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ASSET RELIABILITY IMPROVED WITH AI MONITORING TECH

  • Sep 5, 2025
  • 3 min read
A new offering that brings intelligent, real-time visual monitoring into the maintenance and reliability space – enabling the early detection of issues such as refractory wear, conveyor damage, and safety non-compliance, especially within high-temperature and high-risk industrial environments such as smelters and minerals processing plants – was launched by Dickinson Group of Companies (DGC) in August.

 

The Vision AI for asset reliability is a smart, camera-based monitoring solution that uses AI to identify problems in real time through the continuous analysis of footage from thermal and optical cameras to detect conditions such as refractory degradation, equipment damage, or safety violations.

 

By combining advanced monitoring with DGC’s “deep operational expertise”, group commercial director Justin Nothnagel says DGC is helping clients reduce unplanned downtime and improve asset health as well as safety performance.


 

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“We believe this represents a meaningful evolution in how reliability is managed across Africa’s metallurgical and industrial sectors,” he says.

 

This remote monitoring solution is especially effective in high-temperature, high-risk settings that are difficult to access or hazardous for personnel to engage, such as smelters and minerals processing plants, where traditional manual inspections may be infrequent or unsafe.

 

“Vision AI acts as an automated set of eyes, monitoring processes and assets 24/7 and triggering alerts long before failures or incidents occur,” explains Nothnagel.


 

SUCCESS THROUGH IMPLEMENTATION


Nothnagel highlights that Vision AI was deployed at a major metals processing facility to monitor the condition of converter refractories using thermal imaging and AI-based crack detection.

 

The system detected a hotspot forming beneath the surface – one that would not have been visible using traditional inspection methods.

 

Because the anomaly was flagged early, he says, the site was able to schedule repairs during a planned maintenance window, preventing a possible breakout and avoiding extended downtime.

 

“This single intervention led to significant cost savings and avoided a major safety hazard,” states Nothnagel.

 

A key challenge with this deployment was adapting the system to harsh plant conditions that included the elements of dust, heat and limited connectivity.

 

Further highlighting Vision AI’s applicability to African applications, he points out that many facilities on the continent operate with legacy infrastructure and limited levels of automation.

 

To overcome this, Nothnagel says Vision AI is deployed using rugged hardware with edge processing, enabling it to function independently of central systems and Internet connectivity, and to integrate with existing workflows using visual dashboards and alerts.

 

“Our team also ensures that deployment layouts are practical and field-ready. Our deep site knowledge allows us to design practical deployment layouts that work around existing operational constraints.”



Workers in hard hats monitor furnace controls and thermal screens beside glowing molten metal in an industrial control room.

 


HOW IT WORKS


Vision AI detects a range of issues early, including refractory damage (wear and cracks) in furnaces and converters; conveyor belt wear, cracks, and foreign object intrusion; unsafe work practices or non-compliance with personal protective equipment; movement of molten metal and equipment near hot zones; and oversized or unsuitable materials entering the process line.

 

By catching these issues in advance, Nothnagel says maintenance can be planned proactively rather than reactively, thereby reducing unplanned downtime, improving process stability, and helping to prevent safety incidents.

 

“Most monitoring systems rely on sensors or scheduled human inspections, which can miss early signs of damage or safety non-compliance.

 

“Vision AI offers visual context and broader field coverage, allowing it to detect surface anomalies, temperature shifts, movement patterns, and other risks that traditional methods might overlook,” he outlines.

 

Further, the system is hardware-agnostic, easy to deploy, and can be used across a range of applications, from conveyor belts to ladle operations, without requiring large-scale infrastructure changes.

 


RETROFIT-ABILITY


Vision AI can be deployed alongside legacy systems without requiring deep integration, owing to its being designed to integrate with most existing environments, whether digital or legacy.

 

It can connect to supervisory control and data acquisition, programmable logic controller, or distributed control system through open platform communications-unified architecture.

 

Dashboards can be accessed using secure cloud platforms or local networks.

Vision AI operates using standard power and network connections, and delivers outputs through user-friendly dashboards or alerts.

 

For plants with low levels of infrastructure, edge-based processing units enable Vision AI to operate independently without relying on high-bandwidth connectivity or advanced IT systems.

 

“This flexibility makes it ideal for brownfield plants, where infrastructure upgrades may not be feasible in the short term.

 

“It’s well-suited for phased adoption, easy to scale once the initial use case proves valuable, so starting small and scaling as needed is feasible,” says Nothnagel.




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By: Donna Slater

Features Managing Editor and Chief Photographer




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