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  2. Successive linear programming - Wikipedia
Successive linear programming - Wikipedia
From Wikipedia, the free encyclopedia
Approximation for nonlinear optimization

Successive Linear Programming (SLP), also known as Sequential Linear Programming, is an optimization technique for approximately solving nonlinear optimization problems.[1] It is related to, but distinct from, quasi-Newton methods.

Starting at some estimate of the optimal solution, the method is based on solving a sequence of first-order approximations (i.e. linearizations) of the model. The linearizations are linear programming problems, which can be solved efficiently. As the linearizations need not be bounded, trust regions or similar techniques are needed to ensure convergence in theory. [2]

SLP has been used widely in the petrochemical industry since the 1970s.[3] Since then, however, they have been superseded by sequential quadratic programming methods. While solving a QP subproblem takes more time than solving an LP one, the overall decrease in the number of iterations, due to improved convergence, results in significantly lower running times and fewer function evaluations."

See also

[edit]
  • Sequential quadratic programming
  • Sequential linear-quadratic programming
  • Augmented Lagrangian method

References

[edit]
  1. ^ (Nocedal & Wright 2006, p. 551)
  2. ^ (Bazaraa, Sherali & Shetty 1993, p. 432)
  3. ^ (Palacios-Gomez, Lasdon & Enquist 1982)

Sources

[edit]
  • Nocedal, Jorge; Wright, Stephen J. (2006). Numerical Optimization (2nd ed.). Berlin, New York: Springer-Verlag. ISBN 978-0-387-30303-1.
  • Bazaraa, Mokhtar S.; Sherali, Hanif D.; Shetty, C.M. (1993). Nonlinear Programming, Theory and Applications (2nd ed.). John Wiley & Sons. ISBN 0-471-55793-5.
  • Palacios-Gomez, F.; Lasdon, L.; Enquist, M. (October 1982). "Nonlinear Optimization by Successive Linear Programming". Management Science. 28 (10): 1106–1120. doi:10.1287/mnsc.28.10.1106.
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Optimization: Algorithms, methods, and heuristics
Unconstrained nonlinear
Functions
  • Golden-section search
  • Powell's method
  • Line search
  • Nelder–Mead method
  • Successive parabolic interpolation
Gradients
Convergence
  • Trust region
  • Wolfe conditions
Quasi–Newton
  • Berndt–Hall–Hall–Hausman
  • Broyden–Fletcher–Goldfarb–Shanno and L-BFGS
  • Davidon–Fletcher–Powell
  • Symmetric rank-one (SR1)
Other methods
  • Conjugate gradient
  • Gauss–Newton
  • Gradient
  • Mirror
  • Levenberg–Marquardt
  • Powell's dog leg method
  • Truncated Newton
Hessians
  • Newton's method
Graph of a strictly concave quadratic function with unique maximum.
Optimization computes maxima and minima.
Constrained nonlinear
General
  • Barrier methods
  • Penalty methods
Differentiable
  • Augmented Lagrangian methods
  • Sequential quadratic programming
  • Successive linear programming
Convex optimization
Convex
minimization
  • Cutting-plane method
  • Reduced gradient (Frank–Wolfe)
  • Subgradient method
Linear and
quadratic
Interior point
  • Affine scaling
  • Ellipsoid algorithm of Khachiyan
  • Projective algorithm of Karmarkar
Basis-exchange
  • Simplex algorithm of Dantzig
  • Revised simplex algorithm
  • Criss-cross algorithm
  • Principal pivoting algorithm of Lemke
  • Active-set method
Combinatorial
Paradigms
  • Approximation algorithm
  • Dynamic programming
  • Greedy algorithm
  • Integer programming
    • Branch and bound/cut
Graph
algorithms
Minimum
spanning tree
  • Borůvka
  • Prim
  • Kruskal
Shortest path
  • Bellman–Ford
    • SPFA
  • Dijkstra
  • Floyd–Warshall
Network flows
  • Dinic
  • Edmonds–Karp
  • Ford–Fulkerson
  • Push–relabel maximum flow
Metaheuristics
  • Evolutionary algorithm
  • Hill climbing
  • Local search
  • Parallel metaheuristics
  • Simulated annealing
  • Spiral optimization algorithm
  • Tabu search
  • Software


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