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In system identification, interval (and fuzzy) estimates can lead to much better accuracy than the traditional statistical ones: General algorithm and case study

机译:在系统识别中,间隔(和模糊)估计可以导致比传统统计数据更好的准确性:一般算法和案例研究

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In many real-life situations, we know the upper bound of the measurement errors, and we also know that the measurement error is the joint result of several independent small effects. In such cases, due to the Central Limit Theorem, the corresponding probability distribution is close to Gaussian, so it seems reasonable to apply the standard Gaussian-based statistical techniques to process this data - in particular, when we need to identify a system. Yes, in doing this, we ignore the information about the bounds, but since the probability of exceeding them is small, we do not expect this to make a big difference on the result. Surprisingly, it turns out that in some practical situations, we get a much more accurate estimates if we, vice versa, take into account the bounds - and ignore all the information about the probabilities. In this paper, we explain the corresponding algorithms. and we show, on a practical example, that using this algorithm can indeed lead to a drastic improvement in estimation accuracy.
机译:在许多现实生活中,我们知道测量误差的上限,我们还知道测量误差是几个独立的小效果的关节结果。在这种情况下,由于中央极限定理,相应的概率分布靠近高斯,因此似乎合理地应用于基于标准的高斯的统计技术来处理该数据 - 特别是当我们需要识别系统时。是的,在这样做时,我们忽略了有关界限的信息,但由于超出了它们的概率很小,我们不希望这会对结果产生很大差异。令人惊讶的是,事实证明,在一些实际情况下,如果我们反之亦然,我们会得到更准确的估计,反之亦然 - 并忽略概率的所有信息。在本文中,我们解释了相应的算法。并且我们在一个实际的例子上显示,使用这种算法的使用确实可以导致估计精度的急剧提高。

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