Enhancing the accuracy of roboforming through prediction and compensation of elastic behavior using Artificial Intelligence techniques
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Modeling of incremental sheet forming is complex and solution time for complete simulations of a forming operation is currently many times greater than the time required to form the product.Therefore,high accuracy forming will only be achieved either by repeated trials of tool paths with corrections based on measuring the errors in the formed parts,or by use of some form of online shape measurement and feedback control via artificial intelligence(AI)algorithms,to modify the tool path in realtime.AI focuses on the use of data and algorithms to imitate the way that humans learn,gradually improving the accuracy of the process.An AI system is trained with many examples relevant to the task,and it finds statistical structure in these examples that eventually allows the system to come up with rules for automating the task.The major drawback in the robotic incremental sheet forming process is a large number of influencing factors like geometrical inaccuracy due to the spring back effect,limited stiffness of the robotic setup,robot redundancy,etc.These issues in end-product quality can only be dealt with by in-process monitoring and feedback mechanisms governed by AI algorithms.
Successful realization of the project requires the involvement of experts from material science and metal forming(IIT Madras,IIT Ropar,IIT Bhilai,India),robot modeling,and control(Innopolis University,Russia),and Artificial Intelligence(Innopolis University,Russia and IIT Madras,India).
Expected results:Anticipated Results
The following outcomes are expected from the project:
1.Methods of reducing the stiffness model complexity,without compromising accuracy,to simplify the stiffness modeling of heavy-duty industrial serial robots used in sheet metal forming.
2.Algorithms to select the best poses for identification of the reduced model of elasto-static parameters.
3.Methods of planning the robot trajectory,given the force and spring back effect,from simulation studies.
4.Artificial Intelligence based algorithms to enable real-time path correction using information from the robot mounted sensors.
5.Hybrid Artificial intelligence-based model-free and model-based methods for robot calibration.
6.Strategy for calibration and subsequent coordinated motion of two robots while incorporating redundancy based path planning with an objective to attain required shape of metal sheet,simultaneously avoiding the singularity,increasing rigidity etc.
These solutions are required to transfer the technology of robotic metal forming from the laboratory to mass industrial application.The realization of the project will create technologies that will be in demand in airspace industry,medicine,shipbuilding and other areas.
The obtained results will be published in 18 scientific papers indexed in the Scopus database,among which at least four papers in journals included in the Q1.
Modeling of incremental sheet forming is complex and solution time for complete simulations of a forming operation is currently many times greater than the time required to form the product.Therefore,high accuracy forming will only be achieved either by repeated trials of tool paths with corrections based on measuring the errors in the formed parts,or by use of some form of online shape measurement and feedback control via artificial intelligence(AI)algorithms,to modify the tool path in realtime.AI focuses on the use of data and algorithms to imitate the way that humans learn,gradually improving the accuracy of the process.An AI system is trained with many examples relevant to the task,and it finds statistical structure in these examples that eventually allows the system to come up with rules for automating the task.The major drawback in the robotic incremental sheet forming process is a large number of influencing factors like geometrical inaccuracy due to the spring back effect,limited stiffness of the robotic setup,robot redundancy,etc.These issues in end-product quality can only be dealt with by in-process monitoring and feedback mechanisms governed by AI algorithms.
Successful realization of the project requires the involvement of experts from material science and metal forming(IIT Madras,IIT Ropar,IIT Bhilai,India),robot modeling,and control(Innopolis University,Russia),and Artificial Intelligence(Innopolis University,Russia and IIT Madras,India).
Expected results:Anticipated Results
The following outcomes are expected from the project:
1.Methods of reducing the stiffness model complexity,without compromising accuracy,to simplify the stiffness modeling of heavy-duty industrial serial robots used in sheet metal forming.
2.Algorithms to select the best poses for identification of the reduced model of elasto-static parameters.
3.Methods of planning the robot trajectory,given the force and spring back effect,from simulation studies.
4.Artificial Intelligence based algorithms to enable real-time path correction using information from the robot mounted sensors.
5.Hybrid Artificial intelligence-based model-free and model-based methods for robot calibration.
6.Strategy for calibration and subsequent coordinated motion of two robots while incorporating redundancy based path planning with an objective to attain required shape of metal sheet,simultaneously avoiding the singularity,increasing rigidity etc.
These solutions are required to transfer the technology of robotic metal forming from the laboratory to mass industrial application.The realization of the project will create technologies that will be in demand in airspace industry,medicine,shipbuilding and other areas.
The obtained results will be published in 18 scientific papers indexed in the Scopus database,among which at least four papers in journals included in the Q1.
1.Калибровка эластостатической модели манипулятора с использованием планирования эксперимента на основе методов искусственного интеллекта
- Компьютерные исследования и моделирование,т.15,№ 6
2.Comparative Analysis of Springback Compensation for Various Profiles in Incremental Forming
- IEEE 2023 International Russian Automation Conference (RusAutoCon),Sochi,Russian Federation,pp.1040-1045
