Artificial intelligence for planning of energy and waste management

In the current era, waste management activities, including energy and material recycling, may create indirect environmental impacts beyond waste management systems. Energy waste is used to reproduce different products, such as electricity, heat, compost, and biofuels. Effective environmental protection depends on the quality of the information available for a proper decision. Reliable data collection is essential to facilitate planning processes in the effective planning of waste management. In this paper, the Machine learning-driven Predictive Analytic framework (MLDPAF) has been proposed to prepare energy and waste management. Firstly, with a neural network, the amount of waste is predicted. An enhanced machine learning algorithm further improves waste collection on energy costs based on volatile sustainable energy markets. Findings showed that proposed algorithms based on machine learning have been used successfully to generate efficient waste models. The simulation analysis shows that the analysis of waste quantity reduced by 90% using the proposed method, landfill analysis as 40%, and transportation reduced by 15%. © 2021

Authors
Huang J. 1 , Koroteev D.D. 1, 2, 3
Publisher
Elsevier Ltd
Language
English
Status
Published
Number
101426
Volume
47
Year
2021
Organizations
  • 1 Department of Civil Engineering, Peoples Friendship University of Russia (RUDN University), Moscow, Russian Federation
  • 2 Department of Hydraulics, Moscow Automobile and Road Construction State Technical University (MADI), Moscow, Russian Federation
  • 3 Moscow State University of Civil Engineering, Moscow, Russian Federation
Keywords
Artificial Intelligence; Machine learning; Planning of energy and waste management
Date of creation
16.12.2021
Date of change
16.12.2021
Short link
https://repository.rudn.ru/en/records/article/record/76609/
Share

Other records