Cut-off operation is widely used in the manufacturing industry and is highly energy-intensive. Prediction of specific energy consumption (SEC) using data-driven models is a promising means to understand, analyze and reduce energy consumption for cut-off grinding. The present article aims to put forth a novel methodology to predict and validate the specific energy consumption for cut-off grinding of oxygen-free copper (OFC–C10100) using supervised machine learning techniques. State-of-the-art experimental setup was designed to perform the abrasive cutting of the material at various cutting conditions. First, energy consumption values were predicted on the bases of input process parameters of feed rate, cutting thickness, and cutting tool typ...
In the metal cutting industry, power consumption is an important metric in the analysis of energy ef...
This research provides an insight on the performances of machine learning (ML)-based algorithms for ...
High energy consumption in size reduction operations is one of the most significant issues concernin...
Cut-off operation is widely used in the manufacturing industry and is highly energy-intensive. Predi...
The wide use of machining processes has imposed a large pressure on environment due to energy consum...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
Abstract: Accurate prediction on energy consumption in machining is helpful to evaluate process ener...
Energy prediction of machine tools plays an irreplaceable role in energy planning, management, and c...
Energy consumption process is the basis for energy efficiency improvement of machine tools. Most of ...
In order to quantify energy efficiency potentials of metal cutting machine tools, it is necessary to...
Constructing a prediction model of machining performance is useful to improve its process efficiency...
30th International Conference on Flexible Automation and Intelligent Manufacturing (FAIM2020) (2020 ...
Grinding energy efficiency depends on the appropriate selection of cutting conditions, grinding whee...
The electric arc furnace has been the subject of extensive research due to its complex and chaotic n...
This paper presents the design and implementation issues of a generalized system called mill-cut, de...
In the metal cutting industry, power consumption is an important metric in the analysis of energy ef...
This research provides an insight on the performances of machine learning (ML)-based algorithms for ...
High energy consumption in size reduction operations is one of the most significant issues concernin...
Cut-off operation is widely used in the manufacturing industry and is highly energy-intensive. Predi...
The wide use of machining processes has imposed a large pressure on environment due to energy consum...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
Abstract: Accurate prediction on energy consumption in machining is helpful to evaluate process ener...
Energy prediction of machine tools plays an irreplaceable role in energy planning, management, and c...
Energy consumption process is the basis for energy efficiency improvement of machine tools. Most of ...
In order to quantify energy efficiency potentials of metal cutting machine tools, it is necessary to...
Constructing a prediction model of machining performance is useful to improve its process efficiency...
30th International Conference on Flexible Automation and Intelligent Manufacturing (FAIM2020) (2020 ...
Grinding energy efficiency depends on the appropriate selection of cutting conditions, grinding whee...
The electric arc furnace has been the subject of extensive research due to its complex and chaotic n...
This paper presents the design and implementation issues of a generalized system called mill-cut, de...
In the metal cutting industry, power consumption is an important metric in the analysis of energy ef...
This research provides an insight on the performances of machine learning (ML)-based algorithms for ...
High energy consumption in size reduction operations is one of the most significant issues concernin...