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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Separability indexes and accuracy of neuro-fuzzy classification in Geographic Information Systems for assessment of coastal environmental vulnerability
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Separability indexes and accuracy of neuro-fuzzy classification in Geographic Information Systems for assessment of coastal environmental vulnerability

机译:评估沿海环境脆弱性的地理信息系统中神经模糊分类的可分离性指标和准确性

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摘要

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 separability estimations were performed on the training data set to assess the difficulty of the class separation problem under investigation. The two training data sets did not follow the assumptions of multivariate normality. For this reason Bhattacharyy and Jeffries-Matusita distances were used to estimate the probability of correct classification. Further evaluation and analysis of the quality of the classification achieved low values of quantity and allocation disagreement and a good overall accuracy. For each of the four classes the user and producer values for accuracy were between 77% and 100%.In conclusion, the use of a neuro-fuzzy classifier for a supervised and hard classification of coastal environmental vulnerability demonstrated an ability to derive an accurate and reliable classification using a minimal number of training sets.
机译:这项研究的目的是开发,评估和分析神经模糊分类器,以使用地理信息系统(GIS)中的最少培训集对海洋水产养殖造成的沿海环境脆弱性进行监督和硬分类。使用神经模糊分类模型NEFCLASS-J来开发学习算法,以从一组标记数据中创建模糊分类器的结构(规则基础)和参数(模糊集)。通过与具有现场经验和特定环境问题专门知识的专家进行会议和访谈,根据四个类别的沿海环境脆弱性对培训地点进行了手动分类。对训练数据集进行类间可分离性估计,以评估所研究的类分离问题的难度。这两个训练数据集没有遵循多元正态性的假设。因此,使用Bhattacharyy和Jeffries-Matusita距离来估计正确分类的可能性。对分类质量的进一步评估和分析实现了较低的数量和分配差异值以及良好的整体准确性。对于这四个类别中的每个类别,用户和生产者的准确性值在77%到100%之间。总而言之,使用神经模糊分类器对海岸环境脆弱性进行有监督的硬分类显示了获得准确和准确的值的能力。使用最少数量的训练集进行可靠的分类。

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