Stochastic Environmental Research and Risk Assessment View Homepage


Ontology type: schema:Periodical     


Journal Info

START YEAR

1999

PUBLISHER

Springer Berlin Heidelberg

LANGUAGE

en

HOMEPAGE

https://link.springer.com/journal/477

Recent publications latest 20 shown

  • 2021-11-27 Evaluation and obstacle factors of coordination development of regional water-energy-food-ecology system under green development: a case study of Yangtze River Economic Belt, China
  • 2021-11-26 Interpretation of the Knutson et al. (2020) hurricane projections, the impact on annual maximum wind-speed, and the role of uncertainty
  • 2021-11-26 Mathematical modeling and estimation for next wave of COVID-19 in Poland
  • 2021-11-24 Land subsidence prediction using recurrent neural networks
  • 2021-11-23 Source variation and tempo-spatial characteristics of health risks of heavy metals in surface dust in Beijing, China
  • 2021-11-20 Comparative analysis of two drought indices in the calculation of drought recovery time and implications on drought assessment: East Africa's Lake Victoria Basin
  • 2021-11-19 Modeling eutrophication risks in Tanes reservoir by using a hybrid WOA optimized SVR-relied technique along with feature selection based on the MARS approximation
  • 2021-11-17 Multi-watershed nonpoint source pollution management through coupling Bayesian-based simulation and mechanism-based effluent trading optimization
  • 2021-11-17 Monte Carlo simulations to assess the uncertainty of locating and quantifying CO2 leakage flux from deep geological or anthropogenic sources
  • 2021-11-15 A Statistical Analysis of the Occurrences of Critical Waves and Water Levels for the Management of the Operativity of the MoSE System in the Venice Lagoon
  • 2021-11-15 Artificial intelligence application in drought assessment, monitoring and forecasting: a review
  • 2021-11-15 Polluted waters of the reclaimed islands of Indian Sundarban promote more greenhouse gas emissions from mangrove ecosystem
  • 2021-11-14 Risk assessment and prevention of air pollution to protect citizen health based on statistical data: a case study of Zhengzhou, China
  • 2021-11-13 New design of water-energy-food-environment nexus for sustainable agricultural management
  • 2021-11-11 Long-term mean river discharge estimation with multi-source grid-based global datasets
  • 2021-11-10 Performance assessment of general circulation models: application of compromise programming method and global performance indicator technique
  • 2021-11-09 Predicting hydrological alterations to quantitative and localized climate change in plateau regions: A case study of the Lake Dianchi Basin, China
  • 2021-11-09 Stochastic analysis of the variability of groundwater flow fields in heterogeneous confined aquifers of variable thickness
  • 2021-11-09 Challenging problems of quality assurance and quality control (QA/QC) of meteorological time series data
  • 2021-11-06 Analysis of precipitation dynamics at different timescales based on entropy theory: an application to the State of Ceará, Brazil
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    Stochastic Environmental Research and Risk Assessment (SERRA) publishes research papers, reviews and technical notes on stochastic\u00a0(probabilistic and statistic)\u00a0approaches to environmental sciences and engineering, including the description and prediction of spatiotemporal natural systems under conditions of uncertainty, risk assessment, interactions of earth 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, 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 different fields to the community of interested researchers.\u00a0Contributions may cover scientific measurement, instrumentation and probabilistic/statistical modeling applied in various research areas including (but not limited to):\u00a0

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    - Sustainable environment, hazards and risk analysis.\u00a0

    - Soil contamination and remediation.\u00a0

    - Air pollution monitoring and control, and environmental health effects.

    - Geostatistics, spatial and spatiotemporal statistics.\u00a0

    - Remote sensing and temporal geographical information systems.

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