Abstract
This paper investigates the problem of impact-time-control and proposes a learning-based computational guidance algorithm to solve this problem. The proposed guidance algorithm is developed based on a general prediction-correction concept: the exact time-to-go under proportional navigation guidance with realistic aerodynamic characteristics is estimated by a deep neural network and a biased command to nullify the impact time error is developed by utilizing the emerging reinforcement learning techniques. To deal with the problem of insufficient training data, a transfer-ensemble learning approach is proposed to train the deep neural network. The deep neural network is augmented into the reinforcement learning block to resolve the issue of sparse reward that has been observed in typical reinforcement learning formulation. Extensive numerical simulations are conducted to support the proposed algorithm.
Original language | English |
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Article number | 107187 |
Journal | Aerospace Science and Technology |
Volume | 119 |
DOIs | |
Publication status | Published - Dec 2021 |
Keywords
- Impact-time-control guidance
- Missile guidance
- Prediction-correction
- Reinforcement learning
- Transfer learning