Machine learning (ML) can be a valuable tool for discovering opportunities to save energy and resources in manufacturing systems. However, the hype around ML in the context of Industry 4.0 in the past few years has led to blind usage of the approach, occasionally resulting in usage when another analysis approach would be better suited. The research presented here uses a novel matrix approach to address this lack of differentiation of when to best use ML for improving energy and resource efficiency in manufacturing, by systematically identifying situations in which ML is well suited. Seventeen generic levers for improving manufacturing energy and resource efficiency are defined. Next, a generic list of six manufacturing data scenarios for wh...
Industry 4.0 is currently developing quite rapidly, one of the technologies that is currently very p...
Industry 4.0 is currently developing quite rapidly, one of the technologies that is currently very p...
Over the past six decades, many companies have discovered the potential of computer-controlled syste...
Part 12: Applications of Machine Learning in Production ManagementInternational audienceCurrently, m...
In manufacturing companies, especially in SMEs, the optimization of processes in terms of resource c...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
More and more industries are aspiring to achieve a successful production using the known artificial ...
Approaches to detect energy efficiency measures are associated with time consuming analysis requirin...
The field of machine learning (ML) is of specific interest for production companies as it displays a...
While attracting increasing research attention in science and technology, Machine Learning (ML) is p...
Machine Learning (ML) is a branch of artificial intelligence that studies algorithms able to learn a...
Background: Our day-to-day commodities truly depend on the industrial sector, which is expanding at ...
Data acquisition, storage and processing becomes increasingly affordable and the use of machine lear...
Industry 4.0 is currently developing quite rapidly, one of the technologies that is currently very p...
Industry 4.0 is currently developing quite rapidly, one of the technologies that is currently very p...
Over the past six decades, many companies have discovered the potential of computer-controlled syste...
Part 12: Applications of Machine Learning in Production ManagementInternational audienceCurrently, m...
In manufacturing companies, especially in SMEs, the optimization of processes in terms of resource c...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
More and more industries are aspiring to achieve a successful production using the known artificial ...
Approaches to detect energy efficiency measures are associated with time consuming analysis requirin...
The field of machine learning (ML) is of specific interest for production companies as it displays a...
While attracting increasing research attention in science and technology, Machine Learning (ML) is p...
Machine Learning (ML) is a branch of artificial intelligence that studies algorithms able to learn a...
Background: Our day-to-day commodities truly depend on the industrial sector, which is expanding at ...
Data acquisition, storage and processing becomes increasingly affordable and the use of machine lear...
Industry 4.0 is currently developing quite rapidly, one of the technologies that is currently very p...
Industry 4.0 is currently developing quite rapidly, one of the technologies that is currently very p...
Over the past six decades, many companies have discovered the potential of computer-controlled syste...