Online Forecasting and Anomaly Detection Based on the ARIMA Model

2 Apr 2021  ·  Kozitsin V, Katser I, Lakontsev D. ·

Real-time diagnostics of complex technical systems such as power plants are critical to keep the system in its working state. An ideal diagnostic system must detect any fault in advance and predict the future state of the technical system, so predictive algorithms are used in the diagnostics. This paper proposes a novel, computationally simple algorithm based on the Auto-Regressive Integrated Moving Average model to solve anomaly detection and forecasting problems. The good performance of the proposed algorithm was confirmed in numerous numerical experiments for both anomaly detection and forecasting problems. Moreover, a description of the Autoregressive Integrated Moving Average Fault Detection (ARIMAFD) library, which includes the proposed algorithms, is provided in this paper. The developed algorithm proves to be an efficient algorithm and can be applied to problems related to anomaly detection and technological parameter forecasting in real diagnostic systems.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Anomaly Detection Numenta Anomaly Benchmark ARIMA AD NAB score 65.03 # 3

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