The performance of fault diagnosis systems is highly affected by data quality in cyber-physical power systems. These systems generate massive amounts of data that overburden the system with excessive computational costs. Another issue is the presence of noise in recorded measurements, which prevents building a precise decision model. Furthermore, the diagnostic model is often provided with a mixture of redundant measurements that may deviate it from learning normal and fault distributions. This paper presents the effect of feature engineering on mitigating the aforementioned challenges in cyber-physical systems. Feature selection and dimensionality reduction methods are combined with decision models to simulate data-driven fault diagnosis in a 118-bus power system. A comparative study is enabled accordingly to compare several advanced techniques in both domains. Dimensionality reduction and feature selection methods are compared both jointly and separately. Finally, experiments are concluded, and a setting is suggested that enhances data quality for fault diagnosis.
翻译:断层诊断系统的性能受到网络物理动力系统数据质量的严重影响。这些系统产生大量数据,使系统负担过重,计算成本过高。另一个问题是记录测量中存在噪音,这妨碍了建立精确的决定模型。此外,诊断模型往往得到重复的混合测量,可能使其与学习正常和断层分布脱节。本文介绍了特效工程对减轻上述网络物理系统中挑战的影响。特征选择和维度减少方法与模拟118-公共汽车动力系统中数据驱动的断层诊断的决策模型相结合。因此,比较研究能够比较两个领域的一些先进技术。分层减少和特征选择方法是联合和分别比较的。最后,完成了实验,并提出了提高断层诊断数据质量的设置。</s>