The Model Output Statistics (MOS) model is a dynamic statistical weather forecast model based on multiple linear regression technology. It is greatly affected by the selection of parameters and predictors, especially when the weather changes drastically, or extreme weather occurs. We improved the traditional MOS model with the machine learning method to enhance the capabilities of self-learning and generalization. Simultaneously, multi-source meteorological data were used as the input to the model to improve the data quality. In the experiment, we selected the four areas of Nanjing, Beijing, Chengdu, and Guangzhou for verification, with the numerical weather prediction (NWP) products and observation data from automatic weather stations (AWS...
With the explosive growth of atmospheric data, machine learning models have achieved great success i...
Machine learning and statistical methods can help model meteorological phenomena, especially in a co...
Seasonal forecasting skill in machine learning methods that are trained on large climate model ensem...
Reliable meteorological forecasts of temperature and relative humidity are critically important to t...
Assessment of climate change impacts on wind characteristics is crucial for the design, operation, a...
Weather forecasting are very important in various fields of human life, including in big cities. The...
The method called Model Output Statistics (MOS) is a very effective technique for combining statisti...
Weather forecasting are very important in various fields of human life, including in big cities. The...
Postprocess correction is essential to improving the model forecasting result, in which machine lear...
Abstract - Weather changes have a huge negative impact on the environment and might suddenly prompt ...
Forecasts of maximum and minimum air temperatures are essential to mitigate the damage of extreme we...
Prediction of weather has been proved useful in the early warning on the impacts of weather on sever...
A winter precipitation-type prediction is a challenging problem due to the complexity in the physica...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Weather forecasting refers to the prediction of atmospheric conditions depending on a given time and...
With the explosive growth of atmospheric data, machine learning models have achieved great success i...
Machine learning and statistical methods can help model meteorological phenomena, especially in a co...
Seasonal forecasting skill in machine learning methods that are trained on large climate model ensem...
Reliable meteorological forecasts of temperature and relative humidity are critically important to t...
Assessment of climate change impacts on wind characteristics is crucial for the design, operation, a...
Weather forecasting are very important in various fields of human life, including in big cities. The...
The method called Model Output Statistics (MOS) is a very effective technique for combining statisti...
Weather forecasting are very important in various fields of human life, including in big cities. The...
Postprocess correction is essential to improving the model forecasting result, in which machine lear...
Abstract - Weather changes have a huge negative impact on the environment and might suddenly prompt ...
Forecasts of maximum and minimum air temperatures are essential to mitigate the damage of extreme we...
Prediction of weather has been proved useful in the early warning on the impacts of weather on sever...
A winter precipitation-type prediction is a challenging problem due to the complexity in the physica...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Weather forecasting refers to the prediction of atmospheric conditions depending on a given time and...
With the explosive growth of atmospheric data, machine learning models have achieved great success i...
Machine learning and statistical methods can help model meteorological phenomena, especially in a co...
Seasonal forecasting skill in machine learning methods that are trained on large climate model ensem...