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Combination of artificial neural network and clustering techniques for predicting phytoplankton biomass of Lake Poyang, China

机译:人工神经网络与聚类技术相结合的Po阳湖浮游植物生物量预测

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摘要

A single artificial neural network (ANN) model is inadequate for predicting phytoplankton biomass in a large lake due to its high spatial heterogeneity. In this study, ANN was combined with a clustering technique to simulate phytoplankton biomass in a large lake (Lake Poyang) using a 7-year dataset. Two ANN models (named ANN_Downstream and ANN_Upstream) were developed for the downstream and upstream areas based on the k-means clustering results of 17 sampling sites at Lake Poyang, China. They performed better than ANN_Poyang (an ANN model for the whole lake), indicating the success of the clustering technique in improving ANN models for predicting phytoplankton biomass in different sub-regions of the large lake. A sensitivity analysis based on ANN_Downstream and ANN_Upstream showed that phytoplankton dynamics responded differently to environmental variables in different sub-regions of Lake Poyang. This case study demonstrated the good performance of ANN models in describing phytoplankton dynamics, and the potential of coupling ANN with a clustering technique to describe the spatial heterogeneity of natural ecosystems.
机译:单个人工神经网络(ANN)模型由于其高度的空间异质性不足以预测大型湖泊中浮游植物的生物量。在这项研究中,人工神经网络与聚类技术相结合,使用7年数据集来模拟大湖(Po阳湖)中的浮游植物生物量。根据中国Po阳湖17个采样点的k均值聚类结果,为下游和上游地区开发了两个ANN模型(分别称为ANN_Downstream和ANN_Upstream)。它们的表现优于ANN_Poyang(整个湖泊的ANN模型),表明聚类技术在改进ANN模型以预测大湖不同子区域浮游植物生物量方面的成功。基于ANN_Downstream和ANN_Upstream的敏感性分析表明,在Po阳湖不同分区中,浮游植物对环境变量的反应不同。该案例研究证明了人工神经网络模型在描述浮游植物动力学方面的良好性能,以及将人工神经网络与聚类技术结合以描述自然生态系统空间异质性的潜力。

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