COIN-OR::LEMON - Graph Library

source: lemon-1.2/lemon/preflow.h

1.2
Last change on this file was 944:02c93d1f00d7, checked in by Alpar Juttner <alpar@…>, 13 years ago

Merge head merging to branch 1.2

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1/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 *
3 * This file is a part of LEMON, a generic C++ optimization library.
4 *
5 * Copyright (C) 2003-2011
6 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 *
9 * Permission to use, modify and distribute this software is granted
10 * provided that this copyright notice appears in all copies. For
11 * precise terms see the accompanying LICENSE file.
12 *
13 * This software is provided "AS IS" with no warranty of any kind,
14 * express or implied, and with no claim as to its suitability for any
15 * purpose.
16 *
17 */
18
19#ifndef LEMON_PREFLOW_H
20#define LEMON_PREFLOW_H
21
22#include <lemon/tolerance.h>
23#include <lemon/elevator.h>
24
25/// \file
26/// \ingroup max_flow
27/// \brief Implementation of the preflow algorithm.
28
29namespace lemon {
30
31  /// \brief Default traits class of Preflow class.
32  ///
33  /// Default traits class of Preflow class.
34  /// \tparam GR Digraph type.
35  /// \tparam CAP Capacity map type.
36  template <typename GR, typename CAP>
37  struct PreflowDefaultTraits {
38
39    /// \brief The type of the digraph the algorithm runs on.
40    typedef GR Digraph;
41
42    /// \brief The type of the map that stores the arc capacities.
43    ///
44    /// The type of the map that stores the arc capacities.
45    /// It must meet the \ref concepts::ReadMap "ReadMap" concept.
46    typedef CAP CapacityMap;
47
48    /// \brief The type of the flow values.
49    typedef typename CapacityMap::Value Value;
50
51    /// \brief The type of the map that stores the flow values.
52    ///
53    /// The type of the map that stores the flow values.
54    /// It must meet the \ref concepts::ReadWriteMap "ReadWriteMap" concept.
55#ifdef DOXYGEN
56    typedef GR::ArcMap<Value> FlowMap;
57#else
58    typedef typename Digraph::template ArcMap<Value> FlowMap;
59#endif
60
61    /// \brief Instantiates a FlowMap.
62    ///
63    /// This function instantiates a \ref FlowMap.
64    /// \param digraph The digraph for which we would like to define
65    /// the flow map.
66    static FlowMap* createFlowMap(const Digraph& digraph) {
67      return new FlowMap(digraph);
68    }
69
70    /// \brief The elevator type used by Preflow algorithm.
71    ///
72    /// The elevator type used by Preflow algorithm.
73    ///
74    /// \sa Elevator, LinkedElevator
75#ifdef DOXYGEN
76    typedef lemon::Elevator<GR, GR::Node> Elevator;
77#else
78    typedef lemon::Elevator<Digraph, typename Digraph::Node> Elevator;
79#endif
80
81    /// \brief Instantiates an Elevator.
82    ///
83    /// This function instantiates an \ref Elevator.
84    /// \param digraph The digraph for which we would like to define
85    /// the elevator.
86    /// \param max_level The maximum level of the elevator.
87    static Elevator* createElevator(const Digraph& digraph, int max_level) {
88      return new Elevator(digraph, max_level);
89    }
90
91    /// \brief The tolerance used by the algorithm
92    ///
93    /// The tolerance used by the algorithm to handle inexact computation.
94    typedef lemon::Tolerance<Value> Tolerance;
95
96  };
97
98
99  /// \ingroup max_flow
100  ///
101  /// \brief %Preflow algorithm class.
102  ///
103  /// This class provides an implementation of Goldberg-Tarjan's \e preflow
104  /// \e push-relabel algorithm producing a \ref max_flow
105  /// "flow of maximum value" in a digraph \ref clrs01algorithms,
106  /// \ref amo93networkflows, \ref goldberg88newapproach.
107  /// The preflow algorithms are the fastest known maximum
108  /// flow algorithms. The current implementation uses a mixture of the
109  /// \e "highest label" and the \e "bound decrease" heuristics.
110  /// The worst case time complexity of the algorithm is \f$O(n^2\sqrt{e})\f$.
111  ///
112  /// The algorithm consists of two phases. After the first phase
113  /// the maximum flow value and the minimum cut is obtained. The
114  /// second phase constructs a feasible maximum flow on each arc.
115  ///
116  /// \warning This implementation cannot handle infinite or very large
117  /// capacities (e.g. the maximum value of \c CAP::Value).
118  ///
119  /// \tparam GR The type of the digraph the algorithm runs on.
120  /// \tparam CAP The type of the capacity map. The default map
121  /// type is \ref concepts::Digraph::ArcMap "GR::ArcMap<int>".
122  /// \tparam TR The traits class that defines various types used by the
123  /// algorithm. By default, it is \ref PreflowDefaultTraits
124  /// "PreflowDefaultTraits<GR, CAP>".
125  /// In most cases, this parameter should not be set directly,
126  /// consider to use the named template parameters instead.
127#ifdef DOXYGEN
128  template <typename GR, typename CAP, typename TR>
129#else
130  template <typename GR,
131            typename CAP = typename GR::template ArcMap<int>,
132            typename TR = PreflowDefaultTraits<GR, CAP> >
133#endif
134  class Preflow {
135  public:
136
137    ///The \ref PreflowDefaultTraits "traits class" of the algorithm.
138    typedef TR Traits;
139    ///The type of the digraph the algorithm runs on.
140    typedef typename Traits::Digraph Digraph;
141    ///The type of the capacity map.
142    typedef typename Traits::CapacityMap CapacityMap;
143    ///The type of the flow values.
144    typedef typename Traits::Value Value;
145
146    ///The type of the flow map.
147    typedef typename Traits::FlowMap FlowMap;
148    ///The type of the elevator.
149    typedef typename Traits::Elevator Elevator;
150    ///The type of the tolerance.
151    typedef typename Traits::Tolerance Tolerance;
152
153  private:
154
155    TEMPLATE_DIGRAPH_TYPEDEFS(Digraph);
156
157    const Digraph& _graph;
158    const CapacityMap* _capacity;
159
160    int _node_num;
161
162    Node _source, _target;
163
164    FlowMap* _flow;
165    bool _local_flow;
166
167    Elevator* _level;
168    bool _local_level;
169
170    typedef typename Digraph::template NodeMap<Value> ExcessMap;
171    ExcessMap* _excess;
172
173    Tolerance _tolerance;
174
175    bool _phase;
176
177
178    void createStructures() {
179      _node_num = countNodes(_graph);
180
181      if (!_flow) {
182        _flow = Traits::createFlowMap(_graph);
183        _local_flow = true;
184      }
185      if (!_level) {
186        _level = Traits::createElevator(_graph, _node_num);
187        _local_level = true;
188      }
189      if (!_excess) {
190        _excess = new ExcessMap(_graph);
191      }
192    }
193
194    void destroyStructures() {
195      if (_local_flow) {
196        delete _flow;
197      }
198      if (_local_level) {
199        delete _level;
200      }
201      if (_excess) {
202        delete _excess;
203      }
204    }
205
206  public:
207
208    typedef Preflow Create;
209
210    ///\name Named Template Parameters
211
212    ///@{
213
214    template <typename T>
215    struct SetFlowMapTraits : public Traits {
216      typedef T FlowMap;
217      static FlowMap *createFlowMap(const Digraph&) {
218        LEMON_ASSERT(false, "FlowMap is not initialized");
219        return 0; // ignore warnings
220      }
221    };
222
223    /// \brief \ref named-templ-param "Named parameter" for setting
224    /// FlowMap type
225    ///
226    /// \ref named-templ-param "Named parameter" for setting FlowMap
227    /// type.
228    template <typename T>
229    struct SetFlowMap
230      : public Preflow<Digraph, CapacityMap, SetFlowMapTraits<T> > {
231      typedef Preflow<Digraph, CapacityMap,
232                      SetFlowMapTraits<T> > Create;
233    };
234
235    template <typename T>
236    struct SetElevatorTraits : public Traits {
237      typedef T Elevator;
238      static Elevator *createElevator(const Digraph&, int) {
239        LEMON_ASSERT(false, "Elevator is not initialized");
240        return 0; // ignore warnings
241      }
242    };
243
244    /// \brief \ref named-templ-param "Named parameter" for setting
245    /// Elevator type
246    ///
247    /// \ref named-templ-param "Named parameter" for setting Elevator
248    /// type. If this named parameter is used, then an external
249    /// elevator object must be passed to the algorithm using the
250    /// \ref elevator(Elevator&) "elevator()" function before calling
251    /// \ref run() or \ref init().
252    /// \sa SetStandardElevator
253    template <typename T>
254    struct SetElevator
255      : public Preflow<Digraph, CapacityMap, SetElevatorTraits<T> > {
256      typedef Preflow<Digraph, CapacityMap,
257                      SetElevatorTraits<T> > Create;
258    };
259
260    template <typename T>
261    struct SetStandardElevatorTraits : public Traits {
262      typedef T Elevator;
263      static Elevator *createElevator(const Digraph& digraph, int max_level) {
264        return new Elevator(digraph, max_level);
265      }
266    };
267
268    /// \brief \ref named-templ-param "Named parameter" for setting
269    /// Elevator type with automatic allocation
270    ///
271    /// \ref named-templ-param "Named parameter" for setting Elevator
272    /// type with automatic allocation.
273    /// The Elevator should have standard constructor interface to be
274    /// able to automatically created by the algorithm (i.e. the
275    /// digraph and the maximum level should be passed to it).
276    /// However, an external elevator object could also be passed to the
277    /// algorithm with the \ref elevator(Elevator&) "elevator()" function
278    /// before calling \ref run() or \ref init().
279    /// \sa SetElevator
280    template <typename T>
281    struct SetStandardElevator
282      : public Preflow<Digraph, CapacityMap,
283                       SetStandardElevatorTraits<T> > {
284      typedef Preflow<Digraph, CapacityMap,
285                      SetStandardElevatorTraits<T> > Create;
286    };
287
288    /// @}
289
290  protected:
291
292    Preflow() {}
293
294  public:
295
296
297    /// \brief The constructor of the class.
298    ///
299    /// The constructor of the class.
300    /// \param digraph The digraph the algorithm runs on.
301    /// \param capacity The capacity of the arcs.
302    /// \param source The source node.
303    /// \param target The target node.
304    Preflow(const Digraph& digraph, const CapacityMap& capacity,
305            Node source, Node target)
306      : _graph(digraph), _capacity(&capacity),
307        _node_num(0), _source(source), _target(target),
308        _flow(0), _local_flow(false),
309        _level(0), _local_level(false),
310        _excess(0), _tolerance(), _phase() {}
311
312    /// \brief Destructor.
313    ///
314    /// Destructor.
315    ~Preflow() {
316      destroyStructures();
317    }
318
319    /// \brief Sets the capacity map.
320    ///
321    /// Sets the capacity map.
322    /// \return <tt>(*this)</tt>
323    Preflow& capacityMap(const CapacityMap& map) {
324      _capacity = &map;
325      return *this;
326    }
327
328    /// \brief Sets the flow map.
329    ///
330    /// Sets the flow map.
331    /// If you don't use this function before calling \ref run() or
332    /// \ref init(), an instance will be allocated automatically.
333    /// The destructor deallocates this automatically allocated map,
334    /// of course.
335    /// \return <tt>(*this)</tt>
336    Preflow& flowMap(FlowMap& map) {
337      if (_local_flow) {
338        delete _flow;
339        _local_flow = false;
340      }
341      _flow = &map;
342      return *this;
343    }
344
345    /// \brief Sets the source node.
346    ///
347    /// Sets the source node.
348    /// \return <tt>(*this)</tt>
349    Preflow& source(const Node& node) {
350      _source = node;
351      return *this;
352    }
353
354    /// \brief Sets the target node.
355    ///
356    /// Sets the target node.
357    /// \return <tt>(*this)</tt>
358    Preflow& target(const Node& node) {
359      _target = node;
360      return *this;
361    }
362
363    /// \brief Sets the elevator used by algorithm.
364    ///
365    /// Sets the elevator used by algorithm.
366    /// If you don't use this function before calling \ref run() or
367    /// \ref init(), an instance will be allocated automatically.
368    /// The destructor deallocates this automatically allocated elevator,
369    /// of course.
370    /// \return <tt>(*this)</tt>
371    Preflow& elevator(Elevator& elevator) {
372      if (_local_level) {
373        delete _level;
374        _local_level = false;
375      }
376      _level = &elevator;
377      return *this;
378    }
379
380    /// \brief Returns a const reference to the elevator.
381    ///
382    /// Returns a const reference to the elevator.
383    ///
384    /// \pre Either \ref run() or \ref init() must be called before
385    /// using this function.
386    const Elevator& elevator() const {
387      return *_level;
388    }
389
390    /// \brief Sets the tolerance used by the algorithm.
391    ///
392    /// Sets the tolerance object used by the algorithm.
393    /// \return <tt>(*this)</tt>
394    Preflow& tolerance(const Tolerance& tolerance) {
395      _tolerance = tolerance;
396      return *this;
397    }
398
399    /// \brief Returns a const reference to the tolerance.
400    ///
401    /// Returns a const reference to the tolerance object used by
402    /// the algorithm.
403    const Tolerance& tolerance() const {
404      return _tolerance;
405    }
406
407    /// \name Execution Control
408    /// The simplest way to execute the preflow algorithm is to use
409    /// \ref run() or \ref runMinCut().\n
410    /// If you need better control on the initial solution or the execution,
411    /// you have to call one of the \ref init() functions first, then
412    /// \ref startFirstPhase() and if you need it \ref startSecondPhase().
413
414    ///@{
415
416    /// \brief Initializes the internal data structures.
417    ///
418    /// Initializes the internal data structures and sets the initial
419    /// flow to zero on each arc.
420    void init() {
421      createStructures();
422
423      _phase = true;
424      for (NodeIt n(_graph); n != INVALID; ++n) {
425        (*_excess)[n] = 0;
426      }
427
428      for (ArcIt e(_graph); e != INVALID; ++e) {
429        _flow->set(e, 0);
430      }
431
432      typename Digraph::template NodeMap<bool> reached(_graph, false);
433
434      _level->initStart();
435      _level->initAddItem(_target);
436
437      std::vector<Node> queue;
438      reached[_source] = true;
439
440      queue.push_back(_target);
441      reached[_target] = true;
442      while (!queue.empty()) {
443        _level->initNewLevel();
444        std::vector<Node> nqueue;
445        for (int i = 0; i < int(queue.size()); ++i) {
446          Node n = queue[i];
447          for (InArcIt e(_graph, n); e != INVALID; ++e) {
448            Node u = _graph.source(e);
449            if (!reached[u] && _tolerance.positive((*_capacity)[e])) {
450              reached[u] = true;
451              _level->initAddItem(u);
452              nqueue.push_back(u);
453            }
454          }
455        }
456        queue.swap(nqueue);
457      }
458      _level->initFinish();
459
460      for (OutArcIt e(_graph, _source); e != INVALID; ++e) {
461        if (_tolerance.positive((*_capacity)[e])) {
462          Node u = _graph.target(e);
463          if ((*_level)[u] == _level->maxLevel()) continue;
464          _flow->set(e, (*_capacity)[e]);
465          (*_excess)[u] += (*_capacity)[e];
466          if (u != _target && !_level->active(u)) {
467            _level->activate(u);
468          }
469        }
470      }
471    }
472
473    /// \brief Initializes the internal data structures using the
474    /// given flow map.
475    ///
476    /// Initializes the internal data structures and sets the initial
477    /// flow to the given \c flowMap. The \c flowMap should contain a
478    /// flow or at least a preflow, i.e. at each node excluding the
479    /// source node the incoming flow should greater or equal to the
480    /// outgoing flow.
481    /// \return \c false if the given \c flowMap is not a preflow.
482    template <typename FlowMap>
483    bool init(const FlowMap& flowMap) {
484      createStructures();
485
486      for (ArcIt e(_graph); e != INVALID; ++e) {
487        _flow->set(e, flowMap[e]);
488      }
489
490      for (NodeIt n(_graph); n != INVALID; ++n) {
491        Value excess = 0;
492        for (InArcIt e(_graph, n); e != INVALID; ++e) {
493          excess += (*_flow)[e];
494        }
495        for (OutArcIt e(_graph, n); e != INVALID; ++e) {
496          excess -= (*_flow)[e];
497        }
498        if (excess < 0 && n != _source) return false;
499        (*_excess)[n] = excess;
500      }
501
502      typename Digraph::template NodeMap<bool> reached(_graph, false);
503
504      _level->initStart();
505      _level->initAddItem(_target);
506
507      std::vector<Node> queue;
508      reached[_source] = true;
509
510      queue.push_back(_target);
511      reached[_target] = true;
512      while (!queue.empty()) {
513        _level->initNewLevel();
514        std::vector<Node> nqueue;
515        for (int i = 0; i < int(queue.size()); ++i) {
516          Node n = queue[i];
517          for (InArcIt e(_graph, n); e != INVALID; ++e) {
518            Node u = _graph.source(e);
519            if (!reached[u] &&
520                _tolerance.positive((*_capacity)[e] - (*_flow)[e])) {
521              reached[u] = true;
522              _level->initAddItem(u);
523              nqueue.push_back(u);
524            }
525          }
526          for (OutArcIt e(_graph, n); e != INVALID; ++e) {
527            Node v = _graph.target(e);
528            if (!reached[v] && _tolerance.positive((*_flow)[e])) {
529              reached[v] = true;
530              _level->initAddItem(v);
531              nqueue.push_back(v);
532            }
533          }
534        }
535        queue.swap(nqueue);
536      }
537      _level->initFinish();
538
539      for (OutArcIt e(_graph, _source); e != INVALID; ++e) {
540        Value rem = (*_capacity)[e] - (*_flow)[e];
541        if (_tolerance.positive(rem)) {
542          Node u = _graph.target(e);
543          if ((*_level)[u] == _level->maxLevel()) continue;
544          _flow->set(e, (*_capacity)[e]);
545          (*_excess)[u] += rem;
546        }
547      }
548      for (InArcIt e(_graph, _source); e != INVALID; ++e) {
549        Value rem = (*_flow)[e];
550        if (_tolerance.positive(rem)) {
551          Node v = _graph.source(e);
552          if ((*_level)[v] == _level->maxLevel()) continue;
553          _flow->set(e, 0);
554          (*_excess)[v] += rem;
555        }
556      }
557      for (NodeIt n(_graph); n != INVALID; ++n)
558        if(n!=_source && n!=_target && _tolerance.positive((*_excess)[n]))
559          _level->activate(n);
560
561      return true;
562    }
563
564    /// \brief Starts the first phase of the preflow algorithm.
565    ///
566    /// The preflow algorithm consists of two phases, this method runs
567    /// the first phase. After the first phase the maximum flow value
568    /// and a minimum value cut can already be computed, although a
569    /// maximum flow is not yet obtained. So after calling this method
570    /// \ref flowValue() returns the value of a maximum flow and \ref
571    /// minCut() returns a minimum cut.
572    /// \pre One of the \ref init() functions must be called before
573    /// using this function.
574    void startFirstPhase() {
575      _phase = true;
576
577      while (true) {
578        int num = _node_num;
579
580        Node n = INVALID;
581        int level = -1;
582
583        while (num > 0) {
584          n = _level->highestActive();
585          if (n == INVALID) goto first_phase_done;
586          level = _level->highestActiveLevel();
587          --num;
588
589          Value excess = (*_excess)[n];
590          int new_level = _level->maxLevel();
591
592          for (OutArcIt e(_graph, n); e != INVALID; ++e) {
593            Value rem = (*_capacity)[e] - (*_flow)[e];
594            if (!_tolerance.positive(rem)) continue;
595            Node v = _graph.target(e);
596            if ((*_level)[v] < level) {
597              if (!_level->active(v) && v != _target) {
598                _level->activate(v);
599              }
600              if (!_tolerance.less(rem, excess)) {
601                _flow->set(e, (*_flow)[e] + excess);
602                (*_excess)[v] += excess;
603                excess = 0;
604                goto no_more_push_1;
605              } else {
606                excess -= rem;
607                (*_excess)[v] += rem;
608                _flow->set(e, (*_capacity)[e]);
609              }
610            } else if (new_level > (*_level)[v]) {
611              new_level = (*_level)[v];
612            }
613          }
614
615          for (InArcIt e(_graph, n); e != INVALID; ++e) {
616            Value rem = (*_flow)[e];
617            if (!_tolerance.positive(rem)) continue;
618            Node v = _graph.source(e);
619            if ((*_level)[v] < level) {
620              if (!_level->active(v) && v != _target) {
621                _level->activate(v);
622              }
623              if (!_tolerance.less(rem, excess)) {
624                _flow->set(e, (*_flow)[e] - excess);
625                (*_excess)[v] += excess;
626                excess = 0;
627                goto no_more_push_1;
628              } else {
629                excess -= rem;
630                (*_excess)[v] += rem;
631                _flow->set(e, 0);
632              }
633            } else if (new_level > (*_level)[v]) {
634              new_level = (*_level)[v];
635            }
636          }
637
638        no_more_push_1:
639
640          (*_excess)[n] = excess;
641
642          if (excess != 0) {
643            if (new_level + 1 < _level->maxLevel()) {
644              _level->liftHighestActive(new_level + 1);
645            } else {
646              _level->liftHighestActiveToTop();
647            }
648            if (_level->emptyLevel(level)) {
649              _level->liftToTop(level);
650            }
651          } else {
652            _level->deactivate(n);
653          }
654        }
655
656        num = _node_num * 20;
657        while (num > 0) {
658          while (level >= 0 && _level->activeFree(level)) {
659            --level;
660          }
661          if (level == -1) {
662            n = _level->highestActive();
663            level = _level->highestActiveLevel();
664            if (n == INVALID) goto first_phase_done;
665          } else {
666            n = _level->activeOn(level);
667          }
668          --num;
669
670          Value excess = (*_excess)[n];
671          int new_level = _level->maxLevel();
672
673          for (OutArcIt e(_graph, n); e != INVALID; ++e) {
674            Value rem = (*_capacity)[e] - (*_flow)[e];
675            if (!_tolerance.positive(rem)) continue;
676            Node v = _graph.target(e);
677            if ((*_level)[v] < level) {
678              if (!_level->active(v) && v != _target) {
679                _level->activate(v);
680              }
681              if (!_tolerance.less(rem, excess)) {
682                _flow->set(e, (*_flow)[e] + excess);
683                (*_excess)[v] += excess;
684                excess = 0;
685                goto no_more_push_2;
686              } else {
687                excess -= rem;
688                (*_excess)[v] += rem;
689                _flow->set(e, (*_capacity)[e]);
690              }
691            } else if (new_level > (*_level)[v]) {
692              new_level = (*_level)[v];
693            }
694          }
695
696          for (InArcIt e(_graph, n); e != INVALID; ++e) {
697            Value rem = (*_flow)[e];
698            if (!_tolerance.positive(rem)) continue;
699            Node v = _graph.source(e);
700            if ((*_level)[v] < level) {
701              if (!_level->active(v) && v != _target) {
702                _level->activate(v);
703              }
704              if (!_tolerance.less(rem, excess)) {
705                _flow->set(e, (*_flow)[e] - excess);
706                (*_excess)[v] += excess;
707                excess = 0;
708                goto no_more_push_2;
709              } else {
710                excess -= rem;
711                (*_excess)[v] += rem;
712                _flow->set(e, 0);
713              }
714            } else if (new_level > (*_level)[v]) {
715              new_level = (*_level)[v];
716            }
717          }
718
719        no_more_push_2:
720
721          (*_excess)[n] = excess;
722
723          if (excess != 0) {
724            if (new_level + 1 < _level->maxLevel()) {
725              _level->liftActiveOn(level, new_level + 1);
726            } else {
727              _level->liftActiveToTop(level);
728            }
729            if (_level->emptyLevel(level)) {
730              _level->liftToTop(level);
731            }
732          } else {
733            _level->deactivate(n);
734          }
735        }
736      }
737    first_phase_done:;
738    }
739
740    /// \brief Starts the second phase of the preflow algorithm.
741    ///
742    /// The preflow algorithm consists of two phases, this method runs
743    /// the second phase. After calling one of the \ref init() functions
744    /// and \ref startFirstPhase() and then \ref startSecondPhase(),
745    /// \ref flowMap() returns a maximum flow, \ref flowValue() returns the
746    /// value of a maximum flow, \ref minCut() returns a minimum cut
747    /// \pre One of the \ref init() functions and \ref startFirstPhase()
748    /// must be called before using this function.
749    void startSecondPhase() {
750      _phase = false;
751
752      typename Digraph::template NodeMap<bool> reached(_graph);
753      for (NodeIt n(_graph); n != INVALID; ++n) {
754        reached[n] = (*_level)[n] < _level->maxLevel();
755      }
756
757      _level->initStart();
758      _level->initAddItem(_source);
759
760      std::vector<Node> queue;
761      queue.push_back(_source);
762      reached[_source] = true;
763
764      while (!queue.empty()) {
765        _level->initNewLevel();
766        std::vector<Node> nqueue;
767        for (int i = 0; i < int(queue.size()); ++i) {
768          Node n = queue[i];
769          for (OutArcIt e(_graph, n); e != INVALID; ++e) {
770            Node v = _graph.target(e);
771            if (!reached[v] && _tolerance.positive((*_flow)[e])) {
772              reached[v] = true;
773              _level->initAddItem(v);
774              nqueue.push_back(v);
775            }
776          }
777          for (InArcIt e(_graph, n); e != INVALID; ++e) {
778            Node u = _graph.source(e);
779            if (!reached[u] &&
780                _tolerance.positive((*_capacity)[e] - (*_flow)[e])) {
781              reached[u] = true;
782              _level->initAddItem(u);
783              nqueue.push_back(u);
784            }
785          }
786        }
787        queue.swap(nqueue);
788      }
789      _level->initFinish();
790
791      for (NodeIt n(_graph); n != INVALID; ++n) {
792        if (!reached[n]) {
793          _level->dirtyTopButOne(n);
794        } else if ((*_excess)[n] > 0 && _target != n) {
795          _level->activate(n);
796        }
797      }
798
799      Node n;
800      while ((n = _level->highestActive()) != INVALID) {
801        Value excess = (*_excess)[n];
802        int level = _level->highestActiveLevel();
803        int new_level = _level->maxLevel();
804
805        for (OutArcIt e(_graph, n); e != INVALID; ++e) {
806          Value rem = (*_capacity)[e] - (*_flow)[e];
807          if (!_tolerance.positive(rem)) continue;
808          Node v = _graph.target(e);
809          if ((*_level)[v] < level) {
810            if (!_level->active(v) && v != _source) {
811              _level->activate(v);
812            }
813            if (!_tolerance.less(rem, excess)) {
814              _flow->set(e, (*_flow)[e] + excess);
815              (*_excess)[v] += excess;
816              excess = 0;
817              goto no_more_push;
818            } else {
819              excess -= rem;
820              (*_excess)[v] += rem;
821              _flow->set(e, (*_capacity)[e]);
822            }
823          } else if (new_level > (*_level)[v]) {
824            new_level = (*_level)[v];
825          }
826        }
827
828        for (InArcIt e(_graph, n); e != INVALID; ++e) {
829          Value rem = (*_flow)[e];
830          if (!_tolerance.positive(rem)) continue;
831          Node v = _graph.source(e);
832          if ((*_level)[v] < level) {
833            if (!_level->active(v) && v != _source) {
834              _level->activate(v);
835            }
836            if (!_tolerance.less(rem, excess)) {
837              _flow->set(e, (*_flow)[e] - excess);
838              (*_excess)[v] += excess;
839              excess = 0;
840              goto no_more_push;
841            } else {
842              excess -= rem;
843              (*_excess)[v] += rem;
844              _flow->set(e, 0);
845            }
846          } else if (new_level > (*_level)[v]) {
847            new_level = (*_level)[v];
848          }
849        }
850
851      no_more_push:
852
853        (*_excess)[n] = excess;
854
855        if (excess != 0) {
856          if (new_level + 1 < _level->maxLevel()) {
857            _level->liftHighestActive(new_level + 1);
858          } else {
859            // Calculation error
860            _level->liftHighestActiveToTop();
861          }
862          if (_level->emptyLevel(level)) {
863            // Calculation error
864            _level->liftToTop(level);
865          }
866        } else {
867          _level->deactivate(n);
868        }
869
870      }
871    }
872
873    /// \brief Runs the preflow algorithm.
874    ///
875    /// Runs the preflow algorithm.
876    /// \note pf.run() is just a shortcut of the following code.
877    /// \code
878    ///   pf.init();
879    ///   pf.startFirstPhase();
880    ///   pf.startSecondPhase();
881    /// \endcode
882    void run() {
883      init();
884      startFirstPhase();
885      startSecondPhase();
886    }
887
888    /// \brief Runs the preflow algorithm to compute the minimum cut.
889    ///
890    /// Runs the preflow algorithm to compute the minimum cut.
891    /// \note pf.runMinCut() is just a shortcut of the following code.
892    /// \code
893    ///   pf.init();
894    ///   pf.startFirstPhase();
895    /// \endcode
896    void runMinCut() {
897      init();
898      startFirstPhase();
899    }
900
901    /// @}
902
903    /// \name Query Functions
904    /// The results of the preflow algorithm can be obtained using these
905    /// functions.\n
906    /// Either one of the \ref run() "run*()" functions or one of the
907    /// \ref startFirstPhase() "start*()" functions should be called
908    /// before using them.
909
910    ///@{
911
912    /// \brief Returns the value of the maximum flow.
913    ///
914    /// Returns the value of the maximum flow by returning the excess
915    /// of the target node. This value equals to the value of
916    /// the maximum flow already after the first phase of the algorithm.
917    ///
918    /// \pre Either \ref run() or \ref init() must be called before
919    /// using this function.
920    Value flowValue() const {
921      return (*_excess)[_target];
922    }
923
924    /// \brief Returns the flow value on the given arc.
925    ///
926    /// Returns the flow value on the given arc. This method can
927    /// be called after the second phase of the algorithm.
928    ///
929    /// \pre Either \ref run() or \ref init() must be called before
930    /// using this function.
931    Value flow(const Arc& arc) const {
932      return (*_flow)[arc];
933    }
934
935    /// \brief Returns a const reference to the flow map.
936    ///
937    /// Returns a const reference to the arc map storing the found flow.
938    /// This method can be called after the second phase of the algorithm.
939    ///
940    /// \pre Either \ref run() or \ref init() must be called before
941    /// using this function.
942    const FlowMap& flowMap() const {
943      return *_flow;
944    }
945
946    /// \brief Returns \c true when the node is on the source side of the
947    /// minimum cut.
948    ///
949    /// Returns true when the node is on the source side of the found
950    /// minimum cut. This method can be called both after running \ref
951    /// startFirstPhase() and \ref startSecondPhase().
952    ///
953    /// \pre Either \ref run() or \ref init() must be called before
954    /// using this function.
955    bool minCut(const Node& node) const {
956      return ((*_level)[node] == _level->maxLevel()) == _phase;
957    }
958
959    /// \brief Gives back a minimum value cut.
960    ///
961    /// Sets \c cutMap to the characteristic vector of a minimum value
962    /// cut. \c cutMap should be a \ref concepts::WriteMap "writable"
963    /// node map with \c bool (or convertible) value type.
964    ///
965    /// This method can be called both after running \ref startFirstPhase()
966    /// and \ref startSecondPhase(). The result after the second phase
967    /// could be slightly different if inexact computation is used.
968    ///
969    /// \note This function calls \ref minCut() for each node, so it runs in
970    /// O(n) time.
971    ///
972    /// \pre Either \ref run() or \ref init() must be called before
973    /// using this function.
974    template <typename CutMap>
975    void minCutMap(CutMap& cutMap) const {
976      for (NodeIt n(_graph); n != INVALID; ++n) {
977        cutMap.set(n, minCut(n));
978      }
979    }
980
981    /// @}
982  };
983}
984
985#endif
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