期刊名称 | Stochastic Environmental Research and Risk Assessment STOCH ENV RES RISK A |
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期刊ISSN | 1436-3240 |
期刊官方网站 | https://www.springer.com/477 |
是否OA | No |
出版商 | Springer New York |
出版周期 | Bimonthly |
文章处理费 | 登录后查看 |
始发年份 | 1987 |
年文章数 | 268 |
影响因子 | 3.9(2023) scijournal影响因子 greensci影响因子 |
大类学科 | 小类学科 | Top | 综述 |
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环境科学与生态学3区 | ENGINEERING, CIVIL 工程:土木2区 | 否 | 否 |
ENGINEERING, ENVIRONMENTAL 工程:环境4区 | |||
ENVIRONMENTAL SCIENCES 环境科学3区 | |||
STATISTICS & PROBABILITY 统计学与概率论2区 | |||
WATER RESOURCES 水资源2区 |
CiteScore排名 | CiteScore | SJR | SNIP | ||
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学科 | 排名 | 百分位 | 7.1 | 0.879 | 1.118 |
Environmental Science Water Science and Technology |
37/261 | 86% |
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Engineering Safety, Risk, Reliability and Quality |
34/207 | 83% |
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Environmental Science General Environmental Science |
50/233 | 78% |
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Environmental Science Environmental Engineering |
51/197 | 74% |
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Environmental Science Environmental Chemistry |
50/147 | 66% |
自引率 | 7.7% |
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H-index | 57 |
SCI收录状况 |
Science Citation Index Expanded |
官方审稿时间 | 登录后查看 |
网友分享审稿时间 | 数据统计中,敬请期待。 |
接受率 | 登录后查看 |
PubMed Central (PMC) | http://www.ncbi.nlm.nih.gov/nlmcatalog?term=1436-3240%5BISSN%5D |
期刊投稿网址 | https://submission.nature.com/new-submission/477/3 |
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收稿范围 | Stochastic Environmental Research and Risk Assessment (SERRA) publishes research papers, reviews and technical notes on stochastic (i.e., probabilistic and statistical) approaches to environmental sciences and engineering, including the description, modelling and prediction of the spatiotemporal evolution of natural and engineered systems under conditions of uncertainty, risk assessment, interactions of terrestrial and atmospheric environments with people and the ecosystem, and environmental health. Its core aim is to bring together research in various fields of environmental, planetary and health sciences and engineering, providing an interdisciplinary forum for the exchange of ideas, for communicating on issues that cut across disciplinary barriers, and for the dissemination of novel stochastic techniques used in various fields. Contributions may cover measurement, instrumentation and probabilistic / statistical modelling approaches in various fields of science and engineering, including (but not limited to): Surface and subsurface hydrology, including stochastic hydrology and hydraulics, scale invariant phenomena, fractals and multifractals. Climate science, meteorology and hydrometeorology, including hydrologic/hydroclimatic variability, hydrologic scaling, and climate change impact assessment. Natural hazards, environmental risk modelling and assessment, including statistical estimation and modelling of hydrologic and hydroclimatic extremes (i.e., precipitation, droughts and floods), spatiotemporal modelling of the availability of surface-water and groundwater resources, hydroclimatic and environmental risk quantification, catastrophe risk and management of insurance and re-insurance. Public health and environmental epidemiology, including statistical epidemiology, spatiotemporal spread of infectious diseases, as well as human exposure assessment. Stochastic approaches (probabilistic and statistical) to modelling the Water, Food, Energy and Health nexus, including socio-economic concepts, complex inter-linkages and compound risk resulting from hydroclimatic conditions, water quality, food security and energy production, as well as population health. Stochastic approaches to modelling and assessment of the efficiency and sustainability of green infrastructure concepts, including smart solutions and modelling approaches for water usage, reduction of water losses, agricultural irrigation, environmental and ecological health monitoring, and associated modelling approaches. Compound risk modelling and assessment for the design of critical infrastructure under uncertainty (e.g., observation networks, water supply and sewerage works, flood retention structures, etc.), including modelling tools for organizing integrated solutions for water supply, precision agriculture, ecosystem health monitoring, and characterization of environmental conditions. Probabilistic assessment of the sustainability of the natural environment, including soil contamination and remediation, air pollution monitoring and control, as well as environmental health effects. Enviroinformatics and hydroinformatics, including application of data-driven approaches as well as machine and deep learning techniques for estimation, prediction and control of natural and engineered systems. Geostatistics, spatial and spatiotemporal statistics and analyses of environmental (geophysical and biophysical) processes, including cross-scale integration of Earth system spatiotemporal data (ground level and airborne (e.g. UAV) observations, remote sensing products, model simulation outputs, etc.), emerging patterns and scalable properties of environmental processes, as well as statistical downscaling, interpolation and forecasting techniques for environmental variables. |
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投稿指南 | https://link.springer.com/journal/477/submission-guidelines |
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