Industrial Electric Motor Thermography Dataset
Data Science and Analytics
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£2,000
About
This data product consists of a structured dataset of real thermographic inspections of electric motors operating in an industrial plant. The dataset is designed to support condition monitoring, fault detection, and predictive maintenance applications.
Each inspection captures thermal behavior under real operating conditions, providing both radiometric and visual information. The dataset is organized chronologically and labeled based on equipment condition (healthy vs. faulty), making it particularly valuable for supervised machine learning tasks.
The significance of this dataset lies in its realism: it reflects actual industrial environments, including operational variability, noise, and naturally occurring faults, which are often missing in synthetic or laboratory datasets.
Data Product Features
Each record in the dataset corresponds to a thermographic acquisition and includes the following key elements:
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Thermographic Image (Radiometric): Infrared image containing full temperature information per pixel.
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Visible Spectrum Image: RGB image captured simultaneously, useful for contextual understanding and visual inspection.
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Temperature Matrix (CSV): Pixel-wise temperature values corresponding to the thermographic image.
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Condition Label: Classification of the motor state (healthy or faulty), derived from the folder structure.
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Acquisition Date: Timestamp or date of data capture.
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Inspection Batch: Grouping identifier corresponding to each data collection session.
Distribution
The dataset is distributed as a hierarchical directory structure reflecting acquisition campaigns over time and equipment condition:
Directory Structure:
- YYYY_MM/
- Healthy/
- Infrared Images/
- Temperature Matrices/
- Visible Spectrum Images/
- Faulty/
- Infrared Images/
- Temperature Matrices/
- Visible Spectrum Images/
- Healthy/
Structure Description:
Top-level folders (YYYY_MM) represent acquisition campaigns grouped by month and year. Each campaign is divided into:
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Healthy: Motors operating under normal conditions.
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Faulty: Motors exhibiting known defects or abnormal behavior.
Within each condition:
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Infrared Images: Radiometric thermographic files captured with the thermal camera.
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Temperature Matrices: CSV files containing pixel-wise temperature values.
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Visible Spectrum Images: Standard RGB images captured alongside thermographic data.
Data Alignment:
Each thermographic image has a one-to-one correspondence with:
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One visible image
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One temperature matrix CSV
File naming conventions enable direct mapping across modalities.
Format:
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Radiometric images: JPEG (Radiometric info included)
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Visible images: JPEG
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Temperature data: CSV (2D matrix of float values in °C)
Estimated Size:
Scales with number of acquisition campaigns
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Data Volume: 990 MB
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Number of records: 5778; 3 files per record (thermal + visible + CSV)
Usage
This data product is ideal for a variety of applications:
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Development of machine learning models for fault detection in electric motors using thermography.
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Predictive maintenance systems based on thermal pattern recognition.
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Multimodal AI combining visual and thermal data for industrial diagnostics.
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Benchmarking and validation of anomaly detection algorithms.
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Research in condition monitoring and industrial AI.
License
Proprietary
AI Training Rights
Licensee is granted a non-exclusive, worldwide, and perpetual right to:
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Use the Data Product to train, fine-tune, and evaluate machine learning models, including large language models.
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Incorporate Data Product content into models and commercialize resulting model outputs.
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Create derivative works (model weights, embeddings, etc.) for any lawful purpose.
Restrictions:
- The Data Product itself may not be sold, redistributed, or shared outside of licensed usage.
- Licensee must comply with all applicable laws, including data protection and privacy regulations.
Who Can Use It
List examples of intended users and their use cases:
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Data Scientists: For training machine learning models for anomaly detection and classification.
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Researchers: For studies in thermography, industrial monitoring, and AI.
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Industrial Companies: For developing predictive maintenance solutions.
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Technology Providers: For building diagnostic tools or integrating into monitoring platforms.
Additional notes
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The data has been acquired using a Hikmicro B20 thermal camera, ensuring consistent acquisition parameters across the dataset.
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The availability of both radiometric data and raw temperature matrices allows for flexible processing pipelines, from image-based deep learning to physics-based analysis.
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The dataset supports both supervised and unsupervised learning approaches, including anomaly detection, classification, and segmentation tasks.
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Real industrial variability (ambient conditions, load changes, installation differences) is inherently captured, increasing model robustness in real-world deployments.
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The dataset’s folder-based labeling strategy ensures traceability and minimizes annotation ambiguity, as condition labels are assigned at acquisition time rather than post-processed.
Listing Stats
VIEWS
5
DELIVERY
INSTANT DOWNLOAD
LISTED
18/03/2026
UPDATED
24/03/2026
REGION
EUROPE
QUALITY
5 / 5
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£2,000
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