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TOMLAB /SOL
The TOMLAB /SOL toolbox efficiently integrates
the well-known solvers developed by the Stanford
Systems Optimization Laboratory (SOL) with Matlab and Tomlab.
The toolbox includes
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The sparse general nonlinear solver SNOPT 7.1-1,
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The sparse positive convex quadratic solver SQOPT 7.1-1,
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The dense
general constrained nonlinear solver NPSOL 5.0,
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The dense constrained linear least squares and convex quadratic program
solver LSSOL 1.05 and
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The dense constrained nonlinear least squares solver NLSSOL, based on NPSOL.
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Read more about the above mentioned SOL solvers,
as well as the TOMLAB /MINOS solvers MINOS, QPOPT and LPOPT,
at the
SBSI-SOL
Home page.
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TOMLAB /SOL includes all Matlab code and solvers that are
part of TOMLAB /MINOS,
see the description of
TOMLAB /MINOS.
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For a general description of the Tomlab features, see
the
TOMLAB FEATURES.
Main features
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The codes are implemented to
efficiently handle Matlab sparse arrays.
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Using
the TOMLAB graphical interface (GUI)
all solver parameters and features are selectable.
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It is easy to use warm starts for the SOL solvers,
and further speed up sequences of
optimization solutions.
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NPSOL has been used intensively in control applications because
of its speed and robustness.
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All SOL solvers may be used as sub problem solvers for other
Tomlab solvers.
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The SPECS file input format, that is used by all SOL solvers when
running non-Matlab, is also possible to use.
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NPSOL and SNOPT may estimate derivatives internally, faster than
using any of the five Tomlab methods.
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