Muhammet Emre Irmak, Ibrahim Berkan Aydilek
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引用次数: 6

摘要

定期测量城市空气质量水平,并通过检测结果采取必要的措施,对城市居民和其他生物的健康至关重要。为此,有关部门在许多城市建立了空气质量监测站。在本研究中,这些站点之一,阿达纳省省级站点的测量数据被使用。使用的数据是空气污染气体的测量值,如二氧化硫(SO2)、二氧化氮(NO2)、臭氧(O3)、一氧化碳(CO)和尘埃颗粒(PM10)。空气质量指数是通过对这些数据应用不同的机器学习算法来确定的。使用机器学习回归算法;随机森林,决策树,支持向量,k近邻,线性,人工神经网络,堆叠,adaboost,梯度增强和bagging回归。通过比较这些算法在错误率和运行时间方面的成功率得到的结果进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hava Kalite İndeksinin Tahmin Başarısının Artırılması için Topluluk Regresyon Algoritmalarının Kullanılması
Measuring the air quality level in the city at regular intervals and taking the necessary measures by examining the results of the measurement is very important for the health of the people and other living things in these cities. For this purpose, air quality measurement stations have been established in many cities by the relevant ministry. In this study, one of these stations, Adana province provincial station measurement data was used. The data used are the measured values ​​of air pollutant gases such as sulfur dioxide (SO2), nitrogen dioxide (NO2), ozone (O3), carbon monoxide (CO) and dust particles (PM10). The air quality index was determined by applying different machine learning algorithms to these data. Machine learning regression algorithms used; random forest, decision tree, support vector, k-nearest neighbor, linear, artificial neural network, stacking, adaboost, gradient boosting and bagging regression. The results obtained by comparing the success rates of these algorithms in terms of error rates and run times were evaluated.
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