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La relazione di cura: un punto di vista sociologico
Alessandro Addorisio

Alessandro Addorisio

February 22, 2024
E' stata svolta un'indagine sulla relazione di cura fra il medico di Medicina Generale ed i suoi assistiti per fornire ulteriori dati a possibili attori interessati, che siano medici, amministratori pubblici, dirigenti sanitari o cittadini. Da questi dati emerge che gran parte dei medici interpellati ritiene elementi fondamentali della relazione di cura, la fiducia reciproca e la comunicazione, assieme alla disponibilità all'ascolto e alla comprensione dei bisogni dei pazienti. Tutto ciò è confermato dall'indagine sugli assistiti, i quali aggiungono all'importanza dell'ascolto la chiarezza nelle spiegazioni e indicazioni. Partendo da questi esiti, abbiamo dato luogo ad una riflessione sul ruolo delle norme sociali nella relazione di cura, mettendo in luce l'ambivalenza che spesso la caratterizza. Per evitare che la relazione fra medico e paziente venga del tutto spersonalizzata con l'avvento in sanità di strumenti tecnologici come l'I.A., è opportuno che i medici sappiano mantenere tale relazione nel contesto sociale, peculiare degli esseri umani, gli unici in grado di comprenderne i risvolti culturali, valoriali, morali ed etici.
Research Performance of IIT Goa and IIT Dharwad: A Scientometric View
Kush Sibbu

Kush Sibbu

and 1 more

February 22, 2024
This paper deals with the scientometric analysis of the research performance of two Indian Institute of Technology viz. IIT Goa and IIT Dharwad. The bibliographic data of both the IITs during 2017-2022 was extracted from the Scopus database and used for further analysis. Various scientometric indicators have been computed to get an in-depth insight of the research performance of these IITs. The results of research performance showed a promising trend at both the IITs. Moreover, both the IITs showed collaborative trends in publications. Subudhi S. and Prasanna S.R.M were the most productive authors at IIT Goa and IIT Dharwad respectively. Journal articles is the most favoured bibliographic form of the authors at both the IITs.
Homogeneous linear intuitionistic fuzzy ⊕differential equations with constant coeffic...
Enes Yavuz

Enes Yavuz

February 07, 2024
A document by Enes Yavuz. Click on the document to view its contents.
Revealing dynamic macroecological patterns to understand biodiversity shifts in the A...
Pierre Gaüzère

Pierre Gaüzère

and 7 more

February 07, 2024
SAR and DDS are interlinked and governed by three proximate components acting as levers driving the dynamics of macroecological patterns 15,16 > the total numbers of individuals in communities > the distribution of abundance among species > the spatial aggregation of species and individuals
Application of Non-Coded Artificial Intelligence in Imaging of Skin Carcinoma
Ansh Kumar

Ansh Kumar

February 07, 2024
Consolidating Artificial Intelligence into medical image analysis has shown clear results in enhancing image analysis and interpretation. This research paper aims to explore the application of Apple's 'CreateML' in the diagnostic accuracy and efficiency of imaging of Squamous Cell Carcinoma. I will delve into using a non-coding approach in improving image analysis for SCC and discuss the ethical implications of implementing these technologies in clinical practice.
Explainable Attention Pruning: A Meta-learning-based Approach
Praboda Rajapaksha

Praboda Rajapaksha

and 1 more

February 07, 2024
Pruning, as a technique to reduce the complexity and size of Transformer-based models, has gained significant attention in recent years. While various models have been successfully pruned, pruning BERT poses unique challenges due to their fine-grained structure and overparameterization. However, by carefully considering these factors, it is possible to prune BERT without significantly degrading its pre-trained loss. In this paper, we propose a Meta-learning-based pruning approach that can adaptively identify and eliminate insignificant attention weights. The performance of the proposed model is compared with several baseline models, as well as the default fine-tuned BERT model. The baseline pruning strategies employed low-level pruning techniques, targeting the removal of only 20% of the connections. The experimental results show that the proposed model outperforms the other baseline models, in terms of lower inference latency, higher MCC and lower loss. However, there is no significant improvement observed in terms of average FLOPs (floating-point operations per second). Furthermore, we conduct a comparative evaluation of the baseline models and our proposed model using two explainable (XAI) approaches. While other models allocate reasonable attention to less significant words for sentiment classification, our model assigns higher probabilities to the most significant sentimental words. Impact Statement-Efficient handling of inference time in pre-trained language models (PLMs) and the preservation of performance while reducing their size are important research considerations. Model compression techniques, such as pruning, are recognized as effective approaches for achieving memoryefficient, energy-efficient, computation-efficient, and storageefficient PLMs. Pruning addresses the need to create compact models without compromising their overall effectiveness. Existing pruning methods often rely on task and domain-specific approaches and therefore, it is important to explore a domainindependent pruning approach. We propose a new pruning strategy called Meta-Controller-based Attention Pruning (MCAP) for the BERT model targeting single-sentence prediction tasks. MCAP optimization strategy eliminates insignificant attention in the BERT by calculating their importance scores. The selfsupervised pruner in MCAP uses a meta-learning approach to identify and eliminate these insignificant attentions before finetuning. Our study compares MCAP with baseline models (both structured and unstructured pruning) and compared it with inference latency, MCC, and loss parameters. The results show that MCAP outperforms the baseline models in terms of inference latency, MCC, and loss. Explainable AI (XAI) techniques are used to interpret the model's decisions and predictions. MCAP focuses on significant words in sentiment classification, ensuring important model parameters are retained without a significant impact on output.
Interspecific interactions influence bird population responses to global changes
Pierre Gaüzère
Christophe Botella

Pierre Gaüzère

and 4 more

February 07, 2024
A document by Pierre Gaüzère. Click on the document to view its contents.
ScholarOne - How to better motivate participants: Digital incentives in digital platf...
Xinbo Sun
Zhiwei He

Xinbo Sun

and 1 more

April 09, 2024
This study aims to deepen the understanding of digital incentives. We employed a case study approach to examine a Chinese firm. Based on coding and analyzing rich primary and secondary data, we explore the characteristics and effects of digital incentives. The findings show that digital incentives based on digital technologies such as blockchain include both incentive digitalization and data incentivization. It can effectively motivate participants to collaborate to improve innovation performance. Meanwhile, the information transparency mechanism and trust mechanism embedded in digital incentive contracts can effectively inhibit participants' opportunistic behaviors, which help to cope with the incompleteness of contracts and improve the effectiveness of digital incentives. The study also reveals the dynamic evolution model in the execution of digital incentive contracts. The findings suggest that this dynamic model is conducive to the adaptive adjustment of incentive resource portfolio, and coordinates the interests and expectations of participants, thus achieving the sustainability of digital incentives. Important practical implications suggest that digital platforms should focus on the role of digital technologies such as blockchain to drive the digital transformation of organizational incentives.
Process for implementing a quality management system (QMS) adapted to architectural p...
rochdy zoghlami

rochdy zoghlami

February 07, 2024
This article explores the significance of implementing quality management systems (QMS) in architectural practices, focusing on the ISO 9001 standard and alternative methodologies like "Planer am Bau.", the article delves into the benefits and challenges of adopting ISO 9001 and provides insights into setting up a QMS tailored to the unique needs of architectural firms in Tunisia.Keywords: ISO 9001, quality management systems, architectural practices, Planer am Bau, TÜV certification, process optimization, international standards.
Geospatial Realtime Weather Patterns from   Synchronous Data Repository        
Solomon Ubani

Solomon Ubani

February 04, 2024
American Society of Plant Biologists, 15501 Monona Drive, Rockville, MD 20855-2768 USACorrespondence Email: soloredzip517@gmail.comIn this research, the aim was to determine with high accuracy the weather patterns and directions basedon synchonosity of github platforms. The measurement of atmospheric conditions often required a discreteimage extraction from weather beacons. This would have to be taken at smaller intervals and would requirealot of computing performance. The method in this research involved using cli similar to an api. Thesewere continuous in nature rather than discrete. The server would host the cli and integrate with the beacons.Therefore could store a correlated imaging analysis. A slider mechanism was used for the vortex of turnsand points. The results showed a near similar prediction of weather patterns. This concluded a storage virtually instead of real-time basis. Could be used to predict the changes in weather precisely and with a high accuracy of directions.Keywords : CLI, Discrete, Continous, Weather, Virtual, Real-time
Microseismic Monitoring using Transfer Learning: Example from the Newberry EGS
Zi Xian Leong
Tieyuan Zhu

Zi Xian Leong

and 1 more

February 04, 2024
Enhanced geothermal systems (EGS) are promising for generating clean power by extracting heat energy from injection and extraction of water in geothermal reservoirs. The stimulation process involves hydroshearing which reactivates pre-existing cracks for creating permeability and meanwhile inducing microearthquakes. Locating these microearthquakes provide reliable feedback on the stimulation progress, but it poses a challenging nonlinear inverse problem. Current deep learning methods for locating earthquakes require extensive datasets for training, which is problematic as detected microearthquakes are often limited. To address the scarcity of training data, we propose a transfer learning workflow using probabilistic multilayer perceptron (PMLP) which predicts microearthquake locations from cross-correlation time lags in waveforms. Utilizing a 3D velocity model of Newberry site derived from ambient noise interferometry, we generate numerous synthetic microearthquakes and 3D acoustic waveforms for PMLP training. Accurate synthetic tests prompt us to apply the trained network to the 2012 and 2014 stimulation field waveforms. Predictions on the 2012 stimulation dataset show major microseismic activity at depths of 0.5–1.2 km, correlating with a known casing leakage scenario. In the 2014 dataset, the majority of predictions concentrate at 2.0–2.9 km depths, consistent with results obtained from conventional physics-based inversion, and align with the presence of natural fractures from 2.0–2.7 km. We validate our findings by comparing the synthetic and field picks, demonstrating a satisfactory match for the first arrivals. By combining the benefits of quick inference speeds and accurate location predictions, we demonstrate the feasibility of using transfer learning to locate microseismicity for EGS monitoring.
Trans-crustal geophysical responses beneath the supergiant Timmins-Porcupine orogenic...
Ademola Q Adetunji
Ian J. Ferguson

Ademola Q Adetunji

and 6 more

February 07, 2024
A new 80-site magnetotelluric (MT) survey, integrated with reprocessed seismic reflection profiles, across the supergiant Timmins-Porcupine gold camp of the Abitibi greenstone belt (AGB) was conducted to investigate the architecture of crustal-scale structures. Resistivity sections derived from 3-D MT inversions reveal a major 40 km by 20 km sub-horizontal 500-1000 S conductor north of the Porcupine Destor fault zone at 5–10 km depth. A horizontal component of this conductor, attributed to a deeply buried >2687 Ma graphitic argillaceous unit at the base of Porcupine assemblage, strikes east-west parallel to the Pipestone fault zone. A second steeply-dipping component strikes northwest-southeast parallel to the Buskegau River fault. This conductor correlates spatially with lateral breaks in seismic reflectors and velocity models in the upper, middle, and lower crust, and provides evidence of a crustal-scale suture which also resulted in imbrication of <2698 Ma metasedimentary rocks onto the southern AGB. Enhanced conductivity and spatially complex electrical structure of the crust to the north of the Porcupine Destor fault zone reflects the asymmetric distribution of metasedimentary packages, second- and third-order bounding structures, and gold mineralization. The MT resistivity models also resolve an upper crustal conductor located 10 km south of the surface trace of the Porcupine Destor fault zone, providing support for a south-dipping crustal fault. Breaks in seismic reflectors underlying this conductor provide additional evidence of sub-vertical structures extending through the middle crust, postdating post-tectonic collapse or orogen-parallel ductile flow at ∼2660-2590 Ma, and consistent with late strike-slip deformation.
Lake Modeling on Mars for Atmospheric Reconstructions and Simulations (LakeM2ARS): An...
Eleanor Louise Moreland
Sylvia Dee

Eleanor Louise Moreland

and 8 more

February 07, 2024
Geomorphic and stratigraphic studies of Mars prove extensive liquid water flowed and pooled on the surface early in Mars’ history. Martian paleoclimate models, however, have difficulty simulating climate conditions warm enough to maintain liquid water on early Mars. Reconciling the geologic record and paleoclimatic simulations of Mars is critical to understanding Mars’ early history, atmospheric conditions, and paleoclimate. This study uses an adapted lake energy balance model to investigate the connections between Martian geology and climate. The Lake Modeling on Mars for Atmospheric Reconstructions and Simulations (LakeM2ARS) model is modified from an earth-based lake model to function in Martian conditions. We use LakeM2ARS to investigate conditions necessary to simulate a lake in Gale crater. Working at a localized scale, we combine climate input from the Mars Weather Research & Forecasting general circulation model with geologic constraints from Curiosity rover observations; in doing so, we identify potential climatic conditions required to maintain a seasonal liquid lake. We successfully model lakes in Gale crater while varying initial climate conditions, lake size, and water salinity. Our results show that ice-free conditions in a plausible Gale crater lake are best supported when the lake is small, ~10 m deep, and air temperatures reach or are just above freezing seasonally during a Martian year. Continued use and iteration of LakeM2ARS will strengthen connections between Mars’ paleoclimate and geology to inform climate models and enhance our understanding of conditions on early Mars.
Exploring Biodiversity with iNaturalist     
Issac Veshal

Issac Veshal

March 05, 2024
Overview The lesson plan "Exploring Biodiversity with iNaturalist" introduces fifth-grade students to biodiversity via direct contact with their local environment, using the iNaturalist app. Students will document numerous species, engage in citizen science projects, and gain an understanding of ecosystems. The lesson stresses hands-on learning, digital documentation, and critical analysis of ecological linkages, with the goal of cultivating a profound respect for biodiversity and life's interconnection. Vocabulary • Biodiversity: The variety of life in the world or in a particular habitat or ecosystem. • Species: A group of living organisms consisting of similar individuals capable of exchanging genes or interbreeding. • Ecosystem: A biological community of interacting organisms and their physical environment. • Observation: The action or process of observing something or someone carefully or in order to gain information. Next Generation Science Standards (NGSS) • LS2.A: Interdependent Relationships in Ecosystems • LS4.D: Biodiversity and Humans • PS1-6: Scientific Inquiry Skills Required Materials •Desktop • Notebooks and pencils for taking field notes. • Camera Before the lesson Instruct children on how to use electronics safely outside and how to engage respectfully with nature. Make a brief list of local sites ideal for biodiversity monitoring (e.g., playground, neighboring park). Lesson Procedure: Part 1: Introduction to Biodiversity. Introduce pupils to the notion of biodiversity and its relevance. Activity: • Engage kids by asking, "Why do you think different plants and animals live in different places?" • Discuss terminology such as "biodiversity," "species," "ecosystem," and "observation." • Explain how biodiversity benefits both ecological health and human well-being. • Showcase the iNaturalist app's mission and worldwide influence on biodiversity. Part 2: Getting Familiar with iNaturalist Teach students how to use the iNaturalist app to document observations.  Activity: • Demonstrate downloading and setting up the iNaturalist app on a device. • Show how to take a photo and upload it as an observation. • Explain how to use the app's identification features to help categorize observations. Part 3: Planning the Field Observation Prepare students for the field observation activity. Activity: • Discuss safety and respect for nature while conducting field observations. • Review the list of local areas suitable for biodiversity observation. • Group students and assign each group specific organisms or areas to focus on. Part 4:Field Observation with iNaturalist Objective: Conduct field observations to document local biodiversity. Activity: • Travel to the observation area and allow students to explore. • Guide students in making detailed observations and taking photos with iNaturalist. • Encourage students to take notes on their observations in their notebooks. Part 5: Comparative Analysis and Discussion Analyze observations and discuss findings. Activity: • Back in the classroom, have students share their observations with the class. • Facilitate a discussion comparing the biodiversity found in different areas or among different species. • Highlight interesting or unexpected findings and discuss their ecological significance. Part 6: STEM Integration Activity • Students design an ideal habitat for one of the species observed. • Analyze and present data on species count or diversity using graphs or charts. Activity: Students work in groups to draft their habitat designs or analyze their data. Each group presents their design or findings to the class. Part 7: Reflection and Extension Reflect on the activity and discuss further applications. Activity: • Discuss how biodiversity impacts ecosystem resilience and human life. • Encourage students to think about how they can contribute to biodiversity conservation. • Introduce extension activities, like monitoring a specific area over time or participating in a BioBlitz. Assessment • Utilize concept maps for connecting observations to ecosystem roles, emphasizing species' interdependencies. • Assess students' iNaturalist proficiency through reflective exit slips, focusing on the app's utility in species identification. • Use rubrics to evaluate habitat design projects, considering ecological accuracy, creativity, and practicality. • Implement think-pair-share discussions for analyzing observation data, fostering peer discussion on statistical findings like species diversity.                                                                                References • National Geographic Education. (n.d.). Learning Through Citizen Science. Retrieved from https://www.nationalgeographic.org/education/learning-through-citizen-science/ • National Geographic Education. (n.d.). Analyzing BioBlitz Data. Retrieved from  https://www.nationalgeographic.org/education/learning-through-citizenscience/analyzing-bioblitz-data/ • National Geographic Education. (n.d.). Learning with Species Pages. Retrieved from  https://www.nationalgeographic.org/education/learning-through-citizenscience/learning-with-species-pages/ • National Geographic Education. (n.d.). Activity: Science Connections Using iNaturalist.org. Retrieved from  https://www.nationalgeographic.org/education/learning-through-citizenscience/activity-science-connections-using-inaturalistorg/ • National Geographic Education. (n.d.). Wrap-Up and Make a Plan. Retrieved from  https://www.nationalgeographic.org/education/learning-through-citizen-science/wrapup-and-make-a-plan/ • National Geographic Education. (n.d.). Interdisciplinary Connections. Retrieved from  https://www.nationalgeographic.org/education/learning-through-citizenscience/interdisciplinary-connections/ • National Geographic Education. (n.d.). Next Steps. Retrieved from  https://www.nationalgeographic.org/education/learning-through-citizen-science/nextsteps/  
BITLITE: Light Bit-wise Operative Vector Matrix Multiplication for Low-Resolution Pla...

Vince Tran

and 4 more

February 04, 2024
As machine learning (ML) algorithms, particularly neural networks (NN), expand in popularity and capacity, the quest for more efficient computation methods gains momentum. Memristor crossbar technology emerges as a promising alternative to traditional computing units, aiming to address traditional computing challenges. However, conventional matrixvector multiplication (MVM) methods on these platforms are often plagued by device imperfections and drift. In this work, we introduce an innovative lightweight calculation approach leveraging bit-transformation for MVM, significantly enhancing operation precision and, consequently, the performance of ML algorithms on memristor crossbar platforms. We provide details of the core algorithm and its extensions, furnish digital validation, and simulate its efficacy using an autoencoder (AE) neural network with an extended VTEAM model. Our tests demonstrate an average reconstruction precision improvement of approximately 53.5%. This work's applicability extends beyond NNs, offering a foundational method for conducting more precise analog MVM operations.
Dynamic interaction of the corticospinal tract with the reticulospinal tract across v...
Dongwon Kim

Dongwon Kim

and 2 more

February 19, 2024
To date, the dynamic mechanisms by which the corticospinal tract (CST) and its alternative tract (i.e. the reticulospinal tract (RST)) interact and evolve after the CST has been damaged by stroke has not been fully explored. To gain insight into the mechanisms, we construct a computational model to reproduce several critical features of subscore distributions of the Fugl-Meyer assessment (FMA) for the upper extremity following stroke. Subscores of the FMA present clues about the working neural substrates affected by stroke, potentially distinguishing preferential uses of the CST and RST. A stochastic gradient descent method is employed to emulate biologically plausible phenomena, including activity- or use-dependent plasticity and the preferred use of more strongly connected neural circuits. The model replicates several segments of empirical evidence presented by imaging and neurophysiological studies. One of the main predictions is that substantial CST recovery is achievable unless the initial degree of residual corticospinal neurons following stroke falls below a certain level. Another prediction is that while the functional capabilities of the CST and RST increase in a harmonic way post-stroke, the degrees of functional capability those tracts reach are in a competitive relationship. We confirm that the neural system prioritizes optimizing a more strongly connected motor tract and uses the other tract in a supplementary manner to enhance overall motor capability. This model presents insights into efficient therapy designs.
ScholarOne - Reconciling the tit-for-tat Sanction Regimes between US and China
Chuanman You

Chuanman You

April 09, 2024
A document by Chuanman You. Click on the document to view its contents.
ReAGent: A Model-agnostic Feature Attribution Method for Generative Language Models
Zhixue Zhao

Zhixue Zhao

and 1 more

February 05, 2024
Feature attribution methods (FAs), such as gradients and attention, are widely employed approaches to derive the importance of all input features to the model predictions. Existing work in natural language processing has mostly focused on developing and testing FAs for encoder-only language models (LMs) in classification tasks. However, it is unknown if it is faithful to use these FAs for decoder-only models on text generation, due to the inherent differences between model architectures and task settings respectively. Moreover, previous work has demonstrated that there is no 'one-wins-all' FA across models and tasks. This makes the selection of a FA computationally expensive for large LMs since input importance derivation often requires multiple forward and backward passes including gradient computations that might be prohibitive even with access to large compute. To address these issues, we present a model-agnostic FA for generative LMs called Recursive Attribution Generator (ReAGent). Our method updates the token importance distribution in a recursive manner. For each update, we compute the difference in the probability distribution over the vocabulary for predicting the next token between using the original input and using a modified version where a part of the input is replaced with RoBERTa predictions. Our intuition is that replacing an important token in the context should have resulted in a larger change in the model's confidence in predicting the token than replacing an unimportant token. Our method can be universally applied to any generative LM without accessing internal model weights or additional training and fine-tuning, as most other FAs require. We extensively compare the faithfulness of ReAGent with seven popular FAs across six decoder-only LMs of various sizes. The results show that our method consistently provides more faithful token importance distributions. Our code: https://github.com/casszhao/ReAGent
Urban climate infrastructures for biodiversity (and people): urban planning ambitions...
Hélène Audusseau

Hélène Audusseau

and 3 more

February 04, 2024
A document by Hélène Audusseau. Click on the document to view its contents.
Acharya J. C. Bose as Pioneer for Some Modern Phenomena and Devices in Electronics an...
PRASANTA KUMAR BASU

Prasanta Kumar Basu

February 04, 2024
Sir J. C. Bose was the first to demonstrate wireless transmission with his indigenous set up. His patent for galena detector and his reports for a few microwave components are well recognized. In this paper, a few of his experiments, somewhat less discussed but recognized by experts as the first, will be listed and described. These include his detector as first IR detector, first experiment on light tunneling, jute polarizer as first chiral metamaterial, hysteresis in I-V curve of coherer as first signature of memristor action and a polarizer having alternate layers of paper and tin foil as the first structures for both the photonic band gap and the superlattice. Relevance of his work to devices in current electronics, photonics and information technology are pointed out. Comments by experts in the areas are also included.
Geodetic Evidence for Distributed Shear Below the Brittle Crust of the Walker Lane, W...
Nina M Miller
Corné Kreemer

Nina M Miller

and 3 more

February 04, 2024
A document by Nina M Miller. Click on the document to view its contents.
On the Importance of the Kelvin-Helmholtz Instability on Magnetospheric and Solar Win...
Katariina Nykyri

Katariina Nykyri

July 31, 2024
The secondary processes driven by the velocity shear driven Kelvin-Helmholtz Instability (KHI) in the magnetized plasmas have been shown to be important in producing plasma transport and heating from the shocked solar wind into the Earth’s magnetosphere (MSP). The plasma transport into the MSP due to KHI has been shown to be strongest during northward interplanetary magnetic field (IMF) via KHI driven mid-latitude reconnection process. In a recent article, Li et al., 2023 show Magnetosphere Multi-Scale (MMS) spacecraft observations of multiple, Alfvenic reconnection jets during southward IMF at the dawn-side MSP flank. The quasi-periodic oscillations in plasma parameters and compressed, ion-scale current sheets were strongly indicative of the MMS crossing regions of MSP-like and magnetosheath (MSH)-like plasma within Kelvin-Helmholtz (KH) waves. In this brief commentary, the importance of this discovery for magnetospheric and solar wind dynamics is discussed.
Multiscale Learnable Physical Modeling and Data Assimilation Framework: Application t...
Ngo Nghi Truyen Huynh
Pierre-André Garambois

Ngo Nghi Truyen Huynh

and 5 more

March 14, 2024
To advance the discovery of scale-relevant hydrological laws while better exploiting massive multi-source data, merging machine learning into process-based modeling is compelling, as recently demonstrated in lumped hydrological modeling. This article introduces MLPM-PR, a new and powerful framework standing for Multiscale spatially distributed Learnable Physical Modeling and learnable Parameter Regionalization with data assimilation. MLPM-PR crucially builds on a differentiable model that couples (i) two neural networks for processes learning and parameters regionalization, (ii) grid-based conceptual hydrological operators, and (iii) a simple kinematic wave routing. The approach is tested on a challenging flash flood-prone multi-catchment modeling setup at high spatio-temporal resolution (1km, 1h). Discharge prediction performances highlight the accuracy and robustness of MLPM-PR compared to classical approaches in both spatial and temporal validation. The physical interpretability of spatially distributed parameters and internal states shows the nuanced behavior of the hybrid model and its adaptability to diverse hydrological responses.
Radiative forcing from halogen reservoir and halocarbon breakdown products
Gillian Thornhill
Lucy Smith

Gillian Thornhill

and 2 more

February 04, 2024
The direct radiative forcing (RF) from halocarbons is reasonably well characterised. However, the forcing due to polyatomic halogen reservoir and halocarbon breakdown products has not previously been quantified and it is important to assess the size of this contribution. Four gases, ClONO2, COCl2, COF2 and COClF, are considered; their stratospheric abundances mostly originate from the breakdown of chlorofluorocarbons, hydrochlorofluorocarbons and CCl4. They have significant mid-infrared absorption bands and peak stratospheric mole fractions ranging from around 20 ppt to over 1 ppb, which are large compared to typical abundances of many emitted halocarbons. Using satellite observations of stratospheric abundance, observed infrared spectra, and a narrow-band radiation code, the stratosphere-adjusted RF (SARF) is computed. The global-annual mean SARF is estimated to be ≈7 mW m-2 based on measured abundances in the period 2004-2019, with ClONO2 contributing about 50%. Only 8 individual halocarbon gases cause a significantly greater forcing. This forcing is then approximately attributed to their source gases; for most, it modestly enhances (by 1-3%) both their direct RF and their global warming potentials. The most significant enhancement (5-15%) is to CCl4, the principal source of stratospheric COCl2 and contributor to ClONO2 abundances; disagreement in recent satellite-based COCl2 retrievals is a significant source of uncertainty. These additional gases enhance the available best estimate of the total forcing due to halocarbon source gases (including e.g. stratospheric ozone depletion) by about 3%; notably, this contribution is the only identified indirect mechanism that increases, rather than decreases, the total halocarbon forcing.
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