Laser310
Well-known member
Realistically crowd sourcing is the best bet for lots of data, even if we just use that to better interpolate “real” data sets.
how are you going to crowd source at 500mb?
Realistically crowd sourcing is the best bet for lots of data, even if we just use that to better interpolate “real” data sets.
Physical modelling requires global, 3D data, surface to about 80km. Some have suggested even higher but that seems very unlikely. AI will also require global 3D data.
Yes, but remember that, roughly, a little over 10% of the mass of our atmosphere is above 15 km.but better data to 15km would still be a big help.
The learning so far has, I understand, used the ERA5 data set. I do not know if the raw data, ie those used to generate ERA5, have also been archived. If they have, it must be a truly astronomical data set, many orders of magnitude larger than ERA5. It is not at all clear to me that a fully automated AI system will emerge.but anyway - the question I am asking is; which method is likely to result in the greatest increase in forecasting skill; basic science, or AI?
I fear it is AI.., and I am unhappy about what that means for the future of basic science funding; it will necessarily be less than if it was perceived as the most effective way to increase forecasting skill.
Any data is useful data, higher resolution is better. You’re describing the problem with the scientists, if it’s not perfect they discount the approach completely. This is why other skills need to be brought in to make some progress and try new things.Physical modelling requires global, 3D data, surface to about 80km. Some have suggested even higher but that seems very unlikely. AI will also require global 3D data.
So you want to ignore a data set because it’s not exactly what you want? Can you see why progress isn’t being made?how are you going to crowd source at 500mb?
Whether it is pre-computer synoptic data of the current mix of radiances, cloud motion vectors, scatterometer wind data, experimental data such as from Aeolus, meteorologists are well accustomed to working with variable data quality and quantity, using models that are invariably best endeavours. They do not expect perfect dat or perfect forecasts. As I have said many times, the atmosphere is not precise. Neither are or ever will be forecasts.Any data is useful data, higher resolution is better. You’re describing the problem with the scientists, if it’s not perfect they discount the approach completely. This is why other skills need to be brought in to make some progress and try new things.
If you want to achieve results not seen before, you must employ methods not tried before.
And yet you seem very dismissive of using high resolution realtime data from smartphones despite the many obvious advantages.As I have said many times, the atmosphere is not precise.
That is an odd interpretation of what I said. Yes, all data are useful. There must be some useful information there. I cannot help pointing out that over 70%of the earth is covered by the oceans where there are few mobile phones. I could see such data being useful for short term, local area forecasts but add not very much to the overall data analyses. The cover would be very patchy compared to Meteosat 12. I think the data would be a useful enhancement for local interpretation of national or regional scale predictions.scale. Much of the detail would have very short lifetimes and have disappeared by the time the information was made available to users.And yet you seem very dismissive of using high resolution realtime data from smartphones despite the many obvious advantages.
How useful would temperature be from a centrally heated house? What use would pressure be from a 4th floor flat? Such data might well be useful for now-casting but have little to add aver and above the synoptic networks coupled with satellite observing systems for any modelling whether AI or NWP. You have to think about predictability and representivity. Just look at UK rainfall radar map - Met Office to see the lifetimes of small detail. I think that you are losing sight of what happens in the real world as opposed to an AI one.I wholeheartedly disagree. Just because the data doesn’t cover the oceans doesn’t mean it’s not worthwhile. The oceans are relatively featureless from a prediction perspective and the consumers of the forecast are mostly on land.
Using realtime high frequency and high resolution data about pressure, sunlight and temperature would be enormously beneficial for both checking efficacy of models as well as adding to the ability to predict.
Not so. The scientists are all too aware of data limitations. Much of the effort in using all data forms is about maximising data use. This involves realism in what can usefully be predicted. AI might well improve prediction but will still be constrained by noise on all levels from gusts to hurricanes.Satellite data has its own flaws, and often scientists ignore them because it seems more scientifically pure a way to collect data. Unfortunately this attitude holds back the whole industry.
I stated in my previous post that anomalies can be removed. I'm not suggesting a weather man sits in a room and crosses out odd data, this is 2024 and we can fully automate this at planetary scale. It's not even a difficult task these days. That having been said, I can see enormous benefit in home temperatures for weather data purposes since the actual air temperature of homes will vary based on humidity and rainfall which both affect that value. If you're measuring at sufficient frequency and properly processing then there's a lot you can infer from all kinds of data.How useful would temperature be from a centrally heated house?
In global weather, there isn't really an "upwind", the planet is round and weather endlessly goes around it (or rather, the planet spins under it).I can't see how you can extrapolate surface measurements in an urban environment into predictions of upper atmospheric conditions over an ocean, particularly when the ocean is upwind from the urban environment as would be the case for a lot of Europe and Asia. There is no question that modelling can be improved with progressively finer sampling, whether that is more frequent timewise or spatially. From what I understand from Frank's discussions there are, at the moment, serious limitations caused by lack of sufficient data from the various atmospheric levels over oceans. I can't see cell phone data filling that void.
Clearly, you did not follow my train of thought. ML uses algorithms that learn from observed data to make predictions. Whether you like it or not, it is describing the results of the physical processes that drive the atmosphere. There are physical reasons for everything that happens. So, starting from what is happening now, to predict the future AI is using the observed effects of physical processes. When developing NWP models, the scientists simply do not have the resources to test all the possible combinations of data analysis issues and model formulation uncertainty. ML can look at far larger numbers of actual events during which the atmosphere has developed physically. You seem to be treating AI as a large black box which generates forecasts as if by magic. I am saying that AI is using the observed effects of physical processes.Sorry Frank, but your response just shows your lack of understanding of the subject. Just as with our previous conversation on AI/ML you need to do some research and understand the topic before being so dismissive.
Your arrogance is astounding. An ECMWF paper written in 2018 described an early trial of AI prediction. Before that they had been using neural networks in data analysis. The Met Office works closely with ECMWF. On the path to delivering next generation UK weather forecasts suggests that they see AI as the future. I know that private sector scientists like to stick pins in government institutions. In the case of meteorology, there has long been close liaison with government scientists in the UK, and other countries, particularly the US taking the lead. Much research work is done under contract. ECMWF and the Met Office both attract good scientists. There is far more fluidity than in the far off days when I was a young scientist.I stated in my previous post that anomalies can be removed. I'm not suggesting a weather man sits in a room and crosses out odd data, this is 2024 and we can fully automate this at planetary scale. It's not even a difficult task these days. That having been said, I can see enormous benefit in home temperatures for weather data purposes since the actual air temperature of homes will vary based on humidity and rainfall which both affect that value. If you're measuring at sufficient frequency and properly processing then there's a lot you can infer from all kinds of data.
As I've said multiple times, this is the problem with the incumbent professionals, they're far too set in their ways and unwilling to listen to suggestions. Thankfully, as with other industries, we don't actually need to bring them on the journey with us. Ordnance Survey saw this when Google Maps appeared and then Street-view, luckily they had the good sense to get on board and are now world leading in their use of AI for mapping.
It'll happen with or without the current industry players.
Experience, not arrogance. I’m sure it does look that way to you but it’s really not.Your arrogance is astounding
You missed my point again. Everywhere is upwind because upwind is infinite. Look at earth :: a global map of wind, weather, and ocean conditions and look down from the poles and you’ll see that what happens in London now absolutely affects America later despite America being “upwind”. Weather just isn’t that immediate.To clarify my use of "upwind" I meant that the cell phone data collected would have no bearing on predictions on what is coming from upwind.
Again you’re misunderstanding. I’m not suggesting that hotter homes will affect the weather I’m telling you we can use the rate of change of home temperatures to determine heat, humidity and rainfall outside the home. With 30 million homes in the UK that’s a far better data set than the few weather stations measuring the same thing directly. That gives us better resolution of data at a higher frequency, and that will certainly deliver better local forecasts in the places people want them.Obviously if everyone in Europe and Asia had their thermostats up on bust that heat would eventually arrive back on the continent following at least one revolution of the Earth
You seem to forget that the Met Office, NOAA, DWD etc are operational organisation. They have to run services to meet many needs from Avistion, shipping, general public forecasts and warnings etc. Any development or changes to the forecasting system has to be carried out carefully and methodically. That applies to new observing system as well as to forecast production. It is quite clear that AI is likely to become an integral part of the system. Clearly, there will be gains in efficiency in terms of computer power. It is less clear that there will be great improvements in forecast accuracy. None of these organisations is going to act hastily. They learned that lesson a long time ago. ECMWF is in a slightly different position. It was set up, primarily to research forecasting weeks ahead. It has morphed into a service provider to its owners - including the Met Office. So, it, too, will proceed slowly and cautiously.Experience, not arrogance. I’m sure it does look that way to you but it’s really not.
Yes, they are dipping their toes in the water but that’s a world away from seriously embracing the technology or even something simple like using different data sets from what they’re used to. People like me have to fight every day to enable progress and in return I get experts mansplaining why I’m wrong right up until we force them to listen by showing them it’s better.
In overall terms, you are correct. Turbulence and showers can be predicted. But, just look at a showery situation over the sea. Do you really think that AI will be able to predict even the location of individual clouds, never mind precipitation intensity?Weather follows patterns whether you agree or not, and it’s not helpful to explain away everything you don’t understand as “turbulence”. That turbulence is just a finer grain than you’re modelling but it’s still a pattern. Where ML excels is that we don’t need to understand what’s causing the effect, and we don’t need direct data to predict it, we just need enough data to predict when it’s going to happen. It’s entirely possible that ice-cream sales across the country correlate better than your physical models to what’s coming next. You’d never know because you’d never try.
But we don’t and current techniques make it unlikely we ever will. Don’t lose sight of the fact that we’re not trying to model the atmosphere, we’re trying to predict the weather.If we fully understood the mechanics of the atmosphere or, at the very least had data from locations through out the 3 dimensions where there is no data being collected in quantity, then the modelling that leads to weather forecasts would do a better job.