Noise Parameter Determination of Scalable Devices
20210263091 · 2021-08-26
Inventors
Cpc classification
G01R27/28
PHYSICS
International classification
Abstract
A method to determine noise parameters of a scalable device, is presented in which the determination of the noise parameters of the scalable device is independent of the model adopted for the device. The scalable device is connected as part of a test circuit including a noise source, a recirculator, a first power detector and a second power detector. The first power detector is connected to the recirculator and between the noise source and the scalable device and the second detector is connected to the device under test.
Claims
1. A method to determine noise parameters of a scalable device, wherein the determination of the noise parameters of the scalable device is independent of model adopted for the device.
2. The method of claim 1, wherein no additional external tuner is needed to determine the noise parameters of the scalable device.
3. The method of claim 2, wherein a circulator is not necessary to determine the noise parameters of the scalable device because a source of the device itself is used as a power detector.
4. The method of claim 1, wherein the scalable device is connected as part of a test circuit including a noise source, a recirculator, a first power detector and a second power detector.
5. The method of claim 4, wherein the first power detector is connected to the recirculator and between the noise source and the scalable device and the second detector is connected to the device under test.
6. The method of claim 4, wherein the scalable device generates noise powers b.sub.1, b.sub.n2 outwards and the noise power b.sub.n1 is directed to the first power detector by the circulator for independent detection and the power b.sub.n2 is directed to power detector 2.
7. The method of claim 4, wherein measurement is repeated changing a size of the scalable device.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0029]
[0030]
[0031]
[0032]
[0033]
DETAILED DESCRIPTION
[0034] A noisy linear two-port network can be described and analyzed in any representation of choice because they are equivalent in carrying the same information. However, some representations are more favorable than others when applied to particular cases or applications. For example, a scattering parameter representation is the standard choice for microwave DUT characterization; a transmission parameter representation, on the other hand, facilitates the analysis of cascaded networks.
[0035] The analysis herein will be developed in admittance parameter representation because of the direct proportionality of the Y parameters with size. However, we are conscious that measurement equipment relies on scattering parameters, and for that reason, the characteristic impedance of the scattering parameter measurement system may also be considered in our discussion. Finally, as it is customary with microwave measurement systems, the characteristic impedance Z.sub.0=1/Y.sub.0 is assumed to be real.
[0036]
[0037] Furthermore, with reference to
[0041] The goal of the measurement setup is to determine the DUT's correlation matrix c.sup.Y.sub.n=C.sup.Y.sub.n/W normalized by size W and defined in (3).
[0042]
[0043] An admittance matrix representation may not be used in very limited cases—the canonical example is a series impedance. Other representations may be used to deal with those special cases of academic interest—for example, the scattering parameters—once the analysis of this article, whose primary interest focuses on two-port linear scalable devices, is understood. Additional passive networks may be present in a practical noise characterization setup, such as input tuner or output circulators. The noise contribution of these known networks can be easily accounted for and deembedded in our analysis to effectively obtain the setup of
[0044] Herein is developed a procedure that allows the experimental determination of the four real-valued parameters of the correlation matrix c.sup.Y.sub.n=C.sup.Y.sub.n/W normalized by size W with the measurement setup shown in
[0045] The expression noise performance is used to allow for the many equivalent results that can be obtained from the measurement setup of
[0046] As .sub.L delivered by the noise source I.sub.S to the load Y.sub.L=1/Z.sub.L; [0048] 2. power P.sub.D
.sub.L delivered by the noisy network to the same load Y.sub.L.
[0049] It will become clear in the next steps that developing the analysis in terms of the DUT's power contribution P.sub.D.sub.L to the receiver is sufficient to formally explain the limitation of the size-based procedure in the determination of the DUT's four noise parameters.
[0050] The power P.sub.D.sub.L detected by the receiver with the assumptions above is easily found by considering the power absorbed by load Y.sub.L when the DUT is the only active generator of noise power because the external noise sources I.sub.S and I.sub.L in (5a) and (Sc) are
which can be expanded with (5) to obtain
[0051] The correlation matrix i.sub.ni†.sub.n in (9d) is equivalent to (3) and defines the unknown normalized noise parameters c.sub.n.sub..sub.L as a function of DUT's size W. The DUT's matrix Y is defined in (1) versus size W as well.
[0052] The next steps are as follows: [0053] 1. to expand (8) for each available DUT of size W.sub.m(m=1, . . . , M); [0054] 2. to determine the DUT's noise parameters c.sub.n.sub.
[0055] The determination of the four real-valued noise parameters in Y representation defined as
would logically suggest that M=4 is the minimum number of distinct DUT sizes required for the solution of (8). Hence, the following holds. [0056] 1. Equation (8) is fully expanded as a linear combination of the unknown noise parameters (10). [0057] 2. Four coefficients, one for each noise parameter, are identified and collected. [0058] 3. For each coefficient defined in the previous step, the size parameter W.sub.m is identified and collected.
[0059] The outcome of this procedure is to rewrite (8) as
the quantity Ø in (12b) is a 3×1 vector of zeros; P.sub.2(W.sub.m) is an instantiation of
with N=2 at size W.sub.m
and Δ.sub.y is the determinant of the normalized admittance matrix (1). The denominator in (11) expresses the determinant of (Y+Y.sub.SL) stemming from its inversion defined in (9a).
[0060] Note that the following holds. [0061] 1. Expression (12) shows how frequency and size interact by clearly separating frequency and size dependence in each term. [0062] 2. Only Θ.sub.m in (12) depends on the load Y.sub.L. As a consequence, it becomes intuitively understandable that the noise power (11) at constant frequency is a ratio of a quadratic polynomial P.sub.N=2(W) at numerator to its dyadic product P.sub.N=2P†.sub.N=2 at denominator, stemming from Θ.sub.mΘ†.sub.m and mapping into a P.sub.N=4(W) vectora—fact that implies ∂P.sub.D.sub.L/∂W to be zero for some W value at constant frequency.
[0063] Finally, all the quantities in (11) are comprised of real numbers and each factor carriers the proper dimension to accommodate for the various products: it would be straightforward to assume at this stage that measuring P.sub.D.sub.L,m for each available device with size W.sub.m(m=1, . . . , M
4) will allow a least-squares fit to determine the noise parameters X from (11), but this is not the case, as described below.
[0064] A collection of power measurements P.sub.D.sub.L,m for m=1, . . . , M
4 devices with distinct size W.sub.m generates an overdetermined system that can be solved with an LSM procedure
from which
X=(A†A).sup.−1A†b (16)
is obtained. However, the noise parameters in X can be determined by (16) only if the square matrix A†A is invertible—which implies that its determinant is not zero.
[0065] The A matrix is the product of two matrices, as shown in (15a). [0066] 1. [D.sub.y].sub.12×4 defined in (12b) is a 12×4 matrix that only depends on the angular frequency ω through the normalized admittance parameters y.sub.ij of the DUT and the source admittance Y.sub.S. Hence, M measurements over size at the frequency of interest change neither size nor values of this matrix. [0067] 2. A matrix [R†.sub.m].sub.M×12 with as many rows as the number M of measurements and 12 columns is shown by
Hence, the matrix A in (15b) consists of M rows and four columns. It is now possible to examine the product A†t A in (16) in order to investigate its determinant
[0068] The product A†A can be expanded explicitly in the product of its terms [see (19)]. A singular value decomposition (SVD) procedure could be applied to each matrix in (19) to determine their respective rank. A closer look at [R.sub.mR†.sub.m].sub.12×12 with the help of (17) reveals that it can be written as a set of 4×4 elements, each element being a 3×3 matrix E
[0069] It appears evident that the rank of [R.sub.mR†.sub.m].sub.12×12 is 3 because only one out of four columns of matrices [E].sub.3×3 in (18) is clearly independent; and only first row of that column is independent—which makes the rank of [R.sub.mR†.sub.m].sub.12×12 the same as the rank of [E].sub.3×3. After expressing the matrix A, as shown in the following equation:
[0070] It follows that the rank of (19b) is also 3, which implies that A†A, being a 4×4 matrix, is not invertible. In other words, against simple logic and intuition, the LSM determination of the four noise parameters through (16) will fail because det(A†A)=0 even if M4 DUTs are characterized.
[0071] Before providing a numerical verification of the abovementioned concepts by using recent published results obtained from the independent signal and noise characterization of active devices over frequency and size, some initial considerations on passive networks are presented, because the results above are applicable to either passive or active networks as long as they are scalable.
[0072] Regarding passive networks, the noise parameters of a passive scalable network can be calculated directly from its signal matrix. In admittance representation, the noise correlation matrix at temperature t=T/T.sub.0 can be calculated as
[0073] which shows that the noise parameters in C.sup.Y.sub.n are proportional to the size W because the admittance matrix Y is proportional to size as previously expressed in (1).
[0074] It is also interesting to note from (20) that reciprocal passive networks can be grouped into a set characterized by a real correlation coefficient
[0075] because m{c.sup.Y.sub.n12}=0. Hence, passive scalable two port reciprocal networks allow the determination of their noise parameters through (16) because their noise correlation matrix (20) is real with a total of three independent real elements.
[0076] Passive nonreciprocal networks are characterized by an asymmetrical matrix (y.sub.12≠y.sub.21), which will cause (20) to yield a complex correlation coefficient. For example, a scalable circulator or a passive scalable network with controlled sources (similarly to the linear model of an active device) will have a complex correlation coefficient because the off-diagonal elements of its noise correlation matrix (20) are not the same.
[0077] It addition, it should also be pointed out that the correlation coefficient, (21) being either complex or real, also depends on the representation in use. For example, the same scalable DUT in
C.sub.n.sup.S=N.sub.0t(I−S S†) (22)
will generate a complex C.sup.S.sub.n12. Furthermore, C.sup.S.sub.n would also be size-dependent unless the characteristic impedance in use was size-dependent as well—then, the bilinear transformation at the basis of the definition of S.sub.ij will be size-independent.
[0078]
[0079] To confirm the results of this analysis, attention is focused on the intrinsic circuit of
TABLE-US-00001 TABLE I Intrinsic Elements of the Scalable Model of FIG. 3 Component Value Dimension g.sub.m 602.761 (mS/mm) T 1.006 (ps) C.sub.gs 1.151 (pF/mm) C.sub.ds 0.257 (pF/mm) C.sub.gd 0.138 (pF/mm) T.sub.gs 0.490 (Ω .Math. mm) T.sub.ds 34.449 (Ω .Math. mm) T.sub.gd 1.196 (Ω .Math. mm)
TABLE-US-00002 TABLE II Real and Imaginary Values of the Admittance Matrix Elements and Corresponding Noise Temperature Measured at 20 GHz for the Intrinsic Circuit of FIG. 3. Calculation of |det(A.sup.†A)| Executed With MATLAB Based on Corresponding Y/W Normalized Values W Y.sub.11 Y.sub.12 Y.sub.21 Y.sub.22 T.sub.eq/T.sub.0 |det (A.sup.†A)| (μm) (mS) (mS) (mS) (mS) (—) (MS) 50 0.5283 +
8.0641 −0.9179 −
0.8657 .sup. 29.4621 −
6.7
1 1.4694 +
2.4819 0.879 9.17 .Math. 10.sup.−32 100 1.0566 +
16.1282 −0.6359 −
1.7318 58.9242 −
13.5103 2.9387 +
4.9637 0.587 2.95 .Math. 10.sup.−32 200 2.1132 +
82.2565 −0.8717 −
3.4629 117.8481 −
27.0286
.5775 +
9.9274 0.576 3.50 .Math. 10.sup.−32 300 3.1697 +
48.3847 −0.1076 −
5.1944 176.7726 −
40.5308 8.8152 +
14.8911 0.693 4.91 .Math. 10.sup.−32 400 4.2263 +
64.5129 −0.1434 −
6.9259 235.6987 −
4.0411 11.7550 +
19.8349 0.841 1.55 .Math. 10.sup.−32 600 6.3395 +
96.7693 −0.2152 −
10.3888 353.5450 −
81.0617 17.6324 +
29.7823 1.169 8.37 .Math. 10.sup.−32
indicates data missing or illegible when filed
[0080] The results above are general and applicable to any passive or active, scalable DUT independently of the representation. Stating that it is not possible to extract four real-valued noise parameters from measurements over size independently of the representation of choice in use is correct because any two representations V and K are connected by a matrix transformation of the type
C.sub.n.sup.K=C.sub.V.sub.KC.sub.n.sup.VC†.sub.V
.sub.K (23)
where C.sub.V.sub.T is a matrix that transform the noise correlation matrix C.sup.V.sub.n in V representation to the noise correlation matrix C.sup.K.sub.n in K representation, and it only depends on the elements of the signal matrix in V representation. Therefore, if the extraction over size fails in one representation, it will fail in any other representation. This is not to say that (16) may not be applicable in particular cases.
[0081] It has been pointed out earlier that a passive, reciprocal network will generate a real correlation coefficient based on (20). If the network is also scalable, then the analysis of this article can be tailored to account for m{c.sup.Y.sub.n12}=0 by appropriately reducing the size of A. This reduction in size affects only the matrix D.sub.y (12b), not the matrix R.sub.m (12a) that contains size information only. As a consequence, the number of unknowns decreases from four to three, and (16) can support the extraction of the three remaining real-valued noise parameters. It is easy to set this case up in a circuit simulator and verify this conclusion. Deceivingly, if our analysis had been conducted in the scattering parameter domain, (22) would not easily lead to matrix size reduction as easily as in the c.sup.Y.sub.n case because its off-diagonal elements are complex and nonzero, as shown in
[0082] It is also noticeable from the procedure outlined to obtain (11) that the noise power P.sub.D.sub.L absorbed by the load depends on the load Y.sub.L. Indeed, we have made no statement when determining P.sub.D
.sub.L—for example, we have not claimed that P.sub.D
.sub.L is defined as the available power; to the contrary, a generic Y.sub.L is loading the DUT's output port, as shown in
.sub.L delivered by the source to the load through the DUT will have the same G.sub.L/|Θ.sub.m|.sup.2 dependence shown by P.sub.D
.sub.L in (11) in order to guarantee that the ratio P.sub.D
.sub.L/P.sub.S
.sub.L at the basis of the definition of noise figure or equivalent noise temperature is independent of the load, independently of the choice of Y.sub.L value.
[0083] The LSM procedure (16) for the determination of X obtains P.sub.D.sub.L,m from the measurement of the DUT's noise figure F.sub.m and the determination of P.sub.S
.sub.L,m at size W.sub.m. This latter quantity, P.sub.S
.sub.L,m, will be the product of the following: [0084] 1. a load termination term G.sub.L/|Θ.sub.m|.sup.2 that depends on the terminations Y.sub.S and Y.sub.L, size W.sub.m, and frequency because of (14); [0085] 2. a term Y.sub.m(W.sub.m,y) dependent on the DUT's size W.sub.m and its normalized admittance matrix y; [0086] 3. the noise source |I.sub.S|.sup.2.
Hence
[0087]
and the load termination term cancels out with the corresponding term of (15) to yield
(F.sub.m−1).sub.m|I.sub.S|.sup.t=R†.sub.mD.sub.yX. (25)
[0088] The noise figure measurement allows (25) to be employed and the dependence on the load termination completely removed. However, the considerations on the inversion of A†A still apply because A=R†.sub.mD.sub.y (25) as well as (15) in terms of power P.sub.D.sub.L.
[0089] The results described herein fits with the experimental determination of the noise parameters versus size demonstrated and discussed by those skilled in the art. The reason lays in two facts described by the following statements. [0090] 1. The DUT's intrinsic (noise) model in use, shown in
[0092] It is, therefore, possible based on statement 1 to obtain the correlation matrix in admittance representation starting from the hybrid representation, whereas the off-diagonal element in the correlation matrix C.sup.H.sub.n is zero. Furthermore, statement 2 allows expressing the hybrid matrix H in terms of its components that constitute the scalable intrinsic model. The final result stemming from applying (23) is
and the dependence of the H parameters of interest on the size W is also indicated in (27). If (26) is used in the analysis above, the unknown vector X (10) will consist of two elements, t.sub.gs and t.sub.ds, and an LSM solution (16) can be obtained as demonstrated in prior publications because the dimensions of the matrix D.sub.y (12b) will be reduced to a 12×2 dimension.
[0093] Turning now to
[0094] This setup solves a system of two equations:
[0095] This setup has been demonstrated in a system simulator to determine the F.sub.S.fwdarw.PD1 and F.sub.S.fwdarw.PD2 values for each size W, the de-embedding (elimination) of the noise contribution of the circulator, and the solution of the equations for the correlation matrix C.sub.dev, elements.
[0096] This disclosure has discussed the basis for the characterization of the noise performance of a scalable linear network as a function of size, and it has proved that it is not possible to extract the four noise parameters of a scalable network as a general procedure. A practical example is offered with data obtained from a measurement of a set of active devices. Nevertheless, this disclosure has also discussed particular cases that support the determination of the elements of the noise correlation matrix versus size and explained the reasons why prior work is valid. In particular, the determination of the equivalent noise temperatures T.sub.gs and T.sub.ds at the basis of a widely used noise model is confirmed when a number of different size DUTs are available.
[0097] A novel solution to overcome the limitations to the determination of the noise parameters discussed earlier has been devised and described. The solution requires only standard measurement equipment and commercially available hardware. Simulations have been executed to confirm that a model-agnostic approach to the determination of the four real-valued noise parameters of a scalable two-port device is indeed achievable. The new approach has valuable applications of great interest in the semiconductor arena because it allows the noise characterization of any active device to be automated over frequency, bias, and temperature.
[0098] Although the invention has been shown and described with respect to a certain embodiment or embodiments, it is obvious that equivalent alterations and modifications will occur to others skilled in the art upon the reading and understanding of this specification and the annexed drawings. In particular regard to the various functions performed by the above described elements (components, assemblies, devices, compositions, etc.), the terms (including a reference to a “means”) used to describe such elements are intended to correspond, unless otherwise indicated, to any element which performs the specified function of the described element (i.e., that is functionally equivalent), even though not structurally equivalent to the disclosed structure which performs the function in the herein illustrated exemplary embodiment or embodiments of the invention. In addition, while a particular feature of the invention may have been described above with respect to only one or more of several illustrated embodiments, such feature may be combined with one or more other features of the other embodiments, as may be desired and advantageous for any given or particular application.