STRUCTURAL ACTIVE CONTROL FRAMEWORK USING REINFORCEMENT LEARNING

Soheil Sadeghi Eshkevari, S. S. Eshkevari, Debarshi Sen, S. Pakzad
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引用次数: 1

Abstract

To maintain structural integrity and functionality structures are designed to accommodate operational loads as well as natural hazards during their lifetime. Active control systems are an efficient solution for structural response control when a structure is subjected to unexpected extreme loads. However, development of these systems through traditional means is limited by their model dependent nature. Recent advancements in adaptive learning methods, in particular, reinforcement learning (RL), for real-time decision-making problems, along with rapid growth in high-performance computational resources, enable structural engineers to transform the classic modelbased active control problem to a purely data-driven one. In this paper, we present a novel RL-based approach for designing active controllers by introducing RL-Controller, a flexible and scalable simulation environment. RL-Controller includes attributes and functionalities that are necessary to model active structural control mechanisms in detail. We show that the proposed framework is easily trainable for a five-story benchmark linear building with 65% reductions on average in inter story drifts (ISD) when subjected to strong ground motions. In a comparative study with an LQG active controller, we demonstrate that the proposed model-free algorithm learns actuator forcing strategies that yield higher performance, e.g., 25% more ISD reductions on average with respect to LQG, without using prior information about the mechanical properties of the system.
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采用强化学习的结构主动控制框架
为了保持结构的完整性和功能性,结构的设计可以适应其使用寿命期间的运行负荷和自然灾害。主动控制系统是结构在承受非预期极端荷载时进行结构响应控制的有效方法。然而,通过传统手段开发这些系统受到其模型依赖性质的限制。自适应学习方法的最新进展,特别是用于实时决策问题的强化学习(RL),以及高性能计算资源的快速增长,使结构工程师能够将经典的基于模型的主动控制问题转变为纯粹的数据驱动问题。在本文中,我们提出了一种新颖的基于rl的主动控制器设计方法,通过引入rl控制器,一个灵活和可扩展的仿真环境。RL-Controller包括对主动结构控制机制进行详细建模所必需的属性和功能。我们表明,对于一个五层基准线性建筑,所提出的框架很容易训练,当受到强烈的地面运动时,层间漂移(ISD)平均减少65%。在与LQG主动控制器的比较研究中,我们证明了所提出的无模型算法可以学习执行器强制策略,从而产生更高的性能,例如,相对于LQG,在不使用有关系统机械特性的先验信息的情况下,平均减少25%的ISD。
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