Kim Hyo Gyeom, Jung Eun-Young, Jeong Heewon, Son Heejong, Baek Sang-Soo, Cho Kyung Hwa
Future and Fusion Lab of Architectural, Civil and Environmental Engineering, Korea University, Seoul, 02841, Republic of Korea.
Busan Water Quality Institute, Gyeongsangnam-do, 50804, Republic of Korea.
Water Res. 2024 Nov 15;266:122401. doi: 10.1016/j.watres.2024.122401. Epub 2024 Sep 6.
Given the frequent association between freshwater plankton and water quality degradation, several predictive models have been devised to understand and estimate their dynamics. However, the significance of biotic and abiotic interactions has been overlooked. In this study, we aimed to address the importance of the interaction term in predicting plankton community dynamics by applying graph convolution embedded long short-term memory networks (GC-LSTM) models, which can incorporate interaction terms as graph signals. Temporal graph series comprising plankton genera or environmental drivers as node features and their relationships for edge features from two distinct water bodies, a reservoir and a river, were utilized to develop these models. To assess the predictability, the performances of the GC-LSTM models on community dynamics were compared those of LSTM and GCN models at various lead times. Moreover, GNNExplainer was used to examine the global and local importance of the nodes and edges for all predictions and specific predictions, respectively. The GC-LSTM models outperformed the LSTM models, consistently showing higher prediction accuracy. Although all the models exhibited performance degradation at longer lead times, the GC-LSTM models consistently demonstrated better performance regarding each graph signal and plankton genus. GNNExplainer yielded interpretable explanations for important genera and interaction pairs among communities, revealing consistent importance patterns across different lead times at both global and local scales. These findings underscore the potential of the proposed modeling approach for forecasting community dynamics and emphasize the critical role of graph signals with interaction terms in plankton communities.
鉴于淡水浮游生物与水质恶化之间的频繁关联,人们设计了几种预测模型来理解和估计它们的动态变化。然而,生物和非生物相互作用的重要性一直被忽视。在本研究中,我们旨在通过应用图卷积嵌入长短期记忆网络(GC-LSTM)模型来解决交互项在预测浮游生物群落动态中的重要性问题,该模型可以将交互项作为图信号纳入其中。利用包含浮游生物属或环境驱动因素作为节点特征以及它们来自两个不同水体(一个水库和一条河流)的边缘特征之间关系的时间图序列来开发这些模型。为了评估可预测性,在不同的提前期将GC-LSTM模型在群落动态方面的性能与LSTM和GCN模型的性能进行了比较。此外,GNNExplainer分别用于检查所有预测和特定预测中节点和边缘的全局和局部重要性。GC-LSTM模型优于LSTM模型,始终显示出更高的预测准确性。尽管所有模型在较长提前期时性能都会下降,但GC-LSTM模型在每个图信号和浮游生物属方面始终表现出更好的性能。GNNExplainer对群落中的重要属和相互作用对给出了可解释的解释,揭示了在全球和局部尺度上不同提前期的一致重要性模式。这些发现强调了所提出的建模方法在预测群落动态方面的潜力,并强调了带有交互项的图信号在浮游生物群落中的关键作用。