使用机器学习技术预测空气质量的关键评论

Shweta Sharma, Poonam Tanwar, Ankur Yadav, B. K. Sairam, Sahil Jaswal
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引用次数: 1

摘要

人工智能(AI)是一种技术,其中计算机被设计成像人类一样完成任务,它们被设计成思考、行走、说话和做任何生物能做的事情。机器学习(ML)是一个致力于理解和“学习”构建方法的研究领域,即改进数据以提高特定任务集性能的方法。本研究将污染物、气象和交通数据与统计时空特征工程相结合,提供24小时和48小时的多步空气质量预报。它研究了印度三个空气质量站的PM2.5、PM10和NO2污染的多变量时间序列建模和预测方法。因此,数据驱动的方法被认为是知识驱动模型的一个极好的补充。
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Critical Review of Air Quality Prediction using Machine Learning Techniques
Artificial intelligence (AI) is a technique in which computers are designed to do tasks just like humans, they are designed to think, walk, talk and do anything that a living thing can do. Machine Learning (ML) is a field of research devoted to understanding and ’learning’ building methods, that is, methods that improve data to improve the performance of a particular set of tasks. This study is concerned with combining data of pollutants, meteorological, and traffic data with statistical temporal-spatial feature engineering to provide multi-step-ahead air quality forecasts for 24 and 48 hours. It examines a multivariate time series approach to modeling and forecasting the pollution of PM2.5, PM10, and NO2 at three air quality stations in India. The data-driven approach is thus believed to be an excellent complement for the knowledge-driven model.
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