Data acquisition A
rtificial intelligence (AI) is fundamentally reshaping the manufacturing sector. By integrating intelligent systems into production lines and supply chains, companies are unlocking unprecedented levels of efficiency, precision and innovation. This evolution goes beyond simple automation, introducing systems that learn, adapt and predict outcomes. The result is a smarter, more resilient and more sustainable manufacturing landscape.
This article from Mike Bradford, director of Strategic Business Development at DELMIA identifies five key areas where AI is making a significant impact. We will examine how these technologies drive cost savings, improve product quality and create more efficient manufacturing operations. From predicting equipment failure to optimising energy consumption, AI is a powerful force for industrial transformation.
1. PREDICTIVE MAINTENANCE: PREVENTING FAILURES BEFORE THEY HAPPEN Unexpected equipment failure is a primary cause of costly downtime in manufacturing. Traditional maintenance schedules, based on fixed intervals, often result in servicing equipment too early or too late. Predictive maintenance, powered by AI, offers a more intelligent solution. It uses machine learning algorithms to analyse data from sensors on equipment, identifying subtle patterns that signal an impending failure.
By monitoring variables like temperature, vibration and performance metrics, AI can predict when a component is likely to fail. This allows maintenance teams to intervene proactively, scheduling repairs during planned downtime and avoiding catastrophic failures. This data-driven approach significantly reduces unplanned operational stoppages, extends the lifespan of expensive equipment and lowers overall maintenance costs. The shift is from a preventive “maintain it on a fixed schedule” and reactive “fix it when it breaks” model to a predictive, strategic one that optimises maintenance time and effort and minimises equipment failures.
2. PROCESS OPTIMISATION: ENHANCING QUALITY AND THROUGHPUT Achieving peak efficiency on the production line requires constant monitoring and adjustment. AI excels at this complex task by analysing vast datasets from the manufacturing process in real time. Machine learning models can identify bottlenecks, inefficiencies and deviations from optimal parameters that might be invisible to human operators.
For instance, in precision manufacturing, AI can analyse images captured by cameras on the production line to detect microscopic defects in products, thereby ensuring higher quality control standards. In chemical production, algorithms can adjust ingredient mixtures or temperature settings to maximise yield and minimise waste. By continually learning from production data, AI systems refine processes to achieve greater speed, consistency
54 March 2026 Instrumentation Monthly
5 WAYS ARTIFICIAL INTELLIGENCE CAN REVOLUTIONISE MANUFACTURING
As Mike Bradford, director of Strategic Business Development at DELMIA explains, companies that embrace AI are building more efficient, resilient, and sustainable operations. As AI continues to evolve, its capacity to innovate and optimise will further solidify its role as a cornerstone of modern manufacturing.
and quality, leading to higher throughput and reduced operational expenses. Another example is generative AI in machining, where AI can “learn” from machining history and automatically generate NC machining programs based on the starting dimensions of the raw material and the 3D model of the part to be machined, helping to address the increasing critical shortage of skilled workers in manufacturing. Similar AI capabilities can be applied in additive manufacturing.
3. INTELLIGENT AUTOMATION AND ROBOTICS
Automation in manufacturing is not new, but AI is making it smarter and more flexible. Traditional industrial robots are programmed to perform a single, repetitive task with high precision. AI-powered robots, or “cobots” (collaborative robots), are different. They can
perceive their environment, make decisions and work safely alongside human employees. Equipped with advanced sensors and machine vision, these robots can handle more complex and varied tasks, such as assembling intricate products or sorting mixed items. They learn from experience, improving their performance over time. This new generation of automation enables manufacturers to adapt quickly to changes in product design or demand, resulting in more agile production lines. It also frees human workers from dangerous or monotonous tasks, allowing them to focus on more creative and strategic responsibilities. This capability can be extended into the virtual world using generative AI. For manufacturers that need to relocate a production line, add a new line, or even build a new plant, a virtual model can be created based on a point cloud generated by scanning the existing facility. AI can then be used to identify specific robots in the
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