TY - JOUR
T1 - Towards extreme application scenarios
T2 - perspectives on artificial intelligence-driven smart energy management systems
AU - Jiang, Ming
AU - Liu, Yun
AU - Cui, He
AU - Tian, Xinyuan
AU - Zheng, Qiang
AU - Shen, Yongliang
AU - Xiong, Zhiyong
AU - Li, Ning
AU - Li, Jingbo
AU - Feng, Caihong
AU - Su, Yuefeng
AU - Jin, Haibo
N1 - Publisher Copyright:
© 2026 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license. http://creativecommons.org/licenses/by-nc-nd/4.0/
PY - 2026/5
Y1 - 2026/5
N2 - Energy applications in extreme environments, such as polar and deep-sea exploration, impose unprecedented demands on reliability and resilience. Traditional energy management systems often face formidable challenges in these scenarios, including extreme temperature fluctuations, scarce communication links, and highly nonlinear dynamics, rendering them inadequate for sustained operation. In such critical domains where reliability equates to survival, conventional deterministic approaches fall short in addressing these complex and uncertain conditions. Consequently, developing a self-evolving and adaptive smart energy management system (SEMS) capable of handling complex uncertainties has emerged as a pivotal frontier for bridging the gap between extreme scenario requirements and technological limitations. Accordingly, this perspective innovatively proposes the holistic framework of SEMS towards extreme application scenarios, integrating perception, learning, prediction, optimization, and control. Following this, the advancements of applying artificial intelligence (AI) in energy management across extreme applications, including unmanned underwater vehicles, deep-sea exploration equipment, high-power industrial energy systems, and research stations in remote environments, are systematically reviewed for the first time. Then, this perspective provides a forward-looking analysis of the key challenges in the field and outlines targeted future research directions, such as enhancing model interpretability via physics-informed machine learning, developing hardware-aware edge intelligence for communication-constrained environments, and resolving data privacy dilemmas through federated learning etc. In summary, through an in-depth analysis of framework, research progresses, and future perspectives, this paper aims to provide systematic theoretical support and practical guidance for the SEMS towards extreme scenarios.
AB - Energy applications in extreme environments, such as polar and deep-sea exploration, impose unprecedented demands on reliability and resilience. Traditional energy management systems often face formidable challenges in these scenarios, including extreme temperature fluctuations, scarce communication links, and highly nonlinear dynamics, rendering them inadequate for sustained operation. In such critical domains where reliability equates to survival, conventional deterministic approaches fall short in addressing these complex and uncertain conditions. Consequently, developing a self-evolving and adaptive smart energy management system (SEMS) capable of handling complex uncertainties has emerged as a pivotal frontier for bridging the gap between extreme scenario requirements and technological limitations. Accordingly, this perspective innovatively proposes the holistic framework of SEMS towards extreme application scenarios, integrating perception, learning, prediction, optimization, and control. Following this, the advancements of applying artificial intelligence (AI) in energy management across extreme applications, including unmanned underwater vehicles, deep-sea exploration equipment, high-power industrial energy systems, and research stations in remote environments, are systematically reviewed for the first time. Then, this perspective provides a forward-looking analysis of the key challenges in the field and outlines targeted future research directions, such as enhancing model interpretability via physics-informed machine learning, developing hardware-aware edge intelligence for communication-constrained environments, and resolving data privacy dilemmas through federated learning etc. In summary, through an in-depth analysis of framework, research progresses, and future perspectives, this paper aims to provide systematic theoretical support and practical guidance for the SEMS towards extreme scenarios.
KW - Artificial intelligence-driven
KW - Extreme application scenarios
KW - Machine learning
KW - Remote environments
KW - Smart energy management systems
KW - Unmanned underwater vehicles
UR - https://www.scopus.com/pages/publications/105034624341
U2 - 10.1016/j.egyai.2026.100725
DO - 10.1016/j.egyai.2026.100725
M3 - Article
AN - SCOPUS:105034624341
SN - 2666-5468
VL - 24
JO - Energy and AI
JF - Energy and AI
M1 - 100725
ER -