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Monitoring Carbon Stock Change at the Individual-Plant Scale: A Methodological Review and Integrative Framework

個体スケールでの炭素ストック変化のモニタリング:方法論的レビューと統合的フレームワーク (AI 翻訳)

Ruiying Ren, K Zhang, Liang Qi, Maocheng Zhao, Weijun Xie, Chi Zhou, Mingguang Li

Forests📚 査読済 / ジャーナル2026-05-04#炭素会計Origin: CN
DOI: 10.3390/f17050563
原典: https://doi.org/10.3390/f17050563
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🤖 gxceed AI 要約

日本語

このレビューは、個別植物スケールでの炭素ストック変化(ΔC)の反復モニタリング手法を3つの経路(プロセスベース、状態ベース、センシングベース)に分類し、それらの理論的基盤や不確実性を比較する。構造-機能-スケールの統合フレームワークを提案し、マルチソースデータ融合とMRV検証システムの方向性を示す。

English

This review categorizes methods for monitoring carbon stock change at the individual-plant scale into three pathways: process-based, state-based, and sensing-based. It compares their theoretical bases and uncertainties, and proposes a structure-function-scale framework integrating multi-source data to enhance cross-scale consistency for MRV verification.

Unofficial AI-generated summary based on the public title and abstract. Not an official translation.

📝 gxceed 編集解説 — Why this matters

日本のGX文脈において

本レビューは個体スケールの炭素モニタリング手法を統合しており、日本の森林・農業分野での炭素会計やMRVシステム構築に示唆を与えるが、直接的な企業開示とは距離がある。

In the global GX context

This review provides a unified framework for individual-plant carbon stock change monitoring, addressing methodological fragmentation and enabling more accurate MRV systems globally, supporting carbon neutrality targets.

👥 読者別の含意

🔬研究者:This review offers a comprehensive classification of methods and a new integrative framework for plant-level carbon monitoring, guiding future research in fine-scale carbon dynamics.

🏛政策担当者:May inform development of MRV protocols for nature-based solutions and agricultural carbon credits.

📄 Abstract(原文)

With increasing demand for fine-scale ecological management under carbon neutrality frameworks, multi-temporal assessment of carbon stock change (ΔC) at the individual-plant scale has become essential for understanding plant-level carbon dynamics and supporting management decisions. However, methodologies for repeated monitoring at this scale remain fragmented, showing limited cross-temporal comparability, weak cross-scale consistency, and insufficient integration across methods. Existing approaches can be grouped into three pathways: (i) process-based methods derived from CO2 exchange measurements, (ii) state-based approaches estimating biomass and ΔC, and (iii) sensing-based approaches using structural, spectral, thermal, and fluorescence signals. These approaches offer complementary strengths, yet none simultaneously achieve high accuracy, temporal continuity, and operational scalability for multi-temporal ΔC estimation. Among these, stock-based and structural approaches form the primary estimation pathways, while flux-based and functional sensing methods provide complementary constraints. This review synthesizes and compares these approaches in terms of their theoretical basis, spatial support, temporal characteristics, and uncertainty structures. To address the lack of methodological integration, we propose a structure–function–scale framework that links heterogeneous observations across spatial and temporal domains and emphasizes cross-scale consistency as a prerequisite for reliable ΔC estimation. Within this framework, we further examine how multi-source integration can connect structural and functional observations through segmentation, co-registration, scaling, temporal alignment, and uncertainty propagation. By integrating traditional measurement logic with emerging remote sensing technologies, this review provides a unified methodological framework for ΔC estimation and identifies key directions for advancing fine-scale carbon monitoring, spatiotemporally consistent data fusion, uncertainty-aware inference, and MRV-oriented verification systems.

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