Research on power plant security issues monitoring and fault detection using attention based LSTM model

Q2 Energy Energy Informatics Pub Date : 2025-01-27 DOI:10.1186/s42162-025-00473-0
Shengda Wang, Zeng Dou, Danni Liu, Han Xu, Ji Du
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引用次数: 0

Abstract

Overview

For Photo Voltaic (PV) arrays and Wind systems to operate as efficiently and effectively as possible, fault detection is essential. It is possible to improve the safety of renewable energy systems and guarantee that the service will continue uninterrupted if problem detection and diagnostics are performed in a timely and accurate manner. In general, wind power is one of the three major renewable energy sources, along with solar power and hydropower. Wind power is well distributed around the world, making it suitable to be exploited in human activities for the general welfare of society.

Objectives

A prototype security situational awareness system applicable to the power data communication network service and traffic model should be developed. This will help to successfully enhance the security and service quality of the power data communication network, effectively cope with network security threats in the new environment, and ensure the security of the power plant network access. The traffic of the main network of the existing data communication network will be combined and analyzed, and NQA traffic management algorithms will be studied and proposed. These actions will improve the SLA hierarchical service capability, the service quality of the core services carried by the backbone network, and strengthen the security capability of the new energy power plant communication network access system.

Methodology

For the purpose of this investigation, an attention-based long short-term memory (Att-LSTM) model was used for the categorization of time series actual data. The approach that has been developed is able to identify defects in photovoltaic arrays and inverters, which offers a dependable option for improving the efficiency and dependability of solar energy systems. For the purpose of evaluating the proposed method, a real-world solar energy dataset is used.

Results

The findings acquired from this evaluation are compared to the results received from existing detection approaches such as Cryptography, Intrusion Detection System (IDS) methods, and Network Defense Schemes. The results obtained demonstrate that the suggested method surpasses current fault detection techniques, providing greater accuracy and better performance.

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基于注意力的LSTM模型在电厂安全问题监测与故障检测中的应用研究
为了使光伏(PV)阵列和风力系统尽可能高效地运行,故障检测是必不可少的。如果及时准确地进行问题检测和诊断,就有可能提高可再生能源系统的安全性,并保证服务不间断地继续下去。总的来说,风能与太阳能和水力发电并称为三大可再生能源。风能在世界各地分布良好,适合用于人类活动,以造福社会。目的研制一种适用于电力数据通信网业务和交通模型的安全态势感知系统原型。这将有助于成功提升电力数据通信网络的安全性和服务质量,有效应对新环境下的网络安全威胁,确保电厂网络接入安全。对现有数据通信网主网的流量进行组合分析,研究并提出NQA流量管理算法。这些举措将提高SLA分层服务能力,提高骨干网承载核心业务的服务质量,增强新能源电厂通信网络接入系统的安全保障能力。方法采用基于注意的长短期记忆(at - lstm)模型对时间序列实际数据进行分类。所开发的方法能够识别光伏阵列和逆变器的缺陷,为提高太阳能系统的效率和可靠性提供了可靠的选择。为了评估所提出的方法,使用了一个真实的太阳能数据集。结果将从该评估中获得的结果与现有检测方法(如密码学、入侵检测系统(IDS)方法和网络防御方案)获得的结果进行比较。结果表明,该方法优于现有的故障检测技术,具有更高的精度和更好的性能。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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