The aim of this study was the development, evaluation and analysis of a neuro-fuzzy classifier for a supervised and hard classification of coastal environmental vulnerability due to marine aquaculture using minimal training sets within a Geographic Information System (GIS). The neuro-fuzzy classification model NEFCLASS‐J, was used to develop learning algorithms to create the structure (rule base) and the parameters (fuzzy sets) of a fuzzy classifier from a set of labeled data. The training sites were manually classified based on four categories of coastal environmental vulnerability through meetings and interviews with experts having field experience and specific knowledge of the environmental problems investigated. The inter-class separabi...
Local authorities require information on shoreline change for land use decision making. Monitoring s...
Coasts worldwide are facing enormous challenges relating to extreme water levels, inundation and coa...
In this paper, we propose an identification method of the land cover from remote sensing data with c...
Combining GIS with neuro-fuzzy modeling has the advantage that expert scientific knowledge in coasta...
Modeling groundwater vulnerability reliably and cost effectively for non-point source (NPS) pollutio...
© 2020. All Rights Reserved. The article focuses on the problem of assessing the level of the fuzzy ...
There is a need to develop new modeling techniques that assess ground water vulnerability with less ...
This paper describes combined approaches of data preparation, neural network analysis, and fuzzy inf...
Extensive brackishwater aquaculture, which is a dominant land-based aquaculture system in Indonesia,...
In this study, we assess the performance of a self-organising neuro-fuzzy classifier for burned area...
ABSTRACTThe rapid expansion of extensive brackish water aquaculture (BA) in Indonesia has created an...
International audienceThis paper presents an integrated method to assess the vulnerability of coasta...
The aim of this work is the study and the development of a technique for bathymetry estimation, whic...
AbstractThe article focuses on the problem of assessing the level of the fuzzy phenomena as environm...
© 2019 Elsevier Ltd. Current approaches for obtaining shoreline change rates suffer from inability t...
Local authorities require information on shoreline change for land use decision making. Monitoring s...
Coasts worldwide are facing enormous challenges relating to extreme water levels, inundation and coa...
In this paper, we propose an identification method of the land cover from remote sensing data with c...
Combining GIS with neuro-fuzzy modeling has the advantage that expert scientific knowledge in coasta...
Modeling groundwater vulnerability reliably and cost effectively for non-point source (NPS) pollutio...
© 2020. All Rights Reserved. The article focuses on the problem of assessing the level of the fuzzy ...
There is a need to develop new modeling techniques that assess ground water vulnerability with less ...
This paper describes combined approaches of data preparation, neural network analysis, and fuzzy inf...
Extensive brackishwater aquaculture, which is a dominant land-based aquaculture system in Indonesia,...
In this study, we assess the performance of a self-organising neuro-fuzzy classifier for burned area...
ABSTRACTThe rapid expansion of extensive brackish water aquaculture (BA) in Indonesia has created an...
International audienceThis paper presents an integrated method to assess the vulnerability of coasta...
The aim of this work is the study and the development of a technique for bathymetry estimation, whic...
AbstractThe article focuses on the problem of assessing the level of the fuzzy phenomena as environm...
© 2019 Elsevier Ltd. Current approaches for obtaining shoreline change rates suffer from inability t...
Local authorities require information on shoreline change for land use decision making. Monitoring s...
Coasts worldwide are facing enormous challenges relating to extreme water levels, inundation and coa...
In this paper, we propose an identification method of the land cover from remote sensing data with c...