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The role of data fusion in predictive maintenance using digital twin

机译:数据融合在使用数字双单预测维护中的作用

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Modern aerospace industry is migrating from reactive to proactive and predictive maintenance to increase platform operational availability and efficiency, extend its useful life cycle and reduce its life cycle cost. Multiphysics modeling together with data-driven analytics generate a new paradigm called "Digital Twin." The digital twin is actually a living model of the physical asset or system, which continually adapts to operational changes based on the collected online data and information, and can forecast the future of the corresponding physical counterpart. This paper reviews the overall framework to develop a digital twin coupled with the industrial Internet of Things technology to advance aerospace platforms autonomy. Data fusion techniques particularly play a significant role in the digital twin framework. The flow of information from raw data to high-level decision making is propelled by sensor-to-sensor, sensor-to-model, and model-to-model fusion. This paper further discusses and identifies the role of data fusion in the digital twin framework for aircraft predictive maintenance.
机译:现代航空航天行业正在从无功以积极和预测的维护迁移,以提高平台运营可用性和效率,扩展其使用寿命周期并降低其生命周期成本。与数据驱动的分析一起建模的多体学习会生成一个名为“数字双胞胎”的新范式。数字双胞胎实际上是物理资产或系统的生存模型,它不断适应基于收集的在线数据和信息的操作变化,并且可以预测相应物理对应的未来。本文综述了开发数字双胞胎的整体框架,加上工业技术互联网技术,以推动航空航天平台自治。数据融合技术特别在数字双胞胎框架中发挥重要作用。从RAW数据到高级决策的信息流程由传感器到传感器,传感器到型号和模型到模型融合推进。本文进一步讨论并确定了数据融合在飞机预测维护数字双胞胎框架中的作用。

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