作者
Dinithi Jayaratne, Daswin De Silva, Damminda Alahakoon, Xinghuo Yu
发表日期
2021/12
期刊
Discover Artificial Intelligence
卷号
1
页码范围
1-13
出版商
Springer International Publishing
简介
The embedded, computational and cloud elements of industrial cyber physical systems (CPS) generate large volumes of data at high velocity to support the operations and functions of corresponding time-critical and mission-critical physical entities. Given the non-deterministic nature of these entities, the generated data streams are susceptible to dynamic and abrupt changes. Such changes, which are formally defined as concept drifts, leads to a decline in the accuracy and robustness of predicted CPS behaviors. Most existing work in concept drift detection are classifier dependent and require labeled data. However, CPS data streams are unlabeled, unstructured and change over time. In this paper, we propose an unsupervised machine learning algorithm for continuous concept drift detection in industrial CPS. This algorithm demonstrates three types of unsupervised learning, online, incremental and …
引用总数
20212022202320242654