Establishing a Periodic Sm Profile Model Based on Fourier Analysis Using Hydrologic Soil Groups

16 Pages Posted: 24 Oct 2024

See all articles by Jinlong Zhu

Jinlong Zhu

Changchun Normal University

Shengyi Wang

Changchun Normal University

Qingliang Li

Changchun Normal University - College of Computer Science and Technology

Yingwen Zhang

Changchun Normal University

Xiaoyang Chen

Changchun Normal University

Abstract

Accurately predicting global soil moisture (SM) is crucial for sustainable agriculture and water resource management. Recognizing the challenges posed by the heterogeneity of SM's spatiotemporal variability, this study proposes a novel approach that leverages Fourier analysis to decompose the periodic fluctuations in SM, revealing underlying trends and cycles. This approach is integrated with Long Short Term Memory (LSTM) networks to enhance the accuracy of global SM prediction. Fourier analysis transforms time series data of SM into frequencies and amplitudes, capturing its intrinsic periodic characteristics. This transformation reveals both variable and invariant features representing changes within and between periods. By fusing these periodic features within the cycle. By integrating these periodic features with sequence data and leveraging the memory and sequence learning capabilities of LSTM neural networks, the accuracy and reliability of global SM prediction can be enhanced. Our experiments on the LandBench1.0 dataset demonstrate that the proposed model reduces the root mean square error by 0.4% to 1.1% compared to the state-of-the-art methods. This study underscores that the LSTM with periodic features of SM can adapt to the inherent complex spatial-temporal patterns in SM dynamics, especially in scenarios characterized by rapid environmental changes and subtle temporal dynamics.

Keywords: Soil Moisture, Fourier analysis, Periodic changes, LSTM, Variable and invariant features

Suggested Citation

Zhu, Jinlong and Wang, Shengyi and Li, Qingliang and Zhang, Yingwen and Chen, Xiaoyang, Establishing a Periodic Sm Profile Model Based on Fourier Analysis Using Hydrologic Soil Groups. Available at SSRN: https://ssrn.com/abstract=4997999 or http://dx.doi.org/10.2139/ssrn.4997999

Jinlong Zhu (Contact Author)

Changchun Normal University ( email )

Changchun
China

Shengyi Wang

Changchun Normal University ( email )

Changchun
China

Qingliang Li

Changchun Normal University - College of Computer Science and Technology ( email )

Yingwen Zhang

Changchun Normal University ( email )

Changchun
China

Xiaoyang Chen

Changchun Normal University ( email )

Changchun
China

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