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- Hongyan Jiang, Feng Cheng, Cong Wu, Dianjun Fang, Yuhai Zeng. A multi-period-sequential-index combination method for short-term prediction of small sample data. Rel. Eng. & Sys. Safety, 242:109767, February 2024.
- Tomoaki Nishino, Takuya Miyashita, Nobuhito Mori. Methodology for probabilistic tsunami-triggered oil spill fire hazard assessment based on Natech cascading disaster modeling. Rel. Eng. & Sys. Safety, 242:109789, February 2024.
- Frank den Heijer, Matthijs Kok. Risk-based portfolio planning of dike reinforcements. Rel. Eng. & Sys. Safety, 242:109737, February 2024.
- Abdullah Alsulieman, Xihe Ge, Zhiguo Zeng, Sergiy Butenko, Faisal Khan 0001, Mahmoud M. El-Halwagi. Dynamic risk analysis of evolving scenarios in oil and gas separator. Rel. Eng. & Sys. Safety, 243:109834, March 2024.
- Guoqi Li, Gang Pu, Jiaxin Yang, Xinguo Jiang. A multidimensional quantitative risk assessment framework for dense areas of stay points for urban HazMat vehicles. Rel. Eng. & Sys. Safety, 241:109637, January 2024.
- Sa Meng, Liudong Xing, Gregory Levitin. Optimizing component activation and operation aborting in missions with consecutive attempts and common abort command. Rel. Eng. & Sys. Safety, 243:109842, March 2024.
- Chen Zhang 0006, Di Hu 0006, Tao Yang. Research of artificial intelligence operations for wind turbines considering anomaly detection, root cause analysis, and incremental training. Rel. Eng. & Sys. Safety, 241:109634, January 2024.
- Dawei Gao, Yongsheng Zhu, Ke Yan, Carlos Guedes Soares. Deep learning-based framework for regional risk assessment in a multi-ship encounter situation based on the transformer network. Rel. Eng. & Sys. Safety, 241:109636, January 2024.
- Hongqian Zhao, Zheng Chen 0008, Xing Shu, Renxin Xiao, Jiangwei Shen, Yu Liu, Yonggang Liu. Online surface temperature prediction and abnormal diagnosis of lithium-ion batteries based on hybrid neural network and fault threshold optimization. Rel. Eng. & Sys. Safety, 243:109798, March 2024.