2019
DOI: 10.3390/en12091799
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Deep Learning Approach of Energy Estimation Model of Remote Laser Welding

Abstract: Due to concerns about energy use in production systems, energy-efficient processes have received much interest from the automotive industry recently. Remote laser welding is an innovative assembly process, but has a critical issue with the energy consumption. Robot companies provide only the average energy use in the technical specification, but process parameters such as robot movement, laser use, and welding path also affect the energy use. Existing literature focuses on measuring energy in standardized cond… Show more

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Cited by 9 publications
(3 citation statements)
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References 20 publications
(26 reference statements)
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“…The contribution benchmarks a collection of machine learning methods (e.g., Lasso-Lars Regression and Random Forest) for electrical power prediction across the whole value chain covering different levels of production-i.e., machines, process chain and technical building services. An approach at the machine level for remote laser welding of a car back door is proposed in [22]. The neural network-based approach considers machine specifications as well as variations of process parameters to estimate the process steps' energy consumption.…”
Section: Cyber Physical Production Systemsmentioning
confidence: 99%
“…The contribution benchmarks a collection of machine learning methods (e.g., Lasso-Lars Regression and Random Forest) for electrical power prediction across the whole value chain covering different levels of production-i.e., machines, process chain and technical building services. An approach at the machine level for remote laser welding of a car back door is proposed in [22]. The neural network-based approach considers machine specifications as well as variations of process parameters to estimate the process steps' energy consumption.…”
Section: Cyber Physical Production Systemsmentioning
confidence: 99%
“…In a manner similar to ISO 14649-201, the relationship between the machine process and power sensor provides evidence to estimate the power profile [17]. Um et al developed a method to integrate process data and machine specifications [18]. The deep learning approach is proposed as a means to recognize the hidden correlations of multi-sensor data and process parameters.…”
Section: High-level Informationmentioning
confidence: 99%
“…Um et al [3] investigated the use of deep learning for controlling the energy consumption due to remote laser welding process. Such a process is widely used in the automotive sector due to its flexibility and versatility.…”
Section: Manufacturing Processes Energy Efficiency Studiesmentioning
confidence: 99%