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Deep Learning Based Fault Diagnostic Technique for Grid Connected Inverter

机译:基于深度学习的网格连接逆变器故障诊断技术

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The global paradigm shift from conventional energy resources to the renewable resources has propelled the adoption of Photovoltaic (PV) as an alternative energy source. With the increased focus on PV systems, the reliability and stability of grid-connected solar inverters is a major area of interest. The occurrence of fault in any part of the inverter may severely affect the operation of the whole system leading to adverse effects at the grid end. To improve the system reliability, it is imperative to have a Fault diagnostic mechanism that is capable of identifying and classifying such failure conditions. This paper proposes an intelligent data driven Deep Learning based fault detection and classification technique for grid connected single phase PV Inverters. The fault diagnostic scheme is implemented in MATLAB. The training accuracy obtained is 99% and testing accuracy is 98.3%. Hence, the proposed technique is effective and satisfies the requirements of a fault diagnostic classifier.
机译:从传统能源资源到可再生资源的全球范式转移推动了光伏(PV)作为替代能源的采用。随着对光伏系统的重点增加,网格连接的太阳能逆变器的可靠性和稳定性是一个主要感兴趣的领域。逆变器的任何部分发生故障可能会严重影响整个系统的操作,导致网格端的不利影响。为了提高系统可靠性,必须具有能够识别和分类此类故障条件的故障诊断机制。本文提出了一种智能数据驱动的基于深度学习的基于深度学习的网格连接单相PV逆变器的分类技术。故障诊断方案在MATLAB中实现。获得的训练准确性为99%,测试精度为98.3%。因此,所提出的技术是有效的,满足故障诊断分类器的要求。

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