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Bosch CNC Machining: Process Monitoring (2025 Update)

Industrial IoT
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Abstract

"Benchmark dataset from Bosch for process monitoring of milling machines based on high-resolution acceleration data."

Description

Industrial Context

Collected from a real-world Bosch production plant over a two-year period using a smart data collection system.

Data Features

  • Vibration: Multi-axial acceleration data from brownfield milling machines.
  • States: Labeled normal and abnormal industrial processes.
  • Edge-to-Cloud: Demonstrates real-world industrial IoT challenges like environmental noise.

Use Cases

Ideal for training fault detection and root cause analysis models in manufacturing.

Data Preview

Cycle_IDAcc_XAcc_YAcc_ZStatus
1010.012-0.0051.002Normal
1020.1450.0881.250Fault

Showing first few rows for preview

Cite This Dataset

GitHub (2026). Bosch CNC Machining: Process Monitoring (2025 Update). [Dataset]. GitHub. https://github.com/boschresearch/CNC_Machining

Source: GitHub (2026)

Indexed by IoTDataset.com on Jan 12, 2026

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