climate zone
Supplementary Material and Datasheet: Off to new Shores: A Dataset & Benchmark for (near-)coastal Flood Inundation Forecasting Contents
This supplementary document follows the Datasheets for Datasets template of (8) to document the Global Flood Forecasting (GFF) dataset and its creation. Further resources are provided: in the accompanying publication https://arxiv.org/abs/2409.18591 in the GitHub repository https://github.com/Multihuntr/GFF
- North America > United States > Alaska (0.04)
- North America > United States > Colorado (0.04)
- Europe > Germany > Brandenburg > Potsdam (0.04)
- Africa (0.04)
- Law (1.00)
- Government (1.00)
- Information Technology > Security & Privacy (0.46)
- North America > United States > Alaska (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Europe > Germany > Brandenburg > Potsdam (0.04)
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- Government (0.68)
- Information Technology > Services (0.46)
Supplementary Material and Datasheet: Off to new Shores: A Dataset & Benchmark for (near-)coastal Flood Inundation Forecasting Contents
This supplementary document follows the Datasheets for Datasets template of (8) to document the Global Flood Forecasting (GFF) dataset and its creation. Further resources are provided: in the accompanying publication https://arxiv.org/abs/2409.18591 in the GitHub repository https://github.com/Multihuntr/GFF
- North America > United States > Alaska (0.04)
- North America > United States > Colorado (0.04)
- Europe > Germany > Brandenburg > Potsdam (0.04)
- Africa (0.04)
- Law (1.00)
- Government (1.00)
- Information Technology > Security & Privacy (0.46)
- North America > United States > Alaska (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Europe > Germany > Brandenburg > Potsdam (0.04)
- (2 more...)
- Government (0.68)
- Information Technology > Services (0.46)
Regional climate projections using a deep-learning-based model-ranking and downscaling framework: Application to European climate zones
Loganathan, Parthiban, Zea, Elias, Vinuesa, Ricardo, Otero, Evelyn
Accurate regional climate forecast calls for high-resolution downscaling of Global Climate Models (GCMs). This work presents a deep-learning-based multi-model evaluation and downscaling framework ranking 32 Coupled Model Intercomparison Project Phase 6 (CMIP6) models using a Deep Learning-TOPSIS (DL-TOPSIS) mechanism and so refines outputs using advanced deep-learning models. Using nine performance criteria, five K\"oppen-Geiger climate zones -- Tropical, Arid, Temperate, Continental, and Polar -- are investigated over four seasons. While TaiESM1 and CMCC-CM2-SR5 show notable biases, ranking results show that NorESM2-LM, GISS-E2-1-G, and HadGEM3-GC31-LL outperform other models. Four models contribute to downscaling the top-ranked GCMs to 0.1$^{\circ}$ resolution: Vision Transformer (ViT), Geospatial Spatiotemporal Transformer with Attention and Imbalance-Aware Network (GeoSTANet), CNN-LSTM, and CNN-Long Short-Term Memory (ConvLSTM). Effectively capturing temperature extremes (TXx, TNn), GeoSTANet achieves the highest accuracy (Root Mean Square Error (RMSE) = 1.57$^{\circ}$C, Kling-Gupta Efficiency (KGE) = 0.89, Nash-Sutcliffe Efficiency (NSE) = 0.85, Correlation ($r$) = 0.92), so reducing RMSE by 20% over ConvLSTM. CNN-LSTM and ConvLSTM do well in Continental and Temperate zones; ViT finds fine-scale temperature fluctuations difficult. These results confirm that multi-criteria ranking improves GCM selection for regional climate studies and transformer-based downscaling exceeds conventional deep-learning methods. This framework offers a scalable method to enhance high-resolution climate projections, benefiting impact assessments and adaptation plans.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- North America > United States (0.05)
- Europe > France (0.04)
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- Energy (0.93)
- Media > Television (0.34)
AutoLCZ: Towards Automatized Local Climate Zone Mapping from Rule-Based Remote Sensing
Liu, Chenying, Song, Hunsoo, Shreevastava, Anamika, Albrecht, Conrad M
Local climate zones (LCZs) established a standard classification system to categorize the landscape universe for improved urban climate studies. Existing LCZ mapping is guided by human interaction with geographic information systems (GIS) or modelled from remote sensing (RS) data. GIS-based methods do not scale to large areas. However, RS-based methods leverage machine learning techniques to automatize LCZ classification from RS. Yet, RS-based methods require huge amounts of manual labels for training. We propose a novel LCZ mapping framework, termed AutoLCZ, to extract the LCZ classification features from high-resolution RS modalities. We study the definition of numerical rules designed to mimic the LCZ definitions. Those rules model geometric and surface cover properties from LiDAR data. Correspondingly, we enable LCZ classification from RS data in a GIS-based scheme. The proposed AutoLCZ method has potential to reduce the human labor to acquire accurate metadata. At the same time, AutoLCZ sheds light on the physical interpretability of RS-based methods. In a proof-of-concept for New York City (NYC) we leverage airborne LiDAR surveys to model 4 LCZ features to distinguish 10 LCZ types. The results indicate the potential of AutoLCZ as promising avenue for large-scale LCZ mapping from RS data.
- North America > United States > New York (0.24)
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.04)
- Asia > India (0.04)
- Asia > China > Hong Kong (0.04)
Insightful analysis of historical sources at scales beyond human capabilities using unsupervised Machine Learning and XAI
Eberle, Oliver, Büttner, Jochen, El-Hajj, Hassan, Montavon, Grégoire, Müller, Klaus-Robert, Valleriani, Matteo
Historical materials are abundant. Yet, piecing together how human knowledge has evolved and spread both diachronically and synchronically remains a challenge that can so far only be very selectively addressed. The vast volume of materials precludes comprehensive studies, given the restricted number of human specialists. However, as large amounts of historical materials are now available in digital form there is a promising opportunity for AI-assisted historical analysis. In this work, we take a pivotal step towards analyzing vast historical corpora by employing innovative machine learning (ML) techniques, enabling in-depth historical insights on a grand scale. Our study centers on the evolution of knowledge within the `Sacrobosco Collection' -- a digitized collection of 359 early modern printed editions of textbooks on astronomy used at European universities between 1472 and 1650 -- roughly 76,000 pages, many of which contain astronomic, computational tables. An ML based analysis of these tables helps to unveil important facets of the spatio-temporal evolution of knowledge and innovation in the field of mathematical astronomy in the period, as taught at European universities.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Europe > Portugal > Lisbon > Lisbon (0.14)
- Europe > Germany > Hesse > Darmstadt Region > Frankfurt (0.04)
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- Education > Educational Setting (0.67)
- Health & Medicine > Therapeutic Area > Neurology (0.45)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Pattern Recognition (0.67)
High-resolution synthetic residential energy use profiles for the United States
Thorve, Swapna, Baek, Young Yun, Swarup, Samarth, Mortveit, Henning, Marathe, Achla, Vullikanti, Anil, Marathe, Madhav
Efficient energy consumption is crucial for achieving sustainable energy goals in the era of climate change and grid modernization. Thus, it is vital to understand how energy is consumed at finer resolutions such as household in order to plan demand-response events or analyze impacts of weather, electricity prices, electric vehicles, solar, and occupancy schedules on energy consumption. However, availability and access to detailed energy-use data, which would enable detailed studies, has been rare. In this paper, we release a unique, large-scale, digital-twin of residential energy-use dataset for the residential sector across the contiguous United States covering millions of households. The data comprise of hourly energy use profiles for synthetic households, disaggregated into Thermostatically Controlled Loads (TCL) and appliance use. The underlying framework is constructed using a bottom-up approach. Diverse open-source surveys and first principles models are used for end-use modeling. Extensive validation of the synthetic dataset has been conducted through comparisons with reported energy-use data. We present a detailed, open, high resolution, residential energy-use dataset for the United States.
- North America > United States > District of Columbia > Washington (0.14)
- North America > United States > Texas > Travis County > Austin (0.14)
- North America > United States > Montana (0.14)
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- Government > Regional Government > North America Government > United States Government (1.00)
- Energy > Power Industry (1.00)
- Transportation > Ground > Road (0.68)
- Energy > Renewable > Solar (0.67)
ML framework for global river flood predictions based on the Caravan dataset
Bouri, Ioanna, Lahariya, Manu, Nivron, Omer, Julia, Enrique Portales, Backes, Dietmar, Bilinski, Piotr, Schumann, Guy
Reliable prediction of river floods in the first 72 hours can reduce harm because emergency agencies have sufficient time to prepare and deploy for help at the scene. Such river flood prediction models already exist and perform relatively well in most high-income countries. But, due to the limited availability of data, these models are lacking in low-income countries. Here, we offer the first global river flood prediction framework based on the newly published Caravan dataset. Our framework aims to serve as a benchmark for future global river flood prediction research. To support generalizability claims we include custom data evaluation splits. Further, we propose and evaluate a novel two-path LSTM architecture (2P-LSTM) against three baseline models. Finally, we evaluate the generated models on different locations in Africa and Asia that were not part of the Caravan dataset.
- Africa (0.25)
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.14)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
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So2Sat POP -- A Curated Benchmark Data Set for Population Estimation from Space on a Continental Scale
Doda, Sugandha, Wang, Yuanyuan, Kahl, Matthias, Hoffmann, Eike Jens, Ouan, Kim, Taubenböck, Hannes, Zhu, Xiao Xiang
Obtaining a dynamic population distribution is key to many decision-making processes such as urban planning, disaster management and most importantly helping the government to better allocate socio-technical supply. For the aspiration of these objectives, good population data is essential. The traditional method of collecting population data through the census is expensive and tedious. In recent years, statistical and machine learning methods have been developed to estimate population distribution. Most of the methods use data sets that are either developed on a small scale or not publicly available yet. Thus, the development and evaluation of new methods become challenging. We fill this gap by providing a comprehensive data set for population estimation in 98 European cities. The data set comprises a digital elevation model, local climate zone, land use proportions, nighttime lights in combination with multi-spectral Sentinel-2 imagery, and data from the Open Street Map initiative. We anticipate that it would be a valuable addition to the research community for the development of sophisticated approaches in the field of population estimation.
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.06)
- Africa > Kenya (0.05)
- Europe > Germany > Bavaria > Lower Franconia > Würzburg (0.04)
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