arXiv Open Access 2026

Industrial Data-Service-Knowledge Governance: Toward Integrated and Trusted Intelligence for Industry 5.0

Hailiang Zhao Ziqi Wang Daojiang Hu Zhiwei Ling Wenzhuo Qian +10 lainnya
Lihat Sumber

Abstrak

The convergence of artificial intelligence, cyber-physical systems, and cross-enterprise data ecosystems has propelled industrial intelligence to unprecedented scales. Yet, the absence of a unified trust foundation across data, services, and knowledge layers undermines reliability, accountability, and regulatory compliance in real-world deployments. While existing surveys address isolated aspects, such as data governance, service orchestration, and knowledge representation, none provides a holistic, cross-layer perspective on trustworthiness tailored to industrial settings. To bridge this gap, we present \textsc{Trisk} (TRusted Industrial Data-Service-Knowledge governance), a novel conceptual and taxonomic framework for trustworthy industrial intelligence. Grounded in a five-dimensional trust model (quality, security, privacy, fairness, and explainability), \textsc{Trisk} unifies 120+ representative studies along three orthogonal axes: governance scope (data, service, and knowledge), architectural paradigm (centralized, federated, or edge-embedded), and enabling technology (knowledge graphs, zero-trust policies, causal inference, etc.). We systematically analyze how trust propagates across digital layers, identify critical gaps in semantic interoperability, runtime policy enforcement, and operational/information technologies alignment, and evaluate the maturity of current industrial implementations. Finally, we articulate a forward-looking research agenda for Industry 5.0, advocating for an integrated governance fabric that embeds verifiable trust semantics into every layer of the industrial intelligence stack. This survey serves as both a foundational reference for researchers and a practical roadmap for engineers to deploy trustworthy AI in complex and multi-stakeholder environments.

Topik & Kata Kunci

Penulis (15)

H

Hailiang Zhao

Z

Ziqi Wang

D

Daojiang Hu

Z

Zhiwei Ling

W

Wenzhuo Qian

J

Jiahui Zhai

Y

Yuhao Yang

Z

Zhipeng Gao

M

Mingyi Liu

K

Kai Di

X

Xinkui Zhao

Z

Zhongjie Wang

J

Jianwei Yin

M

MengChu Zhou

S

Shuiguang Deng

Format Sitasi

Zhao, H., Wang, Z., Hu, D., Ling, Z., Qian, W., Zhai, J. et al. (2026). Industrial Data-Service-Knowledge Governance: Toward Integrated and Trusted Intelligence for Industry 5.0. https://arxiv.org/abs/2601.04569

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2026
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓