Adaptive Inverse Control

Chapter 10.2.3 - Conclusions on MIMO Plant Modeling

10.2.3 Conclusions on MIMO Plant Modeling

Comparing the expressions for misadjustment and stable range of µ obtained for SISO systems and given in Appendix B with the corresponding expressions for MIMO systems given in this chapter, one can draw a simple conclusion. The SISO expressions can be generalized directly to apply to the MIMO case by simply multiplying the number of weights per adaptive filter n by the number of channels K provided that, for the MIMO system,

a.  all filters have the same number of weights;

b.  all filters have the same input power levels;

c.  dither powers are equal on all channels;

d.  the same value of µ is used for all adaptive filters.

This generalization works for systems based on both scheme B and scheme C.

It is interesting to note that for a given level of misadjustment, convergence time increases only linearly with the number of MIMO channels. Before doing this analysis, we were concerned that learning time would be proportional to the square of the number of channels (since the total number of weights grows with the square of the number of channels). Fortunately, learning time is only proportional to the product of the number of channels and the number of weights per adaptive filter. This is a surprising result.

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