数字孪生与零配置AI:为工业应用构建自动化智能管道 / Digital Twins & ZeroConf AI: Structuring Automated Intelligent Pipelines for Industrial Applications
1️⃣ 一句话总结
这篇论文提出了一种结合数字孪生和零配置AI的模块化方案,旨在简化工业复杂系统中人工智能功能的集成与部署,使其能够自动协调数据处理和智能增强,从而加速智能服务的应用。
The increasing complexity of Cyber-Physical Systems (CPS), particularly in the industrial domain, has amplified the challenges associated with the effective integration of Artificial Intelligence (AI) and Machine Learning (ML) techniques. Fragmentation across IoT and IIoT technologies, manifested through diverse communication protocols, data formats and device capabilities, creates a substantial gap between low-level physical layers and high-level intelligent functionalities. Recently, Digital Twin (DT) technology has emerged as a promising solution, offering structured, interoperable and semantically rich digital representations of physical assets. Current approaches are often siloed and tightly coupled, limiting scalability and reuse of AI functionalities. This work proposes a modular and interoperable solution that enables seamless AI pipeline integration into CPS by minimizing configuration and decoupling the roles of DTs and AI components. We introduce the concept of Zero Configuration (ZeroConf) AI pipelines, where DTs orchestrate data management and intelligent augmentation. The approach is demonstrated in a MicroFactory scenario, showing support for concurrent ML models and dynamic data processing, effectively accelerating the deployment of intelligent services in complex industrial settings.
数字孪生与零配置AI:为工业应用构建自动化智能管道 / Digital Twins & ZeroConf AI: Structuring Automated Intelligent Pipelines for Industrial Applications
这篇论文提出了一种结合数字孪生和零配置AI的模块化方案,旨在简化工业复杂系统中人工智能功能的集成与部署,使其能够自动协调数据处理和智能增强,从而加速智能服务的应用。
源自 arXiv: 2602.04385