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Ontology Neural Network and ORTSF: A Framework for Topological Reasoning and Delay-Robust Control

Ontology Neural Network and ORTSF: A Framework for Topological Reasoning and Delay-Robust Control

来源:Arxiv_logoArxiv
英文摘要

The advancement of autonomous robotic systems has led to impressive capabilities in perception, localization, mapping, and control. Yet, a fundamental gap remains: existing frameworks excel at geometric reasoning and dynamic stability but fall short in representing and preserving relational semantics, contextual reasoning, and cognitive transparency essential for collaboration in dynamic, human-centric environments. This paper introduces a unified architecture comprising the Ontology Neural Network (ONN) and the Ontological Real-Time Semantic Fabric (ORTSF) to address this gap. The ONN formalizes relational semantic reasoning as a dynamic topological process. By embedding Forman-Ricci curvature, persistent homology, and semantic tensor structures within a unified loss formulation, ONN ensures that relational integrity and topological coherence are preserved as scenes evolve over time. The ORTSF transforms reasoning traces into actionable control commands while compensating for system delays. It integrates predictive and delay-aware operators that ensure phase margin preservation and continuity of control signals, even under significant latency conditions. Empirical studies demonstrate the ONN + ORTSF framework's ability to unify semantic cognition and robust control, providing a mathematically principled and practically viable solution for cognitive robotics.

Jaehong Oh

数学自动化基础理论自动化技术、自动化技术设备

Jaehong Oh.Ontology Neural Network and ORTSF: A Framework for Topological Reasoning and Delay-Robust Control[EB/OL].(2025-06-24)[2025-07-16].https://arxiv.org/abs/2506.19277.点此复制

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