The Rise of Edge Computing in Industrial IoT
The Industrial Internet of Things (IIoT) continues to evolve, and one of the most transformative trends in this space is the rise of edge computing.
As factories and industrial environments generate increasing amounts of data, processing that information close to where it is created — rather than sending everything to the cloud — is becoming essential.
Why Edge Matters in IIoT
Traditional cloud-based models have limitations when it comes to real-time decision-making.
For mission-critical systems such as quality control, utility automation, or production line monitoring, latency and intermittent connectivity can seriously impact performance.
Edge computing addresses these challenges by enabling:
- Real-time decision-making through rule-based logic and automation running directly on edge hardware
- Reduced data bandwidth costs by transmitting only critical information to the cloud or central platforms
- Improved system resilience, allowing operations to continue even during network outages
Real Industrial Impact
In a manufacturing environment, an edge-enabled system can immediately respond to anomalies such as deviations in product weight or unexpected machine temperature changes without waiting for cloud-based validation.
This immediate response capability increases operational uptime, reduces risk, and improves overall quality assurance across production processes.
As IIoT deployments continue to expand across manufacturing, energy, utilities, and infrastructure sectors, edge computing is increasingly becoming the foundation of modern industrial automation.
Automated Weight Validation & QR-Based Traceability for Copper Wire Manufacturing
Industry
Wire & Cable Manufacturing
Solution Type
Industrial IoT | Edge-Based Automation | Hardware + Software Integration
Client Challenge
A copper wire manufacturing company produces wires in multiple specifications, such as:
- Wire size (e.g., 0.75 sq.mm)
- Length (e.g., 40 meters)
- Insulation class (e.g., Class 2, FR)
During production:
- Individual wire coils are packed into small boxes
- Multiple small boxes are then placed into a single large master box
- Each master box carries a QR code containing wire specifications
The Critical Problem
Each master box must meet a strict weight range based on its wire specifications.
Example:
Expected weight: 30.6 kg
Allowed tolerance: 28.6 kg – 32.6 kg
Allowed tolerance: 28.6 kg – 32.6 kg
Issues faced:
- Manual verification caused errors
- Incorrect boxes entered packing and dispatch
- No reliable digital traceability
- Lack of real-time pass/fail visibility
The client needed a fully automated, high-accuracy validation system that works directly on the shop floor.
Aceomation’s Solution
Aceomation designed and implemented a custom Industrial IoT solution combining:
- Custom hardware
- Edge computing
- Automated validation logic
- On-device web application
All processing happens locally, ensuring speed, reliability, and zero dependency on internet connectivity.
System Architecture Overview
QR Scanner + Weight Calibration Hardware → Raspberry Pi (Edge System) → Printer + Dashboard
How the System Works
Step 1: QR Code Identification
Each master box carries a QR code with wire details:
- Wire size
- Length
- Insulation class
When the box reaches the scanning point:
- The QR scanner reads the code
- Data is sent to the system via Ethernet
Step 2: Weight Acquisition
Aceomation built custom hardware to interface with the weight calibration machine
The actual box weight is transmitted to the system via USB communication
Weight data is captured in real time
Step 3: Intelligent Validation
A Node.js backend running on a Raspberry Pi (Linux OS) performs:
- QR data lookup from the local database
- Fetches the allowed weight range
- Compares actual weight vs permissible range
Machine Control & Rejection Logic
To ensure incorrect boxes never reach the packing stage, Aceomation implemented direct machine-level control integrated with the production line.
How Rejection Works
Once the backend completes the weight validation:
- The system determines Pass or Fail in real time
For failed boxes:
- The Aceomation-built hardware sends a control voltage signal to the PLC
- The PLC immediately triggers the rejector mechanism
- The box is physically ejected from the conveyor line
For passed boxes:
- No rejection signal is sent
- The box proceeds to printing and final packing
Step 4: Automated Print ID Generation
For passed boxes:
System generates a unique print ID
Example: A0000001
Example: A0000001
Print data is sent directly to the printer via USB
Box moves forward for final packing
For failed boxes:
Box is automatica
Let’s Solve a Real Industrial challenge
Our systems are actively running in critical industrial environments, delivering measurable results and operational improvements.
24/7 Edge Operation
Designed for continuous, uninterrupted performance.
Sub-second Control
Low-latency processing for time-critical applications.
Secure Data Segregation
Robust security protocols to protect sensitive operational data.
Scalable Architecture
Systems that grow with your multi-site operations.
Industrial IoT & Applied AI Systems, Engineered for Real-World Operations.
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