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Signal-to-Noise Ratios Using Fuzzy Numbers

机译:使用模糊数的信噪比

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摘要

Signal-to-noise ratios (SNRs) are widely applicable in quality engineering for improving product quality. In real world applications, the observations are sometimes described in linguistic terms, or are only approximately known, rather than equated with randomness. To deal with imprecise data, the notion of fuzziness was introduced. This paper develops a procedure to calculate the SNR with fuzzy observations. The idea is based on the extension principle. A pair of mathematical programs was formulated to calculate the lower and upper bounds of the fuzzy SNR at possibility level α. From different values of α, the membership function of the SNR was approximated. Three differen types of SNRs are discussed: the higher-the-better, the slower-the-better, and the nominal-the-best. Since the SNR is expressed by a membership function rather than by a crisp value, more information is provided for making decisions. The methodology developed in this paper can also be applied to calculate the SNR with imprecise linguistic terms.
机译:信噪比比(SNRS)广泛适用于以提高产品质量的优质工程。在现实世界应用中,有时以语言术语描述观察,或者仅被众所周知,而不是随机等同。为了处理不精确的数据,引入了模糊的概念。本文开发了一种用模糊观测计算SNR的过程。这个想法是基于扩展原理。配制了一对数学程序,以计算可能性等级α的模糊SNR的下限和上限。从α的不同值,SNR的隶属函数近似。讨论了三种不同类型的SNR:越多越好,更慢,更好,而标称最​​佳。由于SNR由隶属函数而不是清晰的价值表示,因此提供了更多信息来进行决策。本文开发的方法也可以应用于使用不精确的语言术语计算SNR。

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