首页> 外文期刊>Ecological Modelling >Prediction ability and sensitivity of artificial intelligence-based habitat preference models for predicting spatial distribution of Japanese medaka (Oryzias latipes)
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Prediction ability and sensitivity of artificial intelligence-based habitat preference models for predicting spatial distribution of Japanese medaka (Oryzias latipes)

机译:基于人工智能的栖息地偏好模型的预测能力和敏感性,以预测日本med(Oryzias latipes)的空间分布

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摘要

The present study compared prediction ability, transferability and sensitivity of the three artificial intelligence (AI) based models of fuzzy neural network (FNN), fuzzy habitat preference model (FHPM), and patterns of preference level (PPL), and one conventional model of habitat suitability index (HSI) in predicting spatial distribution of Japanese medaka (Oryzias latipes) dwelling in agricultural canals in Japan. Through the analyses, characteristics and applicability of these models were clarified. Based on field surveys, two independent sets of data were prepared; one was for calibration and the other was for validation. The models were first developed and tested by using the calibration data and then the transferability was verified by the validation data. All the models except for HSI were developed under so different initial conditions. Subsequently, sensitivity analysis was carried out to all the models in order to compare the model structure and to show how different data sets may affect the result of habitat prediction among the models, in which different levels of perturbations were given to input data. As a result, all the AI-based models appeared to have better prediction ability than the conventional model of HSI but lacked transferability. Among all, FNN was found to have the best predictive power despite of the high sensitivity which reflects the differences in its model structure under different initial conditions. FHPM appeared to have the best description in habitat preference as appeared as good convergence in preference curves among the AI-based models. PPL showed better prediction than FHPM in calibration but worse in validation and larger variances in model structure, resulting in deviation in sensitivity. HSI represented qualitatively the same habitat preference as the other models of FHPM and PPL, of which uniform habitat preference curves in a certain habitat category appeared as low sensitivity. The present result supports the use of AI techniques and their hybridization in predicting spatial distribution of the fish. Consequently, it is also suggested to take into consideration the mathematical characteristics of the habitat preference models, since they play the most important role in habitat evaluation and prediction. (C) 2008 Elsevier B.V. All rights reserved.
机译:本研究比较了三种基于人工智能(AI)的模糊神经网络(FNN)模型,模糊栖息地偏好模型(FHPM)和偏好水平模式(PPL)的预测能力,可传递性和敏感性,以及一种传统的预测模型。栖息地适应性指数(HSI),用于预测在日本农业运河中居住的日本(Oryzias latipes)的空间分布。通过分析,明确了这些模型的特点和适用性。根据现场调查,准备了两套独立的数据。一个用于校准,另一个用于验证。首先使用校准数据开发和测试模型,然后通过验证数据验证可传递性。除恒指外,所有模型均在不同的初始条件下开发。随后,对所有模型进行了敏感性分析,以比较模型结构并显示不同数据集如何影响模型之间的栖息地预测结果,其中对输入数据进行了不同程度的扰动。结果,所有基于AI的模型似乎都比传统的HSI模型具有更好的预测能力,但缺乏可传递性。其中,尽管FNN具有很高的灵敏度,但仍具有最佳的预测能力,这反映了在不同初始条件下其模型结构的差异。 FHPM似乎在栖息地偏好方面具有最好的描述,因为在基于AI的模型之间偏好曲线表现出良好的收敛性。 PPL在校正方面显示出比FHPM更好的预测,但在验证方面更差,模型结构的差异更大,从而导致灵敏度偏差。在质量上,恒指代表的生境偏好与FHPM和PPL的其他模型相同,在某些生境类别中,均匀的生境偏好曲线表现为低敏感性。本结果支持使用AI技术及其杂交来预测鱼的空间分布。因此,还建议考虑栖息地偏好模型的数学特征,因为它们在栖息地评估和预测中起着最重要的作用。 (C)2008 Elsevier B.V.保留所有权利。

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