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Machine learning simplifies industrial laser processes
Laser-based processes for metals are considered to be particularly versatile in industry. Lasers can be used, for example, to precision-weld components together or produce more complex parts using 3D printing -- quickly, precisely and automatically. This is why laser processes are used in numerous sectors, such as the automotive and aviation industries, where maximum precision is required, or in medical technology, for example for the production of customized titanium implants. However, despite their efficiency, laser processes are technically challenging. The complex interactions between the laser and the material make the process sensitive to the smallest of deviations -- whether in the material properties or in the settings of the laser parameters. Even minor fluctuations can lead to errors in production. "To ensure that laser-based processes can be used flexibly and achieve consistent results, we are working on better understanding, monitoring and control of these processes," says Elia Iseli, research group leader in Empa's Advanced Materials Processing laboratory in Thun. In line with these principles, Giulio Masinelli and Chang Rajani, two researchers from his team, want to make laser-based manufacturing techniques more affordable, more efficient and more accessible -- using machine learning. Vaporize or melt? First, the two researchers focused on additive manufacturing, i.e. the 3D printing of metals using lasers. This process, known as powder bed fusion (PBF), works slightly differently to conventional 3D printing. Thin layers of metal powder are melted by the laser in exactly the right spots so that the final component is gradually "welded" out of them. PBF allows the creation of complex geometries that are hardly possible with other processes. Before production can begin, however, a complex series of preliminary tests is almost always required. This is because there are basically two modes for laser processing of metal, including PBF: In conduction mode, the metal is simply melted. In keyhole mode, it is even vaporized in some instances. The slower conduction mode is ideal for thin and very precise components. Keyhole mode is slightly less precise, but much faster and suitable for thicker workpieces. Where exactly the boundary between these two modes lies depends on a variety of parameters. The right settings are needed for the best quality of the final product -- and these vary greatly depending on the material being processed. "Even a new batch of the same starting powder can require completely different settings," says Masinelli. Better quality with fewer experiments Normally, a series of experiments must be carried out before each batch to determine the optimum settings for parameters such as scanning speed and laser power for the respective component. This requires a lot of material and must be supervised by an expert. "That is why many companies cannot afford PBF in the first place," says Masinelli. Masinelli and Rajani have now optimized these experiments using machine learning and data from optical sensors that are already incorporated in the laser machines. The researchers "taught" their algorithm to "see" which welding mode the laser is currently in during a test run using this optical data. Based on this, the algorithm determines the settings for the next test. This reduces the number of preliminary experiments required by around two thirds -- while maintaining the quality of the product. "We hope that our algorithm will enable non-experts to use PBF devices," summarizes Masinelli. All it would take for the algorithm to be used in industry is integration into the firmware of the laser welding machines by the device manufacturers. Real-time optimization PBF is not the only laser process that can be optimized using machine learning. In another project, Rajani and Masinelli focused on laser welding -- but went one step further. They not only optimized the preliminary experiments, but also the welding process itself. Even with the ideal settings, laser welding can be unpredictable, for example if the laser beam hits tiny defects on the surface of the metal. "It is currently not possible to influence the welding process in real time," says Chang Rajani. "This is beyond the capabilities of human experts." The speed at which the data have to be evaluated and decisions to be made is a challenge even for computers. This is why Rajani and Masinelli used a special type of computer chip for this task, a so-called field-programmable gate array (FPGA). "With FPGAs, we know exactly when they will execute a command and how long the execution will take -- which is not the case with a conventional PC," explains Masinelli. Nevertheless, the FPGA in their system is also linked to a PC, which serves as a kind of "backup brain." While the specialized chip is busy observing and controlling the laser parameters, the algorithm on the PC learns from this data. "If we are satisfied with the performance of the algorithm in the virtual environment on the PC, we can 'transfer' it to the FPGA and make the chip more intelligent all at once," explains Masinelli. The two Empa researchers are convinced that machine learning and artificial intelligence can contribute a great deal more in the field of laser processing of metals. That is why they are continuing to develop their algorithms and models and are expanding their area of application -- in collaboration with partners from research and industry.
[2]
Machine learning simplifies industrial laser processes | Newswise
Newswise -- Laser-based processes for metals are considered to be particularly versatile in industry. Lasers can be used, for example, to precision-weld components together or produce more complex parts using 3D printing - quickly, precisely and automatically. This is why laser processes are used in numerous sectors, such as the automotive and aviation industries, where maximum precision is required, or in medical technology, for example for the production of customized titanium implants. However, despite their efficiency, laser processes are technically challenging. The complex interactions between the laser and the material make the process sensitive to the smallest of deviations - whether in the material properties or in the settings of the laser parameters. Even minor fluctuations can lead to errors in production. "To ensure that laser-based processes can be used flexibly and achieve consistent results, we are working on better understanding, monitoring and control of these processes," says Elia Iseli, research group leader in Empa's Advanced Materials Processing laboratory in Thun. In line with these principles, Giulio Masinelli and Chang Rajani, two researchers from his team, want to make laser-based manufacturing techniques more affordable, more efficient and more accessible - using machine learning. First, the two researchers focused on additive manufacturing, i.e. the 3D printing of metals using lasers. This process, known as powder bed fusion (PBF), works slightly differently to conventional 3D printing. Thin layers of metal powder are melted by the laser in exactly the right spots so that the final component is gradually "welded" out of them. PBF allows the creation of complex geometries that are hardly possible with other processes. Before production can begin, however, a complex series of preliminary tests is almost always required. This is because there are basically two modes for laser processing of metal, including PBF: In conduction mode, the metal is simply melted. In keyhole mode, it is even vaporized in some instances. The slower conduction mode is ideal for thin and very precise components. Keyhole mode is slightly less precise, but much faster and suitable for thicker workpieces. Where exactly the boundary between these two modes lies depends on a variety of parameters. The right settings are needed for the best quality of the final product - and these vary greatly depending on the material being processed. "Even a new batch of the same starting powder can require completely different settings," says Masinelli. Normally, a series of experiments must be carried out before each batch to determine the optimum settings for parameters such as scanning speed and laser power for the respective component. This requires a lot of material and must be supervised by an expert. "That is why many companies cannot afford PBF in the first place," says Masinelli. Masinelli and Rajani have now optimized these experiments using machine learning and data from optical sensors that are already incorporated in the laser machines. The researchers "taught" their algorithm to "see" which welding mode the laser is currently in during a test run using this optical data. Based on this, the algorithm determines the settings for the next test. This reduces the number of preliminary experiments required by around two thirds - while maintaining the quality of the product. "We hope that our algorithm will enable non-experts to use PBF devices," summarizes Masinelli. All it would take for the algorithm to be used in industry is integration into the firmware of the laser welding machines by the device manufacturers. PBF is not the only laser process that can be optimized using machine learning. In another project, Rajani and Masinelli focused on laser welding - but went one step further. They not only optimized the preliminary experiments, but also the welding process itself. Even with the ideal settings, laser welding can be unpredictable, for example if the laser beam hits tiny defects on the surface of the metal. "It is currently not possible to influence the welding process in real time," says Chang Rajani. "This is beyond the capabilities of human experts." The speed at which the data have to be evaluated and decisions to be made is a challenge even for computers. This is why Rajani and Masinelli used a special type of computer chip for this task, a so-called field-programmable gate array (FPGA). "With FPGAs, we know exactly when they will execute a command and how long the execution will take - which is not the case with a conventional PC," explains Masinelli. Nevertheless, the FPGA in their system is also linked to a PC, which serves as a kind of "backup brain". While the specialized chip is busy observing and controlling the laser parameters, the algorithm on the PC learns from this data. "If we are satisfied with the performance of the algorithm in the virtual environment on the PC, we can 'transfer' it to the FPGA and make the chip more intelligent all at once," explains Masinelli. The two Empa researchers are convinced that machine learning and artificial intelligence can contribute a great deal more in the field of laser processing of metals. That is why they are continuing to develop their algorithms and models and are expanding their area of application - in collaboration with partners from research and industry.
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Researchers at Empa's Advanced Materials Processing laboratory have developed machine learning algorithms to optimize laser-based metal manufacturing processes, making them more efficient, accessible, and cost-effective.
Researchers at Empa's Advanced Materials Processing laboratory in Thun, Switzerland, have made significant strides in optimizing laser-based metal manufacturing processes using machine learning. This breakthrough promises to make these techniques more affordable, efficient, and accessible to a broader range of industries 12.
Laser-based processes for metals, while versatile and precise, face technical challenges due to the complex interactions between lasers and materials. Even minor fluctuations in material properties or laser parameters can lead to production errors. Elia Iseli, research group leader at Empa, emphasizes the importance of better understanding, monitoring, and controlling these processes 12.
Researchers Giulio Masinelli and Chang Rajani focused on improving additive manufacturing, specifically the powder bed fusion (PBF) process. PBF involves melting thin layers of metal powder with a laser to create complex 3D-printed components 12.
One of the main challenges in PBF is determining the optimal settings for different materials and batches. Traditionally, this requires extensive preliminary testing supervised by experts, making the process costly and time-consuming 12.
Masinelli and Rajani developed a machine learning algorithm that utilizes data from optical sensors already present in laser machines. The algorithm can identify the current welding mode during a test run and determine settings for subsequent tests. This innovation reduces the number of preliminary experiments by approximately two-thirds while maintaining product quality 12.
The researchers extended their work to laser welding, aiming to optimize the process in real-time. They employed a field-programmable gate array (FPGA) chip to handle the high-speed data processing and decision-making required during welding 12.
The system combines the FPGA with a PC acting as a "backup brain." While the FPGA controls laser parameters, the PC's algorithm learns from the data. Once the algorithm's performance is satisfactory in the virtual environment, it can be transferred to the FPGA, enhancing its intelligence 12.
These advancements have the potential to revolutionize various sectors that rely on laser-based metal processing, including:
By making PBF devices more user-friendly, the researchers hope to enable non-experts to utilize this technology. Implementation in industry would require integration into the firmware of laser welding machines by device manufacturers 12.
Masinelli and Rajani believe that machine learning and artificial intelligence have much more to contribute to the field of laser processing of metals. They continue to develop their algorithms and models, expanding their application areas in collaboration with research and industry partners 12.
As these technologies mature, they promise to enhance the precision, efficiency, and accessibility of laser-based metal manufacturing processes across various industries, potentially leading to more innovative and cost-effective production methods.
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