Scippy

    SCIP

    Solving Constraint Integer Programs

    prop_nlobbt.h
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    3/* This file is part of the program and library */
    4/* SCIP --- Solving Constraint Integer Programs */
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    24
    25/**@file prop_nlobbt.h
    26 * @ingroup PROPAGATORS
    27 * @brief nonlinear OBBT propagator
    28 * @author Benjamin Mueller
    29 *
    30 * In Nonlinear Optimization-Based Bound Tightening (NLOBBT), we solve auxiliary NLPs of the form
    31 * \f[
    32 * \min / \max \, x_i \\
    33 * \f]
    34 * \f[
    35 * s.t. \; g_j(x) \le 0 \, \forall j=1,\ldots,m \\
    36 * \f]
    37 * \f[
    38 * c'x \le \mathcal{U}
    39 * \f]
    40 * \f[
    41 * x \in [\ell,u]
    42 * \f]
    43 *
    44 * where each \f$ g_j \f$ is a convex function and \f$ \mathcal{U} \f$ the solution value of the current
    45 * incumbent. Clearly, the optimal objective value of this nonlinear program provides a valid lower/upper bound on
    46 * variable \f$ x_i \f$.
    47 *
    48 * The propagator sorts all variables w.r.t. their occurrences in convex nonlinear constraints and solves sequentially
    49 * all convex NLPs. Variables which could be successfully tightened by the propagator will be prioritized in the next
    50 * call of a new node in the branch-and-bound tree. By default, the propagator requires at least one nonconvex
    51 * constraints to be executed. For purely convex problems, the benefit of having tighter bounds is negligible.
    52 *
    53 * By default, NLOBBT is only applied for non-binary variables. A reason for this can be found <a
    54 * href="http://dx.doi.org/10.1007/s10898-016-0450-4">here </a>. Variables which do not appear non-linearly in the
    55 * nonlinear constraints will not be considered even though they might lead to additional tightenings.
    56 *
    57 * After solving the NLP to optimize \f$ x_i \f$ we try to exploit the dual information to generate a globally valid
    58 * inequality, called Generalized Variable Bound (see @ref prop_genvbounds.h). Let \f$ \lambda_j \f$, \f$ \mu \f$, \f$
    59 * \alpha \f$, and \f$ \beta \f$ be the dual multipliers for the constraints of the NLP where \f$ \alpha \f$ and \f$
    60 * \beta \f$ correspond to the variable bound constraints. Because of the convexity of \f$ g_j \f$ we know that
    61 *
    62 * \f[
    63 * g_j(x) \ge g_j(x^*) + \nabla g_j(x^*)(x-x^*)
    64 * \f]
    65 *
    66 * holds for every \f$ x^* \in [\ell,u] \f$. Let \f$ x^* \f$ be the optimal solution after solving the NLP for the case
    67 * of minimizing \f$ x_i \f$ (similiar for the case of maximizing \f$ x_i \f$). Since the NLP is convex we know that the
    68 * KKT conditions
    69 *
    70 * \f[
    71 * e_i + \lambda' \nabla g(x^*) + \mu' c + \alpha - \beta = 0
    72 * \f]
    73 * \f[
    74 * \lambda_j g_j(x^*) = 0
    75 * \f]
    76 *
    77 * hold. Aggregating the inequalities \f$ x_i \ge x_i \f$ and \f$ g_j(x) \le 0 \f$ leads to the inequality
    78 *
    79 * \f[
    80 * x_i \ge x_i + \sum_{j} g_j(x_i)
    81 * \f]
    82 *
    83 * Instead of calling the (expensive) propagator during the tree search we can use this inequality to derive further
    84 * reductions on \f$ x_i \f$. Multiplying the first KKT condition by \f$ (x - x^*) \f$ and using the fact that each
    85 * \f$ g_j \f$ is convex we can rewrite the previous inequality to
    86 *
    87 * \f[
    88 * x_i \ge (\beta - \alpha)'x + (e_i + \alpha - \beta) x^* + \mu \mathcal{U}.
    89 * \f]
    90 *
    91 * which is passed to the genvbounds propagator. Note that if \f$ \alpha_i \neq \beta_i \f$ we know that the bound of
    92 * \f$ x_i \f$ is the proof for optimality and thus no useful genvbound can be found.
    93 */
    94
    95/*---+----1----+----2----+----3----+----4----+----5----+----6----+----7----+----8----+----9----+----0----+----1----+----2*/
    96
    97#ifndef __SCIP_PROP_NLOBBT_H__
    98#define __SCIP_PROP_NLOBBT_H__
    99
    100#include "scip/def.h"
    101#include "scip/type_retcode.h"
    102#include "scip/type_scip.h"
    103
    104#ifdef __cplusplus
    105extern "C" {
    106#endif
    107
    108/** creates the nlobbt propagator and includes it in SCIP
    109 *
    110 * @ingroup PropagatorIncludes
    111 */
    112SCIP_EXPORT
    114 SCIP* scip /**< SCIP data structure */
    115 );
    116
    117#ifdef __cplusplus
    118}
    119#endif
    120
    121#endif
    common defines and data types used in all packages of SCIP
    SCIP_RETCODE SCIPincludePropNlobbt(SCIP *scip)
    Definition: prop_nlobbt.c:737
    type definitions for return codes for SCIP methods
    enum SCIP_Retcode SCIP_RETCODE
    Definition: type_retcode.h:63
    type definitions for SCIP's main datastructure