Machine learning driven damper for response control in vehicle-bridge interaction systems

Kumar Rajnish, A. Kodakkal, Daniel H. Zelleke, R. Meethal, V. Matsagar, K. Bletzinger, R. Wüchner
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引用次数: 1

Abstract

The implementation of machine learning for the real-time prediction of the suitable value of the damping ratio of a semi-active tuned mass damper (SA-TMD) is investigated to ensure enhanced vibration control in vehicle-bridge interaction (VBI) problems. The response assessment of the uncontrolled, tuned mass damper (TMD)-controlled, and SA-TMD-controlled bridge models is performed under the Japanese SKS (Shinkansen) train model. The energy-based predictive (EBP®) control algorithm is implemented for the bridge fitted with the SA-TMD. The EBP algorithm-controlled SA-TMD results in more effective suppression of the bridge vibration as compared to the passive TMD. However, the effectiveness of the EBP algorithm reduces for more complex VBI systems because of the increased computational time delay. To circumvent the effect of the delay, a control strategy is proposed based on the weighted random forest (WRF) algorithm. The WRF algorithm is trained based on the data obtained from the EBP algorithm-controlled bridge and implemented to suppress the vehicle-induced vibration of the bridge using SA-TMD. The results demonstrate that the implementation of the newly proposed WRF algorithm-based control strategy nullifies the effects of the computational time delay. Furthermore, it is established that the WRF algorithm suppresses the bridge vibration more effectively than the EBP algorithm.
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车桥交互系统响应控制的机器学习驱动阻尼器
研究了利用机器学习实时预测半主动调谐质量阻尼器阻尼比的适宜值,以保证在车桥相互作用(VBI)问题中增强振动控制。在日本新干线列车模型下,对非受控、调谐质量阻尼器(TMD)控制和sa -TMD控制的桥梁模型进行了响应评估。采用基于能量的预测(EBP®)控制算法对安装了SA-TMD的桥架进行控制。与被动TMD相比,EBP算法控制的SA-TMD能更有效地抑制桥梁振动。然而,对于更复杂的VBI系统,由于计算时间延迟的增加,EBP算法的有效性会降低。为了规避延迟的影响,提出了一种基于加权随机森林(WRF)算法的控制策略。基于EBP算法控制的桥梁数据对WRF算法进行训练,并利用SA-TMD实现对桥梁车辆诱导振动的抑制。结果表明,新提出的基于WRF算法的控制策略的实现消除了计算时延的影响。结果表明,WRF算法对桥梁振动的抑制效果优于EBP算法。
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来源期刊
CiteScore
3.00
自引率
10.00%
发文量
48
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