基于过程数据的分布式发电异常检测神经网络

Max Klein, Gregor Thiele, Adalbert Fono, Niloufar Khorsandi, D. Schade, J. Krüger
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引用次数: 2

摘要

可再生能源在总能源供应中所占的份额越来越大,其中包括越来越多的小型、分散的能源生产,这些能源也提供控制能源。这些分散的电站通常组合成一个虚拟发电厂,通过互联网连接接管个人参与者的监测和控制。这种高度自动化和大量频繁变化的订户在检测异常方面带来了新的挑战。需要快速适应、可变和可靠的异常检测方法。本文比较了两种利用神经网络检测热电联产实际过程数据异常行为的方法。为了包括过程动力学,一种方法包括专门设计的特性,而另一种方法使用长短期记忆(LSTM)。这两种方法都能检测到基本的异常。对于更苛刻的异常,这两种方法各自的优点和缺点变得明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Process data based Anomaly detection in distributed energy generation using Neural Networks
The increasing share of renewable energies in the total energy supply includes a growing number of small, decentralized energy generation which also provides control energy. These decentralized stations are usually combined to a virtual power plant which takes over the monitoring and control of the individual participants via an Internet connection. This high degree of automation and the large number of frequently changing subscribers creates new challenges in terms of detecting anomalies. Quickly adaptable, variable and reliable methods of anomaly detection are required. This paper compares two approaches using Neural Networks (NN) with respect to their ability to detect anomalous behavior in real process data of a combined heat and power plant. In order to include process dynamics, one approach includes specifically engineered features, while the other approach uses Long-Short-Term-Memory (LSTM). Both approaches are able to detect rudimentary anomalies. For more demanding anomalies, the respective strengths and weaknesses of the two approaches become apparent.
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