Error Quantification in Dynamic Applications of Weakly Nonlinear Transducers

Lautaro Cilenti, A. Chijioke, N. Vlajic, B. Balachandran
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Abstract

Characterization and quantification of dynamic measurements is an ongoing area of research in the metrological community, as new calibration methods are being developed to address dynamic measurement applications. In the development undertaken to date, one largely assumes that nominally linear transducers can be used with linear assumptions in deconvolution of the input from the response and in system identification. To quantify the errors that arise from these assumptions, in this article, the effects of weak nonlinearities in transducers that are assumed to behave linearly during dynamic excitations are studied. Specifically, a set of first-order and second-order systems, which can model many transducers with weak nonlinearities, are used to numerically quantify the systemic errors due to the linear assumptions underlying the deconvolution. We show through the presented results the evolution of different error metrics over a large parameter space of possible transducers. Additionally, an example of quantification of the errors due to linear assumptions in system identification is demonstrated by using a time-series sparse regression system identification strategy. It is shown that the errors generated from linear identification of a nonlinear transducer can counteract the systemic errors that arise in linear deconvolution when the linear system identification is performed in similar loading conditions. In general, the methodology and results presented here can be useful for understanding the effect of nonlinearity in single degree of freedom transient dynamics deconvolution and specifically in specifying certain metrics of errors in transducers with known weak nonlinearities.
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弱非线性传感器动态应用中的误差量化
动态测量的表征和量化是计量界正在进行的研究领域,因为新的校准方法正在开发以解决动态测量应用。在迄今为止所进行的发展中,人们在很大程度上假设名义上的线性换能器可以与线性假设一起用于从响应中反卷积输入和系统识别。为了量化由这些假设产生的误差,本文研究了假定在动态激励期间表现为线性的换能器中的弱非线性的影响。具体来说,一组一阶和二阶系统可以模拟许多具有弱非线性的换能器,用于数值量化由于反褶积的线性假设引起的系统误差。我们通过给出的结果展示了不同误差度量在可能换能器的大参数空间上的演变。此外,通过使用时间序列稀疏回归系统识别策略,演示了系统识别中线性假设误差的量化示例。结果表明,非线性换能器线性辨识产生的误差可以抵消在类似载荷条件下进行线性系统辨识时线性反卷积产生的系统误差。一般来说,本文提出的方法和结果有助于理解非线性对单自由度瞬态动力学反褶积的影响,特别是在指定已知弱非线性换能器的某些误差度量时。
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