Developing and using measurement models to assess accuracy: using the example of measurements of the activity of ions

O. Vasilevskyi, V. Didych, O. Zabula, V. Sarana, E. Popovici
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Abstract

Evaluating the measurement accuracy of sensors is one of the most important tasks in the development of support systems for Industry 4.0. The study of accuracy is proposed to be carried out using measurement models by expanding them into a Taylor series. From the components of the Taylor series, equations are obtained that describe the sensitivity, additive and multiplicative errors of the measuring instrument. A mathematical model is also proposed that allows you to recalculate the multiplicative and additive errors of the measuring instrument into the uncertainty. The proposed metrological models are tested on the example of the expansion of the transformation equation, which describes the operation of the means for measuring the activity of ions. In absolute units of measurement of ion activity, the multiplicative and additive errors are 0.047pX each in the measurement range from 0.2 to 7.5pX. Using proposed mathematical model for converting these errors into uncertainty, we obtained the standard type B uncertainty, which is 0.064pX.
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开发和使用测量模型来评估准确性:以测量离子活度为例
评估传感器的测量精度是工业4.0支持系统开发中最重要的任务之一。准确度的研究建议通过将测量模型扩展成泰勒级数来进行。由泰勒级数的分量,得到了描述测量仪器灵敏度、加性误差和乘性误差的方程。还提出了一种数学模型,允许您将测量仪器的乘法和加性误差重新计算为不确定度。以描述离子活度测量方法的变换方程展开为例,对所提出的计量模型进行了验证。在离子活度的绝对测量单位中,在0.2 ~ 7.5pX的测量范围内,乘法误差和加性误差各为0.047pX。利用提出的数学模型将这些误差转化为不确定度,我们得到了标准的B型不确定度,为0.064pX。
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