NoBOOM
收藏DataCite Commons2025-10-15 更新2026-05-05 收录
下载链接:
https://fdm-fallback.uni-kl.de/RPTU/FB/Informatik/AG-Kloft/0001
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资源简介:
Monitoring chemical processes is necessary to prevent catastrophic failures, optimize costs and profits, and ensure the safety of employees and the environment. A key component of modern monitoring systems is the automated detection of anomalies in sensor data over time, called time series, enabling partial automation of plant operation and adding additional layers of supervision to crucial components. The development of anomaly detection methods in this domain is challenging, since real chemical process data is usually proprietary, and simulated data is generally not a sufficient replacement. In this paper, we present NoBOOM, the first collection of datasets for anomaly detection in real-life chemical process data, including labeled data from a running process at a leading industry partner, and several chemical processes run in a laboratory‑scale plant and a pilot‑scale plant. While we are not able to share every detail about the industrial process, for the laboratory‑ and pilot‑scale plants, we provide comprehensive information on plant configuration, processes run, operation, and, in particular, anomaly events, enabling a differentiated analysis of anomaly detection methods. To demonstrate the complexity of the benchmark, we analyze the data with regard to common issues of time-series anomaly detection (TSAD) benchmarks, including triviality and biases.
提供机构:
Rheinland-Pfälzische Technische Universität Kaiserslautern-Landau
创建时间:
2025-10-15



