With the ongoing digitalization of industrial production, innovative ways of creating energy transparency on the shop floor are emerging. This paper presents a sensor reduced approach to enable condition-based energy monitoring for different degrees of machine data availability. It differentiates between scenarios in which a wide range of machine data can be accessed and thus, machine learning approaches can be applied, and others in which only basic process information can be correlated to data from mobile power measurements. The presented approach is deployed and discussed for an EMAG machine tool in the ETA research factory at the Technische Universität Darmstadt
Data collection is one major prerequisite for energy efficient production facilities, enabling furth...
AbstractEnergy monitoring is one major prerequisite for energy efficiency measures. Energy and power...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...
A prerequisite to identify energy efficiency potentials and to improve energy efficiency is the meas...
Approaches to detect energy efficiency measures are associated with time consuming analysis requirin...
A standardized and high frequent collection of energy data is a powerful tool to enhance industrial ...
With the ongoing digitalization of industrial production, an increasing number of energy measuring p...
In the highly competitive modern-day industrial landscape, characterized by globalization and resour...
Abstract—To reduce energy consumption for sustainable and energy-efficient manufacturing, a good und...
In times of rising energy costs and increasing customer awareness of sustainable production methods,...
The environmental impacts of manufacturing systems can be improved by reducing the energy consumptio...
In order to quantify energy efficiency potentials of metal cutting machine tools, it is necessary to...
While machine learning has made inroads into many industries, power systems have some unique applica...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Energy monitoring is one major prerequisite for energy efficiency measures. Energy and power data th...
Data collection is one major prerequisite for energy efficient production facilities, enabling furth...
AbstractEnergy monitoring is one major prerequisite for energy efficiency measures. Energy and power...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...
A prerequisite to identify energy efficiency potentials and to improve energy efficiency is the meas...
Approaches to detect energy efficiency measures are associated with time consuming analysis requirin...
A standardized and high frequent collection of energy data is a powerful tool to enhance industrial ...
With the ongoing digitalization of industrial production, an increasing number of energy measuring p...
In the highly competitive modern-day industrial landscape, characterized by globalization and resour...
Abstract—To reduce energy consumption for sustainable and energy-efficient manufacturing, a good und...
In times of rising energy costs and increasing customer awareness of sustainable production methods,...
The environmental impacts of manufacturing systems can be improved by reducing the energy consumptio...
In order to quantify energy efficiency potentials of metal cutting machine tools, it is necessary to...
While machine learning has made inroads into many industries, power systems have some unique applica...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Energy monitoring is one major prerequisite for energy efficiency measures. Energy and power data th...
Data collection is one major prerequisite for energy efficient production facilities, enabling furth...
AbstractEnergy monitoring is one major prerequisite for energy efficiency measures. Energy and power...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...