步行荷载人体动力参数智能识别算法

INTELLIGENT RECOGNITION ALGORITHM FOR HUMAN DYNAMIC PARAMETERS OF WALKING LOAD

  • 摘要: 伴随着现代建筑结构“更轻和跨度更大”的发展趋势,结构设计呈现出从承载力极限状态控制向正常使用极限状态控制发生转变的趋势,可预见人致结构振动舒适度问题会愈发普遍。准确地预测人致结构振动响应(加速度响应)和结构振动特性(频率和阻尼)是评估结构振动舒适度的必要前提。人致结构振动响应的准确性与人致荷载模型息息相关。目前各设计规范提出的人致荷载多基于确定性,忽略了人体的差异性,即忽略了人致荷载的随机性。为便于人致结构振动舒适度分析时能考虑人致荷载的随机性及提高结构振动响应的计算精度,基于步行试验、理论研究(采用倒立摆模型模拟步行全过程及摄动法建立步行荷载理论模型)和各种智能算法(遗传算法、灰狼算法、蝙蝠算法、布谷鸟搜索算法、生物地理学算法、蚁狮算法),开发步行荷载人体动力参数(刚度kleg,长度l0,滚轴半径R,质量m和初始速度v0)智能识别算法。通过对25位测试者的步行荷载人体动力参数进行识别并与步行荷载试验数据对比分析表明,智能识别算法具有识别精度高、计算效率快等特点。

     

    Abstract: With the development trend of modern architectural structure "lighter and larger span", the structural design is prevailed by the vibration serviceability limit state rather than the ultimate state (i.e. load-carrying capacity of the structural elements). It can be predicted that the human-induced structural vibration serviceability will become more and more common. Accurate prediction of human-induced structural vibration response (acceleration response) and structural vibration characteristics (frequency and damping) is a prerequisite for evaluating structural vibration serviceability. The accuracy of human-induced structural vibration response is closely related to the human-induced load model. At present, the human-induced load proposed by various design codes is mostly based on certainty, ignoring the difference of human body, i.e. the randomness of human-induced load. To consider the randomness of human-induced loads and improve the calculation accuracy of structural vibration response for comfortable vibration analysis, an intelligent algorithm is developed based on walking experiments, theoretical studies (using an inverted pendulum model to simulate the entire walking process and perturbation method to establish a walking load theoretical model), and various intelligent algorithms (genetic algorithm, grey wolf algorithm, bat algorithm, cuckoo search algorithm, biogeography-based algorithm, and ant-lion optimizer) to identify the dynamic parameters (stiffness kleg, length l0, roller radius R, mass m, and initial velocity v0) of walking loads. Compared with the experimental data (walking load of 25 participants), the intelligent recognition algorithm has the characteristics of high recognition accuracy and fast calculation efficiency.

     

/

返回文章
返回