Wet granulation is a frequent process in the pharmaceutical industry. As a starting point for numerous dosage forms, the quality of the granulation not only affects subsequent production steps but also impacts the quality of the final product. It is thus crucial and economical to monitor this operation thoroughly. Here, we report on identifying different phases of a granulation process using a machine learning approach. The phases reflect the water content which, in turn, influences the processability and quality of the granule mass. We used two kinds of microphones and an acceleration sensor to capture acoustic emissions and vibrations. We trained convolutional neural networks (CNNs) to classify the different phases using transformed sound...
Continuous Manufacturing (CM) of pharmaceutical drug products is a new approach within the pharmaceu...
As one of the most promising metal additive manufacturing (AM) technologies, the selective laser mel...
The goal of this paper is to show the possibilities of state-of-the-art deep learning methods for ul...
The novel application of acoustic emission as a real time, non-destructive and non-invasive techniqu...
This paper presents the development of an acoustic emission monitoring system and its application to...
none4noOperations involving gas–liquid agitated vessels are common in the biochemical and chemical i...
This paper aims to evaluate the effectiveness of different Machine Learning algorithms for the estim...
A new approach to the monitoring of granulation processes using passive acoustics together with prec...
Thermal spraying, an important industrial surface manufacturing process in sectors such as aerospace...
This work aims to develop an accurate and reliable sensing methodology using Passive Acoustic Emissi...
Solid–liquid mixing is a core operation in many manufacturing processes in the food, cosmetics, phar...
A new approach to the monitoring of granulation processes using passive acoustics together with prec...
Acoustic emissions during distributor plate blockage in a top spray fluidized bed
The thesis focuses on utilizing high-frequency measurement methods for measuring pressure, sound, an...
Pattern recognition is an analytical process that is now playing an increasingly important role in t...
Continuous Manufacturing (CM) of pharmaceutical drug products is a new approach within the pharmaceu...
As one of the most promising metal additive manufacturing (AM) technologies, the selective laser mel...
The goal of this paper is to show the possibilities of state-of-the-art deep learning methods for ul...
The novel application of acoustic emission as a real time, non-destructive and non-invasive techniqu...
This paper presents the development of an acoustic emission monitoring system and its application to...
none4noOperations involving gas–liquid agitated vessels are common in the biochemical and chemical i...
This paper aims to evaluate the effectiveness of different Machine Learning algorithms for the estim...
A new approach to the monitoring of granulation processes using passive acoustics together with prec...
Thermal spraying, an important industrial surface manufacturing process in sectors such as aerospace...
This work aims to develop an accurate and reliable sensing methodology using Passive Acoustic Emissi...
Solid–liquid mixing is a core operation in many manufacturing processes in the food, cosmetics, phar...
A new approach to the monitoring of granulation processes using passive acoustics together with prec...
Acoustic emissions during distributor plate blockage in a top spray fluidized bed
The thesis focuses on utilizing high-frequency measurement methods for measuring pressure, sound, an...
Pattern recognition is an analytical process that is now playing an increasingly important role in t...
Continuous Manufacturing (CM) of pharmaceutical drug products is a new approach within the pharmaceu...
As one of the most promising metal additive manufacturing (AM) technologies, the selective laser mel...
The goal of this paper is to show the possibilities of state-of-the-art deep learning methods for ul...