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Deep learning system for e-waste management
* 1 , 2
1  Department of Computer Science, University of Benin. Edo State, Nigeria
2  Department of computer science, university of Benin, Edo State, Nigeria
Academic Editor: Juan Francisco García Martín

Abstract:

The deep learning system for e-waste management presented in this proposal is a transformative solution designed to address the escalating challenges of garbage collection and management in urban environments. Rapid urbanization has resulted in increased waste generation, necessitating a more intelligent and efficient approach to e-waste collection and disposal. This system integrates cutting-edge technologies, primarily Artificial Intelligence (AI), to improve e-waste management processes, enhance resource utilization, and contribute to the creation of cleaner and more sustainable urban spaces. Urban areas are experiencing unprecedented growth, leading to a surge in the volume of waste generated daily; as such, traditional waste management systems struggle to cope with this influx, resulting in environmental pollution, compromised public health, and inefficient resource utilization. The proposed deep learning system for e-waste management seeks to revolutionize existing practices by leveraging the capabilities of AI. The aim of this research is to develop a sequential deep neural network using a Keras and TensorFlow image analysis: a deep learning convolutional neural network (CNN) for e-waste management. The Python programming tool will be used to develop the deep learning model as well as a GUI that will facilitate human–computer interactions. The system will be tested and the result evaluated to assess the functionality and adequacy of the system.

Keywords: Deep Learning; convolutional neural networks (CNNs); E-waste Management; Environmental pollution; Artificial Intelligent;

 
 
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