Industrial brain: a human-like autonomous neuro-symbolic cognitive decision-making system
Junping Wang, Bicheng Wang, Yibo Xuea, Yuan Xie

TL;DR
The paper introduces 'industrial brain', a neuro-symbolic system that models, predicts, and plans resilience in complex industrial networks, outperforming existing methods and generalizing well to unseen data.
Contribution
It presents a novel neuro-symbolic framework combining activity-driven neuro networks and symbolic reasoning for resilience prediction and planning in chaotic industrial systems.
Findings
Achieves up to 10.8% accuracy improvement over existing frameworks.
Generalizes effectively to unseen topologies and dynamics.
Maintains robustness under observational disturbances.
Abstract
Resilience non-equilibrium measurement, the ability to maintain fundamental functionality amidst failures and errors, is crucial for scientific management and engineering applications of industrial chain. The problem is particularly challenging when the number or types of multiple co-evolution of resilience (for example, randomly placed) are extremely chaos. Existing end-to-end deep learning ordinarily do not generalize well to unseen full-feld reconstruction of spatiotemporal co-evolution structure, and predict resilience of network topology, especially in multiple chaos data regimes typically seen in real-world applications. To address this challenge, here we propose industrial brain, a human-like autonomous cognitive decision-making and planning framework integrating higher-order activity-driven neuro network and CT-OODA symbolic reasoning to autonomous plan resilience directly from…
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Taxonomy
TopicsInfrastructure Resilience and Vulnerability Analysis · Regional resilience and development · Cognitive Science and Mapping
