pm10和pm2.5线性预报模型的比较

Piotr A. Kowalski, Wiktor Warchałowski
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引用次数: 4

摘要

空气污染在波兰和其他地方都是一个非常严重的问题,它是一个严重影响人类生活质量的因素。然而,由于监测站数量不足,人们并没有充分意识到空气质量的严重性。这意味着他们无法获得有关他们呼吸的空气质量的信息。本文的目的是提出和比较PM10和PM2.5预测的一些线性程序。其中,所研究的预测算法的模拟是基于来自Airly公司污染监测站网络的真实数据。在大约一年的时间里,每小时收集一次相关数据,包括测量数据。此外,为了预报的目的,还使用了Dark Sky门户网站的天气数据。在本研究中,考虑了几种机器学习预测方法。其中,给出了三个方面的研究结果。它们是:多元线性回归,带正则化的多元线性回归,最后是线性神经网络。每个预测算法的任务是预测第二天接下来几个小时的PMx粉尘浓度。作为预测任务评价的度量,考虑了几种类型的误差,同时在研究过程中,使用机器学习群算法作为学习模型。通过这些先进、高效和方便的算法,可以获得未来24小时的详细空气质量预报。所提出的算法将在普通的空调预测系统中实现。
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THE COMPARISON OF LINEAR MODELS FOR PM10 AND PM2.5 FORECASTING
Air pollution is a very serious problem in Poland and elsewhere, and it is a factor that significantly affects the quality of human life. However, people are not fully aware of the terrible air quality due to the insufficient number of monitoring stations. This means they have no access to information about the quality of the air they breathe. The aim of this paper is to present and compare some linear procedures for PM10 and PM2.5 forecasting. Herein, the simulations concerning investigated prediction algorithms are based on real data originating from the Airly company network of pollution measurement stations. Related data, including measurements, were gathered every hour for a period of about one year, moreover, for forecasting purposes, weather data from the Dark Sky portal was additionally used. In this study, several Machine Learning predictive methods are considered. Among these, the results of three are presented. These are: Multiple Linear Regression, Multiple Linear Regression with Regularisation and, finally, Linear Neural Networks. The task for each predictive algorithm was to predict the concentration of PMx dust in the following hours of the next day. As a measure of the prediction task evaluation, several types of error were considered, while, during the research, machine learning group algorithms were utilized as learning models. Via these advanced, efficient and convenient algorithms, a detailed air quality forecast for the next 24 hours is obtainable. The presented algorithms will be implemented into the common air condition prediction system.
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