Automated Inventory Tracking and Alert System
Volume-6 | Issue-4

Automated Water Level Monitoring System using Arduino and GSM Module
Volume-5 | Issue-1

Smart Waste Segregation System using Convolutional Neural Networks
Volume-4 | Issue-2

Agro Guard Edge AI - Development of Sustainable IoT Framework for Wildlife Intrusion Detection
Volume-6 | Issue-4

Dehydration of Food Materials using Solar Dryer with Mobile App Integration
Volume-6 | Issue-1

Smart IoT Energy Metering System with Real-Time Theft Detection and Prevention
Volume-7 | Issue-2

Design and Implementation of Closed loop control for Flyback Converter
Volume-5 | Issue-2

Autonomous Vehicle: Challenges and Implementation
Volume-4 | Issue-2

Load Flow Study of GCT Powerhouse using ETAP
Volume-5 | Issue-1

Voice Controlled Application using ESP32
Volume-7 | Issue-3

Power Transfer Capability Recognition in Deregulated System under Line Outage Condition Using Power World Simulator
Volume-3 | Issue-4

Transformer Oil Diagnostic Tests Analysis using Statistical Correlation Technique
Volume-4 | Issue-3

Smart Wires and Modular FACTS Controllers for Smart Grid Applications: A Review
Volume-3 | Issue-4

Design of Inverter Voltage Mode Controller by Backstepping Technique for Nonlinear Power System Model
Volume-3 | Issue-4

Automated Multimodal Fusion Technique for the Classification of Human Brain on Alzheimer’s Disorder
Volume-3 | Issue-3

Performance Analysis of Multiple Pico Hydro Power Generation
Volume-2 | Issue-2

Energy Efficient Data Mining Approach for Estimating the Diabetes
Volume-3 | Issue-2

Prediction of Energy Consumption by Ships at the port using Deep Learning
Volume-3 | Issue-2

A Novel Adaptive Fuzzy MPPT Algorithm under Changing Atmospheric Conditions
Volume-3 | Issue-4

Construction of Hybrid Model for English News Headline Sarcasm Detection by Word Embedding Technique
Volume-3 | Issue-3

Home / Archives / Volume-4 / Issue-2 / Article-3

Smart Waste Segregation System using Convolutional Neural Networks

Akshata Shenoy ,  P. Ranjitha,  R. Haripriya,  C. B. Vinutha
Open Access
Volume - 4 • Issue - 2 • june 2022
https://doi.org/10.36548/jeea.2022.2.003
86-99  1324 PDF
Abstract

As the population increases, waste management has become difficult in today’s world. It is estimated that, until now in India in the year 2022, the total amount of waste generated is 62millon tons, wherein nearly 43 million tons of waste is collected in which about 12million tons is treated and 31million tons is dumped in landfill. Moreover, segregation of waste also is a tough task for the workers. Since the waste may be hazardous and infectious for the human life, the segregation must be carried out without labor. This problem is majorly being faced in developing cities. To overcome this, a smart waste segregation system using CNN is proposed in this paper. Segregation of waste from building itself brings about a large change in waste management. As the waste gets collected in a dumping area, it is identified using Open CV with the help of Pi camera. The captured image of waste is compared with default images using CNN algorithm, and segregation is done using robotic arm. Furthermore, the ultrasonic sensor present within the bin monitors the level of waste; when the waste level reaches the maximum, it alerts the authorized person with the help of GSM module. As the result, this keeps the buildings clean and supports the swatch Bharath mission. Existing waste segregation system use moisture sensor to differentiate between wet and dry waste ,even with small water droplets present on dry or metal waste detects it as wet which is a wrong identification.

Cite this article
Shenoy, Akshata, P. Ranjitha, R. Haripriya, and C. B. Vinutha. "Smart Waste Segregation System using Convolutional Neural Networks." Journal of Electrical Engineering and Automation 4, no. 2 (2022): 86-99. doi: 10.36548/jeea.2022.2.003
Copy Citation
Shenoy, A., Ranjitha, P., Haripriya, R., & Vinutha, C. B. (2022). Smart Waste Segregation System using Convolutional Neural Networks. Journal of Electrical Engineering and Automation, 4(2), 86-99. https://doi.org/10.36548/jeea.2022.2.003
Copy Citation
Shenoy, Akshata, et al. "Smart Waste Segregation System using Convolutional Neural Networks." Journal of Electrical Engineering and Automation, vol. 4, no. 2, 2022, pp. 86-99. DOI: 10.36548/jeea.2022.2.003.
Copy Citation
Shenoy A, Ranjitha P, Haripriya R, Vinutha CB. Smart Waste Segregation System using Convolutional Neural Networks. Journal of Electrical Engineering and Automation. 2022;4(2):86-99. doi: 10.36548/jeea.2022.2.003
Copy Citation
A. Shenoy, P. Ranjitha, R. Haripriya, and C. B. Vinutha, "Smart Waste Segregation System using Convolutional Neural Networks," Journal of Electrical Engineering and Automation, vol. 4, no. 2, pp. 86-99, Jun. 2022, doi: 10.36548/jeea.2022.2.003.
Copy Citation
Shenoy, A., Ranjitha, P., Haripriya, R. and Vinutha, C.B. (2022) 'Smart Waste Segregation System using Convolutional Neural Networks', Journal of Electrical Engineering and Automation, vol. 4, no. 2, pp. 86-99. Available at: https://doi.org/10.36548/jeea.2022.2.003.
Copy Citation
@article{shenoy2022,
  author    = {Akshata Shenoy and P. Ranjitha and R. Haripriya and C. B. Vinutha},
  title     = {{Smart Waste Segregation System using Convolutional Neural Networks}},
  journal   = {Journal of Electrical Engineering and Automation},
  volume    = {4},
  number    = {2},
  pages     = {86-99},
  year      = {2022},
  publisher = {IRO Journals},
  doi       = {10.36548/jeea.2022.2.003},
  url       = {https://doi.org/10.36548/jeea.2022.2.003}
}
Copy Citation
Keywords
CNN algorithm Pi camera Robotic arm Ultrasonic Sensor
Published
02 July, 2022
×

Currently, subscription is the only source of revenue. The subscription resource covers the operating expenses such as web presence, online version, pre-press preparations, and staff wages.

To access the full PDF, please complete the payment process.

Subscription Details

Category Fee
Article Access Charge
15 USD
Open Access Fee Nil
Annual Subscription Fee
200 USD
After payment,
please send an email to irojournals.contact@gmail.com / journals@iroglobal.com requesting article access.
Subscription form: click here