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71

2.The above holds for final perturbation scalings, K
*, far from the sample point scalings

used to construct the linear discrete system model.

That is, the model applies over a

large change in state. Table 4.1 shows this for a number of desired values of Qd
.


At

one extreme, the model is still accurate for K*as high as 13 times the sample scalings

used to construct the model.


Taken together, these suggest the possibility of controlling non-trivial aperiodic motions in a

similar way to the periodic motions of this thesis.

Such motions would typically require a much

larger controllable range of Qthan cyclic motions since they typically involve a larger change from

initial state to final state.

sitting in a chair.

An example of such an aperiodic motion would be standing up from

IMAGE Imgs/thesis.final.w6148.gif

Table 4.1 - Results of first controlled step using stance-COM RVs.

K
*
fwd
and Klat*are final stance hip perturbation scalings in

degrees. Sample scalings for construction of linear models
are [K
fwd,Klat] = [±5,±1] (compare to K*
fwd
and Klat*in

table).

Finally, because the particular choice of perturbation is the primary cause of the poor stability

results with the stance-COM, it is quite possible that a better choice of perturbations might give

better results. Using a stance ankle pitch perturbation to vary the force with which the stance foot

pushes off the ground is one possible example.

[CONVERTED BY MYRMIDON]