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A Reliable Open-Switch Fault Diagnosis Strategy for Grid-tied Photovoltaic Inverter Topology

机译:一种可靠的并网光伏逆变器开路故障诊断策略

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In order to increase the availability and reliability of photovoltaic (PV) systems, fault diagnosis and condition monitoring of inverters are of crucial means to meet the goals. Numerous methods are implemented for fault diagnosis of PV inverters, providing robust features and handling massive amount of data. However, existing methods rely on simplistic frameworks that are incapable of inspecting a wide range of intrinsic and explicit features, as well as being time-consuming. In this paper, a novel method based on a multilayer deep belief network (DBN) is suggested for fault diagnosis, which allows the framework to discover the probabilistic reconstruction across its inputs. This approach equips a robust hierarchical generative model for exploiting features associated with faults, interprets functions that are highly variable, and needs lesser prior information. Moreover, the method instantaneously categorizes the fault conditions, which eventually strengthens the adaptability of applying it on a variety of diagnostic problems in an inverter domain. The proposed method is evaluated using multiple input signals at different sampling frequencies. To evaluate the efficacy of DBN, a test model based on a three-phase 2-level grid-tied PV inverter was used. The results show that the method is capable of achieving precise diagnosis operations.
机译:为了提高光伏系统的可用性和可靠性,逆变器的故障诊断和状态监测是实现这一目标的关键手段。光伏逆变器的故障诊断采用了多种方法,提供了强大的功能和处理大量数据。然而,现有的方法依赖于过于简单的框架,这些框架无法检查广泛的内在和显式特征,并且非常耗时。本文提出了一种基于多层深度信念网络(DBN)的故障诊断新方法,该方法允许框架发现其输入端的概率重构。这种方法装备了一个鲁棒的层次生成模型,用于利用与故障相关的特征,解释高度可变的函数,并且需要较少的先验信息。此外,该方法可对故障条件进行瞬时分类,最终增强了将其应用于逆变器领域各种诊断问题的适应性。使用不同采样频率下的多个输入信号对所提出的方法进行了评估。为了评估DBN的有效性,使用了基于三相2电平并网光伏逆变器的测试模型。结果表明,该方法能够实现精确的诊断操作。

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