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BP人工神经网络在通过碳组分-环境因子耦合模拟全球水生生态系统温室气体排放中的作用

Role of BP-ANN in simulating greenhouse gas emissions from global aquatic ecosystems via carbon component-environmental factor coupling.

作者信息

Liu Jiayuan, Lu Bianhe, Liu Yuhong, Wang Lixin, Liu Fude, Chen Yixue, Mustafa Ghulam, Qin Zhirui, Lv Chaoqun

机构信息

Key Laboratory of Integrated Regulation and Resource Development on Shallow Lakes, Ministry of Education, Hohai University, Nanjing 210098, China; College of Environment, Hohai University, Nanjing 210098, China.

Key Laboratory of Integrated Regulation and Resource Development on Shallow Lakes, Ministry of Education, Hohai University, Nanjing 210098, China; College of Environment, Hohai University, Nanjing 210098, China.

出版信息

Sci Total Environ. 2024 Jun 20;930:172722. doi: 10.1016/j.scitotenv.2024.172722. Epub 2024 Apr 25.

Abstract

Inland waters (IW), estuarine areas (EA), and offshore areas (OA) function as aquatic systems in which the transport of carbon components results in the release of greenhouse gases (GHGs). Interconnected subsystems exhibit a greater greenhouse effect than individual systems. Despite this, there is a lack of research on how carbon loading and its components impact GHG emissions in various aquatic systems. In this study, we analyzed 430 aquatic sites to explore trade-off mechanisms among dissolved organic carbon (DOC), particulate organic carbon, dissolved inorganic carbon (DIC), and GHGs. The results revealed that IW emerged as the most significant GHG source, possessing a comprehensive global warming potential (GWP) of 0.78 ± 0.08 (10 Pg CO-ep ha year) for combined carbon dioxide, methane, and nitrous oxide. This surpassed the cumulative potentials of EA and OA (0.35 ± 0.05 (10 Pg CO-ep ha year)). Additionally, structural equation modeling indicated that GHG emissions resulted from a combination of carbon component loading and environmental factors. DOC exhibited a positive correlation with GWPs when influenced by biodegradable DOC. Total alkalinity and pH influenced DIC, leading to elevated pCO in aquatic systems, thereby enhancing GWPs. Predictive modeling using backpropagation artificial neural networks (BP-ANN) for GWPs, incorporating carbon components and environmental factors, demonstrated a good fit (R = 0.6078, RMSE = 0.069, p > 0.05) between observed and predicted values. Enhancing the estimation of aquatic region feedback to GHG changes was achieved by incorporating corresponding water quality parameters. In summary, this study underscores the pivotal role of carbon components and environmental factors in aquatic regions for GHG emissions. The application of BP-ANN to estimate greenhouse effects from aquatic regions is highlighted, providing theoretical and experimental support for future advancements in monitoring and developing policies concerning the influence of water quality on GHG emissions.

摘要

内陆水域(IW)、河口区域(EA)和近海区域(OA)作为水生系统,其中碳成分的传输会导致温室气体(GHG)的释放。相互连接的子系统比单个系统表现出更大的温室效应。尽管如此,关于碳负荷及其成分如何影响各种水生系统中的温室气体排放,仍缺乏相关研究。在本研究中,我们分析了430个水生站点,以探索溶解有机碳(DOC)、颗粒有机碳、溶解无机碳(DIC)和温室气体之间的权衡机制。结果表明,内陆水域是最重要的温室气体排放源,二氧化碳、甲烷和一氧化二氮的综合全球变暖潜势(GWP)为0.78±0.08(10Pg CO-eq ha/年)。这超过了河口区域和近海区域的累积潜势(0.35±0.05(10Pg CO-eq ha/年))。此外,结构方程模型表明,温室气体排放是碳成分负荷和环境因素共同作用的结果。当受到可生物降解的溶解有机碳影响时,溶解有机碳与全球变暖潜势呈正相关。总碱度和pH值影响溶解无机碳,导致水生系统中pCO升高,从而增强全球变暖潜势。使用反向传播人工神经网络(BP-ANN)对全球变暖潜势进行预测建模,纳入碳成分和环境因素,结果表明观测值与预测值之间拟合良好(R = 0.6078,RMSE = 0.069,p>0.05)。通过纳入相应的水质参数,提高了对水生区域对温室气体变化反馈的估计。总之,本研究强调了碳成分和环境因素在水生区域温室气体排放中的关键作用。突出了BP-ANN在估计水生区域温室效应方面的应用,为未来水质对温室气体排放影响的监测和政策制定的进展提供了理论和实验支持。

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