TY - JOUR
T1 - Machine Learning and Hybrid Approaches in the Energy Valorization of Contaminated Sludge
T2 - Global Trends and Perspectives
AU - Rojas-Flores, Segundo Jonathan
AU - Liza, Rafael
AU - Nazario-Naveda, Renny
AU - Díaz, Félix
AU - Delfin-Narciso, Daniel
AU - Gallozzo Cardenas, Moisés
AU - Alviz-Meza, Anibal
N1 - Publisher Copyright:
© 2026 by the authors.
PY - 2026/1
Y1 - 2026/1
N2 - While the technological foundation for sludge valorization (anaerobic digestion and pyrolysis) is mature, a significant disconnect exists between traditional research and the advanced application of artificial intelligence. This study identifies that Machine Learning (ML) remains in a peripheral position, representing an untapped frontier for achieving predictive and circular systems. The methodology involved a quantitative bibliometric analysis of 190 Scopus-indexed documents (2005–2025). We analyzed indicators of scientific production, collaboration, and thematic evolution using Bibliometrix and VOSviewer 1.6.20. The results reveal a rapidly growing research field, predominantly led by Chinese institutions. The temporal analysis projects a productivity peak around 2033. Core topics include established technologies like anaerobic digestion and pyrolysis. However, network and keyword analyses reveal an emerging trend toward hydrothermal processes and, crucially, the early incorporation of ML. However, ML still occupies a peripheral position within the main scientific discourse, highlighting a gap between traditional research and the advanced application of artificial intelligence. The study systematizes existing knowledge and demonstrates that, although the technological foundation is mature, the deep integration of ML represents the future frontier for achieving sludge valorization systems that are more predictive, efficient, and aligned with the principles of the circular economy.
AB - While the technological foundation for sludge valorization (anaerobic digestion and pyrolysis) is mature, a significant disconnect exists between traditional research and the advanced application of artificial intelligence. This study identifies that Machine Learning (ML) remains in a peripheral position, representing an untapped frontier for achieving predictive and circular systems. The methodology involved a quantitative bibliometric analysis of 190 Scopus-indexed documents (2005–2025). We analyzed indicators of scientific production, collaboration, and thematic evolution using Bibliometrix and VOSviewer 1.6.20. The results reveal a rapidly growing research field, predominantly led by Chinese institutions. The temporal analysis projects a productivity peak around 2033. Core topics include established technologies like anaerobic digestion and pyrolysis. However, network and keyword analyses reveal an emerging trend toward hydrothermal processes and, crucially, the early incorporation of ML. However, ML still occupies a peripheral position within the main scientific discourse, highlighting a gap between traditional research and the advanced application of artificial intelligence. The study systematizes existing knowledge and demonstrates that, although the technological foundation is mature, the deep integration of ML represents the future frontier for achieving sludge valorization systems that are more predictive, efficient, and aligned with the principles of the circular economy.
KW - anaerobic digestion
KW - bibliometric analysis
KW - contaminated sludge
KW - energy valorization
KW - machine learning
UR - https://www.scopus.com/pages/publications/105028642797
U2 - 10.3390/pr14020363
DO - 10.3390/pr14020363
M3 - Review article
AN - SCOPUS:105028642797
SN - 2227-9717
VL - 14
JO - Processes
JF - Processes
IS - 2
M1 - 363
ER -