target date
Distillation and Interpretability of Ensemble Forecasts of ENSO Phase using Entropic Learning
Groom, Michael, Bassetti, Davide, Horenko, Illia, O'Kane, Terence J.
This paper introduces a distillation framework for an ensemble of entropy-optimal Sparse Probabilistic Approximation (eSPA) models, trained exclusively on satellite-era observational and reanalysis data to predict ENSO phase up to 24 months in advance. While eSPA ensembles yield state-of-the-art forecast skill, they are harder to interpret than individual eSPA models. We show how to compress the ensemble into a compact set of "distilled" models by aggregating the structure of only those ensemble members that make correct predictions. This process yields a single, diagnostically tractable model for each forecast lead time that preserves forecast performance while also enabling diagnostics that are impractical to implement on the full ensemble. An analysis of the regime persistence of the distilled model "superclusters", as well as cross-lead clustering consistency, shows that the discretised system accurately captures the spatiotemporal dynamics of ENSO. By considering the effective dimension of the feature importance vectors, the complexity of the input space required for correct ENSO phase prediction is shown to peak when forecasts must cross the boreal spring predictability barrier. Spatial importance maps derived from the feature importance vectors are introduced to identify where predictive information resides in each field and are shown to include known physical precursors at certain lead times. Case studies of key events are also presented, showing how fields reconstructed from distilled model centroids trace the evolution from extratropical and inter-basin precursors to the mature ENSO state. Overall, the distillation framework enables a rigorous investigation of long-range ENSO predictability that complements real-time data-driven operational forecasts.
- Indian Ocean (0.04)
- South America (0.04)
- Europe > Germany > Rhineland-Palatinate > Kaiserslautern (0.04)
- (7 more...)
- North America > Canada > Ontario > Toronto (0.14)
- Europe > United Kingdom (0.04)
- Asia > China (0.04)
- (11 more...)
- North America > Canada > Ontario > Toronto (0.14)
- Europe > United Kingdom (0.04)
- Asia > China (0.04)
- (11 more...)
- North America > Canada > Ontario > Toronto (0.14)
- Europe > United Kingdom (0.04)
- Asia > China (0.04)
- (11 more...)
- North America > Canada > Ontario > Toronto (0.14)
- Europe > United Kingdom (0.04)
- Asia > China (0.04)
- (11 more...)
Adaptive Bias Correction for Improved Subseasonal Forecasting
Mouatadid, Soukayna, Orenstein, Paulo, Flaspohler, Genevieve, Cohen, Judah, Oprescu, Miruna, Fraenkel, Ernest, Mackey, Lester
Subseasonal forecasting -- predicting temperature and precipitation 2 to 6 weeks ahead -- is critical for effective water allocation, wildfire management, and drought and flood mitigation. Recent international research efforts have advanced the subseasonal capabilities of operational dynamical models, yet temperature and precipitation prediction skills remain poor, partly due to stubborn errors in representing atmospheric dynamics and physics inside dynamical models. Here, to counter these errors, we introduce an adaptive bias correction (ABC) method that combines state-of-the-art dynamical forecasts with observations using machine learning. We show that, when applied to the leading subseasonal model from the European Centre for Medium-Range Weather Forecasts (ECMWF), ABC improves temperature forecasting skill by 60-90% (over baseline skills of 0.18-0.25) and precipitation forecasting skill by 40-69% (over baseline skills of 0.11-0.15) in the contiguous U.S. We couple these performance improvements with a practical workflow to explain ABC skill gains and identify higher-skill windows of opportunity based on specific climate conditions.
- North America > Canada > Ontario > Toronto (0.14)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.05)
- South America > Brazil > Rio de Janeiro > Rio de Janeiro (0.04)
- (18 more...)
Learned Benchmarks for Subseasonal Forecasting
Mouatadid, Soukayna, Orenstein, Paulo, Flaspohler, Genevieve, Oprescu, Miruna, Cohen, Judah, Wang, Franklyn, Knight, Sean, Geogdzhayeva, Maria, Levang, Sam, Fraenkel, Ernest, Mackey, Lester
We develop a subseasonal forecasting toolkit of simple learned benchmark models that outperform both operational practice and state-of-the-art machine learning and deep learning methods. Our new models include (a) Climatology++, an adaptive alternative to climatology that, for precipitation, is 9% more accurate and 250% more skillful than the United States operational Climate Forecasting System (CFSv2); (b) CFSv2++, a learned CFSv2 correction that improves temperature and precipitation accuracy by 7-8% and skill by 50-275%; and (c) Persistence++, an augmented persistence model that combines CFSv2 forecasts with lagged measurements to improve temperature and precipitation accuracy by 6-9% and skill by 40-130%. Across the contiguous U.S., our Climatology++, CFSv2++, and Persistence++ toolkit consistently outperforms standard meteorological baselines, state-of-the-art machine and deep learning methods, and the European Centre for Medium-Range Weather Forecasts ensemble. Overall, we find that augmenting traditional forecasting approaches with learned enhancements yields an effective and computationally inexpensive strategy for building the next generation of subseasonal forecasting benchmarks.
- North America > Canada > Ontario > Toronto (0.14)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.05)
- Europe > United Kingdom (0.04)
- (12 more...)
Sub-Seasonal Climate Forecasting via Machine Learning: Challenges, Analysis, and Advances
He, Sijie, Li, Xinyan, DelSole, Timothy, Ravikumar, Pradeep, Banerjee, Arindam
Sub-seasonal climate forecasting (SSF) focuses on predicting key climate variables such as temperature and precipitation in the 2-week to 2-month time scales. Skillful SSF would have immense societal value, in areas such as agricultural productivity, water resource management, transportation and aviation systems, and emergency planning for extreme weather events. However, SSF is considered more challenging than either weather prediction or even seasonal prediction. In this paper, we carefully study a variety of machine learning (ML) approaches for SSF over the US mainland. While atmosphere-land-ocean couplings and the limited amount of good quality data makes it hard to apply black-box ML naively, we show that with carefully constructed feature representations, even linear regression models, e.g., Lasso, can be made to perform well. Among a broad suite of 10 ML approaches considered, gradient boosting performs the best, and deep learning (DL) methods show some promise with careful architecture choices. Overall, suitable ML methods are able to outperform the climatological baseline, i.e., predictions based on the 30-year average at a given location and time. Further, based on studying feature importance, ocean (especially indices based on climatic oscillations such as El Nino) and land (soil moisture) covariates are found to be predictive, whereas atmospheric covariates are not considered helpful.
- North America > United States > Montana (0.14)
- Pacific Ocean (0.04)
- North America > United States > Minnesota (0.04)
- (7 more...)
Improving Subseasonal Forecasting in the Western U.S. with Machine Learning
Hwang, Jessica, Orenstein, Paulo, Pfeiffer, Karl, Cohen, Judah, Mackey, Lester
Water managers in the western United States (U.S.) rely on longterm forecasts of temperature and precipitation to prepare for droughts and other wet weather extremes. To improve the accuracy of these longterm forecasts, the Bureau of Reclamation and the National Oceanic and Atmospheric Administration (NOAA) launched the Subseasonal Climate Forecast Rodeo, a year-long real-time forecasting challenge, in which participants aimed to skillfully predict temperature and precipitation in the western U.S. two to four weeks and four to six weeks in advance. Here we present and evaluate our machine learning approach to the Rodeo and release our SubseasonalRodeo dataset, collected to train and evaluate our forecasting system. Our system is an ensemble of two regression models. The first integrates the diverse collection of meteorological measurements and dynamic model forecasts in the SubseasonalRodeo dataset and prunes irrelevant predictors using a customized multitask model selection procedure. The second uses only historical measurements of the target variable (temperature or precipitation) and introduces multitask nearest neighbor features into a weighted local linear regression. Each model alone is significantly more accurate than the operational U.S. Climate Forecasting System (CFSv2), and our ensemble skill exceeds that of the top Rodeo competitor for each target variable and forecast horizon. We hope that both our dataset and our methods will serve as valuable benchmarking tools for the subseasonal forecasting problem.
- Oceania > Australia (0.14)
- North America > United States > Texas > Travis County > Austin (0.04)
- North America > United States > Louisiana > Orleans Parish > New Orleans (0.04)
- (3 more...)
5 New Self Driving Car Companies - Nanalyze
The notion of cars that drive themselves is one that becomes more and more real with each passing day. Acquisitions seem to be happening left and right, and almost every major auto manufacturer is devoting resources to bring us a self driving car. Companies like Google, Uber, and Tesla are all devoting significant investments to the self driving car with the universal target date of "2020" for commercialization being forecasted by nearly all of these players. Mobileye, about the only pure-play self driving car stock out there, recently announced a partnership with Delphi and a target date of 2019. While all eyes remain fixed on the big names in this game, there are some new entrants to this space that you may never heard of but that are getting closer and closer to making the self driving car a reality.
- Asia > Singapore (0.08)
- North America > United States > California (0.05)
- Europe > United Kingdom (0.05)
- Europe > Sweden > Vaestra Goetaland > Gothenburg (0.05)
- Transportation > Passenger (1.00)
- Transportation > Ground > Road (1.00)
- Information Technology > Robotics & Automation (1.00)
- Automobiles & Trucks > Manufacturer (1.00)