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Discarding data may help in system identification

机译:丢弃数据可能有助于系统识别

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摘要

We present results concerning the parameter estimates obtained by prediction error methods in the case of input that are insufficiently rich. Such input signals are typical of industrial measurements where occasional stepwise reference changes occur. As is intuitively obvious, the data located around the input signal discontinuities carry most of the useful information. Using singular value decomposition (SVD) techniques, we show that in noise undermodeling situations, the remaining data may introduce large bias on the model parameters with a possible increase of their total mean square error. A data selection criterion is then proposed to discard such poorly informative data to increase the accuracy of the transfer function estimate. The system discussed in particular is a SISO ARMAX system.
机译:我们提出了关于在输入不够丰富的情况下通过预测误差方法获得的参数估计值的结果。此类输入信号是工业测量的典型结果,偶尔会出现逐步的参考变化。从直观上显而易见,位于输入信号不连续点周围的数据会携带大多数有用信息。使用奇异值分解(SVD)技术,我们表明在噪声欠建模的情况下,剩余数据可能会对模型参数引入较大偏差,并可能增加其总均方误差。然后提出一种数据选择标准,以丢弃信息量较差的数据,以提高传递函数估计的准确性。特别地,所讨论的系统是SISO ARMAX系统。

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