Summary:
This paper proposes a novel anomaly detection methodology for industrial systems based on Digital Twin (DT) ecosystems. In addition to DTs, conceived as a digital representation of a physical entity, this paper proposes a new concept of DT focused on modeling connections between physical behaviors. This new DT concept is called Snitch Digital Twin (SDT). The scope of the SDT is the study of variations between behaviors and support the detection of anomalies between them. The behavior of each physical entity is characterized by three spatiotemporal features computed from each collected measurement. Behavioral anomalies are identified and quantified through modular patterns based on quantile regression and behavioral indexes. Finally, the robustness of the proposed methodology is assessed by comparing it with the other two commonly used algorithms based on Kernel Principal Component Analysis (KPCA) and One-Class Support Vector Machines (OCSVM) in a case study application. The case study is based on the diagnosis of the cooling system of a power-generator diesel engine. The results obtained prove the advantages and goodness of this novel methodology compared to the two traditional algorithms.
Spanish layman's summary:
El concepto de Gemelo Digital se fundamenta en la digitalización del estado de vida y comportamiento activos reales. Este artículo propone un nuevo concepto de Gemelo Digital, llamado Gemelo Digitale Chivato con un gran potencial en aplicaciones de detección de anomalías en sistemas multi-agente.
English layman's summary:
The Digital Twin concept is based on the digitization of the state of life and behavior of real assets. This paper proposes a new concept of Digital Twin, called Snitch Digital Twin with a great potential in anomaly detection applications in multi-agent systems.
Keywords: Anomaly detection; Digital Twins; Behavior characterization; Quantile regression; Diesel generator
JCR Impact Factor and WoS quartile: 8,200 - Q1 (2023)
DOI reference: https://doi.org/10.1016/j.compind.2022.103767
Published on paper: January 2023.
Published on-line: September 2022.
Citation:
P. Calvo-Báscones, A. Voisin, P. Do, M.A. Sanz-Bobi, A collaborative network of digital twins for anomaly detection applications of complex systems. Snitch Digital Twin concept. Computers in Industry. Vol. 144, pp. 103767-1 - 103767-17, January 2023. [Online: September 2022]