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Compressive power spectrum sensing for vibration-based output-only system identification of structural systems in the presence of noise

机译:压缩功率谱检测,用于在存在噪声的情况下识别结构系统的基于振动的仅输出系统

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Motivated by the need to reduce monetary and energy consumption costs of wireless sensor networks in undertaking output-only/operational modal analysis of engineering structures, this paper considers a multi-coset analog-to-information converter for structural system identification from acceleration response signals of white noise excited linear damped structures sampled at sub-Nyquist rates. The underlying natural frequencies, peak gains in the frequency domain, and critical damping ratios of the vibrating structures are estimated directly from the sub-Nyquist measurements and, therefore, the computationally demanding signal reconstruction step is by-passed. This is accomplished by first employing a power spectrum blind sampling (PSBS) technique for multi-band wide sense stationary stochastic processes in conjunction with deterministic non-uniform multi-coset sampling patterns derived from solving a weighted least square optimization problem. Next, modal properties are derived by the standard frequency domain peak picking algorithm. Special attention is focused on assessing the potential of the adopted PSBS technique, which poses no sparsity requirements to the sensed signals, to derive accurate estimates of modal structural system properties from noisy sub-Nyquist measurements. To this aim, sub-Nyquist sampled acceleration response signals corrupted by various levels of additive white noise pertaining to a benchmark space truss structure with closely spaced natural frequencies are obtained within an efficient Monte Carlo simulation-based framework. Accurate estimates of natural frequencies and reasonable estimates of local peak spectral ordinates and critical damping ratios are derived from measurements sampled at about 70% below the Nyquist rate and for SNR as low as 0db demonstrating that the adopted approach enjoys noise immunity.
机译:由于在进行工程结构的仅输出/运行模态分析时需要减少无线传感器网络的金钱和能源消耗成本,因此,本文考虑了一种多陪集模数转换器,用于从加速度传感器的加速度信号识别结构系统。以亚奈奎斯特速率采样的白噪声激发线性阻尼结构。潜在的固有频率,频域中的峰值增益以及振动结构的临界阻尼比直接从亚奈奎斯特测量值中估算出来,因此,绕开了对计算要求高的信号重建步骤。这是通过首先将功率谱盲采样(PSBS)技术用于多频带宽范围固定平稳随机过程,再结合从求解加权最小二乘优化问题中得出的确定性非均匀多陪集采样模式来实现的。接下来,通过标准频域峰值选取算法来导出模态属性。特别注意的重点是评估所采用的PSBS技术的潜力,该技术不会对所感测的信号造成稀疏性,从而可以从嘈杂的次奈奎斯特测量中得出模态结构系统特性的准确估计值。为此,在高效的基于蒙特卡罗模拟的框架内,获得了由奈奎斯特采样的加速度响应信号采样的加速度响应信号,该信号被与基准空间桁架结构相关的自然频率相近的各种水平的加性白噪声破坏。固有频率的准确估计以及局部峰值频谱纵坐标和临界阻尼比的合理估计是从低于奈奎斯特速率约70%且SNR低至0db的采样中得出的,这表明所采用的方法具有抗扰性。

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