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Reinforcement learning based optimizer for improvement of predicting tunneling-induced ground responses

机译:基于加强学习的优化器,用于改进预测隧道诱导的地面反应

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摘要

Prediction of ground responses is important for improving performance of tunneling. This study proposes a novel reinforcement learning (RL) based optimizer with the integration of deep-Q network (DQN) and particle swarm optimization (PSO). Such optimizer is used to improve the extreme learning machine (ELM) based tunneling-induced settlement prediction model. Herein, DQN-PSO optimizer is used to optimize the weights and biases of ELM. Based on the prescribed states, actions, rewards, rules and objective functions, DQN-PSO optimizer evaluates the rewards of actions at each step, thereby guides particles which action should be conducted and when should take this action. Such hybrid model is applied in a practical tunnel project. Regarding the search of global best weights and biases of ELM, the results indicate the DQN-PSO optimizer obviously outperforms conventional metaheuristic optimization algorithms with higher accuracy and lower computational cost. Meanwhile, this model can identify relationships among influential factors and ground responses through self-practicing. The ultimate model can be expressed with an explicit formulation and used to predict tunneling-induced ground response in real time, facilitating its application in engineering practice.
机译:对地面反应的预测对于提高隧道性能是重要的。本研究提出了一种基于新型加强学习(RL)优化器,具有深度Q网络(DQN)和粒子群优化(PSO)的集成。这种优化器用于改进基于极端学习机(ELM)的隧道诱导的结算预测模型。这里,DQN-PSO优化器用于优化ELM的权重和偏差。基于规定的状态,行动,奖励,规则和客观函数,DQN-PSO优化器评估了每个步骤的动作的奖励,从而指导粒子应进行哪些行动以及何时应采取此操作。这种混合模型应用于实际隧道项目。关于寻找全球最佳权重和榆树的偏差,结果表明DQN-PSO优化器明显优于传统的成群质优化算法,具有更高的精度和更低的计算成本。同时,该模型可以通过自行练习识别有影响因素和地面反应之间的关系。最终模型可以用明确的配方表达,并用于实时预测隧道诱导的地面响应,便于其在工程实践中的应用。

著录项

  • 来源
    《Advanced engineering informatics》 |2020年第8期|101097.1-101097.11|共11页
  • 作者单位

    Department of Civil and Environmental Engineering The Hong Kong Polytechnic University Hung Horn Kowloon Hong Kong China;

    Department of Building and Real Estate The Hong Kong Polytechnic University Hung Horn Kowloon Hong Kong China;

    Faculty of Engineering and IT University of Technology Sydney NSW 2007 Australia;

    Department of Civil and Environmental Engineering The Hong Kong Polytechnic University Hung Horn Kowloon Hong Kong China;

    College of Civil Engineering Hunan University Changsha 410082 China MOE Key Laboratory of Building Safety and Energy Efficiency Changsha 410082 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Tunnel; Ground response; Reinforcement learning; Extreme learning machine; Optimization;

    机译:隧道;地面响应;强化学习;极端学习机;优化;

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