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Aero-engine life limit parts replacement policy optimization: Reinforcement learning method

机译:航空发动机寿命零件更换策略优化:强化学习方法

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An optimization method for aero-engine life limit parts (LLPs) replacement policy is proposed based on reinforcement learning method, aiming at optimizing the aero-engine LLP-s replacement policy. In the proposed LLPs replacement policy optimization method, the real-life LLPs replacement rules are adopted as the constraints and the minimum long-term LLPs replacement discount cost is regarded as the optimization objective. In reinforcement learning framework, the Q-learning algorithm is adopted to optimize the LLPs replacement policy. Compared with the traditional methods, the proposed optimization method is simple in structure, and it can achieve better optimization results. To validate the proposed aero-engine LLPs replacement policy optimization method, the LLPs list of a civil turbofan aero-engine is adopted as the sample data. And the existing particle swam optimization algorithm is adopted as the comparative experimental method. The comparison experiment results show that the proposed LLPs replacement policy optimization method achieves obvious advantages. The proposed optimization method is able to provide decision-making supports for aero-engine LLPs replacement.
机译:基于强化学习方法,提出了一种航空发动机寿命有限零件更换策略的优化方法,旨在优化航空发动机有限责任零件的更换策略。在提出的LLPs替换策略优化方法中,以现实生活中的LLPs替换规则为约束,以最小长期LLPs替换折扣成本为优化目标。在强化学习框架中,采用Q学习算法来优化LLP替换策略。与传统方法相比,所提出的优化方法结构简单,可以达到较好的优化效果。为了验证所提出的航空发动机LLP替换策略优化方法,采用了民用涡扇航空发动机的LLP列表作为样本数据。并采用现有的粒子游动优化算法作为对比实验方法。对比实验结果表明,所提出的LLP替换策略优化方法具有明显的优势。所提出的优化方法能够为航空发动机LLP的更换提供决策支持。

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