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A hybrid ensemble deep reinforcement learning model for locomotive axle temperature using the deterministic and probabilistic strategy 被引量:1

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摘要 This paper proposes a hybrid deep reinforcement learning framework for locomotive axle temperature by combining the wavelet packet decomposition(WPD),long short-term memory(LSTM),gated recurrent unit(GRU)reinforcement learning and generalized autoregressive conditional heteroskedasticity(GARCH)algorithms.The WPD is utilized to decompose the raw nonlinear series into subseries.Then the deep learning predictors LSTM and GRU are established to predict the future axle temperatures in each subseries.The Q-learning could generate optimal ensembleweights to integrate the predictors to finish the deterministic forecasting and GARCH is used to conduct the deterministic forecasting based on the deterministic forecasting residual.These parts of the hybrid ensemble structure contributed to optimal modelling accuracy and provided effective support in the real-time monitoring and fault diagnosis of transportation.
出处 《Transportation Safety and Environment》 EI 2023年第3期20-29,共10页 交通安全与环境(英文)
基金 This study is fully supported by the National Natural Science Foundation of China(Grant No.61873283) the Changsha Sci-ence&Technology Project(Grant No.KQ1707017) the Hunan Province Science and Technology Talent Support Project(Grant No.2020TJ-Q06).
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