Advances in Bayesian network modelling: Integration of modelling technologies
Bayesian network (BN) modeling is a rapidly advancing field. Here we explore new methods
by which BN model development and application are being joined with other tools and …
by which BN model development and application are being joined with other tools and …
Dynamic Bayesian networks with application in environmental modeling and management: A review
J Chang, Y Bai, J Xue, L Gong, F Zeng, H Sun… - … Modelling & Software, 2023 - Elsevier
Abstract Dynamic Bayesian networks (DBNs) as an extension of traditional Bayesian
networks have recently been paid great concern to environmental modeling to capture …
networks have recently been paid great concern to environmental modeling to capture …
[HTML][HTML] An online platform for spatial and iterative modelling with Bayesian Networks
Abstract Bayesian Networks (BNs) are commonly used to model socio-ecological systems,
as their graphical structure supports participatory modelling, they can integrate quantitative …
as their graphical structure supports participatory modelling, they can integrate quantitative …
Spatial Bayesian Network for predicting sea level rise induced coastal erosion in a small Pacific Island
An integrated approach combining Bayesian Network with GIS was developed for making a
probabilistic prediction of sea level rise induced coastal erosion and assessing the …
probabilistic prediction of sea level rise induced coastal erosion and assessing the …
Inferring spatial interaction patterns from sequential snapshots of spatial distributions
Spatial interactions underlying consecutive sequential snapshots of spatial distributions,
such as the migration flows underlying temporal population snapshots, can reflect the details …
such as the migration flows underlying temporal population snapshots, can reflect the details …
BARD: A structured technique for group elicitation of Bayesian networks to support analytic reasoning
In many complex, real‐world situations, problem solving and decision making require
effective reasoning about causation and uncertainty. However, human reasoning in these …
effective reasoning about causation and uncertainty. However, human reasoning in these …
Ecological vulnerability assessment and spatial pattern optimization of resource-based cities: A case study of Huaibei City, China
H Yang, G Zhai, Y Zhang - Human and Ecological Risk Assessment …, 2021 - Taylor & Francis
The continuous, intense exploitation of resources under rapid industrialization has made the
ecological environment of resource-based cities increasingly vulnerability. Negative impacts …
ecological environment of resource-based cities increasingly vulnerability. Negative impacts …
Improving ecosystem services modelling: Insights from a Bayesian network tools review
E Pérez-Miñana - Environmental modelling & software, 2016 - Elsevier
Numerous studies attempt to unravel the role played by Biodiversity in ecosystems and ES
reliance on Biodiversity. Achieving this aim is difficult given: the multi-layered Biodiversity …
reliance on Biodiversity. Achieving this aim is difficult given: the multi-layered Biodiversity …
Operationalising ecosystem service assessment in Bayesian Belief Networks: Experiences within the OpenNESS project
Abstract Nine Bayesian Belief Networks (BBNs) were developed within the OpenNESS
project specifically for modelling ecosystem services for case study applications. The novelty …
project specifically for modelling ecosystem services for case study applications. The novelty …
A spatial bayesian-network approach as a decision-making tool for ecological-risk prevention in land ecosystems
Prevention of ecological risks in land ecosystems is crucial for environmental protection and
sustainable land use. With increasingly severe land degradation, new and effective methods …
sustainable land use. With increasingly severe land degradation, new and effective methods …