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A novel integration of hyper-spectral imaging and neural networks to process waste electrical and electronic plastics

机译:高光谱成像和神经网络的新型集成,可处理废弃的电气和电子塑料

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In this study, a technique which combines hyper-spectral imaging technology and a neural networks-based algorithm has been introduced for identification and separation of different types of e-waste plastics (e-plastics). Although recent technological developments in computing power allows for the handling of big data in a relatively reasonable time, a manageable number of neurons must be utilized in order to realize real-time sorting applications for plastic recycling. A successful result to identify three different common types of e-plastics with a very high rate of accuracy has been presented. The result has been achieved using a special designed Artificial Neural Networks (ANN) algorithm and hyper-spectral signature of those plastics. The promising result will pave a road to address the shortcomings of current e-plastic sorting technologies in terms of efficiency and reliability.
机译:在这项研究中,已经引入了一种结合了高光谱成像技术和基于神经网络的算法的技术,用于识别和分离不同类型的电子废物塑料(e-plastics)。尽管计算能力方面的最新技术发展允许在相对合理的时间内处理大数据,但必须利用可管理数量的神经元才能实现塑料回收的实时分类应用。提出了一种成功的结果,可以非常高的准确率识别三种不同的电子塑料类型。使用特殊设计的人工神经网络(ANN)算法和这些塑料的高光谱特征可以达到这一结果。令人鼓舞的结果将为解决当前电子塑料分选技术在效率和可靠性方面的不足铺平道路。

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