基于时间序列神经网络的iec61850采样测量值在线假数据检测和丢包预测系统

M. E. Hariri, T. Youssef, H. Habib, O. Mohammed
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引用次数: 17

摘要

向智能电网的迁移需要在电力系统应用的实施中进行范式转变。随着IEC 61850的出现,当代变电站自动化系统(SAS)正在利用电子仪器变压器和合并单元通过以太网作为采样测量值(SMV)传输电流和电压测量值。但是,如果变电站的网络资源管理不当,SMV的高传输速率会使其容易丢包。此外,强加给smv的严格的4ms时间限制使得加密这些消息几乎是不可能的。因此,本文提出了一种在线设备级假数据检测系统,该系统可以在不违反IEC 61850规定的4ms时间限制的情况下检测假SMV消息。为了保证SAS的可靠运行,本文还提出了一种神经网络-时间序列耦合预测SMV包丢失的方法。提出的算法在一个由合并单元和为此目的开发的智能电子设备组成的系统中实现。在真实的IEC 61850网络上进行的实时实验结果表明,该算法在检测假消息和通过准确预测SMV丢包来提高保护方案的鲁棒性方面取得了良好的效果。
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Online false data detection and lost packet forecasting system using time series neural networks for IEC 61850 sampled measured values
Migrating to a smart grid requires a paradigm shift in the implementation of power system applications. With the advent of IEC 61850, contemporary Substation Automation Systems (SAS) are utilizing electronic instrument transformers and merging units to transmit current and voltage measurements over Ethernet as Sampled Measured Values (SMV). However, if a substation's network resources are not properly managed, the high transmission rate of SMV would make them prone to packet loss. Also, the strict 4ms time constraint imposed on SMVs makes encrypting these messages nearly impossible. As such, this paper presents an online device level fake data detection system for detecting fake SMV messages without violating the 4ms time constraint set forth by IEC 61850. In order to ensure a reliable SAS operation, this paper also presents a coupled neural network — time series method for forecasting lost SMV packets. The proposed algorithm was implemented in a system composed of merging units and intelligent electronic devices developed for this purpose. Real-time experimental results of the proposed algorithms over a real IEC 61850 network showed excellent results in terms of detecting fake messages and increasing the robustness of protection schemes by accurately forecasting dropped SMV packets.
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