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首页> 外文期刊>Bulletin of Earthquake Engineering >Spatial variability of strong ground motion: novel system-based technique applying parametric time series modelling
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Spatial variability of strong ground motion: novel system-based technique applying parametric time series modelling

机译:强地面运动的空间变异性:应用参数时间序列建模的基于系统的新技术

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摘要

Spatial variability of strong ground motion within the dimensions of a horizontally extended structure is often described in terms of spectral parameters, such as autospectral densities and cross-spectral densities of motion, recorded at an array of closely spaced sensors. Traditionally, windowed and tapered periodogram techniques have been used in processing strong-motion array data, whereby spectral quantities are estimated. This approach involves large variances in the computed estimates, which can be reduced by decreasing the bandwidth of smoothing windows. A major problem in such applications is the selection of an optimal window, for which, as far as we know, no formal mathematical criteria exist. In this paper we propose a novel technique, based on parametric time series modelling, to replace the periodogram technique for estimating spectral quantities relevant to the description of spatial variability of ground motion. By using actual earthquake data recorded by a strong-motion array, we demonstrate that autoregressive (AR) time series modelling can be used in spectral analysis of strong-motion array data. Such models can easily be calibrated using a variant of least squares techniques, and well-defined statistical criteria are used to identify an optimal model to describe the recorded data. The application of AR modelling eliminates the subjective judgement involved in periodogram techniques and provides stabler estimates of lagged coherencies.
机译:通常在频谱参数方面描述强地面运动在水平扩展结构尺寸内的空间变异性,例如在紧密排列的传感器阵列上记录的光谱参数,例如运动的自谱密度和互谱密度。传统上,开窗和锥形周期图技术已用于处理强运动数组数据,从而估计频谱量。这种方法在计算的估计中涉及较大的方差,可以通过减少平滑窗口的带宽来减小该方差。在这样的应用中的主要问题是最优窗口的选择,据我们所知,最优窗口不存在正式的数学标准。在本文中,我们提出了一种基于参数时间序列建模的新技术,以取代周期图技术来估计与描述地面运动的空间变化有关的频谱量。通过使用强运动阵列记录的实际地震数据,我们证明了自回归(AR)时间序列建模可用于强运动阵列数据的频谱分析。可以使用最小二乘技术的变体轻松地对此类模型进行校准,并且使用定义明确的统计标准来识别用于描述记录数据的最佳模型。 AR建模的应用消除了周期图技术中涉及的主观判断,并提供了更稳定的滞后相干估计。

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