[2603.01554] S5-HES Agent: Society 5.0-driven Agentic Framework to Democratize Smart Home Environment Simulation

[2603.01554] S5-HES Agent: Society 5.0-driven Agentic Framework to Democratize Smart Home Environment Simulation

arXiv - AI 4 min read

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Abstract page for arXiv paper 2603.01554: S5-HES Agent: Society 5.0-driven Agentic Framework to Democratize Smart Home Environment Simulation

Computer Science > Artificial Intelligence arXiv:2603.01554 (cs) [Submitted on 2 Mar 2026] Title:S5-HES Agent: Society 5.0-driven Agentic Framework to Democratize Smart Home Environment Simulation Authors:Akila Siriweera, Janani Rangila, Keitaro Naruse, Incheon Paik, Isuru Jayanada View a PDF of the paper titled S5-HES Agent: Society 5.0-driven Agentic Framework to Democratize Smart Home Environment Simulation, by Akila Siriweera and 4 other authors View PDF HTML (experimental) Abstract:The smart home is a key domain within the Society 5.0 vision for a human-centered society. Smart home technologies rapidly evolve, and research should diversify while remaining aligned with Society 5.0 objectives. Democratizing smart home research would engage a broader community of innovators beyond traditional limited experts. This shift necessitates inclusive simulation frameworks that support research across diverse fields in industry and academia. However, existing smart home simulators require significant technical expertise, offer limited adaptability, and lack automated evolution, thereby failing to meet the holistic needs of Society 5.0. These constraints impede researchers from efficiently conducting simulations and experiments for security, energy, health, climate, and socio-economic research. To address these challenges, this paper presents the Society 5.0-driven Smart Home Environment Simulator Agent (S5-HES Agent), an agentic simulation framework that transforms traditional sm...

Originally published on March 03, 2026. Curated by AI News.

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