An efficient uncertainty integrated aggregation scheme for water quality detection and longitudinal carbon offset estimation in the Yamuna River
ヤムナー川における水質検出と縦断的炭素オフセット推定のための効率的な不確実性統合集約スキーム (AI 翻訳)
M. Sandhiya, H. Bhavithra, S. Sharmila, S. Poongothai, M. Haritha, S. Devi, K. Kannan, A. Menaga
🤖 gxceed AI 要約
日本語
ヤムナー川の水質劣化と炭素オフセット能力評価のため、不確実性を考慮した枠組みを開発。楕円体単値中性集合モデルと二つの三角集約演算子を用いて、上流から下流への生態状態の勾配を明らかにし、下流の工業地域で効率が急減することを発見。水質診断と炭素オフセットポテンシャルを結びつけ、持続可能な河川管理を支援する。
English
This paper develops an uncertainty-aware framework for water quality detection and carbon offset estimation in the Yamuna River. Using ellipsoidal neutrosophic modeling and dual aggregation operators, it reveals a pronounced upstream-downstream gradient in ecological condition and links water quality diagnostics to carbon offset potential. The framework identifies critical degradation hotspots and supports climate-relevant river basin assessment.
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
インドのヤムナー川を対象とするが、不確実性考慮の水質評価と炭素オフセット推定手法は、日本の河川管理やカーボンニュートラル目標への応用可能性がある。SSBJや有報での生態系サービス評価に活用できる示唆を含む。
In the global GX context
This paper provides a novel framework linking water quality and carbon offset estimation, globally relevant for climate-resilient water management. The methodology can be adapted to other river systems and supports integration of ecosystem services into climate disclosure frameworks like TCFD/ISSB.
👥 読者別の含意
🔬研究者:Researchers can adopt the uncertainty-aware aggregation operators for environmental monitoring and carbon accounting.
🏢実務担当者:Water management authorities can use the framework to identify pollution hotspots and estimate carbon offset capacity for remediation planning.
🏛政策担当者:Policymakers can integrate this approach into national water quality and carbon accounting standards.
📄 Abstract(原文)
River water quality deterioration caused by industrialization and urbanization not only threatens public health but also weakens ecosystem services such as carbon assimilation. Conventional water quality indices and deterministic assessment models inadequately represent the heterogeneous and uncertain nature of hydrochemical and microbial monitoring data, particularly in complex river systems like the Yamuna. This study aims to develop an uncertainty-aware framework for (i) reliable detection of water quality degradation hotspots and (ii) quantitative estimation of longitudinal carbon offset capacity along the Yamuna River by explicitly modeling measurement indeterminacy and nonlinear pollution effects. An ellipsoidal single-valued neutrosophic modeling structure is introduced to represent directional and anisotropic uncertainty in physicochemical and microbial parameters. Two trigonometric aggregation operators—ellipsoidal single-valued neutrosophic trigonometric weighted averaging (E-SvNVTWA) and weighted geometric (E-SvNVTWG)—are formulated to capture overall ecological condition and extreme pollution sensitivity, respectively. Neutrosophic efficiency indices derived from 25 CPCB monitoring stations are further linked to a normalized carbon offset estimation model to evaluate ecosystem service potential. The dual-operator framework reveals a pronounced upstream–downstream gradient in ecological condition. Upstream stations (e.g., Dehradun, Hanumanchatti) exhibit high neutrosophic efficiency (> 0.9) and higher relative ecological processing efficiency, while downstream industrial stretches (e.g., Hasanpur, Mohena Palwal) show sharp efficiency decline and near-zero TWG values, indicating ecological functional stress. The TWG operator demonstrates enhanced sensitivity to severe organic and microbial pollution, effectively identifying critical degradation hotspots. The proposed ellipsoidal neutrosophic dual-aggregation model provides a structured uncertainty-aware decision-support framework that integrates uncertainty modeling, nonlinear pollution response, and ecosystem service evaluation. By linking water quality diagnostics with carbon offset potential, the framework advances climate-relevant river basin assessment and supports sustainability-oriented management of heavily stressed river systems.
🔗 Provenance — このレコードを発見したソース
- semanticscholar https://doi.org/10.1038/s41598-026-41525-zfirst seen 2026-05-24 04:51:12 · last seen 2026-05-27 05:04:40
🔔 こうした論文の新着を逃したくない方は キーワードアラート に登録(無料・3キーワードまで)。
gxceed は公開メタデータに基づく研究支援データセットです。要約・翻訳・解説は AI 支援で生成されています。 最終的な解釈・検証は利用者が原典資料に基づいて行うことを前提とします。