精细的森林净初级生产力监测:集成多源数据和智能优化的软件系统

Weitao Zou, Long Luo, Fangyu Sun, Chao Li, Guangsheng Chen, Weipeng Jing
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摘要

净初级生产力(NPP)对可持续资源管理和保护至关重要,也是智能林业系统的主要监测目标。净初级生产力反演的主要方法包括通过陆地和卫星传感系统收集数据,然后使用卡内基-阿姆斯-斯坦福方法(CASA)等模型进行参数估计。虽然这种方法具有成本低、监测能力强等优点,但多源传感系统获取的数据具有不同的空间尺度特征,而 NPP 反演模型无法灵敏地检测数据异质性对结果的影响,从而降低了细粒度 NPP 反演的准确性。因此,本文提出了一种模块化的精细化数据处理和 NPP 反演系统。在数据处理方面,提出了基于非负矩阵因式分解(NMF)的两阶段空间-光谱融合模型,以提高遥感数据的空间分辨率。引入了基于堆叠泛化和残差校正的空间插值模型,以获得与遥感图像兼容的栅格气象数据。此外,我们还利用核方法对 CASA 模型进行了优化,以提高模型灵敏度,丰富高分辨率反演结果的空间细节。通过使用真实数据集进行验证,所提出的融合和插值模型与主流方法相比具有显著优势。此外,利用改进后的反演模型估算的NPP与实地测量的NPP之间的相关系数()为0.69,证明了该平台在详细的森林NPP监测任务中的可行性。
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Fine‐grained forest net primary productivity monitoring: Software system integrating multisource data and smart optimization
Net primary productivity (NPP) is essential for sustainable resource management and conservation, and it serves as a primary monitoring target in smart forestry systems. The predominant method for NPP inversion involves data collection through terrestrial and satellite sensing systems, followed by parameter estimation using models such as the Carnegie‐Ames‐Stanford Approach (CASA). While this method benefits from low costs and extensive monitoring capabilities, the data derived from multisource sensing systems display varied spatial scale characteristics, and the NPP inversion models cannot detect the impact of data heterogeneity on the outcomes sensitively, reducing the accuracy of fine‐grained NPP inversion. Therefore, this paper proposes a modular system for fine‐grained data processing and NPP inversion. Regarding data processing, a two‐stage spatial‐spectral fusion model based on non‐negative matrix factorization (NMF) is proposed to enhance the spatial resolution of remote sensing data. A spatial interpolation model based on stacking generalization with residual correction is introduced to get raster meteorological data compatible with remote sensing images. Furthermore, we optimize the CASA model with the kernel method to enhance model sensitivity and enrich the spatial details of the inversion results with high resolution. Through validation using real datasets, the proposed fusion and interpolation models have significant advantages over mainstream methods. Furthermore, the correlation coefficient () between the estimated NPP using our improved inversion model and the field‐measured NPP is 0.69, demonstrating the feasibility of this platform in detailed forest NPP monitoring tasks.
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