In this paper, the growing significance of data analysis in manufacturing environments is exemplified through a review of relevant literature and a generic framework to aid the ease of adoption of regression-based supervised learning in manufacturing environments. To validate the practicality of the framework, several regression learning techniques are applied to an open-source multi-stage continuous-flow manufacturing process data set to typify inference-driven decision-making that informs the selection of regression learning methods for adoption in real-world manufacturing environments. The investigated regression learning techniques are evaluated in terms of their training time, prediction speed, predictive accuracy (R-squared value), an...
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...
Although textile production is heavily automation-based, it is viewed as a virgin area with regard t...
A Modified Random Forest algorithm (MRF)-based predictive model is proposed for use in man-ufacturin...
With the vast amount of data available, and its increasing complexity in manufacturing processes, tr...
A production line is a set of sequential operations established in a factory where materials are put...
Nowadays, companies want technologies that are able to help them to make the best decision. Data Min...
Machine learning methods have become increasingly popular with the release of numerous open-source t...
Machine learning (ML) describes the ability of algorithms to structure and interpret data independen...
Currently, expert knowledge is sometimes the only way to predict the duration of the manufacturing p...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
Typescript (photocopy).A methodology was developed using neural network theory to predict the occurr...
In the paper, a novel method is introduced for selecting tuning parameters improving accuracy and ro...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
In this work, a supervised machine learning (ML) multi-output regression approach is investigated to...
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...
Although textile production is heavily automation-based, it is viewed as a virgin area with regard t...
A Modified Random Forest algorithm (MRF)-based predictive model is proposed for use in man-ufacturin...
With the vast amount of data available, and its increasing complexity in manufacturing processes, tr...
A production line is a set of sequential operations established in a factory where materials are put...
Nowadays, companies want technologies that are able to help them to make the best decision. Data Min...
Machine learning methods have become increasingly popular with the release of numerous open-source t...
Machine learning (ML) describes the ability of algorithms to structure and interpret data independen...
Currently, expert knowledge is sometimes the only way to predict the duration of the manufacturing p...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
Typescript (photocopy).A methodology was developed using neural network theory to predict the occurr...
In the paper, a novel method is introduced for selecting tuning parameters improving accuracy and ro...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
In this work, a supervised machine learning (ML) multi-output regression approach is investigated to...
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...
Although textile production is heavily automation-based, it is viewed as a virgin area with regard t...