Noise parameter measurement uncertainty evaluation method based on multi-chip module (MCM)

A technology for measuring uncertainty and noise parameters, which is applied in electrical digital data processing, special data processing applications, instruments, etc., can solve the difficulty of uncertainty application, no inclusion factor is given, and there is no uncertainty in the measurement results of packaged device fixtures Degree and other issues

Active Publication Date: 2013-04-17
THE 13TH RES INST OF CHINA ELECTRONICS TECH GRP CORP +1
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Problems solved by technology

[0007] 1. In the application of measurement uncertainty, the combined uncertainty or expanded uncertainty is mainly used, and it is stated in Supplementary Appendix 1 of ISO / IEC Guide 98-3 that the combined uncertainty can be given by the MCM method. NIST In the open literature, only the MCM method is used to evaluate the type B uncertainty, which brings certain difficulties to the application of uncertainty
[0008] 2. The measurement uncertainty must be under the same inclusion factor to be comparable. NIST does not give an inclusion factor
[0009] 3. No uncertainty is given for the measurement results in the packaged device fixture

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Embodiment Construction

[0047] Depend on figure 1 with figure 2 The present invention is shown and described in detail with reference to specific embodiments.

[0048] The MCM-based noise parameter measurement uncertainty evaluation method is used to evaluate the noise parameter measurement uncertainty of the device under test in this embodiment.

[0049] The first step is to build a noise parameter measurement platform.

[0050] Such as figure 1 As shown, the measurement platform includes a noise source, a vector network analyzer, a noise figure analyzer, an impedance adjuster, an input DC bias network, an output DC bias network, and a DUT; the output of the noise source is sequentially The input end DC bias network, the impedance adjuster, the DUT and the output end DC bias network are connected to the corresponding input ends of the noise figure analyzer; the vector network analyzer is set between the noise source and the noise figure analyzer Between, set in parallel with the input DC bias...

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Abstract

The invention discloses a noise parameter measurement uncertainty evaluation method based on a multi-chip module (MCM) and belongs to the field of measurement metering. The method includes utilizing an equivalent noise parameter equation as a measurement model for noise parameter measurement uncertainty evaluation, utilizing physical quantity measured from a measurement platform to calculate the function equation and obtain data reflecting equivalent noise parameter distribution condition, leading out noise parameter and noise parameter distribution from the equivalent noise parameter and finally obtaining uncertainty for noise parameter measurement. The method effectively combines digital random simulation, physical measurement boundary criterion and least square method optimization criterion, and enables noise parameter uncertainty evaluation to be effective, real and reliable. The method satisfies the national standard, and is flexible in simulation mode, multiple in applicable measurement system variety and strong in universality.

Description

technical field [0001] The invention discloses an MCM-based noise parameter measurement uncertainty evaluation method, which belongs to the field of test and measurement. Background technique [0002] "Guide to the Expression of Uncertainty in Measurement" (Guide to the Expression of Uncertainty in Measurement, referred to as GUM) has been promoted and applied for many years since it was released in 1993, and has become a uniform standard followed by all countries when expressing measurement results. In China, the measurement technical specification JJF1059-1999 "Evaluation and Expression of Measurement Uncertainty" is equivalent to the method stipulated by GUM. It has played an important role in guiding and regulating the use and evaluation of measurement uncertainty throughout the country. , The expression of measurement results in the test field is in line with international standards. [0003] With the rapid development of science and technology and the continuous stand...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F19/00
Inventor 吴爱华梁法国郑延秋郑世棋翟玉卫乔玉娥刘晨张艳蕊
Owner THE 13TH RES INST OF CHINA ELECTRONICS TECH GRP CORP
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