As in many other areas of engineering and applied science, Machine Learning (ML) is having a profound impact in the domain of Weather and Climate Prediction. A very recent development in this area has been the emergence of fully data-driven ML prediction models which routinely claim superior performance to that of traditional physics-based models. In this work, we examine some aspects of the forecasts produced by an exemplar of the current generation of ML models, Pangu-Weather, with a focus on the fidelity and physical consistency of those forecasts and how these characteristics relate to perceived forecast performance. The main conclusion is that Pangu-Weather forecasts, and possibly those of similar ML models, do not have the fidelity an...
Weather forecasting is, still today, a human based activity. Although computer simulations play a ma...
<p>It will be clear from the above discussions that skill forecasts are still in their infancy...
The most mature aspect of applying artificial intelligence (AI)/machine learning (ML) to problems in...
Data-driven modeling based on machine learning (ML) is showing enormous potential for weather foreca...
Data-driven weather prediction models (DDWPs) have made rapid strides in recent years, demonstrating...
Multiple studies have now demonstrated that machine learning (ML) can give improved skill for predic...
While previous works have shown that machine learning (ML) can improve the prediction accuracy of co...
Customarily, climate expectations are performed with the assistance of enormous complex models of ma...
Machine learning (ML) has been utilized to predict climatic parameters, and many successes have bee...
High-performance computing is a prime area for many applications. Majorly, weather and climate forec...
Numerical weather prediction has traditionally been based on the models that discretize the dynamica...
Subseasonal forecasting $\unicode{x2013}$ predicting temperature and precipitation 2 to 6 weeks $\un...
The discipline of seasonal climate prediction began as an exercise in simple statistical techniques....
Computer-generated forecasts divide the earth's surface into gridboxes, each now ~25% of the size of...
In their comment, Žagar and Szunyogh raised concerns about a recent study by Zhang et al. that exami...
Weather forecasting is, still today, a human based activity. Although computer simulations play a ma...
<p>It will be clear from the above discussions that skill forecasts are still in their infancy...
The most mature aspect of applying artificial intelligence (AI)/machine learning (ML) to problems in...
Data-driven modeling based on machine learning (ML) is showing enormous potential for weather foreca...
Data-driven weather prediction models (DDWPs) have made rapid strides in recent years, demonstrating...
Multiple studies have now demonstrated that machine learning (ML) can give improved skill for predic...
While previous works have shown that machine learning (ML) can improve the prediction accuracy of co...
Customarily, climate expectations are performed with the assistance of enormous complex models of ma...
Machine learning (ML) has been utilized to predict climatic parameters, and many successes have bee...
High-performance computing is a prime area for many applications. Majorly, weather and climate forec...
Numerical weather prediction has traditionally been based on the models that discretize the dynamica...
Subseasonal forecasting $\unicode{x2013}$ predicting temperature and precipitation 2 to 6 weeks $\un...
The discipline of seasonal climate prediction began as an exercise in simple statistical techniques....
Computer-generated forecasts divide the earth's surface into gridboxes, each now ~25% of the size of...
In their comment, Žagar and Szunyogh raised concerns about a recent study by Zhang et al. that exami...
Weather forecasting is, still today, a human based activity. Although computer simulations play a ma...
<p>It will be clear from the above discussions that skill forecasts are still in their infancy...
The most mature aspect of applying artificial intelligence (AI)/machine learning (ML) to problems in...