...
首页> 外文期刊>Marine ecology progress series >Benthic carbon metabolism in southeast Australian estuaries: habitat importance, driving forces, and application of artificial neural network models
【24h】

Benthic carbon metabolism in southeast Australian estuaries: habitat importance, driving forces, and application of artificial neural network models

机译:澳大利亚东南部河口的底栖碳代谢:栖息地的重要性,驱动力和人工神经网络模型的应用

获取原文
获取原文并翻译 | 示例
           

摘要

Benthic gross primary productivity (GPP), net primary production (NP), and respiration (R) were measured seasonally in each of 12 major benthic habitats in 3 southeast Australian estuaries, along with a suite of biological, physical, and chemical parameters to construct a benthic carbon budget and to elucidate controls over benthic metabolism. We also tested the performance of an artificial neural network (ANN) model in predicting benthic metabolism from the suite of measured parameters, and compared model performance to traditional stepwise regression methods. Carbon budgets indicated that macrophyte communities made the greatest contribution to whole system benthic metabolism (51 to 79% of gross productivity and 38 to 74% of respiration), and net benthic metabolism of the 3 estuaries ranged from -25 to -90 g C m~(-2) yr~~(-1). Metabolism in non-macrophyte communities was tightly coupled to light, temperature, organic matter supply, and benthic algal biomass, and metabolism in macrophyte communities was coupled predominantly to temperature and light. ANN outperformed stepwise regression for all benthic metabolic parameters in both macrophyte and non-macrophyte habitats. Root mean square errors of ANN were up to 3-fold lower than stepwise regression models, indicating the potential use of ANN in modeling ecosystem-scale metabolism. We used ANN models to predict system-wide changes in benthic net production associated with an increase in temperature of 1 to 2℃. Model results indicate that system-wide net production increased with temperature, indicating that carbon burial in, and/or export from estuaries may increase as a result of increasing water temperature associated with climate change.
机译:在澳大利亚东南部三个河口的12个主要底栖生境中的每一个上,季节性测量底栖生物的总初级生产力(GPP),净初级生产力(NP)和呼吸(R),以及要构建的一系列生物学,物理和化学参数底栖碳收支,阐明对底栖生物代谢的控制。我们还测试了人工神经网络(ANN)模型从一组测量参数预测底栖生物代谢方面的性能,并将模型性能与传统的逐步回归方法进行了比较。碳预算表明,大型植物群落对整个系统底栖代谢的贡献最大(占总生产力的51%至79%,占呼吸作用的38%至74%),三个河口的底栖生物净代谢范围为-25至-90 g C m 〜(-2)年~~(-1)。非宏观植物群落中的代谢与光,温度,有机物供应和底栖藻类生物量紧密相关,而大型植物群落中的代谢主要与温度和光相关。在大型植物和非大型植物生境中,人工神经网络的所有底栖代谢参数均优于逐步回归。 ANN的均方根误差比逐步回归模型低3倍,表明ANN在模拟生态系统规模代谢中的潜在用途。我们使用ANN模型来预测整个底栖动物净产量的变化,这些变化与温度升高1至2℃有关。模型结果表明,随着温度的升高,全系统的净产量随温度的升高而增加,表明由于与气候变化有关的水温升高,埋入河口和/或从​​河口出口的碳可能增加。

著录项

  • 来源
    《Marine ecology progress series》 |2011年第2011期|p.97-115|共19页
  • 作者

    D. Maher; B. D. Eyre;

  • 作者单位

    Centre for Coastal Biogeochemistry, School of Environmental Science and Management Southern Cross University, Lismore, New South Wales 2480, Australia;

    Centre for Coastal Biogeochemistry, School of Environmental Science and Management Southern Cross University, Lismore, New South Wales 2480, Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    benthic metabolism; estuary; artificial neural network; climate change; seagrass;

    机译:底栖代谢河口;人工神经网络;气候变化;海草;

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号