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Modeling the species richness and abundance of lotic macroalgae based on habitat characteristics by artificial neural networks: a potentially useful tool for stream biomonitoring programs

机译:基于人工神经网络的栖息地特征,模拟众多丰富性丰富和丰度丰富和丰度:流动生物监测计划的潜在有用的工具

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摘要

One of the major challenges in stream ecology is the development of computational models that can predict aspects of the community structure of organisms from these ecosystems when they are subject to natural or artificial environmental fluctuations. To contribute towards this aim, we conducted a study whose main goal was to evaluate the efficiency and accuracy of different architectures of multilayer artificial neural networks (ANNs) in predicting the species richness and abundance of macroalgae based on environmental variables of tropical streams. We used data from 82 streams located in southern Brazil, where species richness, macroalgal abundance, and environmental parameters were measured. A set of 20 environmental parameters measured directly in the stream was used as explanatory variables. The performance of the ANN architectures was assessed using two different pieces of software (random combinatorial and exhaustive) and the coefficient of determination (R-2) and mean-squared error (MSE). For both species richness and macroalgal abundance, the best ANN architectures were obtained using random combination software and the performance parameters showed a combination of high R-2 and very low MSE. Our results suggest that computational models that are constructed based on ANN frameworks can be efficient and accurate in predicting the species richness and abundance of stream macroalgae from environmental data. Therefore, considering that models based on linear relationships have often failed, we recommend the application of ANNs as a tool to estimate species richness and abundance of lotic macroalgae from environmental data, in the management, conservation, and biomonitoring programs of tropical stream ecosystems.
机译:流生态学中的主要挑战之一是在当他们受到自然或人工环境波动时,可以预测这些生态系统的生物体群落结构的各个方面的发展。为此目的做出贡献,我们进行了一项研究,其主要目标是评估多层人工神经网络(ANNS)不同架构的效率和准确性,以根据热带溪流的环境变量预测大型丰富度和大量大型宏观度和丰度。我们使用了位于巴西南部的82流的数据,其中测量了物种丰富,大型丰富和环境参数。一组直接在流中测量的20个环境参数用作解释变量。使用两种不同的软件(随机组合和详尽)以及确定系数(R-2)和平均误差(MSE)来评估ANN架构的性能。对于种类的丰富性和大型丰富,使用随机组合软件获得最佳的ANN架构,并且性能参数显示高R-2和非常低的MSE的组合。我们的研究结果表明,基于ANN框架构建的计算模型可以高效,准确地预测来自环境数据的物种丰富性和物流大草原。因此,考虑到基于线性关系的模型经常失败,我们建议ANNS作为估计物种丰富性和丰富的大众巨大巨大的豪华宏观的工具,在热带流生态系统的管理,保护和生物创建计划中估算豪爽的大型巨大巨大的大众巨大。

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