Published October 31, 2025
                      
                       | Version v1
                    
                    
                      
                        
                          Dataset
                        
                      
                      
                        
                          
                        
                        
                          Open
                        
                      
                    
                  Straddle Carrier Telemetry data for predictive maintenance from Eurogate Limassol
Creators
Description
The dataset contains telemetry data from straddle carriers and was used for training and testing machine learning models for detecting overtemperature faults. The data originates from the straddle carriers’ PLC and contains measurements for inverter, motor, and engine temperatures, speed, torque, hydraulic pressure, and various error flags. Ambient temperature readings were also recorded using an on-site weather station and incorporated into the dataset. The dataset was manually labeled to consist of two classes: normal and faulty. Faulty data were identified from SCs involved in six recorded incidents, while data from other SCs operating simultaneously were labeled as normal.
Files
      
        inverter_overtemperature_dataset.csv
        
      
    
    
      
        Files
         (2.0 MB)
        
      
    
    | Name | Size | Download all | 
|---|---|---|
| 
            
            md5:cd12c322a97cabb10bc90aabb492b458
             | 
          2.0 MB | Preview Download | 
Additional details
Related works
- Is supplement to
 - Journal article: 10.3390/s25133923 (DOI)