APD - ML:空气污染检测使用机器学习算法

A. Sofia, Shrinee Venisha J, S. K, Soundarya K, Theepiga M
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引用次数: 0

摘要

为了分析任何国家的空气质量,正在开发一种机器学习技术,并为特定地区提出了空气质量指标。空气质量指数被认为是反映二氧化硫、二氧化氮水平的基本指标。等等,在特定的时间内。我们从技术上提出了一个模型来确定空气质量指数,并考虑到过去几年的历史数据,计算来年的空气质量指数,并将其视为一个梯度良好的附加增强多变量回归问题。我们通过将成本估算与预测问题联系起来,提高了模型的有效性。因此,该系统成功地解决并很好地设想了任何一个国家或州或任何有边界的地区的空气质量指标,提供了足够的空气污染物的历史数据。在该模型中,随后吸收了机器学习技术,比标准回归模型更进一步地完成了具有性能的直立颁布。为我国印度准备了设想空气质量指数的实施,通过XG Boost算法与LightBGM算法相结合,找到了接近理想解决方案的精确解决方案,准确率达到96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APD - ML: Air Pollution Detection Using Machine Learning Algorithms
To analyze the air quality of any country, a machine learning technique is being developed and an air quality indicator is proposed for a particular area. Air Quality Index is considered to be a basic measure which can indicate the levels of SO2, NO2. etc. over a particular amount of time. We technologically put forward a model to determine the air quality index in view of historical data of preceding years and computing the same for the forthcoming year considering it as a gradient decent attached boosted multivariable regression problem. We enhance the proposed model's effectiveness by relating cost estimation on behalf of the problem to be a predictive one. Thus this proposed system resolve successfully and work well to envisage the air quality indicator of any entire country or state or any bounded region furnished with enough historical data about contaminants in air. In the proposed model, subsequently machine learning technique is assimilated, upright enactment with performance is accomplished further than the standard regression model. The implementation of envisaging air quality index is prepared for our country India as well as accurateness of 96% is attained via XG Boost Algorithm joined with LightBGM algorithm to find an accurate solution that is in adjacent proximity to the ideal solution.
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