Forecasting particulate matter concentration using linear and non-linear approaches for air quality decision support
Air quality; Decision support systems; Fog; Forecasting; Functions; Linear regression; Nonlinear systems; Particles (particulate matter); Radial basis function networks; Forecasting algorithm; Forecasting performance; Malaysia; Multi layer perceptron; Multiple linear regressions; Particulate Matter;...
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Main Authors: | Abdullah S., Ismail M., Ahmed A.N., Abdullah A.M. |
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Other Authors: | 56509029800 |
Format: | Article |
Published: |
MDPI AG
2023
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