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Prediction of Future Ozone Concentration for Next Three Days Using Linear Regression and Nonlinear Regression Models

机译:使用线性回归和非线性回归模型预测未来三天未来臭氧浓度

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The aim of this research is to predict the ozone concentration level for the next three days. Linear regression model and a nonlinear regression model are used to measure the air pollution data and the result was compared. The performance indicator used to evaluate the accuracy of the methods is Index of Agreement (IA), Prediction Accuracy (PA) and Coefficient of Determination (R2). While Normalized Absolute Error (NAE) and Root Mean Square Error (RMSE) are for error measured. The results show that the prediction for the next three days. The highest ozone concentration of the linear regression model is 0.085ppm at Petaling Jaya. Selangor. While the lowest concentration for the linear regression model is 0.015 ppm at Klang, Selangor. Besides, the highest ozone concentration for the nonlinear regression model is 0.1 ppm at Petaling Jaya, Selangor for the second-day prediction. Comparison between the linear regression model and a nonlinear regression model indicates that nonlinear regression model can as an alternative method to the linear regression model.
机译:该研究的目的是预测未来三天的臭氧浓度水平。线性回归模型和非线性回归模型用于测量空气污染数据,比较结果。用于评估方法的准确性的性能指标是协议(IA),预测精度(PA)和确定系数(R2)。虽然归一化绝对误差(NAE)和均方根误差(RMSE)用于测量错误。结果表明,未来三天的预测。线性回归模型的最高臭氧浓度为0.085ppm,位于八叶叶钟。雪兰莪。虽然线性回归模型的最低浓度为0.015ppm,在雪兰莪Klangor。此外,非线性回归模型的最高臭氧浓度为0.1ppm,位于雪兰莪,用于第二天预测。线性回归模型和非线性回归模型之间的比较表明非线性回归模型可以作为线性回归模型的替代方法。

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