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Characterization of Environmental Drivers Controlling the Baseline of Soil Surface CO2 Flux using Wavelet-based Multiresolution State-Space Model and Wavelet Denoising

机译:基于小波的多分辨率状态空间模型和小波去噪控制土壤表面二氧化碳通量基线环境驱动器的表征

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Multivariate environmental time series including soil surface CO2 flux(FCO2)have non-stationarity and mutual interdependence,and thus the i.i.d assumption-based conventional regression techniques inevitably lead to spurious regression or lose the dynamic characteristics in the process of variable transformation.In this paper,we adopted a wavelet threshold technique for our newly developed wavelet-based multiresolution state-space model(MRSSM)to overcome such limitations and to quantitatively evaluate the environmental drivers(EDs)controlling the baseline of FCO2.First,the structural characteristics and the potential EDs(PEDs)of FCO2 were explored by wavelet denoised(threshold)SSM for complex environmental observation data.Then,the major EDs(MEDs)were identified using the scale localized correlation and the wavelet coherence analysis between PEDs and observation data.Next,the contribution of MEDs to FCO2 was quantitatively evaluated by calculating the effective dynamic efficiency using the wavelet energy ratio of the maximum-correlation time-frequency bands.Finally,the effectiveness of the wavelet threshold method for MRSSM was discussed.The proposed wavelet denoising method is expected to improve the performance of MRSSM which is effective to identify,evaluate and predict the main environmental factors inherent in the observation data from complex environmental systems where physicochemicai and biological processes of various spatio-temporal scales occur simultaneously.
机译:包括土壤表面CO2通量(FCO2)的多变量环境时间序列具有非公平性和相互相互依赖性,因此IID假设的传统回归技术不可避免地导致虚假回归或失去变换过程中的动态特性。本文,我们采用了新开发的基于小波的多分辨率状态空间模型(MRSSM)的小波阈值技术,以克服这些限制,并定量评估控制FCO2的基线的环境驱动程序(EDS)。首先,结构特征和潜力通过针对复杂的环境观测数据的小波去噪(阈值)SSM探索FCO2的EDS(PED)。该改变主要EDS(MEDS)使用规模局部相关性和PED和观察数据之间的小波相干性分析.NEXT,通过计算有效的动态效率来定量评估MEDS对FCO2的贡献最大关联时频带的小波能量比。最后,讨论了MRSSM的小波阈值方法的有效性。预期提高了MRSSM的性能,这是有效识别,评估和预测的MRSSM的性能。来自复杂环境系统的观察数据中固有的主要环境因素,其中包括各种时空鳞片的物理化学和各种时空尺度的生物过程。

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