Applying machine learning approach in recycling

被引:0
作者
Merve Erkinay Ozdemir
Zaara Ali
Balakrishnan Subeshan
Eylem Asmatulu
机构
[1] Iskenderun Technical University,Department of Electrical Electronic Engineering
[2] Wichita State University,Department of Mechanical Engineering
来源
Journal of Material Cycles and Waste Management | 2021年 / 23卷
关键词
Machine learning; Neural network; Decision making; Advanced recycling;
D O I
暂无
中图分类号
学科分类号
摘要
Waste generation has been increasing drastically based on the world’s population and economic growth. This has significantly affected human health, natural life, and ecology. The utilization of limited natural resources, and the harming of the earth in the process of mineral extraction, and waste management have far exceeded limits. The recycling rate are continuously increasing; however, assessments show that humans will be creating more waste than ever before. Some difficulties during recycling include the significant expense involved during the separation of recyclable waste from non-disposable waste. Machine learning is the utilization of artificial intelligence (AI) that provides a framework to take as a structural improvement of the fact without being programmed. Machine learning concentrates on the advancement of programs that can obtain the information and use it to learn to make future decisions. The classification and separation of materials in a mixed recycling application in machine learning is a division of AI that is playing an important role for better separation of complex waste. The primary purpose of this study is to analyze AI by focusing on machine learning algorithms used in recycling systems. This study is a compilation of the most recent developments in machine learning used in recycling industries.
引用
收藏
页码:855 / 871
页数:16
相关论文
共 310 条
[31]  
Kulesza T(2015)Machine learning in medicine Circulation 2 1-230
[32]  
Dai F(2019)Machine learning and deep learning frameworks and libraries for large-scale data mining: a survey Artif Intell Rev 8 1-5992
[33]  
Nie G(2018)Artificial intelligence in radiology Nat Rev Cancer 9 611-17
[34]  
Chen Y(2018)State-of-the-art in artificial neural network applications: a survey Heliyon 105 2295-900
[35]  
Alexander T(2019)Machine learning in acoustics: theory and applications J Acoust Soc Am 29 102-51
[36]  
Subeshan B(2016)FER using deep network-based data fusion IEEE Trans Cybern 323 37-293
[37]  
Asmatulu R(2019)Artificial intelligence and machine learning in pathology: the present landscape of supervised methods Acad Pathol 84 209-308
[38]  
Chhay L(2015)Deep learning applications and challenges in big data analytics J Big Data 29 5981-198
[39]  
Reyad MAH(2019)A state-of-the-art survey on deep learning theory and architectures Electron 4 1-68
[40]  
Suy R(2018)Convolutional neural networks: an overview and application in radiology Insights Imaging 52 857-12