Predictive Maintenance System

Detect Machine Faults
Before They Happen

Upload a CSV exported from your PLC, select the sensor columns, and let the AI diagnose your packaging machine in seconds.

98.96%Model Accuracy
6Fault Types
22Sensor Inputs
<1sAnalysis Time
Upload PLC Data Step 1 of 2
📂
Drop your CSV file here
Exported from TIA Portal, RSLogix, or Unity Pro
Select Sensor Columns Step 2 of 2
— file loaded —

Select exactly 22 sensor columns to feed into the model. Exclude Timestamp, Status, and label columns.

0 / 22 selected
Running neural network inference...
Diagnostic Report
# T_conv I_motor Vib_x Diagnosis Confidence Action
How It Works
01 —
Export from PLC
Export sensor readings as CSV from TIA Portal, RSLogix, or any SCADA system.
02 —
Select Columns
Choose the 22 sensor columns relevant to your machine. Exclude timestamps and labels.
03 —
AI Inference
A neural network (MLP) trained on packaging machine data classifies each row.
04 —
Take Action
Review the fault distribution report and schedule maintenance before failure occurs.