Identification of driving factors of algal growth in the South-to-North Water Diversion Project by Transformer-based deep learning

IF 5.1 Q1 ENVIRONMENTAL SCIENCES
Jing Qian , Nan Pu , Li Qian , Xiaobai Xue , Yonghong Bi , Stefan Norra
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引用次数: 0

Abstract

Accurate and credible identification of the drivers of algal growth is essential for sustainable utilization and scientific management of freshwater. In this study, we developed a deep learning-based Transformer model, named Bloomformer-1, for end-to-end identification of the drivers of algal growth without the needing extensive a priori knowledge or prior experiments. The Middle Route of the South-to-North Water Diversion Project (MRP) was used as the study site to demonstrate that Bloomformer-1 exhibited more robust performance (with the highest R2, 0.80 to 0.94, and the lowest RMSE, 0.22–0.43 ​μg/L) compared to four widely used traditional machine learning models, namely extra trees regression (ETR), gradient boosting regression tree (GBRT), support vector regression (SVR), and multiple linear regression (MLR). In addition, Bloomformer-1 had higher interpretability (including higher transferability and understandability) than the four traditional machine learning models, which meant that it was trustworthy and the results could be directly applied to real scenarios. Finally, it was determined that total phosphorus (TP) was the most important driver for the MRP, especially in Henan section of the canal, although total nitrogen (TN) had the highest effect on algal growth in the Hebei section. Based on these results, phosphorus loading controlling in the whole MRP was proposed as an algal control strategy.

基于变压器深度学习的南水北调工程藻类生长驱动因素识别
准确可靠地确定藻类生长的驱动因素对于淡水的可持续利用和科学管理至关重要。在这项研究中,我们开发了一个基于深度学习的Transformer模型,名为Bloomformer-1,用于端到端识别藻类生长的驱动因素,而不需要大量的先验知识或先验实验。以南水北调中线工程(MRP)为研究场地,证明Bloomformer-1表现出更稳健的性能(R2最高,0.80-0.94,RMSE最低,0.22-0.43​μg/L)与四种广泛使用的传统机器学习模型,即额外树回归(ETR)、梯度增强回归树(GBRT)、支持向量回归(SVR)和多元线性回归(MLR)进行比较。此外,Bloomformer-1比四种传统的机器学习模型具有更高的可解释性(包括更高的迁移性和可理解性),这意味着它是值得信赖的,并且结果可以直接应用于真实场景。最后,确定总磷(TP)是MRP的最重要驱动因素,尤其是在运河河南段,尽管总氮(TN)对河北段藻类生长的影响最大。基于这些结果,提出了在整个MRP中控制磷负荷作为藻类控制策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.10
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