting of PM10 and PM2.5 Concentrations in Selected Polish Agglomerations

机译:PM10和PM2.5浓度在选定抛光集中的短期预测中的评估

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摘要

Air pollution continues to have a significant impact on Europeans living in urban areas, and episodes of elevated PMx are responsible for a large number of premature deaths (mostly due to heart disease and stroke) each year. According to the annual EEA reports, Poland is one of the most polluted countries in Europe, experiencing high PMx concentrations during winter that mostly result from large emissions and unfavourable weather conditions in combination with environmental features. Thus, in addition to implementing municipal mitigation strategies, alerting residents to pollution episodes through accurate PMx forecasting is necessary.
机译:空气污染仍然对生活在城市地区的欧洲人产生重大影响,升高的PMX发作是每年对大量过早死亡(主要是由于心脏病和中风)负责。 根据年度EEA报告,波兰是欧洲最污染的国家之一,在冬季经历高PMX浓度,主要导致大量排放和不利的天气条件与环境特征相结合。 因此,除了实施市政缓解策略外,还需要通过准确的PMX预测提醒居民以污染事件。

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