© 2018 IEEE. Recent advances in the steel industry have encountered challenges in soliciting decision making solutions for quality control of products based on data mining techniques. In this paper, we present a steel quality control prediction system encompassing with real-world data as well as comprehensive data analysis results. The core process is cautiously designed as a regression problem, which is then best handled by grouping various learning algorithms with their massive resource of historical production datasets. The characteristics of the currently most popular learning models used in regression problem analysis are as well investigated and compared. The performance indicates our steel quality control prediction system based on e...
In this competitive era, manufacturing companies have to focus on the quality of the produced produc...
Forecasting algorithms have been used to support decision making in companies, and it is necessary t...
AbstractIn the context of a rolling mill case study, this paper presents a methodical framework base...
Recent advances in the steel industry have encountered challenges in soliciting decision making solu...
Abstract This article demonstrates the use of data mining methods for evidence-based smart decision...
The steelmaking industry is one of the most energy-intensive industries and is responsible for 4% of...
This work presents three data-driven models based on process data, to estimate different indicators ...
Machine Learning classification models have been trained and validated from a dataset (73 features a...
Insufficient steel quality in mass production can cause extremely costly damage to tooling, producti...
Export of heat treated steel goods has an important impact on the Swedish economy which brings perfo...
In the process of steel plate production, whether cold straightening is required is significant to r...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
The application of modern edge computing solutions within machine tools increasingly empowers the re...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
© 2020 by the authors. This paper presents the application of machine learning in the control of the...
In this competitive era, manufacturing companies have to focus on the quality of the produced produc...
Forecasting algorithms have been used to support decision making in companies, and it is necessary t...
AbstractIn the context of a rolling mill case study, this paper presents a methodical framework base...
Recent advances in the steel industry have encountered challenges in soliciting decision making solu...
Abstract This article demonstrates the use of data mining methods for evidence-based smart decision...
The steelmaking industry is one of the most energy-intensive industries and is responsible for 4% of...
This work presents three data-driven models based on process data, to estimate different indicators ...
Machine Learning classification models have been trained and validated from a dataset (73 features a...
Insufficient steel quality in mass production can cause extremely costly damage to tooling, producti...
Export of heat treated steel goods has an important impact on the Swedish economy which brings perfo...
In the process of steel plate production, whether cold straightening is required is significant to r...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
The application of modern edge computing solutions within machine tools increasingly empowers the re...
Raw data and processed data used in the paper "A predicting model for properties of steel using the ...
© 2020 by the authors. This paper presents the application of machine learning in the control of the...
In this competitive era, manufacturing companies have to focus on the quality of the produced produc...
Forecasting algorithms have been used to support decision making in companies, and it is necessary t...
AbstractIn the context of a rolling mill case study, this paper presents a methodical framework base...