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Evaluation on the robustness of Genetic Network Programming with reinforcement learning

机译:基于强化学习的遗传网络编程鲁棒性评估

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Genetic Network Programming (GNP) has been proposed as one of the evolutionary algorithms and extended with reinforcement learning (GNP-RL). The combination of evolution and learning can efficiently evolve programs and the fitness improvement has been confirmed in the simulations of tileworld problems, elevator group supervisory control systems, stock trading models and wall following behavior of Khepera robot. However, its robustness in testing environments has not been analyzed in detail yet. In this paper, the learning mechanism in the testing environment is introduced and it is confirmed that GNP-RL can show the robustness using a robot simulator WEBOTS, especially when unexperienced sensor troubles suddenly occur. The simulation results show that GNP-RL works well in the testing even if wrong sensor information is given because GNP-RL has a function to change programs using alternative actions automatically. In addition, the analysis on the effects of the parameters of GNP-RL is carried out in both training and testing simulations.
机译:遗传网络编程(GNP)已被提出作为一种进化算法,并通过强化学习(GNP-RL)进行了扩展。进化与学习的结合可以有效地进化程序,并且在Khepera机器人的瓷砖世界问题,电梯群监督控制系统,股票交易模型和墙追随行为的仿真中已经证实了适应性的提高。但是,尚未详细分析其在测试环境中的鲁棒性。本文介绍了测试环境中的学习机制,并证实了GNP-RL可以使用机器人模拟器WEBOTS表现出鲁棒性,特别是在突然出现无经验的传感器故障时。仿真结果表明,即使给出了错误的传感器信息,GNP-RL仍可在测试中很好地工作,因为GNP-RL具有使用替代动作自动更改程序的功能。此外,在训练和测试模拟中都对GNP-RL参数的影响进行了分析。

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