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Assessment of an adaptive neuro fuzzy inference system for islanding detection in distributed generation

机译:分布式发电中孤岛检测的自适应神经模糊推理系统评估

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摘要

This paper proposes a new integrated diagnostic system for islanding detection by means of an adaptive neuro-fuzzy inference system (ANFIS). Islanding detection and prevention are mandatory requirements for grid connected distributed generation (DG) systems. Several methods based on passive and active detection scheme have been proposed. While passive schemes have a large non detection zone (NDZ), the concern has been raised on active method due to their degrading power quality effect. Reliably detecting this condition is regarded by many as an ongoing challenge as existing methods are not entirely satisfactory. The main emphasis of the proposed scheme is to reduce the NDZ to as close as possible and to keep the output power quality unchanged. In addition, this technique can also overcome the problem of setting the detection thresholds inherent in the existing techniques. This approach utilizes different parameters such as rate of change of frequency and rate of change of power and uses them as the input sets for training a neuro-fuzzy inference system for intelligent islanding detection. To validate the feasibility of this approach the method has been validated through several conditions and different loading, switching operation and network conditions. Simulation studies show that the ANFIS-based algorithm detects islanding situation more accurately than other algorithms and found to work effectively in the situations where other methods fail. Moreover, for those regions which are in need of a better visualization, the proposed approach would serve as an efficient aid such that the main power disconnection can be better distinguished.
机译:本文提出了一种新的集成诊断系统,用于通过自适应神经模糊推理系统(ANFIS)进行孤岛检测。孤岛检测和预防是并网分布式发电(DG)系统的强制性要求。提出了几种基于被动和主动检测方案的方法。尽管无源方案具有较大的非检测区(NDZ),但由于有源方法会降低电能质量效果,因此引起了人们的关注。由于现有方法并不完全令人满意,因此可靠地检测这种状况被许多人视为一项持续的挑战。提出的方案的主要重点是将NDZ减小到尽可能近,并保持输出功率质量不变。另外,该技术还可以克服设置现有技术中固有的检测阈值的问题。这种方法利用了不同的参数,例如频率变化率和功率变化率,并将它们用作训练神经模糊推理系统进行智能岛检测的输入集。为了验证这种方法的可行性,该方法已经通过几种条件以及不同的负载,交换操作和网络条件进行了验证。仿真研究表明,基于ANFIS的算法比其他算法能够更准确地检测出孤岛情况,并发现在其他方法失败的情况下可以有效地工作。此外,对于那些需要更好可视化的区域,建议的方法将作为一种有效的辅助手段,以便可以更好地区分主电源断开。

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