Air Pollution Prediction using Supervised Machine Learning Technique

Pandithurai O, B. N, Pradeepa K, Meenakshi D, Kathiravan M, Vinoth Kumar M
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引用次数: 1

Abstract

Toxins in the air pose a threat to human health and the environment worldwide, a problem known as air pollution. Predicting air quality from pollution using machine learning techniques might be an effective step in mitigating this issue in the transportation sector. Statistical analysis, multiple analyses, variations, missing value treatment, validation, and cleaning/correction of air quality data have all been previously considered. Then, supervised machine learning methods like Logistic Regression, Random Forest, Decision Tree, and Naive Byes are used to make predictions about the air quality. Precision, Recall, and F1 Score are used to evaluate the effectiveness of various machine learning methods. Predictions of air quality using the Decision Tree method are accurate. The Bureau of Meteorology can use this app to improve their forecasts of air quality. The use of Artificial Intelligence methods to enhance this work is a possibility for the future.
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基于监督机器学习技术的空气污染预测
空气中的毒素对人类健康和全球环境构成威胁,这一问题被称为空气污染。利用机器学习技术从污染中预测空气质量可能是缓解交通部门这一问题的有效步骤。统计分析、多重分析、变化、缺失值处理、验证和空气质量数据的清洁/校正都已在之前考虑过。然后,使用逻辑回归、随机森林、决策树和朴素Byes等监督机器学习方法来预测空气质量。Precision, Recall和F1 Score被用来评估各种机器学习方法的有效性。使用决策树方法预测空气质量是准确的。气象局可以使用这个应用程序来改善他们对空气质量的预测。使用人工智能方法来增强这项工作是未来的一种可能性。
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