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Oil-Policy Learning for the Swing Process Control of a Cutter Suction Dredger

机译:刀具抽吸挖泥船的挥杆过程控制的石油 - 政策学习

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It is hard to describe the swing process of a cutter suction dredger with accurate mathematical models because the dynamic characteristics of the swing process are complex,and the relationship between the parameters is not clear.Currently,the swing process control depends entirely on the operators,and it is sometimes difficult to obtain a high production efficiency and construction accuracy.In this paper,an approach that combines SARSA-Lambda with a linear neural network is proposed to solve the intelligent control of the swing process.The dynamic model of the swing process is built using the generalization capability of the linear neural network that solves the output problem of the continuous state space.SARSA-Lambda is used to realize the adaptive control of the swing process by means of learning.The simulation results show that the proposed approach can quickly and effectively learn and achieve goals in uncertain environmental conditions and achieve better control consequents.
机译:很难用精确的数学模型描述切割器抽吸挖泥船的摆动过程,因为摆动过程的动态特性是复杂的,并且参数之间的关系不清晰。齐全,摆动过程控制完全取决于运营商,有时难以获得高生产效率和施工准确性。本文提出了一种与线性神经网络结合的方法,以解决摆动过程的智能控制。摆动过程的动态模型是利用线性神经网络的泛化能力构建,解决了连续状态空间的输出问题.Sarsa-Lambda用于通过学习实现摆动过程的自适应控制。仿真结果表明所提出的方法可以在不确定的环境条件下快速有效地学习和实现目标,并实现更好的控制后果。

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