面向电力电子应用的具有自我感知能力的基于 FPGA 的降序数字孪生系统实现方案

IF 2.3 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE journal of radio frequency identification Pub Date : 2024-03-27 DOI:10.1109/JRFID.2024.3404563
Justus Nwoke;Marco Milanesi;Jairo Viola;YangQuan Chen;Antonio Visioli
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引用次数: 0

摘要

在动态变化的条件下,开发精确的数学模型或数据驱动模型以进行有效的控制器设计变得越来越具有挑战性。因此,数字孪生(DT)的概念作为物理资产的虚拟代表,已被引入作为流程建模、设计和控制实施的工具,同时提供系统的额外知识,用于实现对资产的感知能力。然而,过去的数字孪生模型非常复杂,需要花费昂贵的计算时间(视应用而定)才能提供最精确的系统表示,这限制了其在边缘、嵌入式和寄存器传输级计算领域的应用。因此,使用低阶数字孪生模型是让 DT 更接近物理资产的一种替代方法。考虑到这些挑战,我们提出了一种基于 FPGA 的降阶数字孪生实施方案,它直接从真实系统中获取数据,与虚拟系统并行运行,并启用感知机制来改进系统的运行。这种设置消除了大量数据传输、云接口和昂贵的计算时间,从而实现了更快、更高效的 DT。为了说明这种嵌入式数字孪生的能力,我们介绍了一个以监控电力转换器为重点的案例研究。该研究涉及为电力转换器建立和实施安全运行区域(SOA),实施错误认知机制,并启用机器学习模型来预测转换器的负载条件和故障事件检测。因此,我们旨在展示我们提出的基于 FPGA 的数字孪生方法在应对实时控制挑战、实现智能控制工程方面的有效性。
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A Reduced-Order Digital Twin FPGA-Based Implementation With Self-Awareness Capabilities for Power Electronics Applications
Developing accurate mathematical or data-driven models for effective controller design under dynamic variable conditions becomes increasingly challenging. For this reason, the concept of a digital twin (DT) as a virtual representation of a physical asset has been introduced as a tool for process modelling, design, and control implementation while providing additional knowledge of the system that can be used to enable awareness capabilities on the asset. However, digital twin models used to be complex, requiring expensive computational times depending on the application to provide the most accurate system representation, limiting its application in edge, embedded, and register transfer level computing domains. Therefore, using reduced-order digital twin models is an alternative to get DT closer to the physical asset. Considering these challenges, we propose a reduced-order FPGA-based digital twin implementation that directly sources data from the real system, operates in parallel with the virtual system, and enables awareness mechanisms to improve the system’s operation. This setup removes large data transfers, cloud interfaces and expensive computational times deriving into a faster and more efficient DT. To illustrate the capabilities of this embedded digital twin, we present a case study focused on monitoring a power converter. The study involves establishing and enforcing a safe operating area (SOA) for the power converter, implementing error awareness mechanisms, and enabling machine learning models to predict converter load conditions and fault events detection. Thus, we aim to showcase the effectiveness of our proposed FPGA-based digital twin approach in addressing real-time control challenges towards smart control engineering.
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