Author/Authors :
D. Wienke، نويسنده , , Walter W. van den Broek، نويسنده , , W. Melssen، نويسنده , , L. Buydens، نويسنده , , R. Feldhoff، نويسنده , , T. Kantimm، نويسنده , , T. Huth-Fehre، نويسنده , , L. Quick، نويسنده , , F. Winter، نويسنده , , K. Cammann، نويسنده ,
Abstract :
An Adaptive Resonance Theory Based Artificial Neural Network (ART-2a) has been compared with Multilayer Feedforward Backpropagation of Error Neural Networks (MLF-BP) and with the SIMCA classifier. All three classifiers were applied to achieve rapid sorting of post-consumer plastics by remote near-infrared (NIR) spectroscopy. A new semiconductor diode array detector based on InGaAs technology has been experimentally tested for measuring the NIR spectra. It has been found by a cross validation scheme that MLF-BP networks show a slightly better discrimination power than ART-2a networks. Both types of artificial neural networks perform significantly better than the SIMCA method. A median sorting purity of better than 98% can be guaranteed for non-black plastics. More than 75 samples per second can be identified by the combination InGaAs diode array/neural network. However, MLF-BP neural networks can definitely not extrapolate. Uninterpretable predictions were observed in case of test samples that truly belong to a particular class but that are located outside the subspace defined by training set.
Keywords :
Plastics recycling , Chemometrics , Multilayer feedforward backpropagation , Infrared spectrometry , Artificial neural networks , Neural networks , Adaptive resonance theory (ART)