...
首页> 外文期刊>Global change biology >Multiscale analysis of temporal variability of soil CO2 production as influenced by weather and vegetation
【24h】

Multiscale analysis of temporal variability of soil CO2 production as influenced by weather and vegetation

机译:天气和植被影响下土壤二氧化碳生产时间变化的多尺度分析

获取原文
获取原文并翻译 | 示例

摘要

Ecosystem processes are influenced by weather and climatic perturbations at multiple temporal scales with a large range of amplitudes and phases. Technological advances of automated biometeorological measurements provide the opportunity to apply spectral methods on continuous time series to identify differences in amplitudes and phases and relationships with weather variation. Here we used wavelet coherence analysis to study the temporal covariance between soil CO2 production and soil temperature, soil moisture, and photosynthetically active radiation (PAR). Continuous (hourly average) data were acquired over 2 years among three vegetation types in a semiarid mixed temperate forest. We showed that soil temperature and soil moisture influence soil CO2 production differently at multiple periods (e.g. hours, days, weeks, months, years), especially after rain pulse events. Our results provide information about the periodicity of soil CO2 production among vegetation types, and provide insights about processes controlling CO2 production through the study of phase relationships between two time series (e.g. soil CO2 production and PAR). We tested the performance of empirical models of soil CO2 production using the continuous wavelet transform. These models, built around soil temperature and moisture, failed at multiple periods across the measured dates, suggesting that empirical models should include other factors that regulate soil CO2 production at different temporal scales. Our results add a new dimension for the analysis of continuous time series of biometeorological measurements and model testing, which will prove useful for analysis of increasing sensor data obtained by environmental networks.
机译:生态系统过程受多种时间尺度,幅度和相位范围较大的天气和气候扰动的影响。自动化生物气象测量技术的进步为在连续时间序列上应用频谱方法以识别振幅和相位差异以及与天气变化的关系提供了机会。在这里,我们使用小波相干分析来研究土壤CO2产生与土壤温度,土壤湿度和光合有效辐射(PAR)之间的时间协方差。在半干旱混合温带森林中的三种植被类型中,连续两年获得了连续(每小时平均)数据。我们表明,土壤温度和土壤湿度在多个时期(例如,小时,天,周,月,年)对土壤CO2产生的影响不同,尤其是在降雨脉冲事件之后。我们的结果提供了有关植被类型之间土壤CO2产生周期性的信息,并通过研究两个时间序列(例如土壤CO2产生和PAR)之间的相位关系,提供了有关控制CO2产生过程的见识。我们使用连续小波变换测试了土壤二氧化碳生产经验模型的性能。这些围绕土壤温度和湿度建立的模型在整个测量日期的多个时期均告失败,这表明经验模型应包括其他在不同时间尺度上调节土壤CO2产生的因素。我们的结果为生物气象测量的连续时间序列分析和模型测试增加了新的维度,将证明对分析由环境网络获得的不断增加的传感器数据很有用。

著录项

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