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  2. Anyone else thinking like me, seems to happens every year, gets to April / May and we get non stop N/E/NE winds, two months ago these would have brought a winter paradise. Don't want these winds now, give me a southerly now please. Sick of this rubbish weather.
  3. SunnyG SunnyG Yes, probably all start to melt fast by the end of the week with a return of warmth hopefully. Still delaying my trip back to blighty as I cannot stand , persistent cloud wet and Atlantic winds anymore ! Maybe, a flaming June for you lot ? C
  4. SunnyG Yeah, 20 degrees is possible for next week. So weird, I've never seen a situation that after snow it already feels like Summer. It's only taking a week until we can wear t-shirts and shorts.
  5. I don't think I've ever seen something like this: 30cm of snow in Finland but there could already be 20 degrees next week as warmer air pushes in from the South. Climate is really quickly make changes to the weather in such a short period of time. Especially since we're between Atlantic and Continental. There have always been quick changes but these differences will become much more quicker in short amount of time now.
  6. carinthian I don't like snow any time of the year so I feel for you. Luckily though you will have warmth soon, which we will not...
  7. At least you don't get snow so late. 30 cm snow this late is just insane for Southern Finland. This isn't Lapland.
  8. Don't think it's as cold outside as previous days. Output looks mediocre. Any high pressure seems short lived but settles nicely over Griceland. To anyone else going on holiday/storm chasing, have a nice time.. bring back the warm dry weather when you come back!
  9. Freezing cold dog this morning although at least it wasn’t raining or windy which is something of a miracle. Playing golf today, although really looking forward to it as it’s so raw. Weather for Dallas looks good from the weekend, highs in the upper 20s or low 30s and mins around 20C with a severe storm or 2 possible. Can’t wait.
  10. Little point ducking the issue. A quacking weekend in store… 0z ECM op for day 4, as another low pressure system finds us with impressive timing! Further ahead, some more positive signs - once we start seeing this type of “super-meridional” pattern - ambitious building of heights up through the Atlantic and more spectacularly, through all the S’s - Sahara-Sweden-Svalbard-Siberia-Seguam like here at day 6 on the 0z ECM op… …it’s only a matter of time before we start seeing the trough becoming over-extended with the cutting off of the low at the base of the trough, it sinking south, the heights linking up through the UK and Ireland like here at day 8… Yes, add Skegness and Sandymount to your list, spectacular super-meridional S thing! After that, a weaker version of the trough tries to reassert itself from the northwest, which the GFS op has been keenest on, though looking at the 0z ensemble mean, the pressure never really falls away again, a steady rise to a respectable 1020mb for Birmingham by the end of week 2… …which is consistent with the ECM charts and the pincer movement of heights weakening the polar trough at its stem - so though nothing wall to wall by any means, the chance of a somewhat more promising setup emerging into early May. I’ll post again around then. All the best.
  11. Who likes snow at this time of the year ? Fourth consecutive day of persistent snowfall in these parts. Currently -1.6c in the village with a deep covering. Strange though as it was 30c in the valleys 10 days ago. The joys of spring ! c
  12. The aim of this thread to hopefully jinx us out of this infinite satanic pattern has clearly not been working lol. Here we are, still in a never ending abyss of grey & wet raw sewage except it has somehow managed to get worse with it becoming chillier as the days get longer! For me, this is turning into the worst year I have ever experienced & 2023 was bad enough but at least that one had a good February, acceptable May, good June & September! This one has had nothing except a sunny enough January. Wow, thanks so much weather gods for a good January & warmth rest of year....
  13. Today
  14. In Absence of True Seasons Unless its forecasting the usual garbage grey/wet sewage then its accurate to about 20 days out! Lol.
  15. A Face like Thunder Yes today has started with showers, which even had a few wintery bits in earlier according to Mrs Mike57. 5C, and a strong northerly wind this morning. I dont mind cold but this wind and wet just seems never ending this winter. Stove is lit and will be burning most of the day again.
  16. I have started a new section in the Netweather Research Library with articles, blogs and research papers covering the use of AI in weather modelling and forecasting. I've included a couple of links to some interesting 'learning' material written/presented by Harvard and Cambridge Universities. If anyone has any more research papers or articles they believe should be included in the library, please either post them in here (and tag me) or message me. Thanks.
  17. reef You're still doing considerably better than West Yorkshire though- only 61 hours so far in Wakefield. We're not doing much better here at 73.1 hours so far- very poor.
  18. Have to say the model output in the medium term has again turned very unsettled and dominated by low pressure. Absolutely nothing to suggest anything warm, sunny and dry before before or during the bank holiday weekend.
  19. Here are the current Papers & Articles under the research topic Artificial Intelligence. Click on the title of a paper you are interested in to go straight to the full paper. Papers and articles covering the basics (ideal for learning) are shown in Green. A Sky Full of Data: Weather forecasting in the age of AI An article by Harvard University March 2024. Intro: Imagine a world where weather forecasts are as precise and personalized as the navigation app on your smartphone, and deciding whether to carry a raincoat or planning safe travel routes isn’t a morning dilemma clouded by ambiguous forecasts. This vision isn’t a distant dream– it’s rapidly becoming our reality thanks to the revolutionary impact of artificial intelligence (AI) and machine learning (ML) on meteorology, helping scientists better tackle and conquer the complexities of weather prediction. AI, with its remarkable ability to sift through immense datasets to uncover complicated patterns, heralds a new era in meteorology. Major technology companies like Google Research, Google Deepmind, and Huawei have recently demonstrated the ability of ML-based models to outperform the traditional gold-standard methods in weather predictions, while requiring only a fraction of computational resources. From providing farmers with precise agricultural forecasts to predicting the path of deadly cyclones, AI and ML are transforming how we interact with and understand the weather (Figure 1). In this article, we’ll explore the transformative role of AI and ML in weather forecasting, delving into the underlying science, the potentially revolutionary improvement and potential applications they bring, as well as the challenges that lie ahead in our quest to predict the unpredictable. The quiet AI revolution in weather forecasting Article from Cambridge University Jan 2024. Includes a video of a talk by Richard Turner, Professor of Computer Vision and Machine Learning, discussing the quiet AI revolution that has begun in the field of numerical weather prediction. A Generative Deep Learning Approach to Stochastic Downscaling of Precipitation Forecasts Published Oct 2022 Abstract: Despite continuous improvements, precipitation forecasts are still not as accurate and reliable as those of other meteorological variables. A major contributing factor to this is that several key processes affecting precipitation distribution and intensity occur below the resolved scale of global weather models. Generative adversarial networks (GANs) have been demonstrated by the computer vision community to be successful at super-resolution problems, that is, learning to add fine-scale structure to coarse images. Leinonen et al. previously applied a GAN to produce ensembles of reconstructed high-resolution atmospheric fields, given coarsened input data. In this paper, we demonstrate this approach can be extended to the more challenging problem of increasing the accuracy and resolution of comparatively low-resolution input from a weather forecasting model, using high-resolution radar measurements as a “ground truth.” The neural network must learn to add resolution and structure whilst accounting for non-negligible forecast error. We show that GANs and VAE-GANs can match the statistical properties of state-of-the-art pointwise post-processing methods whilst creating high-resolution, spatially coherent precipitation maps. Our model compares favorably to the best existing downscaling methods in both pixel-wise and pooled CRPS scores, power spectrum information and rank histograms (used to assess calibration). We test our models and show that they perform in a range of scenarios, including heavy rainfall. GraphCast: AI model for faster and more accurate global weather forecasting Blog Published Nov 2023 Abstract: GraphCast is a weather forecasting system based on machine learning and Graph Neural Networks (GNNs), which are a particularly useful architecture for processing spatially structured data. GraphCast makes forecasts at the high resolution of 0.25 degrees longitude/latitude (28km x 28km at the equator). That’s more than a million grid points covering the entire Earth’s surface. At each grid point the model predicts five Earth-surface variables – including temperature, wind speed and direction, and mean sea-level pressure – and six atmospheric variables at each of 37 levels of altitude, including specific humidity, wind speed and direction, and temperature. While GraphCast’s training was computationally intensive, the resulting forecasting model is highly efficient. Making 10-day forecasts with GraphCast takes less than a minute on a single Google TPU v4 machine. For comparison, a 10-day forecast using a conventional approach, such as HRES, can take hours of computation in a supercomputer with hundreds of machines. Learning skillful medium-range global weather forecasting Published Nov 2023 Abstract: Global medium-range weather forecasting is critical to decision-making across many social and economic domains. Traditional numerical weather prediction uses increased compute resources to improve forecast accuracy but does not directly use historical weather data to improve the underlying model. Here, we introduce GraphCast, a machine learning–based method trained directly from reanalysis data. It predicts hundreds of weather variables for the next 10 days at 0.25° resolution globally in under 1 minute. GraphCast significantly outperforms the most accurate operational deterministic systems on 90% of 1380 verification targets, and its forecasts support better severe event prediction, including tropical cyclone tracking, atmospheric rivers, and extreme temperatures. GraphCast is a key advance in accurate and efficient weather forecasting and helps realize the promise of machine learning for modeling complex dynamical systems. Do AI models produce better weather forecasts than physics-based models? A quantitative evaluation case study of Storm Ciarán Published April 2024 Abstract: There has been huge recent interest in the potential of making operational weather forecasts using machine learning techniques. As they become a part of the weather forecasting toolbox, there is a pressing need to understand how well current machine learning models can simulate high-impact weather events. We compare short to medium-range forecasts of Storm Ciarán, a European windstorm that caused sixteen deaths and extensive damage in Northern Europe, made by machine learning and numerical weather prediction models. The four machine learning models considered (FourCastNet, Pangu-Weather, GraphCast and FourCastNet-v2) produce forecasts that accurately capture the synoptic-scale structure of the cyclone including the position of the cloud head, shape of the warm sector and location of the warm conveyor belt jet, and the large-scale dynamical drivers important for the rapid storm development such as the position of the storm relative to the upper-level jet exit. However, their ability to resolve the more detailed structures important for issuing weather warnings is more mixed. All of the machine learning models underestimate the peak amplitude of winds associated with the storm, only some machine learning models resolve the warm core seclusion and none of the machine learning models capture the sharp bent-back warm frontal gradient. Our study shows there is a great deal about the performance and properties of machine learning weather forecasts that can be derived from case studies of high-impact weather events such as Storm Ciarán. ECMWF - First update to the AIFS Blog with update details - published Jan 2024 (contains link to all ECMWF AI blogs) Abstract: On 10 January 2024, we introduced a new version of the AIFS. While the previous version had a spatial resolution of 111 km (1°), the revised AIFS version has a resolution of 28 km (0.25°). Its input and output grids are now the native ERA5 reduced Gaussian grid, which provides near-constant resolution across the globe. There were also architectural changes. The first implementation of the AIFS was built upon Deepmind’s GraphCast approach, based on message-passing graph neural networks and with an internal icosahedral grid with multi-scale edges. In this new version, the encoder and decoder use attention-based graph neural networks, very similar to a transformer (Vaswani et al., 2017) architecture. The processor now works on an octahedral reduced Gaussian grid, the same kind of grid that is used in our operational IFS. The processor is a transformer that processes the 40,320 grid points of the processor grid as a sequence with a sliding attention window (Figure 1). These layers are highly efficient on GPU architecture, meaning the model is faster both to train and to make predictions.
  20. Cold feel to start the day was 5°C 6am. Blue sky and broken cloud, looks clearer to the east. Yesterday max was 12.7°C.
  21. 0.6 mm rain over night from a little feature in the early hours. WRF had been showing that for awhile. It's done well this year with the mesoscale.
  22. Dry varaible cloud and clear spells Temp 3.7C, Barometer 1017mb falling slowly, Wind F2 NNE, Rainfall Nil
  23. I'm seeing a lot of well-experienced forecasters/chasers becoming very concerned about the upcoming prospects from Thursday onwards. Fortunately on night shifts so will be able to follow the entire event. If only I'd decided to go chasing out in the States a month earlier
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