利用单粒子模型在线和离线识别电池传感器中的虚假数据注入攻击

IF 3.3 Q3 ENERGY & FUELS
Victoria A. O’Brien;Vittal S. Rao;Rodrigo D. Trevizan
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引用次数: 0

摘要

电池储能系统中的电池由电池管理系统监测、保护和控制,而电池管理系统的传感器很容易受到网络攻击。针对电池电压传感器的虚假数据注入攻击(FDIAs)会影响电池保护功能和对关键电池状态(如充电状态(SoC))的估计。不准确的 SoC 估计会导致电池过度充电和过度放电,从而对电网运行造成灾难性后果。本文提出了一种三管齐下的在线和离线方法,用于检测、识别和分类破坏电池组电压传感器的 FDIA。为了准确模拟串联电池的动态,本文采用了单粒子模型,并使用无特征卡尔曼滤波器估算 SoC。FDIA 的检测、识别和分类是通过调整后的累积和(CUSUM)算法完成的,该算法与基线方法(卡方误差检测器)进行了比较。为确定所提方法的有效性,进行了在线模拟和离线批量模拟。在整个批量模拟中,CUSUM 算法在 99.83% 的情况下检测到了攻击,没有误报,在 97% 的情况下识别出了损坏的传感器,并在 97% 的情况下确定了攻击是正偏还是负偏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online and Offline Identification of False Data Injection Attacks in Battery Sensors Using a Single Particle Model
The cells in battery energy storage systems are monitored, protected, and controlled by battery management systems whose sensors are susceptible to cyberattacks. False data injection attacks (FDIAs) targeting batteries’ voltage sensors affect cell protection functions and the estimation of critical battery states like the state of charge (SoC). Inaccurate SoC estimation could result in battery overcharging and over discharging, which can have disastrous consequences on grid operations. This paper proposes a three-pronged online and offline method to detect, identify, and classify FDIAs corrupting the voltage sensors of a battery stack. To accurately model the dynamics of the series-connected cells a single particle model is used and to estimate the SoC, the unscented Kalman filter is employed. FDIA detection, identification, and classification was accomplished using a tuned cumulative sum (CUSUM) algorithm, which was compared with a baseline method, the chi-squared error detector. Online simulations and offline batch simulations were performed to determine the effectiveness of the proposed approach. Throughout the batch simulations, the CUSUM algorithm detected attacks, with no false positives, in 99.83% of cases, identified the corrupted sensor in 97% of cases, and determined if the attack was positively or negatively biased in 97% of cases.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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