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proof of an implicit solver
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@mikofski

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mikofski commented Jun 29, 2018

Note: finding the max power point may be an non-convex optimization problem, therefore to guarantee convergence, find the index of
the max power point by calling numpy.argmax(power). If the spacing of points on the IV curve is too course, then use brentq in a convex trust region around the index of the max power point.

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