AI-Driven Waste Management in Innovating Space Exploration

Article


Olawade, D. B., Wada, O. Z., Popoola, T. T., Egbon, E., Ijiwade, J. O. and Oladapo, B. I. 2025. AI-Driven Waste Management in Innovating Space Exploration. Sustainability. 17 (9), p. Art. 4088. https://doi.org/10.3390/su17094088
AuthorsOlawade, D. B., Wada, O. Z., Popoola, T. T., Egbon, E., Ijiwade, J. O. and Oladapo, B. I.
Abstract

This research evaluates advanced waste management technologies suitable for long-duration space missions, particularly focusing on artificial intelligence (AI)-driven sorting systems, biotechnological bioreactors, and thermal processing methods, such as plasma gasification. It quantitatively assesses the waste generated per crew member. It analyses energy efficiency, integration capabilities with existing life-support systems, and practical implementation constraints based on experimental ground and ISS data. Challenges are addressed, including energy demands, microbial risks, and integration complexities. The research also discusses methodological approaches, explicitly outlining selection criteria and comparative frameworks used. Key findings indicate that plasma arc technologies significantly reduce waste volume, although high energy consumption remains challenging. Enhanced recycling efficiencies of water and oxygen are also discussed. Future research directions and actionable policy recommendations are outlined to foster sustainable and autonomous waste management solutions for space exploration.

JournalSustainability
Journal citation17 (9), p. Art. 4088
ISSN2071-1050
Year2025
PublisherMDPI
Publisher's version
License
File Access Level
Anyone
Digital Object Identifier (DOI)https://doi.org/10.3390/su17094088
Publication dates
Online01 May 2025
Publication process dates
Deposited26 Aug 2025
Copyright holder© 2025 The Authors
Permalink -

https://repository.uel.ac.uk/item/90134

Download files


Publisher's version
sustainability-17-04088.pdf
License: CC BY 4.0
File access level: Anyone

  • 2873
    total views
  • 5
    total downloads
  • 2725
    views this month
  • 3
    downloads this month

Export as