In industrial environments, it is often difficult and expensive to collect a good amount of data to adequately train expert systems for regression purposes. Therefore the usage of already available data, related to environments showing similar characteristics, could represent an effective approach to find a good balance between regression performance and the amount of data to gather for training. In this paper, the authors propose two alternative strategies for improving the regression performance by using heterogeneous data, i.e. data coming from diverse environments with respect to the one taken as reference for testing. These strategies are based on a standard machine learning algorithm, i.e. the Artificial Neural Network (ANN). The empl...
Particle processing plants regard the Particle Size Distribution (PSD) as a key quality factor as it...
Particulate emissions from gasoline direct injection (GDI) engines continue to be a topic of substan...
This works investigates the possibility of using Acoustic Emissions (AE) to estimate the Particle Si...
In industrial environments, it is often difficult and expensive to collect a good amount of data to ...
In industrial environments, it is often difficult and expensive to collect a good amount of data to ...
This paper aims to evaluate the effectiveness of different Machine Learning algorithms for the estim...
High energy consumption in size reduction operations is one of the most significant issues concernin...
In this work, a condition monitoring approach suitable for coal fired power plant is proposed. This ...
Sieve-analysis data obtained pursuant to grinding several types of coal using various settings of ad...
Industrial energy management is an important topic of discussion nowadays for both economic and sust...
In this paper, machine learning techniques are compared to predict nitrogen oxide (NOx) pollutant em...
Abstract. Nitric acid production plants emit small amounts of nitrogen oxides (NOx) to the environme...
Washing powder needs to undergo quality checks before it is sold, and according to a report by the p...
Particle processing plants regard the Particle Size Distribution (PSD) as a key quality factor as it...
Particulate emissions from gasoline direct injection (GDI) engines continue to be a topic of substan...
This works investigates the possibility of using Acoustic Emissions (AE) to estimate the Particle Si...
In industrial environments, it is often difficult and expensive to collect a good amount of data to ...
In industrial environments, it is often difficult and expensive to collect a good amount of data to ...
This paper aims to evaluate the effectiveness of different Machine Learning algorithms for the estim...
High energy consumption in size reduction operations is one of the most significant issues concernin...
In this work, a condition monitoring approach suitable for coal fired power plant is proposed. This ...
Sieve-analysis data obtained pursuant to grinding several types of coal using various settings of ad...
Industrial energy management is an important topic of discussion nowadays for both economic and sust...
In this paper, machine learning techniques are compared to predict nitrogen oxide (NOx) pollutant em...
Abstract. Nitric acid production plants emit small amounts of nitrogen oxides (NOx) to the environme...
Washing powder needs to undergo quality checks before it is sold, and according to a report by the p...
Particle processing plants regard the Particle Size Distribution (PSD) as a key quality factor as it...
Particulate emissions from gasoline direct injection (GDI) engines continue to be a topic of substan...
This works investigates the possibility of using Acoustic Emissions (AE) to estimate the Particle Si...