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Found 9865 publications. Showing page 390 of 395:

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HTAP3 Fires: towards a multi-model, multi-pollutant study of fire impacts

Whaley, Cynthia H.; Butler, Tim; adame, Jose A.; Ambulkar, Rupal; Arnold, Steve R.; Bucholz, Rebecca; Gaubert, Benjamin; Hamilton, Douglas S.; Huang, Min; Hung, Hayley; Kaiser, Johannes; Kaminski, Jacek W.; Knote, Christoph; Koren, Gerbrand; Kouassi, Jean-Luc; Lin, Meiyun; Liu, Tianjia; Ma, Jianmin; Manomaiphiboon, Kasemsan; Masso, Elise Bergas; McCarty, Jessica L.; Mertens, Mariano; Parrington, Mark; Peiro, Helene; Saxena, Pallavi; Sonwani, Saurabh; Surapipith, Vanisa; Tan, Damaris Y. T.; Tang, Wenfu; Tanpipat, Veerachai; Tsigaridis, Kostas; Wiedinmyer, Christine; Wild, Oliver; Xie, Yuanyu; Zuidema, Paquita

Open biomass burning has major impacts globally and regionally on atmospheric composition. Fire emissions include particulate matter, tropospheric ozone precursors, and greenhouse gases, as well as persistent organic pollutants, mercury, and other metals. Fire frequency, intensity, duration, and location are changing as the climate warms, and modelling these fires and their impacts is becoming more and more critical to inform climate adaptation and mitigation, as well as land management. Indeed, the air pollution from fires can reverse the progress made by emission controls on industry and transportation. At the same time, nearly all aspects of fire modelling – such as emissions, plume injection height, long-range transport, and plume chemistry – are highly uncertain. This paper outlines a multi-model, multi-pollutant, multi-regional study to improve the understanding of the uncertainties and variability in fire atmospheric science, models, and fires' impacts, in addition to providing quantitative estimates of the air pollution and radiative impacts of biomass burning. Coordinated under the auspices of the Task Force on Hemispheric Transport of Air Pollution, the international atmospheric modelling and fire science communities are working towards the common goal of improving global fire modelling and using this multi-model experiment to provide estimates of fire pollution for impact studies. This paper outlines the research needs, opportunities, and options for the fire-focused multi-model experiments and provides guidance for these modelling experiments, outputs, and analyses that are to be pursued over the next 3 to 5 years. The paper proposes a plan for delivering specific products at key points over this period to meet important milestones relevant to science and policy audiences.

2025

Metanutslipp på vei opp

Platt, Stephen Matthew (interview subject); Ursin, Lars (journalist)

2025

2000 years of climate, environmental, and societal variability in southeastern Norway from the annually laminated sediments of Lake Sagtjernet

Ballo, Eirik Gottschalk; D’Andrea, William J.; Høeg, Helge Irgens; Loftsgarden, Kjetil; Bajard, Manon Juliette Andree; Eckhardt, Sabine; Cassiani, Massimo; Evangeliou, Nikolaos; Bakke, Jostein; Krüger, Kirstin

Elsevier

2025

An Introduction to prismAId: Open-Source and Open Science AI for Advancing Information Extraction in Systematic Reviews

Boero, Riccardo

prismAId is an open-source tool designed to streamline systematic literature reviews by leveraging generative AI models for information extraction. It offers an accessible, efficient, and replicable method for extracting and analyzing data from scientific literature, eliminating the need for coding expertise. Supporting various review protocols, including PRISMA 2020, prismAId is distributed across multiple platforms – Go, Python, Julia, R – and provides user-friendly binaries compatible with Windows, macOS, and Linux. The tool integrates with leading large language models (LLMs) such as OpenAI’s GPT series, Google’s Gemini, Cohere’s Command, and Anthropic’s Claude, ensuring comprehensive and up-to-date literature analysis. prismAId facilitates systematic reviews, enabling researchers to conduct thorough, fast, and reproducible analyses, thereby advancing open science initiatives.

2025

Evolution of atmospheric methane under the global methane pledge: insights from an Earth system model

Im, Ulas; Tsigaridis, Kostas; Bauer, Susanne; Shindell, Drew; Olivié, Dirk; Wilson, Simon; Sørensen, Lise Lotte; Langen, Peter; Eckhardt, Sabine; Hoglund-Isaksson, Lena; Klimont, Zig; Bruhwiler, Lori

2025

KI kan være nøkkelen til å stoppe klima- og naturkrisen

Molander, Pål; Myklebust, Norunn Sæther; Nordlander, Tomas

2025

Balancing agricultural development and biodiversity conservation with rapid urbanization: Insights from multiscale bird diversity in rural landscapes

Chen, Yixue; Liu, Yuhong; Zhang, Xuanbo; Liu, Jiayuan; Chen, Min; Chen, Cheng; Mustafa, Ghulam; An, Shuqing; Liu, Hai Ying

Elsevier

2025

CompSafeNano project: NanoInformatics approaches for safe-by-design nanomaterials

Zouraris, Dimitrios; Mavrogiorgis, Angelos; Tsoumanis, Andreas; Saarimaki, Laura Aliisa; del Giudice, Giusy; Federico, Antonio; Serra, Angela; Greco, Dario; Rouse, Ian; Subbotina, Julia; Lobaskin, Vladimir; Jagiello, Karolina; Ciura, Krzesimir; Judzinska, Beata; Mikolajczyk, Alicja; Sosnowska, Anita; Puzyn, Tomasz; Gulumian, Mary; Wepener, Victor; Martinez, Diego S. T.; Petry, Romana; El Yamani, Naouale; Rundén-Pran, Elise; Murugadoss, Sivakumar; Shaposhnikov, Sergey; Minadakis, Vasileios; Tsiros, Periklis; Sarimveis, Harry; Longhin, Eleonora Marta; Sengupta, Tanima; Olsen, Ann-Karin Hardie; Skakalova, Viera; Hutar, Peter; Dusinska, Maria; Papadiamantis, Anastasios; Gheorghe, L. Cristiana; Reilly, Katie; Brun, Emilie; Ullah, Sami; Cambier, Sebastien; Serchi, Tommaso; Tamm, Kaido; Lorusso, Candida; Dondero, Francesco; Melagrakis, Evangelos; Fraz, Muhammad Moazam; Melagraki, Georgia; Lynch, Iseult; Afantitis, Antreas

The CompSafeNano project, a Research and Innovation Staff Exchange (RISE) project funded under the European Union's Horizon 2020 program, aims to advance the safety and innovation potential of nanomaterials (NMs) by integrating cutting-edge nanoinformatics, computational modelling, and predictive toxicology to enable design of safer NMs at the earliest stage of materials development. The project leverages Safe-by-Design (SbD) principles to ensure the development of inherently safer NMs, enhancing both regulatory compliance and international collaboration. By building on established nanoinformatics frameworks, such as those developed in the H2020-funded projects NanoSolveIT and NanoCommons, CompSafeNano addresses critical challenges in nanosafety through development and integration of innovative methodologies, including advanced in vitro models, in silico approaches including machine learning (ML) and artificial intelligence (AI)-driven predictive models and 1st-principles computational modelling of NMs properties, interactions and effects on living systems. Significant progress has been made in generating atomistic and quantum-mechanical descriptors for various NMs, evaluating their interactions with biological systems (from small molecules or metabolites, to proteins, cells, organisms, animals, humans and ecosystems), and in developing predictive models for NMs risk assessment. The CompSafeNano project has also focused on implementing and further standardising data reporting templates and enhancing data management practices, ensuring adherence to the FAIR (Findable, Accessible, Interoperable, Reusable) data principles. Despite challenges, such as limited regulatory acceptance of New Approach Methodologies (NAMs) currently, which has implications for predictive nanosafety assessment, CompSafeNano has successfully developed tools and models that are integral to the safety evaluation of NMs, and that enable the extensive datasets on NMs safety to be utilised for the re-design of NMs that are inherently safer, including through prediction of the acquired biomolecule coronas which provide the biological or environmental identities to NMs, promoting their sustainable use in diverse applications. Future efforts will concentrate on further refining these models, expanding the NanoPharos Database, and working with regulatory stakeholders thereby fostering the widespread adoption of SbD practices across the nanotechnology sector. CompSafeNano's integrative approach, multidisciplinary collaboration and extensive stakeholder engagement, position the project as a critical driver of innovation in NMs SbD methodologies and in the development and implementation of computational nanosafety.

Elsevier

2025

Exploring the Chemical Complexity and Sources of Airborne Fine Particulate Matter in East Asia by Nontarget Analysis and Multivariate Modeling

Froment, Jean Francois; Park, Jong-Uk; Kim, Sang-Woo; Cho, Yoonjin; Choi, Soobin; Seo, Young Hun; Baik, Seungyun; Lee, Ji Eun; Martin, Jonathan W.

The complex and dynamic nature of airborne fine particulate matter (PM2.5) has hindered understanding of its chemical composition, sources, and toxic effects. In the first steps of a larger study, here, we aimed to elucidate relationships between source regions, ambient conditions, and the chemical composition in water extracts of PM2.5 samples (n = 85) collected over 16 months at an observatory in the Yellow Sea. In each extract, we quantified elements and major ions and profiled the complex mixtures of organic compounds by nontarget mass spectrometry. More than 50,000 nontarget features were detected, and by consensus of in silico tools, we assigned a molecular formula to 13,907 features. Oxygenated compounds were most prominent, followed by mixed nitrogenated/oxygenated compounds, organic sulfates, and sulfonates. Spectral matching enabled identification or structural annotation of 43 substances, and a workflow involving SIRIUS and MS-DIAL software enabled annotation of 74 unknown per- and polyfluoroalkyl substances with primary source regions in China and the Korean Peninsula. Multivariate modeling revealed seasonal variations in chemistry, attributable to the combination of warmer temperatures and maritime source regions in summer and to cooler temperatures and source regions of China in winter.

2025

Sovereignty-Aware Intrusion Detection on Streaming Data: Automatic Machine Learning Pipeline and Semantic Reasoning

Chatterjee, Ayan; Gopalakrishnan, Sundar; Mondal, Ayan

Intrusion Detection Systems (IDS) are critical in safeguarding network infrastructures against malicious attacks. Traditional IDSs often struggle with knowledge representation, real-time detection, and accuracy, especially when dealing with high-throughput data. This paper proposes a novel IDS framework that leverages machine learning models, streaming data, and semantic knowledge representation to enhance intrusion detection accuracy and scalability. Additionally, the study incorporates the concept of Digital Sovereignty, ensuring that data control, security, and privacy are maintained according to national and regional regulations. The proposed system integrates Apache Kafka for real-time data processing, an automatic machine learning pipeline (e.g., Tree-based Pipeline Optimization Tool (TPOT)) for classifying network traffic, and OWL-based semantic reasoning for advanced threat detection. The proposed system, evaluated on NSL-KDD and CIC-IDS-2017 datasets, demonstrated qualitative outcomes such as local compliance, reduced data storage needs due to real-time processing, and improved adaptability to local data laws. Experimental results reveal significant improvements in detection accuracy, processing efficiency, and Sovereignty alignment.

Elsevier

2025

Sb-PiPLU: A Novel Parametric Activation Function for Deep Learning

Mondal, Ayan; Shrivastava, Vimal K.; Chatterjee, Ayan; Ramachandra, Raghavendra

The choice of activation function—particularly non-linear ones—plays a vital role in enhancing the classification performance of deep neural networks. In recent years, a variety of non-linear activation functions have been proposed. However, many of these suffer from drawbacks that limit the effectiveness of deep learning models. Common issues include the dying neuron problem, bias shift, gradient explosion, and vanishing gradients. To address these challenges, we introduce a new activation function: Softsign-based Piecewise Parametric Linear Unit (Sb-PiPLU). This function offers improved non-linear approximation capabilities for neural networks. Its piecewise, parametric design allows for greater adaptability and flexibility, which in turn enhances overall model performance. We evaluated Sb-PiPLU through a series of image classification experiments across various Convolutional Neural Network (CNN) architectures. Additionally, we assessed its memory usage and computational cost, demonstrating that Sb-PiPLU is both stable and efficient in practical applications. Our experimental results show that Sb-PiPLU consistently outperforms conventional activation functions in both classification accuracy and computational efficiency. It achieved higher accuracy on multiple benchmark datasets, including CIFAR-10, CINIC-10, MWD, Brain Tumor, and SVHN, surpassing widely-used functions such as ReLU and Tanh. Due to its flexibility and robustness, Sb-PiPLU is particularly well-suited for complex image classification tasks.

IEEE (Institute of Electrical and Electronics Engineers)

2025

Routine PFAS Testing of Surface Water Samples Using TOP Assay and ACQUITY™ QDa™ II Mass Detector

Foody, Henry; Cojocariu, Cristian; Nikiforov, Vladimir; McCullagh, Michael Andrew; Gould, David

2025

2025

Slik blir sommerværet i Europa, ifølge det lange langtidsvarselet

Solbakken, Christine Forsetlund

Norges forskningsråd

2025

Methane in Svalbard (SvalGaSess)

Hodson, Andrew; Kleber, Gabrielle Emma; Platt, Stephen Matthew; Kalenitchenko, Dimitri Stanislas Desire; Hengsens, Geert; Irvine-Fynn, Tristram; Senger, Kim; Tveit, Alexander Tøsdal; Øvreås, Lise; ten Hietbrink, Sophie; Hollander, Jamie; Ammerlaan, Fenna; Damm, Ellen; Römer, Miriam; Fransson, Agneta; Chierici, Melissa; Delpech, Lisa-Marie; Pirk, Norbert; Sen, Arunima; Redecker, Kelly

Methane is a powerful greenhouse gas whose emission into the atmosphere from Arctic environments is increasing in response to climate change. At present, the increase in atmospheric methane concentrations recorded at Ny-Ålesund and globally threatens the Paris Agreement goal of limiting warming to 2 degrees, preferably 1.5 degrees, by increasing the need for abatements. However, our understanding of the physical, chemical and biological processes that control methane in the Arctic are strongly biased towards just a few lowland sites that are not at all like Svalbard and other similar mountainous, ice-covered regions. Svalbard can therefore be used to better understand these locations. Svalbard’s methane stocks include vast reserves of ancient, geogenic methane trapped beneath glaciers and permafrost. This methane supplements the younger, microbial methane mostly produced in waterlogged soils and wetlands during the summer and early winter. Knowledge about the production, removal and migration of these two methane sources in Svalbard’s complex landscapes and coastal environments has grown rapidly in recent years. However, the need to exploit this knowledge to produce reliable estimates of present-day and future emissions of methane from across the Svalbard landscape is now paramount. This is because understanding these quantities is absolutely necessary when we seek to define how society must adjust in order to better manage greenhouse gases in Earth’s atmosphere

2025

Ny forskingsrapport om klatrehallar: Luftforureining på nivå med motorvegar

Hak, Claudia (interview subject); Kleiven, Maria Fimreite (journalist)

2025

The influence of aerosol particles on fog microphysics during the Fog and Aerosol InteRAction Research Italy (FAIRARI) campaign 2021/22

Neuberger, Almuth; Ranjan, Rahul; Ding, Hao; Decesari, Stefano; Eckhardt, Sabine; Ekman, Annica M. L.; Evangeliou, Nikolaos; Haberstock, Lea; Mattsson, Fredrik; Mohr, Claudia; Paglione, Marco; Riipinen, Ilona; Rinaldi, Matteo; Zieger, Paul

2025

Comparison of Atmospheric Microplastic in remote and urban locations in Norway; occurrence, composition and sources

Herzke, Dorte; Schmidt, Natascha; Schulze, Dorothea; Eckhardt, Sabine; Evangeliou, Nikolaos

2025

UV-degradation is a key driver of the fate and impacts of marine plastics. How can laboratory experiments be designed to effectively inform risk assessment?

Hernandez, Laura M.; Howarth-Forster, Lucy; Sørensen, Lisbet; Booth, Andrew Michael; Vidal, Alice; Tufenkji, Nathalie; Sempéré, Richard; Schmidt, Natascha

Marine plastic litter is subject to different abiotic and biotic forces that lead to its degradation, the main driver being UV-induced photodegradation. Since UV-exposure leads to both physical and chemical degradation of plastic, leading to a release of micro- and nanoplastics as well as leaching of chemicals and degradation products – it is expected to have radical impacts on plastics fate and effects in the marine environment. The number of laboratory studies investigating the mechanisms of plastic UV-degradation in seawater has increased significantly in the past 10 years, but are the exposures designed in a manner that allow observations to be extrapolated to environmental fate? Most studies to date focus on quantifying plastic fragmentation and surface changes, but is this relevant for impact assessments? Here, we provide a review of the current scientific literature on UV-degradation of plastic under marine conditions. Plastic fragmentation processes and surface changes as well as implications of UV-degradation of plastics on additive leaching and the toxicity of UV-weathered versus non-weathered plastics are highlighted. Furthermore, experimental set-ups are critically inspected and recommendations for future studies are issued.

Elsevier

2025

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