1. Introduction
With the development of modern vectorial EM sensor technologies, new vectorial methods for modeling and processing EM waves, derived from fundamental Maxwell’s equations, need to be created. New methods also need to be developed for processing signals observed from a network of sensors. For example, CubeSats are inexpensive and can be quickly deployed, making it practical to utilize networks of antennas and sensing equipment to detect electromagnetic waves. The National Research Council stated that the deployment of satellite constellations was a priority for the coming decades [
1]. Satellite constellations will greatly advance our scientific understanding of the interactions of atmospheric layers through the collection of environmental data. Placement conditions to optimize the design of CubeSat constellations for communication networks are discussed in [
2]. Additionally, CubeSat missions are being developed with vector sensor technology [
3,
4]. New imaging techniques have also been developed to remotely capture 3D structures in the ionosphere from the ground [
5].
In this review, we discuss how the Maxwell vector wave equation (MVWE), an equation modeling vectorial EM propagation derived directly from Maxwell’s equations, has been utilized in recent advancements to more accurately model EM wave propagation in inhomogeneous and random media. The MVWE, as opposed to the scalar wave, Helmholtz, and paraxial equations, models vectorial EM waves by retaining the gradient of the refractive index, and, as a result, the MVWE captures important physics phenomena associated with the coupling of electric field components such as depolarization, which occurs in EM waves propagating through inhomogeneous media.
Application of the MVWE has been demonstrated for the important case of stratified media. Examples of stratified media include the ionosphere and sharp layers such as air–sea and Rayleigh–Taylor interfaces [
6,
7,
8]. For a broad overview of Rayleigh–Taylor instabilities and turbulence, see [
9]. In these cases, the permittivity gradient is large and affects propagating EM waves. When waves propagate to the Karman line (at 100 km above the Earth’s surface), a portion of the wave penetrates into the ionosphere and another portion reflects back into the mesosphere, and as a result of the permittivity gradient, the electric fields are coupled in this region and EM waves can become depolarized. This phenomenon is related to the temperature gradient
and the angle between the electric field
and the gradient. The thermodynamic structure of the atmosphere in the vertical direction affects communication and the propagation of EM waves [
10]. NASA’s Ionospheric Connection Explorer (ICON) mission, launched in 2019, seeks to understand how space weather interacts with the weather on Earth. Radio and GPS signals that propagate through the ionosphere can be disrupted by dense pockets of charged particles [
11,
12]. Fast winds in this region power electric fields that can affect satellites [
11,
13]. The ICON mission provided direct measurements of the Karman layer.
This paper is dedicated to Dr. Jackson Rea Herring. Jack was a Senior Scientist at the Mesoscale and Microscale Meteorology Division at the National Center for Atmospheric Research (NCAR) at Boulder, Colorado, a position he had held since 1978. Jack made fundamental contributions to research on stratified turbulence [
14,
15]. The Craya–Herring decomposition is widely used by researchers in the field. Stably stratified flows appear in many areas of physics and engineering and are fundamental to the study of geophysics. Stable stratification occurs in the Earth’s atmosphere and planetary flows more generally. He was a leader in the Geophysical Turbulence Program (GTP) at NCAR [
16]. Over the years, our scientific community benefited greatly from Jack’s generosity and the GTP scientific activities including workshops and a special collection of articles on geophysical turbulence which he edited [
17,
18]. Jack Herring contributed to atmospheric and oceanic flows, and his work influenced many publications in stratified flows more generally [
19,
20].
The present review is narrower in scope, focusing on electromagnetic wave propagation through inhomogeneous stratified media and processing of sensor observation time series in random media. Sensor time series data can be used with an eigenfunction decomposition of the EM wave field obtained from general PDE theory to reconstruct the EM field at any other location (the procedure is described in
Section 3). Sensor networks can also be utilized to obtain better estimates of EM fields.
This paper is organized as follows. In
Section 2, the Maxwell vector wave equation is derived for electromagnetic wave propagation in inhomogeneous media and the important case of a stratified layered medium is discussed. In
Section 3, work on electromagnetic wave field reconstruction from sensor network data is reviewed. In
Section 4, the stochastic Maxwell vector wave equation is introduced and studied. Finally, concluding remarks are made on wave propagation through stratified layers.
2. Vectorial Electromagnetic Wave Propagation through Stratified Layers
In their most fundamental form, electromagnetic waves are described by Maxwell’s equations. Often, approximations are made to simplify these equations to decoupled scalar wave equations. This approximation, however, neglects important vectorial phenomena such as depolarization. Thus, it is important to study the vectorial wave equation derived directly from Maxwell’s equations, which is referred to here as the Maxwell vector wave equation (MVWE). This equation can be derived from the differential form of Faraday’s law of induction and Ampére’s law:
with the constitutive relations
and
, where
is the current density,
is the electric field,
is the magnetic field,
is the electric displacement,
is the magnetic induction,
represents the Cartesian spatial coordinates,
is the spatially varying permittivity, and
is the permeability constant. Differentiating Ampére’s law with respect to time gives
Finally, using Faraday’s law gives the Maxwell vector wave equation
For constant
, the vector identity
can be applied to obtain the alternate form
where
. This equation clearly resembles a standard wave equation with the additional term
. To reduce Equation (
5) to a standard wave equation, it is often assumed that
using Gauss’s Law
. This assumption, however, neglects vectorial and depolarization effects of electromagnetic propagation in inhomogeneous media since
which implies that
Thus, Equation (
5) can alternatively be written in terms of the parameter
, where
n is the refractive index, to represent the coupling of the components of the electric field via the permittivity gradient:
The inverse of the magnitude of , i.e., , is the length scale that characterizes the inhomogeneity of the medium. Without the coupling of the electric field components, depolarization effects are neglected.
Simpler models than Equation (
8) that preserve coupling effects can be obtained in special cases. One important such case is when the medium is vertically stratified, which can be represented by a permittivity
that depends only on the vertical coordinate
. In practice, a vertically stratified permittivity can be obtained via ensemble averages of permittivity data observed at different times, horizontal averages of permittivity data observed at different horizontal locations, or using a standard profile (for example, see [
21]). The gradient of the permittivity points in the
direction, and therefore,
. The coupled Equations (
4) become an upper-triangular system:
In this system, the field component parallel to the direction of stratification acts as a forcing term for the orthogonal field components. The orthogonal field components solve forced scalar wave equations. As a result, a wave source that is initially linearly polarized parallel to the direction of stratification will depolarize and activate orthogonal components of the electric field. Depolarization can be defined, as in [
22], as the ratio of the complex electric field that is orthogonally polarized to the transmitted wave (
) to the field that is copolarized to the transmitted wave (
):
Depolarization effects have been studied in the context of evaporation ducts at the air–sea interface [
23]. Evaporation ducts are refracting layers where humidity sharply decreases near water–air interfaces such as boundaries of clouds, the marine boundary layer, and the air–sea interface. At the air–sea interface, the permittivity changes sharply, which results in depolarized electromagnetic waves. The effect of evaporation ducts on radio frequency (RF) propagation was studied in the Coupled Air–Sea Processes and Electromagnetic Ducting Research (CASPER) project [
24]. The effect of random, inhomogeneous media on wave propagation has also been studied using a simpler scalar wave equation approach [
25,
26,
27,
28].
Other types of layers encountered in electromagnetic applications are discussed in the conclusion. Jack Herring made fundamental contributions to the study of stratified layered media characterized by the Brunt–Väisälä frequency,
, where
is the potential temperature and
g is the acceleration of gravity [
14,
15].
3. Robust Reconstruction of Wave Dynamics Using Data from Noisy Sensors and Heterogeneous Sensor Networks
In this section, the results for the wave equation
are reviewed. Equation (
13) has the form of (
9) and (10) in the stratified upper-triangular system and is also a fundamental equation in acoustics. In [
29], Equation (
13) is studied from a signal processing perspective. An important problem in signal processing is understanding how and when to use information obtained from multiple sources. When an approximation of an electric wave field in some region of space is needed, a network of electric field sensors can be utilized. In [
29], the problem of constructing wave fields from a network of sensors is analyzed. Each sensor obtains a time series of observations
of the wave field at a fixed spatial location
, i.e.,
, where
u is the wave field. The sensor location
is represented by the fixed Cartesian coordinates
relative to the frame of reference. Natural questions to ask are (1) how large the sensor network should be to construct the wave field and (2) what the level of error in such approximations is.
The solutions of (
13) can be described in terms of eigenfunctions
of the weighted Laplace operator
with suitable boundary conditions along with initial conditions
The general solution can then be written as a sum
which is written here and throughout in the real, as opposed to complex, form. The eigenfunctions
can be thought of more generally as “features” of the problem (
13) together with boundary and initial data. For (
13), the features are eigenfunctions of the weighted Laplace operator, and for the Maxwell vector wave Equation (
4), the features are eigenfunctions of the weighted curl-squared operator (discussed in the next section). Importantly, the only requirement for the analysis that follows is that the features be orthogonal. Thus, different boundary conditions and differential operators can be substituted whenever the eigenfunctions are orthogonal. The general features framework is used in many other areas of research, including machine learning, compressed sensing, and dynamic mode decomposition [
30,
31].
The sensor time series
is almost periodic in time, i.e., a sum of trigonometric functions
Although each term is periodic, the sum is not periodic, because the frequencies
are noncommenserate, which is the case in the processing of signals in practice. The space of almost periodic functions is a Hilbert space with the inner product
Therefore, the frequencies
and coefficients
and
can be obtained using the inner products:
When every eigenvalue uniquely identifies an eigenfunction (i.e., every eigenvalue has multiplicity one), the wave field u can be fully reconstructed from one sensor.
Given a sensor time series
at spatial location
, the time series of the wave field at any other location
can be obtained via [
29]
when
. Thus, in this framework, the form of the solution (
17) obtained from general PDE theory can be used together with the time series data
of the wave field at a fixed spatial location
to obtain the wave field solution at any other location
. In general, the single time series
does not provide enough information to construct
u because one frequency
may correspond to multiple eigenfunctions
. Instead, the information obtained is a sum over all eigenfunctions
that correspond to the same eigenvalue
:
Thus, a single time series
cannot generally be used to obtain the amplitudes
and one needs a network of sensors. The data obtained from a network of sensors give a linear system:
and a method such as ordinary least squares must be chosen to obtain an estimate of the coefficients
. This linear system can be written more succinctly as
. In practice, only finitely many eigenfunctions are of interest and the signals are bandlimited, but some eigenvalues will still correspond to many eigenfunctions. In
Figure 1, least squares reconstruction is applied to the systems (
25) for a two-dimensional case. The spatial domain is
, and the boundary conditions are periodic. In the case of periodic boundary conditions, multiple sensors are always required because there are eigenvalues with a multiplicity greater than one, i.e., in one dimension:
In
Figure 1, a network of seven sensors is used to construct approximations of the system. In the first panel, the initial state
of the system, which is an off-center Gaussian bump, is displayed and the location of two additional sensors is shown in red. In the second and third panels of
Figure 1, the time series of the two additional sensors are approximated. In both cases, the frequencies and amplitudes of the signal are recovered.
When the method of least squares is used, the error in the estimates
of the coefficients
can be written in terms of the matrix
. Suppose the system is contaminated with Gaussian noise so that
where
for some
. The best linear unbiased estimate
of
and its covariance are
To see how the error depends explicitly on the number of noisy sensors
n in the network, the entries of the matrix
must be given a distribution. In the simplest case where
is normally distributed
, then
where
denotes the inverse Wishart distribution. Alternatively, if the eigenfunctions are known, then a distribution is given to the sensor placement such as
In
Figure 2, the variance (28) is shown on a log–log plot for different distributions of
. For the first three, the sensor is placed uniformly at random in the domain, and the eigenfunctions
are used. The variance (28) is also plotted for the case where
. On this log–log plot, the slope of each line is approximately
, meaning that the variance in each case decays as
, where
n is the number of sensors.
Figure 3 shows how the relative error depends on the number of sensors and the noise level
of the sensors. In this figure, the error is the
error in approximating the time series of an additional sensor.
4. 3D Stochastic Maxwell Vector Wave Equation and Optimal Observation Time
In this section, the signal processing of vectorial electromagnetic waves in the presence of a noisy current density
is discussed (see [
32], chapter 3). In this context, the medium parameters, permittivity
and permeability
, are general functions of space or are stratified and the current density is stochastic.
The electric field
satisfies the Maxwell vector wave equation:
The electric field solutions can be written in the form
where
are eigenfunctions of the weighted curl-squared operator:
Stochasticity is introduced to the problem via the current density
where
is a cylindrical Wiener process and
Q is a self-adjoint trace-class operator defined by
(see [
33,
34] for more details). The Wiener process
can be written in terms of independent one-dimensional Wiener processes
:
Using the orthonormality of the eigenfunctions
, a sequence of ODEs for the
terms is obtained:
The solution is
and its variance grows linearly with time:
In the framework of the Maxwell vector wave equation, as in the last section, the inner products (
21) can be utilized to reconstruct the electric field from sensor time series data; in this context, however, the time series data are bombarded with noise from the stochastic current density. Because the variance of the solution grows with time as a result of noise and a minimum-noise reconstruction is desired, sensor time series observed for a shorter time interval
can provide a better reconstruction of the noiseless electric field.
This can be made explicit by calculating the mean squared error (MSE) of each coefficient
as a function of the sensor observation time
:
The error resulting from the noisy current density is then described in terms of the variance term
, and the deterministic error is described in terms of the squared-bias term
. The variance can be computed explicitly in simple cases and grows linearly with respect to the length of the time series
, i.e.,
. As a result, there is a bias–variance tradeoff. In
Figure 4, the mean squared error of a coefficient
is displayed. The MSE initially decreases as a result of the decreasing squared bias. After reaching a minimum, the MSE begins to grow roughly linearly as a result of the variance term. The observation time
that minimizes the MSE is the “optimal” observation time. In
Figure 4, the dominant variance term
which can be calculated analytically is displayed along with the squared bias and MSE. This optimal observation time
can be utilized to estimate each of the coefficients
and reconstruct the electric field
.