To recycle the mixed plastic wastes (MPW), it is important to obtain the compositional information online in real time. We present a sensing framework based on a convolutional neural network (CNN) and mid-infrared spectroscopy (MIR) for the rapid and accurate characterization of MPW. The MPW samples are placed on a moving platform to mimic the industrial environment. The MIR spectra are collected at the rate of 100 Hz, and the proposed CNN architecture can reach an overall prediction accuracy close to 100%. Therefore, the proposed method paves the way toward the online MPW characterization in industrial applications where high throughput is needed
This degree project focused on examining new possible application of near-infrared (NIR) spectroscop...
Plastic waste recycling has not been adopted by a large percentage of plastic manufacturing companie...
Near-infrared (NIR) hyperspectral imaging (HSI) was applied together with machine learning methods t...
To recycle the mixed plastic wastes (MPW), it is important to obtain the compositional information o...
We present a combination of convolutional neural network (CNN) framework and fast MIR (mid-infrared ...
We present a convolutional neural network (CNN) framework for classifying different types of plastic...
This work contributes to the recycling of technical black plastic particles, for example from the au...
The classification of plastic waste before recycling is of great significance to achieve effective r...
Mismanagement of plastic waste globally has resulted in a multitude of environmental issues, which c...
The recognition of microplastics (MPs) in environmental samples via FT-IR is challenging due to a pl...
A method for sorting plastic waste is developed. This method pretends to classify polymers by types ...
Plastic waste issues emerged from the build-up of plastics that negatively impacts the environment. ...
Determining mass-based material flow compositions (MFCOs) is crucial for assessing and optimizing th...
Plastic pollution is a well-known problem worldwide, and is still growing. It negatively affects hum...
International audienceOne of the major limitations in polymer recycling is their sorting as they are...
This degree project focused on examining new possible application of near-infrared (NIR) spectroscop...
Plastic waste recycling has not been adopted by a large percentage of plastic manufacturing companie...
Near-infrared (NIR) hyperspectral imaging (HSI) was applied together with machine learning methods t...
To recycle the mixed plastic wastes (MPW), it is important to obtain the compositional information o...
We present a combination of convolutional neural network (CNN) framework and fast MIR (mid-infrared ...
We present a convolutional neural network (CNN) framework for classifying different types of plastic...
This work contributes to the recycling of technical black plastic particles, for example from the au...
The classification of plastic waste before recycling is of great significance to achieve effective r...
Mismanagement of plastic waste globally has resulted in a multitude of environmental issues, which c...
The recognition of microplastics (MPs) in environmental samples via FT-IR is challenging due to a pl...
A method for sorting plastic waste is developed. This method pretends to classify polymers by types ...
Plastic waste issues emerged from the build-up of plastics that negatively impacts the environment. ...
Determining mass-based material flow compositions (MFCOs) is crucial for assessing and optimizing th...
Plastic pollution is a well-known problem worldwide, and is still growing. It negatively affects hum...
International audienceOne of the major limitations in polymer recycling is their sorting as they are...
This degree project focused on examining new possible application of near-infrared (NIR) spectroscop...
Plastic waste recycling has not been adopted by a large percentage of plastic manufacturing companie...
Near-infrared (NIR) hyperspectral imaging (HSI) was applied together with machine learning methods t...