基于机器学习的空气质量预测比较分析

A. Utku, Umit Can
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引用次数: 2

摘要

空气污染对人类生活产生负面影响,特别是在健康方面,每年造成数百万人死亡。今天,许多地区的空气污染仍然高于世界卫生组织规定的限度。在本研究中,重点对中国北京地区重要的空气污染物PM2.5的速率进行预测。为此,使用随机森林算法、支持向量回归、XGBoost和k -最近邻算法等流行的机器学习算法建立天气预报模型,并使用各种指标对结果进行比较。采用支持向量回归方法对各指标的预测效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based A Comparative Analysis for Air Quality Prediction
Air pollution affects human life negatively, especially in terms of health, and causes the death of millions of people every year. Today, air pollution in many regions is still above the limits indicated by the World Health Organization. In this study, the prediction of the rate of PM2.5, which is an important air pollutant, in the Beijing region of China is emphasized. For this purpose, weather prediction models were created using Random Forest Algorithm, Support Vector Regression, XGBoost and K-Nearest Neighbor Algorithm, which are popular machine learning algorithms, and the results were compared using various metrics. The best prediction result in all the metrics used was obtained with the Support Vector Regression method.
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