For several years, the concept of AI (Artificial Intelligence) has been increasingly prevalent. AI is also being applied in more and more ways. This enables the resolution of problems that seemed unsolvable in the past. But what is AI exactly? How does it work? And what are the developments in AI in the (marine) weather industry? In this article, we will delve further into these questions.
Disclaimer: This article is not generated by AI itself, but written by Arjan Willemse and Christian Versloot.
AI, or Artificial Intelligence, refers to the simulation of human intelligence processes by machines, especially computer systems. These processes include learning, reasoning, and self-correction. A simple example of this is the following: an AI model can distinguish between a banana and an orange in a picture. This is done by feeding huge amounts of different pictures of bananas and oranges into the AI model. The model can train itself in distinguishing between a banana and a picture of an orange. If enough training material (different pictures of oranges and bananas) are fed into the model the model will be able to distinguish between pictures of bananas and oranges. When a completely new picture is presented to the model, the AI model is trained to predict whether this new picture is an orange or a banana. This example is about machine learning (which is a form of AI). There are many other forms of AI such as rule-based learning, symbolic AI, etc.
In recent years, the usage of AI in weather forecasting has increased in both niche applications and global weather forecasting. The difference between the two lies in the scope of what is forecasted: niche applications attempt solving one task, such as nowcasting of lightning or improving an issued weather forecast based on observations. Global forecasting, a paradigm called Machine Learning Weather Prediction (MLWP), attempts to predict how the global atmosphere evolves over time, just like a classic weather model does.
One example of niche applications Infoplaza is researching is generating short-term cloud nowcasts based on recent satellite imagery. A bit more futuristic is attempting to predict radar images from satellite images using generative AI techniques, potentially helping us to predict storms on radar when they are in the process of forming. This may extend the lead time with which thunderstorms can be identified based on current weather conditions.
In MLWP, typically, around 40 years of observations data processed into a physics-based weather model (a so-called analysis) is used to predict how the atmosphere evolves. While attempting the same as a classic global weather model (an NWP model, which attempts making weather forecasts in a physically correct way), the technology behind it is radically different. Benefiting from technological developments used in recently emerged tools like ChatGPT, the meteorological sciences are attempting to predict the state of the atmosphere at 1, 3, 6, 12 or 24 hours ahead by passing the state at the current time through a large-scale machine learning model, then instructing it to predict the state at the expected time step. By doing this with 40 years of examples, a series of promising models has emerged which renowned weather institutes call potential rivals to classic NWP.
MLWP is a new paradigm. Much research work is put into making increasingly well-performing models. With multiple models being released, large-scale verification has identified various strengths and weaknesses of these models. In this part, we will go over them step by step. Some strengths are that:
Weaknesses of MLWP models include that:
In summary, while AI brings significant strengths to weather forecasting, it has also its limitations related to data dependencies and interpretability. A hybrid approach, combing AI with traditional meteorological methods, is often seen as a promising strategy to combine the best of both worlds.
This article shows that AI has developed fast during recent years. Nowadays it is possible to forecast the weather (still with its limitations) purely based on AI models. That is already a huge achievement, accomplished in a short period of time. The expectation is that AI will keep developing during the coming years. Therefore, we will likely see an increase in AI based weather forecasts in the future.
At Infoplaza, a dedicated weather room with experienced marine meteorologists is ready to support your offshore operations, 24/7. Along with our Marine Weather Dashboard, you always have access to the most expert view on weather situations, so you can excel at decision making.