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Artificial Intelligence Aided Automated Design for Reliability of Power Electronic Systems

机译:电力系统可靠性的人工智能辅助自动化设计

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This paper proposes a new methodology for automated design of power electronic systems realized through the use of artificial intelligence. Existing approaches do not consider the system's reliability as a performance metric or are limited to reliability evaluation for a certain fixed set of design parameters. The method proposed in this paper establishes a functional relationship between design parameters and reliability metrics, and uses them as the basis for optimal design. The first step in this new framework is to create a nonparametric surrogate model of the power converter that can quickly map the variables characterizing the operating conditions (e.g., ambient temperature and irradiation) and design parameters (e.g., switching frequency and dc link voltage) into variables characterizing the thermal stress of a converter (e.g., mean temperature and temperature variation of its devices). This step can be carried out by training a dedicated artificial neural network (ANN) either on experimental or simulation data. The resulting network is named as ANN(1) and can be deployed as an accurate surrogate converter model. This model can then be used to quickly map the yearly mission profile into a thermal stress profile of any selected device for a large set of design parameter values. The resulting data is then used to train ANN(2), which becomes an overall system representation that explicitly maps the design parameters into a yearly lifetime consumption. To verify the proposed methodology, ANN(2) is deployed in conjunction with the standard converter design tools on an exemplary grid-connected PV converter case study. This study showed how to find the optimal balance between the reliability and output filter size in the system with respect to several design constraints. This paper is also accompanied by a comprehensive dataset that was used for training the ANNs.
机译:本文提出了一种通过使用人工智能实现电力电子系统自动化设计的新方法。现有方法不将系统的可靠性视为性能指标,或者限于对某些固定的设计参数集进行可靠性评估。本文提出的方法建立了设计参数和可靠性指标之间的功能关系,并将其用作优化设计的基础。这个新框架的第一步是创建功率转换器的非参数替代模型,该模型可以快速将表征工作条件(例如,环境温度和辐射)的变量和设计参数(例如,开关频率和直流母线电压)映射到表征转换器热应力的变量(例如,平均温度和其设备的温度变化)。可以通过在实验或仿真数据上训练专用的人工神经网络(ANN)来执行此步骤。生成的网络称为ANN(1),可以部署为准确的替代转换器模型。然后,可以使用该模型将大量的设计参数值快速将年度任务概况映射到任何选定设备的热应力概况。然后,将得到的数据用于训练ANN(2),这将成为一个整体系统表示形式,将设计参数明确映射到每年的生命周期消耗中。为了验证所提出的方法,将ANN(2)与标准转换器设计工具一起部署在示例性的并网PV转换器案例研究中。这项研究表明,如何在几个设计约束条件下找到系统可靠性和输出滤波器尺寸之间的最佳平衡。本文还随附了用于训练ANN的综合数据集。

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