Section: Scientific Foundations
Introduction
Within the extensive field of inverse problems, much of the research by APICS
deals with reconstructing solutions of classical elliptic PDEs from their
boundary behaviour. Perhaps the most basic example of such a problem is
harmonic
identification of a stable linear dynamical system: the transfer-function
Practice is not nearly as simple, for
- Step 1:
To determine a complete model, that is, one which is defined for every frequency, in a sufficiently flexible function class (e.g. Hardy spaces). This ill-posed issue requires regularization, for instance constraints on the behaviour at non-measured frequencies.
- Step 2:
To compute a reduced order model. This typically consists of rational approximation of the complete model obtained in step 1, or phase-shift thereof to account for delays. Derivation of the complete model is important to achieve stability of the reduced one.
Step 1 makes connection with extremal problems and analytic operator theory, see section 3.3.1 . Step 2 involves optimization, and some Schur analysis to parametrize transfer matrices of given Mc-Millan degree when dealing with systems having several inputs and output, see section 3.3.2.2 . It also makes contact with the topology of rational functions, to count critical points and to derive bounds, see section 3.3.2 . Moreover, this step raises issues in approximation theory regarding the rate of convergence and whether the singularities of the approximant (i.e. its poles) converge to the singularities of the approximated function; this is where logarithmic potential theory becomes effective, see section 3.3.3 .
Iterating the previous steps coupled with a sensitivity analysis yields a tuning procedure which was first demonstrated in [77] on resonant microwave filters.
Similar steps can be taken to approach design problems in frequency domain, replacing measured behaviour by desired behaviour. However, describing achievable responses from the design parameters at hand is generally cumbersome, and most constructive techniques rely on rather specific criteria adapted to the physics of the problem. This is especailly true of circuits and filters, whose design classically appeals to standard polynomial extremal problems and realization procedures from system theory [70] , [55] . APICS is active in this field, where we introduced the use of Zolotarev-like problems for microwave multiband filter design. We currently favor interpolation techniques because of their transparency with respect to parameter use, see section 3.2.2 .
In another connection, the example of harmonic identification
quickly suggests a generalization
of itself. Indeed, on identifying
Inverse potential problems are severely indeterminate because infinitely many measures within an open set produce the same field outside this set [68] . In step 1 above we implicitly removed this indeterminacy by requiring that the measure be supported on the boundary (because we seek a function holomorphic throughout the right half space), and in step 2 by requiring, say, in case of rational approximation that the measure be discrete in the left half-plane. The same discreteness assumption prevails in 3-D inverse source problems. To recap, the gist of our approach is to approximate boundary data by (boundary traces of) fields arising from potentials of measures with specific support. Note this is different from standard approaches to inverse problems, where descent algorithms are applied to integration schemes of the direct problem; in such methods, it is the equation which gets approximated (in fact: discretized).
Along these lines, the team initiated the use of steps 1 and 2 above, along with singularity analysis, to approach issues of nondestructive control in 2 and 3-D [41] [6] , [2] . We are currently engaged in two kinds of generalization, further described in section 3.2.1 . The first one deals with non-constant conductivities, where Cauchy-Riemann equations for holomorphic functions are replaced by conjugate Beltrami equations for pseudo-holomorphic functions; there we seek applications to plasma confinement. The other one lies with inverse source problems for Laplace's equation in 3-D, where holomorphic functions are replaced by harmonic gradients, developing applications to EEG/MEG and inverse magnetization problems in paleomagnetism, see section 4.2
The main approximation-theoretic tools developed by APICS to get to grips with issues mentioned so far are outlined in section 3.3 . In section 3.2 to come, we make more precise which problems are considered and for which applications.