Transformer Substation Network Disconnection Prediction via Semantic Reasoning with Causal Modeling
Computer Science and Information Systems, Tome 23 (2026) no. 1
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Reliable communication networks are indispensable for the stable operation of smart grids and substations. Currently, WAPI networks have been widely adopted in relevant scenarios. Nevertheless, WAPI networks are confronted with disconnection risks attributed to complex network topologies, dynamic traffic fluctuations, and external environmental disturbances. Most methods rely on correlation analysis and lack causal interpretability, which restricts their effectiveness in rootcause localization and preventive maintenance practices. To address the problem, we propose a disconnection prediction approach that integrates prompt-driven semantic reasoning with structured causal analysis. The approach constructs a causal event graph that models semantic, temporal, and topological dependencies across devices and alarm sequences after extracts heterogeneous information to unified event representation. Based on the established graph, an inference module combines causal path analysis, structural causal models, and counterfactual reasoning to assess the influence of events, predict emerging disconnection risks, and identify plausible root causes with coherent and interpretable justification. By tightly coupling semantic abstraction with causal reasoning, the proposed approach provides a proactive, explainable, and extensible mechanism for anticipating network disruptions and supporting informed maintenance decisions. Experiments demonstrate that the proposed approach improves prediction accuracy and interpretability, verifying its value for smart grid communication networks.
Keywords:
Causal Inference, Network Disconnection Prediction, Root Cause Analysis, Incident Causality Graph, Substation, Disaster Recovery
Jie Ren; Xiaojun Yao; Hong Chen. Transformer Substation Network Disconnection Prediction via Semantic Reasoning with Causal Modeling. Computer Science and Information Systems, Tome 23 (2026) no. 1. http://geodesic.mathdoc.fr/item/CSIS_2026_23_1_a16/
@article{CSIS_2026_23_1_a16,
author = {Jie Ren and Xiaojun Yao and Hong Chen},
title = {Transformer {Substation} {Network} {Disconnection} {Prediction} via {Semantic} {Reasoning} with {Causal} {Modeling}},
journal = {Computer Science and Information Systems},
year = {2026},
volume = {23},
number = {1},
url = {http://geodesic.mathdoc.fr/item/CSIS_2026_23_1_a16/}
}
TY - JOUR AU - Jie Ren AU - Xiaojun Yao AU - Hong Chen TI - Transformer Substation Network Disconnection Prediction via Semantic Reasoning with Causal Modeling JO - Computer Science and Information Systems PY - 2026 VL - 23 IS - 1 UR - http://geodesic.mathdoc.fr/item/CSIS_2026_23_1_a16/ ID - CSIS_2026_23_1_a16 ER -
%0 Journal Article %A Jie Ren %A Xiaojun Yao %A Hong Chen %T Transformer Substation Network Disconnection Prediction via Semantic Reasoning with Causal Modeling %J Computer Science and Information Systems %D 2026 %V 23 %N 1 %U http://geodesic.mathdoc.fr/item/CSIS_2026_23_1_a16/ %F CSIS_2026_23_1_a16