A Novel LSTM Pipeline to Detect Anomalies in Manufacturing Production (Datasets)
收藏IEEE2026-04-17 收录
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https://ieee-dataport.org/documents/novel-lstm-pipeline-detect-anomalies-manufacturing-production-datasets
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资源简介:
This dataset includes the relevant data for the journal article titled 'A Novel LSTM Pipeline to Detect Anomalies in Manufacturing Production'. In this paper, we present a novel anomaly detection method using a semi-supervised LSTM forecasting approach to highlight process anomalies in a complex, real-world dataset in an automotive manufacturing setting. This data includes two time-series subsets, each with 5000 labeled observations. Both subsets were recorded using an inbuilt torque-time sensor within a DC nut runner tool used to fasten nuts onto various parts throughout the assembly line. The resultant torque time data was labeled by a test engineer and domain expert using the methods outlined in the paper. The labels are denoted in column 1, where 1 = Nominal, 2 = Anomaly No Concern, and -1 = True Anomaly.
提供机构:
Flynn, James; Giannetti, Cinzia; van Dijk, Hessel



