利用机器学习分析过去 40 年巢湖 CDOM 的时空变化及其影响因素

IF 2.5 3区 环境科学与生态学 Q2 ECOLOGY Ecohydrology Pub Date : 2024-02-27 DOI:10.1002/eco.2639
Zijie Zhang, Han Zhang, Yifan Jin, Hongwei Guo, Shang Tian, Jinhui Jeanne Huang, Xiaotong Zhu
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引用次数: 0

摘要

水生环境中的色度溶解有机物(CDOM)是生物地球化学循环和碳循环的重要组成部分。本研究旨在探讨巢湖富营养化浅水区 CDOM 的长期变化及其与气候、环境和社会因素的关系。利用长时间序列Landsat影像数据和机器学习技术,重建了巢湖CDOM自1987年以来的时空演变过程。共采集了 180 个样本,并根据区域和水文特征将其分为三个部分。结果表明,不同区域的水质差异显著,TN可能是驱动巢湖CDOM变化的关键因素。采用随机森林(RF)、支持向量回归(SVR)、神经网络(NN)、多模态深度学习(MDL)模型和极梯度提升(XGBoost)等机器学习算法,其中XGBoost模型性能最佳(R2=0.955,平均绝对误差[MAE]=0.024 mg/L,均方根误差[RMSE]=0.036 mg/L,偏差=1.005),用于CDOM时空变化检索。CDOM的变化具有季节性,8月最高(0.67 m-1),12月最低(0.48 m-1),西部湖泊是CDOM的主要来源。CDOM 的年变化表明,2000 年水污染控制完成后,CDOM 开始下降。温度变化与CDOM密切相关(P <0.01),农业非点源污染在巢湖中起着重要作用。本研究将为CDOM的长期遥感监测提供可行的方法和科学依据。
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Analysing the spatiotemporal variation and influencing factors of Lake Chaohu's CDOM over the past 40 years using machine learning

Chromophoric dissolved organic matter (CDOM) in aquatic environments is an important component of the biogeochemical cycle and carbon cycle. The aim of this study is to investigate the long-term changes in CDOM in shallow and eutrophic Chaohu Lake, as well as its relationship with climate, environment and social factors. Using long time series Landsat image data and machine learning technology, the spatiotemporal evolution of Chaohu CDOM since 1987 was reconstructed. A total of 180 samples were collected, which were divided into three parts based on regional and hydrological characteristics. The results show that the water quality in different regions were significantly different, and TN may be the key factor driving the change of CDOM in Chaohu Lake. Machine learning algorithms including random forest (RF), support vector regression (SVR), neural network (NN), multimodal deep learning (MDL) model and Extreme Gradient Boosting (XGBoost) were used, among which XGBoost model performed best (R2 = 0.955, mean absolute error [MAE] = 0.024 mg/L, root mean square error [RMSE] = 0.036 mg/L, bias = 1.005) and was used for CDOM spatiotemporal variation retrieval. The change of CDOM was seasonal, highest in August (0.67 m−1) and lowest in December (0.48 m−1), and the western lake is the main source of CDOM. Annual variability of the CDOM indicates that it began to decline after the completion of water pollution control in 2000. Temperature changes were closely related to CDOM (P < 0.01) and agricultural non-point source pollution plays an important role in Chaohu Lake. This study will provide feasible methods and scientific basis for the long-term remote sensing supervision of CDOM.

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来源期刊
Ecohydrology
Ecohydrology 环境科学-生态学
CiteScore
5.10
自引率
7.70%
发文量
116
审稿时长
24 months
期刊介绍: Ecohydrology is an international journal publishing original scientific and review papers that aim to improve understanding of processes at the interface between ecology and hydrology and associated applications related to environmental management. Ecohydrology seeks to increase interdisciplinary insights by placing particular emphasis on interactions and associated feedbacks in both space and time between ecological systems and the hydrological cycle. Research contributions are solicited from disciplines focusing on the physical, ecological, biological, biogeochemical, geomorphological, drainage basin, mathematical and methodological aspects of ecohydrology. Research in both terrestrial and aquatic systems is of interest provided it explicitly links ecological systems and the hydrologic cycle; research such as aquatic ecological, channel engineering, or ecological or hydrological modelling is less appropriate for the journal unless it specifically addresses the criteria above. Manuscripts describing individual case studies are of interest in cases where broader insights are discussed beyond site- and species-specific results.
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