1. Introduction
The magnetoelectric (ME) sensor occupies a niche among the many magnetic field sensors. Its peculiarities are that this type of sensor is passive, solid-state, has no windings, is narrowly directed, has a pico-tesla resolution, and is potentially not expensive [
1]. The sensor consists of magnetostrictive and piezoelectric materials with an intermediate material (usually epoxy resin glue). The most used magnetostrictive materials are Terfenol-D and Metglas [
2,
3,
4,
5,
6]. The most popular piezoelectric ceramic materials include
(better known as PZT),
(PMN-PT), and more [
6,
7]. The ME sensor concept is that a magnetostrictive material reacts to an external magnetic field by generating mechanical stresses. These mechanical stresses are transferred from the magnetostrictive component of the sensor to the piezoelectric component through direct mechanical contact (usually an adhesive bond). The piezoelectric component converts mechanical stresses into electrical charge at its output electrodes. The charge amplifier can measure this signal.
In recent decades, several groups of researchers have carried out in-depth analytical and experimental studies of the properties of ME sensors [
6]. They indicated promising materials [
8,
9], basic mechanical topologies [
10,
11,
12], bias field influence [
13], preferred amplifier types [
9], and the effect of these factors on sensitivity and sensor resolution [
14]. Among the curious facts about ME sensors, we can note that a conventional ceramic capacitor can also operate as an ME sensor because it includes nickel electrodes with magnetostrictive properties and ceramic isolation with a slight piezoelectric effect [
15].
Particular attention in the above studies of ME-sensors is paid to analyzing the sensor resolution, signal-to-noise ratio (SNR), and obtaining the equivalent magnetic field noise, particularly at low frequencies. For this purpose, it is necessary to identify all noise sources of the system, specify the noise frequency density of each of these sources, determine the transfer functions between each noise source and the output signal, consider the noise budget, and obtain the spectral density of the resulting noise. Finally, the resulting noise would be divided by the transfer function between the input (magnetic flux density, T) and the output (output voltage, V) to obtain an equivalent magnetic field noise.
Finite element methods (FEM) are often used to analyze internal multiphysics processes in solid elements [
2,
4]. Efficient software tools for this type of analysis have been developed. However, FEM is difficult to implement to solve the specific problem because not all tools allow mutual simulation of a solid-state component with electronics of various levels of complexity, spectral analysis of signals, noise spectrum density analysis, and the dynamic behavior of a system that includes both solid-state and lumped electronic elements [
3]. At the same time, simulation tools, such as Simulation Programs with Integrated Circuit Emphasis (or SPICE-based electronic circuit simulators), can quickly solve such problems, but the solid-state component must be represented as an equivalent electrical circuit. The models based on the Bond graphs have similar capabilities, but the software for such models (for example, MODELICA [
16,
17]) is still evolving.
The use of electrical analogies for modeling non-electrical processes is a widespread practice. An example would be thermal processes in thermoelectric systems [
18], dynamic mechanical processes [
19], gas-discharge bulbs behavior [
20], subsea observation networks [
21,
22], and even macro-processes, such as photovoltaic cells and panels [
23], urban train traffic [
24], and more. This technique is especially effective in cases where the model under study is part of a complex system and must be analyzed and simulated together with the system’s electronic (or electrical) components. The system concerned in this study consists of an amplifier, a feedback network, and the solid-state ME sensor, where magneto-mechano-electrical processes are modeled as an equivalent electrical circuit. In this scheme, all noise sources (intrinsic sensor noise, equivalent noise of the amplifier, noise of feedback elements) that affect the sensor’s resolution are modeled as independent voltage or current sources of white or colored noise without correlation [
1,
13,
25,
26,
27]. The calculation of the output noise and the equivalent input noise is carried out based on the obtained scheme in an analytical way.
Most SPICE-based circuit simulators allow steady-state, time-domain (transient), and frequency domain (AC) simulation types. Additionally, these simulators allow circuit noise analysis in the frequency domain [
28]. This feature is an advantage of the SPICE-based simulators for this specific application over other multiphysics simulation software for systems with lumped parameters, such as MODELICA [
16,
17]. Moreover, the resistors and semiconductor device models include different white (thermal) and combined (flicker + shot) noise sources ready for noise spectrum density analysis. Therefore, the circuit simulators are intuitively the most suitable tools for analyzing systems that include an electrical part and a non-electrical part, which is expressed as an equivalent electrical circuit, such as ME sensors with amplifiers. However, a few limitations prevent using a circuit simulator for analyzing the proposed system. For example, no element includes the electric charge noise model, the frequency-dependent equivalent series resistance of capacitance of piezoceramics (ESR) noise model, and more.
This work aims to adapt the ME sensor model to be analyzed and optimized using a SPICE-based simulator. For this purpose, sophisticated models of some elements were developed, and universal sources of uncorrelated white and colored noise are presented as separate components included in a circuit consisting of noiseless elements. Simulation of an adapted system model allows for considering parameters usually neglected in analytical calculations, such as a non-ideality of the amplifier, and the frequency dependence of ESR, etc. In addition, we tried to avoid using the Laplace function, which allows for describing the frequency-phase behavior of elements since, outside the frequency domain, such functions slow down simulations and lead to significant calculation errors, which look like a noise in the time domain analysis.
The study [
29] was taken as a reference for model validation. The paper analyzes sensor resolution and output signal value when the system is excited by a sine-form input magnetic flux density with an amplitude of 10 nT. The authors obtain essential parameters from the manufacturer’s data and the geometry of materials and compare their analytical calculations with experimentally obtained data. In the current study, we adapted the sensor model presented in the reference study for simulation using a PSPICE-based simulator, performed the simulations using the LTSPICE software [
30], and compared the results with our analytical results and the measurement results proposed by the authors of the reference study.
It is important to note that the piezoelectric element is also susceptible to acoustic, thermal, and other noise and interference that complicate measurements. Placing the sensor in vacuum isolation can minimize this additional noise and interference.
The rest of the article is structured as follows:
Section 2 provides a brief theoretical background for magnetoelectric sensors, explains the principal coefficients and dependencies, and describes the amplifier topology. The methodology used in the study for an analytical approach to a noise budget calculation and creating the SPICE-oriented equivalent circuits of specialized elements, is demonstrated in
Section 3. Noise budgeting using analytical methods and noise analysis in the LTSPICE simulating software and comparison of results are shown in
Section 4.
Section 5 demonstrates the comparison of the results with experimental measurements. Finally,
Section 6 brings us to discussions and conclusions.
2. Theoretical Background
In general terms, the effect of magnetostriction can be defined as body deformation in reaction to a change in its magnetization due to exposure to a magnetic field. The effect was first identified in 1842 by James Joule. In [
31], the phenomenon of magnetostriction is described, as shown in
Figure 1. A magnetic field H [Oe], induced in a magnetostrictive material of length
, by a current-carrying solenoid, as shown in
Figure 1a, leads to a change in the geometric size of the material by
along the axis of the field (shown in the figure by a dashed line). The solid thick curve in
Figure 1b demonstrates quiescent relative elongation as a function of the applied field. The
is independent of the direction of the field, but only on its absolute value and changes from zero to
value, at which saturation occurs, and the relative elongation no longer depends on the field strength. Minor deviations of the field
about some quiescent value of the field lead to small variations in a
. This phenomenon can be seen in
Figure 1b, depicted by tiny lines and enveloped by dashed lines. A bias field is typically induced using permanent magnets to maximize the ratio of small
and H signals [
32]. The value of
is often determined empirically. Knowing the
and the coefficient of elastic deformation, it is possible to calculate the mechanical stress in the material under the influence of a magnetic field, both quiescent and small signal.
By its definition, the piezoelectric material can accumulate an electric charge in response to mechanical stress. This property of the piezoelectric material is reversible. That is, the piezoelectric material demonstrates mechanical deformations in response to an electric field. However, we will consider only the first, direct relationship in this study.
Figure 2a shows one of many possible magnetoelectric sensor topologies. This topology is published in [
29], and we use this publication to validate the proposed model. This topology includes a PMN-PT piezo-fiber element (compiled in an optimized way) sandwiched between two plates stacked with six thin layers of Metglas magnetostrictive material. The layers are bonded mechanically with epoxy resin. The choice and optimization of the topology are described in detail in [
29]. The lead magnesium niobate–lead titanate (PMN-PT) single crystals exhibit ultrahigh piezoelectric coefficients of approximately
and a low tan δ value of roughly 0.005. This material is an epoxy matrix of piezoelectric elements with embedded electrodes. The geometry of the interdigitated (ID) electrodes is such that the composite is configured in a multi-push-pull modality. The reader can find more information about such materials and methods for their modeling in [
33]. The sensor is equipped with permanent magnets to create a bias field. Permanent magnets are fixed on both sides of the sensor at a certain distance, providing the optimal value of the bias field. Both biasing and magnetic fields are directed along the sensor. The ME-sensor can operate at both high (ultrasonic) resonant and low and quasi-static frequencies. However, in the field of view of this study is a sensor capable of capturing a signal at low and ultra-low frequencies. At these frequencies, problems arise associated with the intrinsic noise of the piezoelectric element and the noise of amplifying devices.
The block diagram in
Figure 2b shows the chain of converting the energy of a magnetic signal first into mechanical stress using a magnetostrictive component and then into an output electrical signal. The resulting electrical signal can be measured as an electrical charge using a charge amplifier or as a voltage across the output capacitance of a piezoelectric component.
The magnetoelectric sensor is a multi-domain system that includes magnetic, mechanical, and electrical domains. One of the conventional methods for analyzing such systems is a method of analogies. The idea of the method is that an analogous process in one domain can emulate the original processes from another domain if identical equations describe both. In the case of a magnetoelectric sensor, it is convenient to describe all non-electrical processes using equivalent electrical processes.
In
Figure 3a, the equivalent electrical circuit of a magnetoelectric sensor is shown. The electrical circuit includes a controlled current source connected in parallel to the equivalent resistance
, which describes electrical losses in the piezoelectric material and capacitor
, which is formed due to the dielectric properties of the piezoceramics between the output electrodes. The dielectric losses in ceramics are represented by the frequency-dependent equivalent series resistance ESR. The current
of the controlled current source is equal to the time derivative of the electrical charge
, generated by the piezoelectric material in response to mechanical stress. The charge generated by the ME sensor is proportional to the magnetic field
with the coefficient
. The coefficient
, in turn, is shown in the graph
Figure 3b as a function of the constant bias field
. The data for the plot are taken from an article [
29] for a specific sensor. A factor of 10 k is needed to match the input signal, the magnetic flux density measured in tesla, and the magnetic field
measured in oersted, with magnetic permeability
corresponding to free space.
The output signal can be measured as a voltage using a voltage amplifier. However, using a trans-impedance amplifier with a capacitive characteristic may be a better alternative due to higher stable gain and the possibility of setting the amplifier’s bandwidth. Such an amplifier is often called a charge amplifier. When such an amplifier topology is used, the output voltage is proportional to the piezoelectric element’s charge, internal mechanical stress, and magnetic input signal. The basic topology of such an amplifier is demonstrated in [
13].
Every non-reactive element, such as a resistor or equivalent resistor and an amplifier, generates some amount of white or colored noise. These noises impact the output signal and reduce the sensor’s resolution. Choosing the correct amplifier elements through noise balance optimization maximizes sensor resolution. The modeling technique proposed in this study allows for easy calculation of the ME sensor’s equivalent input magnetic field noise to be performed quickly and more accurately than the simplified analytical calculations demonstrated in the cited papers.
4. Noise Budget (Analytical Calculation)
Before proceeding with the validation of the proposed model, we propose to carry out an analysis of the noise of the ME-sensor system together with an amplifier (see the topology of
Figure 5), as conducted in [
13], to select the optimal operational amplifier and optimize the feedback element connections. For this purpose, one should distinguish each noise source in the topology, derive its transfer function to the output, and finally calculate the equivalent input noise by dividing the total output noise by the input-to-output transfer function shown earlier in the Expression (8).
All noise sources considered in this work are mapped in
Figure 11. Among them, the thermal noise current source
of the resistor
, the voltage noise source
corresponding to the ESR noise, the opamp’s equivalent current, and voltage noise sources
and
correspondently, and
the current noise source of the feedback resistor
. For each of the noise sources, the transfer function can be expressed using the
and
blocks as shown above, (1), (2), where the subscript x indicates the noise source. The considered noise source
must be taken as nonzero, with all the other sources set to zero. It is not difficult to show that the block
will be the same for all transfer functions and equal to
, see (7). Thus, only
blocks need to be derived for each noise source.
All the
blocks are tabulated in
Table 1. When compiling the table, the following simplifications were made: the ESR resistance is assumed as small relative to the impedance of the
and does not affect the transfer functions. The
resistor of the selected opamp is large enough (about 10T
relative to
and can also be neglected for simplicity.
Having the data in
Table 1, it is possible to express analytically the noise spectral density at the output of the amplifier,
:
In addition, the equivalent spectral density of the input signal,
, which enables supposing the resolution of the sensor can be derived as:
Thus, the designer can identify the dominant noise source among those inherent in the sensor (
) and choose the opamp and feedback resistor
in such a way as to minimize the influence of corresponding noise sources
,
, and
:
Or, for topology with a charge pump amplifier, shown in
Figure 11:
and:
The
, the thermal noise of the feedback resistor
, and the opamp equivalent input noise sources
and
contribute to the equivalent field noise to the same extent as the noises of
and ESR in the case of equality in Expressions (23)–(25) and to a lesser extent in the case of inequality. If the values on both sides of the inequality differ by a factor of three or higher, then the influence of such a noise source is negligible compared to the dominant noise source. In the sensor example discussed in [
29], at frequencies below
, the equivalent resistor noise
is the dominant noise source of the sensor. The
noise becomes the dominant noise of the sensor at higher frequencies.
5. Validation of Simulation Results vs. Experimental Measurements
The experimental data published in [
29] will be used to validate the proposed model in this study. The parameters of the ME sensor used in the reference article are summarized in
Table 2. The data collected in this table are obtained from laboratory measurements of the prototype. The table also shows the value
that corresponds to the maximum value of the plot
vs.
shown in
Figure 3b. In addition to the data of the sensor, the gain and minimum bandwidth of the charge amplifier used in [
29] are given in the table. The authors of [
29] do not specify either the topology or the amplifier’s circuitry. However, another article [
14] written by the same researchers proposed a basic amplifier topology, shown in
Figure 5, that we used as a template.
Minimizing the noise using Expressions (23)–(25) is necessary to build an amplifier. The noise requirements for the opamp and feedback resistor consider that their noise sources contribute to the equivalent input magnetic field noise to the same extent as the sensor’s internal noise sources. These values are different for different frequencies and are tabulated in
Table 3.
The requirements specified in the table must be narrowed if the noise of the amplifying circuitry is required to be negligible compared to the intrinsic noise of the sensor. The feedback capacitor
determines the gain of the charge amplifier. The feedback resistor
is placed in parallel with the feedback capacitor to avoid the output voltage rolling out into the non-linear region. As one can see from
Table 3, the
needs to be fairly large so that its impact on the equivalent input noise is negligible.
An operational amplifier with the characteristics indicated in the table is not available in today’s integrated circuits market. However, such an amplifier can be, possibly, explicitly designed for this specific sensor by creating an ultra-low-noise input stage to a standard opamp. Still, the creation of such an amplifier is beyond the scope of this study. So, instead, this work uses the common LMC6044 ultra-low noise amplifier, as in [
14]. A second amplification stage must be added to a circuit to obtain the required gain of
. However, the noise characteristics of the second opamp have an insignificant effect on the equivalent input noise, just enough to be low noise. The LTSPICE simulation circuit is shown in
Figure 12.
All schematic parameters are summarized in
Table 4. All directives in SPICE start with a dot. A semicolon at the beginning of a line disables the directive. Different simulation profiles are used for different types of analysis. The various simulations are run here for model validation. Finally, all the results are compared with the article’s experimental data.
5.1. Charge Amplifier’s Gain vs. Bias Magnetic Field
Figure 13a shows the simulation result in the frequency domain. The AC simulation directive is set as active; scanning is performed in decades from
to
, with a resolution of
points per decade. As shown in
Figure 13a, in the frequency range of
, the gain of the charge amplifier is
. This corresponds to the gain of the charge amplifier used by the article’s authors in [
29], which we chose as a reference and is given in
Table 2.
The authors of the reference article report that with a magnetic bias field of approx.
, the output signal of the amplifier demonstrates
with an input signal of
at a frequency of
. The graph in
Figure 13b was obtained by scanning the hbiasOe parameter (bias magnetic field
in oersteds) using the “.step” directive. This statement allows us to run an AC sweep analysis many times for different values of the sweep parameter. In our case, the analysis was run 124 times for the sweep parameter scanned linearly from
to
with a
step. The “.meas” directive extracts the values of the output voltages at a frequency of
of each run and builds a table of the output voltage vs. sweep parameter. This table is presented graphically in
Figure 13b. The figure shows that the maximum value of the output voltage occurs at a bias field value of
. This value is the same as was measured in the paper. The value of the output voltage at this bias-point with an input signal having an amplitude of
is
. That is, precisely the value that was measured in the paper using a lock-in amplifier at a frequency of 1 Hz.
Figure 14 demonstrates simulation results of the same experiment proposed by the authors of the cited article [
29] but now in the time domain. The circuit under simulation shown in
Figure 12 has a voltage source generating an equivalent magnetic field with a sine waveform with an amplitude of 10 nT and a frequency of 1 Hz at the sensor’s input. The simulation time is set to 200 s for all transients to complete. In
Figure 14a, the last two cycles of the output voltage are shown. It can be seen from the figure that the amplitude of the output voltage signal is 1.4 V, which corresponds to the results of the original experiment. In
Figure 14b, the dependence of the output voltage amplitude on the biasing magnetic field is demonstrated. The magnitude of the biasing magnetic field is changed using the
param directive from minimal values up to 12.5 Oe, as in the original experiment in [
29]. Measuring the output signal’s amplitude for each step of the scanned parameter was carried out using the
measure directive.
5.2. Equivalent Input Noise Spectral Density
PSPICE is suitable for noise analysis in the frequency domain. The “.noise” directive calculates the noise spectral density at the output terminal (onoise) or the equivalent noise at the input source (inoise). In addition, the algorithm calculates the
gain as the ratio of the output and input signals. This allows us to analyze the contribution of each noise source to the equivalent input noise. Each noise source’s impact on the output should be divided by the gain for this sake.
Figure 15 shows the total equivalent input noise spectral density and its components. One can see from the chart that for the proposed ME sensor with the chosen amplifiers, the dominant noise source is
, the equivalent current noise of the amplifier
. Therefore, this noise dictates the equivalent input noise level.
Knowing the values of the equivalent current and voltage sources, it is possible to mathematically extract the equivalent input noise of the sensor by taking the root of the difference of the squares of the total measured noise and the total noise of the amplifier. So, from (19), the noise floor of the ME sensor is:
The noise floor of an ME sensor can be modeled using the proposed model, as shown in
Figure 16a. For this purpose, all amplifier noise sources should be disabled. The noise of the feedback resistor does not need to be nulled since its noise value is negligible compared to the intrinsic noise of the ME sensor. The equivalent magnetic noise and its component simulation results are shown in
Figure 16a. The simulated equivalent magnetic noise floor and the equivalent input noise measured and extracted from measurements published in paper [
29] are compared in
Figure 16b.