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Inversion of Black Soil Layer Thickness Based on Multi-Temporal High-Resolution Remote Sensing Data and Machine Learning
Conservation and sustainable utilization of black soil | 更新时间:2026-04-20
    • Inversion of Black Soil Layer Thickness Based on Multi-Temporal High-Resolution Remote Sensing Data and Machine Learning

    • Journal of Soil and Water Conservation   Vol. 40, Issue 2, Pages: 121-130(2026)
    • DOI:10.13870/j.cnki.stbcxb.2026.02.014    

      CLC: S152.2
    • CSTR:32310.14.stbcxb.2026.02.014    
    • Received:31 July 2025

      Revised:2025-09-22

      Accepted:28 September 2025

      Online First:24 November 2025

      Published:01 April 2026

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  • ZHAO Tongtong, LI Huapeng. Inversion of black soil layer thickness based on multi-temporal high-resolution remote sensing data and machine learning[J].Journal of Soil and Water Conservation,2026,40(2):121-130. DOI: 10.13870/j.cnki.stbcxb.2026.02.014. CSTR: 32310.14.stbcxb.2026.02.014.

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