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Adjoint Method and Multiple-Frequency Reconstruction. Qianqian Fang Thayer School of Engineering Dartmouth College Hanover, NH 03755 Thanks to Paul Meaney, Keith Paulsen, Margaret Fanning, Dun Li, Sarah Pendergrass, Timothy Raynolds. Outline. Generalized Dual-mesh Scheme
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Adjoint Method and Multiple-Frequency Reconstruction Qianqian Fang Thayer School of Engineering Dartmouth College Hanover, NH 03755 Thanks to Paul Meaney, Keith Paulsen, Margaret Fanning, Dun Li, Sarah Pendergrass, Timothy Raynolds
Outline • Generalized Dual-mesh Scheme • Adjoint formulation for dual-mesh • Graphical interpretations • Formulations • Comparisons with old method • Multiple-Frequency Reconstruction Algorithm • Description of dispersive medium • How it works (animation) • General form for dispersive media • Time-Domain Reconstruction Algorithm • Results • Conclusions and prospects
Dual-mesh - Math Form • Definition: Independent discretization for state space and parameter space and the mapping rules between the two sets of base functions. • Rf is called forward space, discretized by basis • Rr is called reconstruction space, discretized by basis Mostly, we have • Single-mesh/Sub-mesh schemes are special cases of dual-mesh
Dual-mesh cond. • Field values are defined on forward mesh • Properties defined on reconstruction mesh • So that • Field on recon. mesh need to interpolate from forward mesh • Properties on forward mesh need to interpolate from recon mesh • Mapping:
Dualmesh-Examples 2D FDTD forward mesh 2D order-2 recon. mesh 2D FEM forward mesh 2D order-1 recon. mesh
Source=1, diff receivers Source=2, diff receivers Source=ns, diff receivers Source ID receiver ID parameter node ID Jacobian Matrix Provide the first order derivative information Sensitive Coefficient
Js Perturbation currents At Node n Source Receiver
Formulation Denoted as perturbation source J1• E2= J2 • E1 J2 J1 E1 E2 Reciprocal Media
Comparison Old: New: Field generated by Js Strength of auxiliary source, can be 1 Field generated by Jr Very sparse matrix Geometry related only Replace matrix inversion with matrix multiplication
ComputationalCost • Computational cost for Sensitive Equ. Method: For each iteration: Solving the AX=b for (Ns+Ns*Nc) times, where Ns= Source number Nc= Parameter node number • Computational cost for Adjoin method For each iteration: Solving the AX=b for (Ns+Nr) times, where Ns= Source number Nr= Receiver number When using Tranceiver module, only Ns times forward solving is needed. Which is 1/(Nc+1) of the time using by sensitive equation method
Multiple Frequency Reconstruction Algorithm • Ill-posedness of the inversion problem due to insufficient data input and linear dependence of the data.-> rank deficient matrix • Instability and Local minima • Method: improve the condition of the matrix: • More antenna under single frequency(SFMS) • Fixed antenna #, more frequencies
Advantages of MF vs. SFMS Potential • More sources & receiver will increase the expenses of building DAQ system. • Under single frequency illumination, the increasing number of source will not always bring proportional increasing in stability.(???) • Single frequency reconstruction is hard to reconstruct large/high-contrast object due to the similarity of the info.(???) • In multi-frequency Recon.: lower frequency stabilize the convergence and provide information at different scales, supply more linearly independent measurements. • Need Eigen-analysis to prove • Computational Considerations: TD solver • Hardware Considerations: TD system
Modeling of Dispersive Medium 1-1 mapping
Reconstruction Demo. Background (Init. Guess) Real Curve Key Frequencies Recon. Frequencies
Key Questions? • How to calculate the change with multiple reconstruction frequencies for each step? • How to determine the Change at key frequencies from the Changes at reconstruction frequencies? Answers see back
Single Frequency Real Form Pre-scaled Real Form of Gauss-Newton Formula: Need to supply extra information to make unknowns same for both frequencies
Combined System Solve Then replace into To get the change at each Key Frequencies
Results-I • Non-dispersive medium simulation: large cylinder with inclusion • D~7.5cm, contrast 1:6/1:5 for real/imag • Use 300M/600M/900M • Non of the previous single frequency(900M) recon works
Single Freq. Recon at 900M Error plot
Lower Contrast Example • A low contrast Example 1:2
Dispersive Medium Simulation Lower end Permittivity Permittivity background larger object Conductivity Conductivity 1G 900M 100M 600M
Phantom Data Recon. Saline Background/Agar Phantom with inclusion Single Frequency Recon at 900M Using 500/700/900 Non-dispersive version
Time/Memory Issues -- Forward: 124X124 2D forward mesh -- Reconstruction: 281 2D parameter nodes
Conclusions • For simulations and recon. of phantom data, MFRA shows stable, robust, and achieve better images. • Shows the abilities of reconstructing large-high contrast object. • Good for current wide-band measurement system • General form, fit for even complex dispersive medium
Still need works… • How to qualify the improvement of the ill-posedness of inversion (cond. number is not always good) • What’s the best number for transmitter/receiver under single frequency? and under multiple frequencies? • How to select frequencies? How they interact with each other? • How to weight a multi-freq equation? • Is it possible to build TD measurement system? (use microwave/electrical/optical signals). what are the difficulties need to accounted?