Study on Reinforcement Learning-Based Missile Guidance Law

Author:

Hong DaseonORCID,Kim Minjeong,Park SungsuORCID

Abstract

Reinforcement learning is generating considerable interest in terms of building guidance law and solving optimization problems that were previously difficult to solve. Since reinforcement learning-based guidance laws often show better robustness than a previously optimized algorithm, several studies have been carried out on the subject. This paper presents a new approach to training missile guidance law by reinforcement learning and introducing some notable characteristics. The novel missile guidance law shows better robustness to the controller-model compared to the proportional navigation guidance. The neural network in this paper has identical inputs with proportional navigation guidance, which makes the comparison fair, distinguishing it from other research. The proposed guidance law will be compared to the proportional navigation guidance, which is widely known as quasi-optimal of missile guidance law. Our work aims to find effective missile training methods through reinforcement learning, and how better the new method is. Additionally, with the derived policy, we contemplated which is better, and in which circumstances it is better. A novel methodology for the training will be proposed first, and the performance comparison results will be continued therefrom.

Funder

Defense Acquisition Program Administration

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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1. Reinforcement Learning for the Interception of Hypersonic Vehicles;AIAA SCITECH 2024 Forum;2024-01-04

2. Reinforcement learning-based missile terminal guidance of maneuvering targets with decoys;Chinese Journal of Aeronautics;2023-12

3. Impact time control guidance law with time-varying velocity based on deep reinforcement learning;Aerospace Science and Technology;2023-11

4. Intercept Guidance of Maneuvering Targets with Deep Reinforcement Learning;International Journal of Aerospace Engineering;2023-09-13

5. Comparison of Deep Reinforcement Learning-Based Guidance Strategies under Non-Ideal Conditions;2023 9th International Conference on Control, Decision and Information Technologies (CoDIT);2023-07-03

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