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Generative AI-enabled adaptive material reintegration framework for proactive circular economy waste reclamation in food industrial ecosystems

生成AIを用いた適応型素材再統合フレームワーク:食品産業エコシステムにおけるプロアクティブな循環経済廃棄物回収のための (AI 翻訳)

Rasha M. Abd El-Aziz, Wael Z. El‐sayad, David Neels Ponkumar Devadhas, Alanazi Rayan, Loay F. Hussein

Frontiers in Sustainable Food Systems📚 査読済 / ジャーナル2026-04-01#サプライチェーンOrigin: Global
DOI: 10.3389/fsufs.2026.1758947
原典: https://doi.org/10.3389/fsufs.2026.1758947

🤖 gxceed AI 要約

日本語

本研究は、食品廃棄物の時間的変動と多目的最適化に対応するため、TG-CVAE、PRL層、TG-RDPSOを統合したAI駆動プロアクティブフレームワークを提案する。グローバル食品廃棄物データセットを用いた実験では、資源回収効率10〜14%向上、コスト7〜9%削減、炭素排出削減、予測精度12%向上を達成し、従来モデルを凌駕した。この適応型システムは、食品業界の循環経済と持続可能性に貢献する。

English

This study proposes a proactive AI framework integrating TG-CVAE, PRL layer, and TG-RDPSO for food waste reclamation, addressing temporal variability and multi-objective optimization. Experiments on the Global Food Wastage Dataset show 10-14% improvement in resource recovery, 7-9% cost reduction, carbon emission decrease, and 12% better prediction accuracy over baseline models. The adaptive system supports circular economy and sustainability in food supply chains.

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

日本の食品ロス削減目標(2030年までに2000年比半減)に資するAI活用事例として注目される。廃棄物削減はサプライチェーン排出量(Scope 3)削減にも寄与し、ESG情報開示における資源効率指標の改善に活用できる可能性がある。

In the global GX context

This paper introduces a novel AI method for circular economy in food supply chains, directly addressing waste-related emissions. While not a disclosure study, it provides measurable efficiency gains that could inform future ESG metrics and resource efficiency targets under frameworks like ISSB or GRI.

👥 読者別の含意

🔬研究者:Researchers in AI for sustainability will find the hybrid TG-CVAE and TG-RDPSO framework novel for dynamic waste-stream optimization.

🏢実務担当者:Corporate sustainability teams in food industry can adopt the model to improve waste diversion and reduce costs and emissions.

🏛政策担当者:Policymakers may consider supporting AI-driven circular economy solutions to meet food waste reduction and climate targets.

📄 Abstract(原文)

The growing global demand for food and the inefficiencies across production, processing, and consumption stages have led to alarming levels of food waste, posing serious economic, environmental, and social challenges. Existing studies on food waste reclamation largely employ static optimization or traditional predictive models such as standard VAEs, CVAEs, and evolutionary algorithms, which fail to capture the temporal variability and multi-objective nature of food systems. To address these limitations, this study introduces an innovative AI-driven proactive framework that integrates a Temporal-Gradient Conditional Variational Autoencoder (TG-CVAE), a Proactive Reintegration Latent (PRL) Layer, and Temporal-Gradient Random Drift Particle Swarm Optimization (TG-RDPSO) for material reintegration based on temporal waste-stream modeling. This hybrid model is designed to inspire curiosity among researchers, as it not only predicts waste dynamics but also generates adaptive, sustainability-oriented reintegration strategies across the food value chain. The model was implemented using Python (TensorFlow and PyTorch), with experiments conducted on the Global Food Wastage Dataset (2018–2024) from Kaggle. Results reveal a 10%−14% increase in food resource recovery efficiency, 7%−9% cost reduction, and a notable decrease in carbon emissions, outperforming traditional PSO and GA models. The proposed framework also achieved an overall prediction accuracy improvement of 12% compared to baseline models. This proactive, feedback-enabled system continuously adapts to new data, providing food industry stakeholders with interpretable, decision-support oriented. The findings confirm that the proposed AI-based model is a scalable, intelligent, and human-aligned solution for achieving circularity, efficiency, and sustainability in the food industry ecosystem.

🔗 Provenance — このレコードを発見したソース

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。