Intelligently automated into a sustainable future
While robotics has established itself as an "everyday tool" in manufacturing over the past four decades, artificial intelligence (AI) is still at the beginning of its history in CNC manufacturing.
However, the potential of the interplay between automation and AI is already foreseeable and promises answers to several challenges at once, such as the shortage of skilled workers and climate change.
The first robots were used in industrial production environments as early as the 1960s, in the automotive industry. However, it would take around two decades before the automated handling assistants made their first forays into the machine tool industry, taking on tasks such as material handling, workpiece loading and unloading and assembly processes. Another four decades later, robots are no longer "exotic" on the shop floor. Even more and more small and medium-sized companies are now relying on flexible automation when it comes to increasing productivity and efficiency, and particularly the service life of machines.
The current popularity of robots in production technology is also evident at DMG MORI, where automation is a mainstay of the current Machining Transformation (MX) and where incoming orders in this area have increased continuously in recent years. The automation portfolio of the world's leading manufacturer of high-precision machine tools is correspondingly wide-ranging, with 58 products in 14 product lines. The fields of application range from individual machines to huge flexible production systems, which are always designed and implemented by DMG MORI for the customer according to the motto "Automation from a single source" - now even with driverless transport systems for supplying the production cells and systems with workpieces, pallets, tools, chips and operating materials and all controlled by the CELL CONTROLLER LPS 4, which also builds the bridge to vertical integration from the shop floor into the company IT.
This paves the way for the vision of the "lights-out factory" with complete automation of intelligently controlled factories. The ambition of this pioneering concept is to be able to produce workpieces in variable batch sizes around the clock with minimal manpower. Raw parts, workpieces, tools and operating materials are then automatically delivered or disposed of and transported away, while all workflows, machines and processes are adaptively adjusted to the respective conditions and requirements in CNC production.
This leads us directly to another pillar of the Machining Transformation (MX), the Digital Transformation (DX) at DMG MORI, and in particular to digital twins and artificial intelligence. Digital twins - complete virtual replicas of physical systems - enable detailed monitoring and optimization of manufacturing processes in real time. They provide deep insights into the performance and condition of the machines, enabling proactive maintenance and optimization. The integration of artificial intelligence tools significantly expands the capabilities of manufacturing by recognizing patterns in the collected data and enabling the user to perform predictive analyses and implement adaptive control mechanisms.
Admittedly, digital twins and artificial intelligence are not yet part of everyday life for CNC manufacturers. But given the recent speed of evolution in the digital transformation and, above all, the pace of innovation in the field of artificial intelligence, it seems only a matter of time before these two trending topics find their way into routine manufacturing. This is supported in particular by the major challenges of the future, for which an answer must be found. The increasing shortage of skilled workers in companies should be mentioned here, as well as the green transformation (GX) of manufacturing as a further pillar of the (MX) Machining Transformation and DMG MORI's sustainable response to climate change.
Robotics, automation and artificial intelligence (AI) are the beacons of hope for the life cycle assessment in metalworking and CNC manufacturing. And as visionary as their use sounds, the benefits that are already clearly on the horizon are just as convincing:
Efficient use of resources
- Longer operational life: Robots in combination with artificial intelligence extend the effective service life of production equipment and enable adaptive planning routines.
- Precision and accuracy: Robots and AI-controlled systems work with high precision, which minimizes material waste due to production errors.
- Optimized material usage: AI algorithms can optimize material usage by calculating the best cutting path and the most efficient material distribution.
Energy savings
- Optimized machine control: AI can reduce the energy consumption of machines by adjusting processing parameters and optimizing operating times.
- Predictive Maintenance: Predictive maintenance allows inefficient machines to be identified and serviced at an early stage, preventing energy losses due to inefficient operation.
Waste reduction
- Minimizing waste: Robots and AI systems can detect and adaptively correct errors in real time, which reduces the amount of scrap and waste products.
- Recycling and reuse: AI can help to develop processes that increase the proportion of recycled metal waste and efficiently reintegrate this waste into the production cycle.
Optimized production processes
- Automated process optimization: Robots and AI continuously analyze data from workflows and processes and suggest improvements that lead to more efficient use of resources.
- Flexibility and adaptability: By using robots and AI, manufacturing systems and processes can be quickly adapted to new requirements, avoiding unnecessary production runs and the associated consumption of resources.
Reduction of emissions
- Lower energy consumption: More efficient machines and optimized processes lead to lower energy consumption and thus to a reduction in CO2 emissions.
- Improved logistics: By optimizing production and logistics processes, transport costs and the associated emissions can be reduced.
Sustainable innovations
- Development of environmentally friendly technologies: In research and development, AI can help to identify and develop new, more environmentally friendly technologies and materials.
- Life cycle management: AI can monitor and optimize the entire life cycle of products, leading to more sustainable production methods and a longer product life.