Effects of data prevalence on species distribution modelling using a genetic takagi-sugeno fuzzy system

S. Fukuda
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引用次数: 10

Abstract

Uncertainties originating from observation data and modelling approaches can affect model accuracy and thus impact on the applicability and reliability of a model. This paper aims to assess the effects of data prevalence (i.e., proportion of presence in the entire data set) on species distribution modelling and habitat preference evaluation using a 0-order genetic Takagi-Sugeno fuzzy model. The effects were evaluated based on the model accuracy and habitat preference curves (HPCs). In order to avoid the data uncertainty, virtual species data were generated using hypothetical HPCs under different assumptions on the interaction between habitat variables and habitat preference of a virtual fish. In total, thirteen data sets under three different interaction scenarios were generated. The model accuracy of resulting models was different according to the data prevalence, whereas different trends between data sets under different interaction scenarios were observed. Although the HPC shapes were similar across data sets, the HPCs were different according to the data prevalence, of which a higher prevalence can result in a uniform HPC. This study demonstrates possible influences of data prevalence on the species distribution modelling. Further study is needed for a better solution to cope with the prevalence-related problems in ecological modelling.
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用遗传takagi-sugeno模糊系统模拟数据流行度对物种分布的影响
来自观测数据和建模方法的不确定性会影响模型的准确性,从而影响模型的适用性和可靠性。利用0阶遗传Takagi-Sugeno模糊模型,研究数据流行度(即在整个数据集中存在的比例)对物种分布建模和栖息地偏好评价的影响。根据模型精度和生境偏好曲线(HPCs)对效果进行了评价。为了避免数据的不确定性,在不同生境变量与虚拟鱼类生境偏好的相互作用假设下,采用假设hpc生成虚拟物种数据。总共生成了三种不同交互场景下的13个数据集。所得模型的模型精度因数据流行度不同而不同,不同交互场景下数据集之间的趋势也不同。尽管不同数据集的HPC形状相似,但HPC根据数据流行度不同而不同,其中较高的流行度可能导致统一的HPC。本研究论证了数据流行度对物种分布建模的可能影响。为了更好地解决生态模型中与流行有关的问题,需要进一步研究。
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