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How Architectural Design and Utility Infrastructure Impacts AI Supporting Campus and Drive Future Innovation, Operational Efficiency and Sustainable Advancement in Utility-Critical Environment

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  • Liang, Qiyuan

Abstract

The construction of artificial intelligence-supported parks is rapidly driving the fundamental transformation of public building service facilities and utility infrastructure from a traditional, single-purpose configuration toward a highly comprehensive and coordinated development paradigm. Based on the strategic spatial planning layout of the campus, the optimized deployment of energy and water support facilities, the seamless connection of transportation and communication networks, and the advanced application of key technological facilities, the complex spatial coupling relationship between architectural design construction and public building service infrastructure tools is rigorously analyzed and studied. Furthermore, the profound value reconfiguration brought by artificial intelligence for the aforementioned collaborative model is systematically clarified. The critical dimensions of spatial elasticity, facility elasticity, dynamic system linkage, intelligent resource allocation, robust disaster recovery, and green low-carbon sustainability proposed in this comprehensive study are precisely the paramount factors influencing the future innovation capacity, operational efficiency, and overall development level of the modern utility-critical environment. The specific technical paths proposed herein, such as constructing a centralized big data center, utilizing sophisticated AI models to promote seamless facility collaboration, conducting adaptive elastic control strategies for critically important facilities, and ensuring high-resilience operation in critical contexts, provide essential strategic directions for the architectural design concept and infrastructure integration development of future artificial intelligence-supported parks.

Suggested Citation

  • Liang, Qiyuan, 2026. "How Architectural Design and Utility Infrastructure Impacts AI Supporting Campus and Drive Future Innovation, Operational Efficiency and Sustainable Advancement in Utility-Critical Environment," European Journal of Engineering and Technologies, Pinnacle Academic Press, vol. 2(2), pages 71-77.
  • Handle: RePEc:dba:ejetaa:v:2:y:2026:i:2:p:71-77
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