Long-term air temperature prediction is of major importance in a large number of applications, including climate-related studies, energy, agricultural, or medical. This paper examines the performance of two Machine Learning algorithms (Support Vector Regression (SVR) and Multi-layer Perceptron (MLP)) in a problem of monthly mean air temperature prediction, from the previous measured values in observational stations of Australia and New Zealand, and climate indices of importance in the region. The performance of the two considered algorithms is discussed in the paper and compared to alternative approaches. The results indicate that the SVR algorithm is able to obtain the best prediction performance among all the algorithms compared ...
Forecasts of maximum and minimum air temperatures are essential to mitigate the damage of extreme we...
The prediction of drought is of major importance in climate-related studies, hydrologic engineering,...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Air temperature is an essential climatic component particularly in water resources management and ot...
Accurate rainfall prediction is a challenging task. It is especially challenging in Australia where ...
Atmospheric air temperature is the most crucial metrological parameter. Despite its influence on mul...
Machine learning (ML) has been utilized to predict climatic parameters, and many successes have bee...
Predicting temperature has been a great challenge in meteorology. Accurate temperature prediction is...
Many efficient forecasting models have been found to fail or show low skill due to the changes in th...
AbstractThis paper proposes a new methodology, Sliding Window-based Support Vector Regression (SW-SV...
AbstractSensor network technology is becoming more widespread and sophisticated, and devices with ma...
This paper shows that skillful week 3–4 predictions of a large-scale pattern of 2 m temperature over...
This dataset contains the precipitation, mean maximum temperature and mean minimum temperature data ...
Weather forecasting refers to the prediction of atmospheric conditions depending on a given time and...
Performance of four different machine learning-based approaches (long short-term memory (LSTM), supp...
Forecasts of maximum and minimum air temperatures are essential to mitigate the damage of extreme we...
The prediction of drought is of major importance in climate-related studies, hydrologic engineering,...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Air temperature is an essential climatic component particularly in water resources management and ot...
Accurate rainfall prediction is a challenging task. It is especially challenging in Australia where ...
Atmospheric air temperature is the most crucial metrological parameter. Despite its influence on mul...
Machine learning (ML) has been utilized to predict climatic parameters, and many successes have bee...
Predicting temperature has been a great challenge in meteorology. Accurate temperature prediction is...
Many efficient forecasting models have been found to fail or show low skill due to the changes in th...
AbstractThis paper proposes a new methodology, Sliding Window-based Support Vector Regression (SW-SV...
AbstractSensor network technology is becoming more widespread and sophisticated, and devices with ma...
This paper shows that skillful week 3–4 predictions of a large-scale pattern of 2 m temperature over...
This dataset contains the precipitation, mean maximum temperature and mean minimum temperature data ...
Weather forecasting refers to the prediction of atmospheric conditions depending on a given time and...
Performance of four different machine learning-based approaches (long short-term memory (LSTM), supp...
Forecasts of maximum and minimum air temperatures are essential to mitigate the damage of extreme we...
The prediction of drought is of major importance in climate-related studies, hydrologic engineering,...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...