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Modeling waterbird diversity in irrigation ponds of Taoyuan, Taiwan using an artificial neural network approach

机译:运用人工神经网络方法对台湾桃园灌区水鸟多样性进行建模

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摘要

The study develops an approach adopted by artificial neural networks (ANN) to model the relationship between pondscape and waterbird diversity. Study areas with thousands of irrigation ponds are unique geographic features from the original functions of irrigation converted to waterbird refuges. The model considers pond shape and size, neighboring farmlands, and constructed areas in calculating parameters pertaining to the interactive influences on avian diversity, among them the Shannon–Wiener diversity index. Results indicate that irrigation ponds adjacent to farmland benefited waterbird diversity. On the other hand, urban development leads to the reduction of pond numbers, which reduces waterbird diversity. By running the ANN model, the resulting index shows a good-fit prediction of bird diversity against pond size, shape, neighboring farmlands, and neighboring developed areas with a correlation coefficient (r) of 0.72, in contrast to the results from a linear regression model (r < 0.28).
机译:该研究开发了一种人工神经网络(ANN)所采用的方法来对池塘景观与水鸟多样性之间的关系进行建模。从将灌溉的原始功能转换为水禽避难所以来,研究区域拥有成千上万个灌溉池塘,它们具有独特的地理特征。该模型在计算与相互作用对禽类多样性的影响有关的参数时,会考虑池塘的形状和大小,邻近的农田和建筑面积,其中包括香农-维纳多样性指数。结果表明,农田附近的灌溉池塘有利于水鸟的多样性。另一方面,城市发展导致池塘数量减少,从而减少了水鸟的多样性。通过运行ANN模型,所得指数显示出相对于池塘大小,形状,邻近农田和邻近发达地区鸟类多样性的良好预测,相关系数(r)为0.72,与线性回归的结果相反模型(r <0.28)。

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