Datasets
Standard Dataset
A Novel LSTM Pipeline to Detect Anomalies in Manufacturing Production (Datasets)
- Citation Author(s):
- Submitted by:
- James Flynn
- Last updated:
- Mon, 07/08/2024 - 15:59
- DOI:
- 10.21227/e9ew-jn75
- Data Format:
- License:
- Categories:
- Keywords:
Abstract
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.
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.
Labels Key:
1 : Normal Waveform - Waveform appears normal. No action required.
-1 : True Anomaly - Waveform is anomalous and implies some process error has occoured. Action required.
2 : Anomaly No Concern - Waveform is anomalous but upon further inspection no action required.
3 : Rehit - No process has occoured. Repeat process. These can be removed in pre-processing.
Dataset Files
- Test Dataset 1.csv (37.35 MB)
- Test Dataset 2.csv (33.58 MB)
Documentation
Attachment | Size |
---|---|
Read Me | 1.09 KB |