COIN-OR::LEMON - Graph Library

source: lemon-0.x/lemon/capacity_scaling.h @ 2623:90defb96ee61

Last change on this file since 2623:90defb96ee61 was 2623:90defb96ee61, checked in by Peter Kovacs, 16 years ago

Add missing pointer initializing in min cost flow classes

File size: 22.0 KB
Line 
1/* -*- C++ -*-
2 *
3 * This file is a part of LEMON, a generic C++ optimization library
4 *
5 * Copyright (C) 2003-2008
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_CAPACITY_SCALING_H
20#define LEMON_CAPACITY_SCALING_H
21
22/// \ingroup min_cost_flow
23///
24/// \file
25/// \brief Capacity scaling algorithm for finding a minimum cost flow.
26
27#include <vector>
28#include <lemon/bin_heap.h>
29
30namespace lemon {
31
32  /// \addtogroup min_cost_flow
33  /// @{
34
35  /// \brief Implementation of the capacity scaling algorithm for
36  /// finding a minimum cost flow.
37  ///
38  /// \ref CapacityScaling implements the capacity scaling version
39  /// of the successive shortest path algorithm for finding a minimum
40  /// cost flow.
41  ///
42  /// \tparam Graph The directed graph type the algorithm runs on.
43  /// \tparam LowerMap The type of the lower bound map.
44  /// \tparam CapacityMap The type of the capacity (upper bound) map.
45  /// \tparam CostMap The type of the cost (length) map.
46  /// \tparam SupplyMap The type of the supply map.
47  ///
48  /// \warning
49  /// - Edge capacities and costs should be \e non-negative \e integers.
50  /// - Supply values should be \e signed \e integers.
51  /// - The value types of the maps should be convertible to each other.
52  /// - \c CostMap::Value must be signed type.
53  ///
54  /// \author Peter Kovacs
55  template < typename Graph,
56             typename LowerMap = typename Graph::template EdgeMap<int>,
57             typename CapacityMap = typename Graph::template EdgeMap<int>,
58             typename CostMap = typename Graph::template EdgeMap<int>,
59             typename SupplyMap = typename Graph::template NodeMap<int> >
60  class CapacityScaling
61  {
62    GRAPH_TYPEDEFS(typename Graph);
63
64    typedef typename CapacityMap::Value Capacity;
65    typedef typename CostMap::Value Cost;
66    typedef typename SupplyMap::Value Supply;
67    typedef typename Graph::template EdgeMap<Capacity> CapacityEdgeMap;
68    typedef typename Graph::template NodeMap<Supply> SupplyNodeMap;
69    typedef typename Graph::template NodeMap<Edge> PredMap;
70
71  public:
72
73    /// The type of the flow map.
74    typedef typename Graph::template EdgeMap<Capacity> FlowMap;
75    /// The type of the potential map.
76    typedef typename Graph::template NodeMap<Cost> PotentialMap;
77
78  private:
79
80    /// \brief Special implementation of the \ref Dijkstra algorithm
81    /// for finding shortest paths in the residual network.
82    ///
83    /// \ref ResidualDijkstra is a special implementation of the
84    /// \ref Dijkstra algorithm for finding shortest paths in the
85    /// residual network of the graph with respect to the reduced edge
86    /// costs and modifying the node potentials according to the
87    /// distance of the nodes.
88    class ResidualDijkstra
89    {
90      typedef typename Graph::template NodeMap<int> HeapCrossRef;
91      typedef BinHeap<Cost, HeapCrossRef> Heap;
92
93    private:
94
95      // The directed graph the algorithm runs on
96      const Graph &_graph;
97
98      // The main maps
99      const FlowMap &_flow;
100      const CapacityEdgeMap &_res_cap;
101      const CostMap &_cost;
102      const SupplyNodeMap &_excess;
103      PotentialMap &_potential;
104
105      // The distance map
106      PotentialMap _dist;
107      // The pred edge map
108      PredMap &_pred;
109      // The processed (i.e. permanently labeled) nodes
110      std::vector<Node> _proc_nodes;
111
112    public:
113
114      /// Constructor.
115      ResidualDijkstra( const Graph &graph,
116                        const FlowMap &flow,
117                        const CapacityEdgeMap &res_cap,
118                        const CostMap &cost,
119                        const SupplyMap &excess,
120                        PotentialMap &potential,
121                        PredMap &pred ) :
122        _graph(graph), _flow(flow), _res_cap(res_cap), _cost(cost),
123        _excess(excess), _potential(potential), _dist(graph),
124        _pred(pred)
125      {}
126
127      /// Run the algorithm from the given source node.
128      Node run(Node s, Capacity delta = 1) {
129        HeapCrossRef heap_cross_ref(_graph, Heap::PRE_HEAP);
130        Heap heap(heap_cross_ref);
131        heap.push(s, 0);
132        _pred[s] = INVALID;
133        _proc_nodes.clear();
134
135        // Processing nodes
136        while (!heap.empty() && _excess[heap.top()] > -delta) {
137          Node u = heap.top(), v;
138          Cost d = heap.prio() + _potential[u], nd;
139          _dist[u] = heap.prio();
140          heap.pop();
141          _proc_nodes.push_back(u);
142
143          // Traversing outgoing edges
144          for (OutEdgeIt e(_graph, u); e != INVALID; ++e) {
145            if (_res_cap[e] >= delta) {
146              v = _graph.target(e);
147              switch(heap.state(v)) {
148              case Heap::PRE_HEAP:
149                heap.push(v, d + _cost[e] - _potential[v]);
150                _pred[v] = e;
151                break;
152              case Heap::IN_HEAP:
153                nd = d + _cost[e] - _potential[v];
154                if (nd < heap[v]) {
155                  heap.decrease(v, nd);
156                  _pred[v] = e;
157                }
158                break;
159              case Heap::POST_HEAP:
160                break;
161              }
162            }
163          }
164
165          // Traversing incoming edges
166          for (InEdgeIt e(_graph, u); e != INVALID; ++e) {
167            if (_flow[e] >= delta) {
168              v = _graph.source(e);
169              switch(heap.state(v)) {
170              case Heap::PRE_HEAP:
171                heap.push(v, d - _cost[e] - _potential[v]);
172                _pred[v] = e;
173                break;
174              case Heap::IN_HEAP:
175                nd = d - _cost[e] - _potential[v];
176                if (nd < heap[v]) {
177                  heap.decrease(v, nd);
178                  _pred[v] = e;
179                }
180                break;
181              case Heap::POST_HEAP:
182                break;
183              }
184            }
185          }
186        }
187        if (heap.empty()) return INVALID;
188
189        // Updating potentials of processed nodes
190        Node t = heap.top();
191        Cost t_dist = heap.prio();
192        for (int i = 0; i < int(_proc_nodes.size()); ++i)
193          _potential[_proc_nodes[i]] += _dist[_proc_nodes[i]] - t_dist;
194
195        return t;
196      }
197
198    }; //class ResidualDijkstra
199
200  private:
201
202    // The directed graph the algorithm runs on
203    const Graph &_graph;
204    // The original lower bound map
205    const LowerMap *_lower;
206    // The modified capacity map
207    CapacityEdgeMap _capacity;
208    // The original cost map
209    const CostMap &_cost;
210    // The modified supply map
211    SupplyNodeMap _supply;
212    bool _valid_supply;
213
214    // Edge map of the current flow
215    FlowMap *_flow;
216    bool _local_flow;
217    // Node map of the current potentials
218    PotentialMap *_potential;
219    bool _local_potential;
220
221    // The residual capacity map
222    CapacityEdgeMap _res_cap;
223    // The excess map
224    SupplyNodeMap _excess;
225    // The excess nodes (i.e. nodes with positive excess)
226    std::vector<Node> _excess_nodes;
227    // The deficit nodes (i.e. nodes with negative excess)
228    std::vector<Node> _deficit_nodes;
229
230    // The delta parameter used for capacity scaling
231    Capacity _delta;
232    // The maximum number of phases
233    int _phase_num;
234
235    // The pred edge map
236    PredMap _pred;
237    // Implementation of the Dijkstra algorithm for finding augmenting
238    // shortest paths in the residual network
239    ResidualDijkstra *_dijkstra;
240
241  public:
242
243    /// \brief General constructor (with lower bounds).
244    ///
245    /// General constructor (with lower bounds).
246    ///
247    /// \param graph The directed graph the algorithm runs on.
248    /// \param lower The lower bounds of the edges.
249    /// \param capacity The capacities (upper bounds) of the edges.
250    /// \param cost The cost (length) values of the edges.
251    /// \param supply The supply values of the nodes (signed).
252    CapacityScaling( const Graph &graph,
253                     const LowerMap &lower,
254                     const CapacityMap &capacity,
255                     const CostMap &cost,
256                     const SupplyMap &supply ) :
257      _graph(graph), _lower(&lower), _capacity(graph), _cost(cost),
258      _supply(graph), _flow(NULL), _local_flow(false),
259      _potential(NULL), _local_potential(false),
260      _res_cap(graph), _excess(graph), _pred(graph), _dijkstra(NULL)
261    {
262      // Removing non-zero lower bounds
263      _capacity = subMap(capacity, lower);
264      _res_cap = _capacity;
265      Supply sum = 0;
266      for (NodeIt n(_graph); n != INVALID; ++n) {
267        Supply s = supply[n];
268        for (InEdgeIt e(_graph, n); e != INVALID; ++e)
269          s += lower[e];
270        for (OutEdgeIt e(_graph, n); e != INVALID; ++e)
271          s -= lower[e];
272        _supply[n] = s;
273        sum += s;
274      }
275      _valid_supply = sum == 0;
276    }
277
278    /// \brief General constructor (without lower bounds).
279    ///
280    /// General constructor (without lower bounds).
281    ///
282    /// \param graph The directed graph the algorithm runs on.
283    /// \param capacity The capacities (upper bounds) of the edges.
284    /// \param cost The cost (length) values of the edges.
285    /// \param supply The supply values of the nodes (signed).
286    CapacityScaling( const Graph &graph,
287                     const CapacityMap &capacity,
288                     const CostMap &cost,
289                     const SupplyMap &supply ) :
290      _graph(graph), _lower(NULL), _capacity(capacity), _cost(cost),
291      _supply(supply), _flow(NULL), _local_flow(false),
292      _potential(NULL), _local_potential(false),
293      _res_cap(capacity), _excess(graph), _pred(graph), _dijkstra(NULL)
294    {
295      // Checking the sum of supply values
296      Supply sum = 0;
297      for (NodeIt n(_graph); n != INVALID; ++n) sum += _supply[n];
298      _valid_supply = sum == 0;
299    }
300
301    /// \brief Simple constructor (with lower bounds).
302    ///
303    /// Simple constructor (with lower bounds).
304    ///
305    /// \param graph The directed graph the algorithm runs on.
306    /// \param lower The lower bounds of the edges.
307    /// \param capacity The capacities (upper bounds) of the edges.
308    /// \param cost The cost (length) values of the edges.
309    /// \param s The source node.
310    /// \param t The target node.
311    /// \param flow_value The required amount of flow from node \c s
312    /// to node \c t (i.e. the supply of \c s and the demand of \c t).
313    CapacityScaling( const Graph &graph,
314                     const LowerMap &lower,
315                     const CapacityMap &capacity,
316                     const CostMap &cost,
317                     Node s, Node t,
318                     Supply flow_value ) :
319      _graph(graph), _lower(&lower), _capacity(graph), _cost(cost),
320      _supply(graph), _flow(NULL), _local_flow(false),
321      _potential(NULL), _local_potential(false),
322      _res_cap(graph), _excess(graph), _pred(graph), _dijkstra(NULL)
323    {
324      // Removing non-zero lower bounds
325      _capacity = subMap(capacity, lower);
326      _res_cap = _capacity;
327      for (NodeIt n(_graph); n != INVALID; ++n) {
328        Supply sum = 0;
329        if (n == s) sum =  flow_value;
330        if (n == t) sum = -flow_value;
331        for (InEdgeIt e(_graph, n); e != INVALID; ++e)
332          sum += lower[e];
333        for (OutEdgeIt e(_graph, n); e != INVALID; ++e)
334          sum -= lower[e];
335        _supply[n] = sum;
336      }
337      _valid_supply = true;
338    }
339
340    /// \brief Simple constructor (without lower bounds).
341    ///
342    /// Simple constructor (without lower bounds).
343    ///
344    /// \param graph The directed graph the algorithm runs on.
345    /// \param capacity The capacities (upper bounds) of the edges.
346    /// \param cost The cost (length) values of the edges.
347    /// \param s The source node.
348    /// \param t The target node.
349    /// \param flow_value The required amount of flow from node \c s
350    /// to node \c t (i.e. the supply of \c s and the demand of \c t).
351    CapacityScaling( const Graph &graph,
352                     const CapacityMap &capacity,
353                     const CostMap &cost,
354                     Node s, Node t,
355                     Supply flow_value ) :
356      _graph(graph), _lower(NULL), _capacity(capacity), _cost(cost),
357      _supply(graph, 0), _flow(NULL), _local_flow(false),
358      _potential(NULL), _local_potential(false),
359      _res_cap(capacity), _excess(graph), _pred(graph), _dijkstra(NULL)
360    {
361      _supply[s] =  flow_value;
362      _supply[t] = -flow_value;
363      _valid_supply = true;
364    }
365
366    /// Destructor.
367    ~CapacityScaling() {
368      if (_local_flow) delete _flow;
369      if (_local_potential) delete _potential;
370      delete _dijkstra;
371    }
372
373    /// \brief Set the flow map.
374    ///
375    /// Set the flow map.
376    ///
377    /// \return \c (*this)
378    CapacityScaling& flowMap(FlowMap &map) {
379      if (_local_flow) {
380        delete _flow;
381        _local_flow = false;
382      }
383      _flow = &map;
384      return *this;
385    }
386
387    /// \brief Set the potential map.
388    ///
389    /// Set the potential map.
390    ///
391    /// \return \c (*this)
392    CapacityScaling& potentialMap(PotentialMap &map) {
393      if (_local_potential) {
394        delete _potential;
395        _local_potential = false;
396      }
397      _potential = &map;
398      return *this;
399    }
400
401    /// \name Execution control
402
403    /// @{
404
405    /// \brief Run the algorithm.
406    ///
407    /// This function runs the algorithm.
408    ///
409    /// \param scaling Enable or disable capacity scaling.
410    /// If the maximum edge capacity and/or the amount of total supply
411    /// is rather small, the algorithm could be slightly faster without
412    /// scaling.
413    ///
414    /// \return \c true if a feasible flow can be found.
415    bool run(bool scaling = true) {
416      return init(scaling) && start();
417    }
418
419    /// @}
420
421    /// \name Query Functions
422    /// The results of the algorithm can be obtained using these
423    /// functions.\n
424    /// \ref lemon::CapacityScaling::run() "run()" must be called before
425    /// using them.
426
427    /// @{
428
429    /// \brief Return a const reference to the edge map storing the
430    /// found flow.
431    ///
432    /// Return a const reference to the edge map storing the found flow.
433    ///
434    /// \pre \ref run() must be called before using this function.
435    const FlowMap& flowMap() const {
436      return *_flow;
437    }
438
439    /// \brief Return a const reference to the node map storing the
440    /// found potentials (the dual solution).
441    ///
442    /// Return a const reference to the node map storing the found
443    /// potentials (the dual solution).
444    ///
445    /// \pre \ref run() must be called before using this function.
446    const PotentialMap& potentialMap() const {
447      return *_potential;
448    }
449
450    /// \brief Return the flow on the given edge.
451    ///
452    /// Return the flow on the given edge.
453    ///
454    /// \pre \ref run() must be called before using this function.
455    Capacity flow(const Edge& edge) const {
456      return (*_flow)[edge];
457    }
458
459    /// \brief Return the potential of the given node.
460    ///
461    /// Return the potential of the given node.
462    ///
463    /// \pre \ref run() must be called before using this function.
464    Cost potential(const Node& node) const {
465      return (*_potential)[node];
466    }
467
468    /// \brief Return the total cost of the found flow.
469    ///
470    /// Return the total cost of the found flow. The complexity of the
471    /// function is \f$ O(e) \f$.
472    ///
473    /// \pre \ref run() must be called before using this function.
474    Cost totalCost() const {
475      Cost c = 0;
476      for (EdgeIt e(_graph); e != INVALID; ++e)
477        c += (*_flow)[e] * _cost[e];
478      return c;
479    }
480
481    /// @}
482
483  private:
484
485    /// Initialize the algorithm.
486    bool init(bool scaling) {
487      if (!_valid_supply) return false;
488
489      // Initializing maps
490      if (!_flow) {
491        _flow = new FlowMap(_graph);
492        _local_flow = true;
493      }
494      if (!_potential) {
495        _potential = new PotentialMap(_graph);
496        _local_potential = true;
497      }
498      for (EdgeIt e(_graph); e != INVALID; ++e) (*_flow)[e] = 0;
499      for (NodeIt n(_graph); n != INVALID; ++n) (*_potential)[n] = 0;
500      _excess = _supply;
501
502      _dijkstra = new ResidualDijkstra( _graph, *_flow, _res_cap, _cost,
503                                        _excess, *_potential, _pred );
504
505      // Initializing delta value
506      if (scaling) {
507        // With scaling
508        Supply max_sup = 0, max_dem = 0;
509        for (NodeIt n(_graph); n != INVALID; ++n) {
510          if ( _supply[n] > max_sup) max_sup =  _supply[n];
511          if (-_supply[n] > max_dem) max_dem = -_supply[n];
512        }
513        Capacity max_cap = 0;
514        for (EdgeIt e(_graph); e != INVALID; ++e) {
515          if (_capacity[e] > max_cap) max_cap = _capacity[e];
516        }
517        max_sup = std::min(std::min(max_sup, max_dem), max_cap);
518        _phase_num = 0;
519        for (_delta = 1; 2 * _delta <= max_sup; _delta *= 2)
520          ++_phase_num;
521      } else {
522        // Without scaling
523        _delta = 1;
524      }
525
526      return true;
527    }
528
529    bool start() {
530      if (_delta > 1)
531        return startWithScaling();
532      else
533        return startWithoutScaling();
534    }
535
536    /// Execute the capacity scaling algorithm.
537    bool startWithScaling() {
538      // Processing capacity scaling phases
539      Node s, t;
540      int phase_cnt = 0;
541      int factor = 4;
542      while (true) {
543        // Saturating all edges not satisfying the optimality condition
544        for (EdgeIt e(_graph); e != INVALID; ++e) {
545          Node u = _graph.source(e), v = _graph.target(e);
546          Cost c = _cost[e] + (*_potential)[u] - (*_potential)[v];
547          if (c < 0 && _res_cap[e] >= _delta) {
548            _excess[u] -= _res_cap[e];
549            _excess[v] += _res_cap[e];
550            (*_flow)[e] = _capacity[e];
551            _res_cap[e] = 0;
552          }
553          else if (c > 0 && (*_flow)[e] >= _delta) {
554            _excess[u] += (*_flow)[e];
555            _excess[v] -= (*_flow)[e];
556            (*_flow)[e] = 0;
557            _res_cap[e] = _capacity[e];
558          }
559        }
560
561        // Finding excess nodes and deficit nodes
562        _excess_nodes.clear();
563        _deficit_nodes.clear();
564        for (NodeIt n(_graph); n != INVALID; ++n) {
565          if (_excess[n] >=  _delta) _excess_nodes.push_back(n);
566          if (_excess[n] <= -_delta) _deficit_nodes.push_back(n);
567        }
568        int next_node = 0, next_def_node = 0;
569
570        // Finding augmenting shortest paths
571        while (next_node < int(_excess_nodes.size())) {
572          // Checking deficit nodes
573          if (_delta > 1) {
574            bool delta_deficit = false;
575            for ( ; next_def_node < int(_deficit_nodes.size());
576                    ++next_def_node ) {
577              if (_excess[_deficit_nodes[next_def_node]] <= -_delta) {
578                delta_deficit = true;
579                break;
580              }
581            }
582            if (!delta_deficit) break;
583          }
584
585          // Running Dijkstra
586          s = _excess_nodes[next_node];
587          if ((t = _dijkstra->run(s, _delta)) == INVALID) {
588            if (_delta > 1) {
589              ++next_node;
590              continue;
591            }
592            return false;
593          }
594
595          // Augmenting along a shortest path from s to t.
596          Capacity d = std::min(_excess[s], -_excess[t]);
597          Node u = t;
598          Edge e;
599          if (d > _delta) {
600            while ((e = _pred[u]) != INVALID) {
601              Capacity rc;
602              if (u == _graph.target(e)) {
603                rc = _res_cap[e];
604                u = _graph.source(e);
605              } else {
606                rc = (*_flow)[e];
607                u = _graph.target(e);
608              }
609              if (rc < d) d = rc;
610            }
611          }
612          u = t;
613          while ((e = _pred[u]) != INVALID) {
614            if (u == _graph.target(e)) {
615              (*_flow)[e] += d;
616              _res_cap[e] -= d;
617              u = _graph.source(e);
618            } else {
619              (*_flow)[e] -= d;
620              _res_cap[e] += d;
621              u = _graph.target(e);
622            }
623          }
624          _excess[s] -= d;
625          _excess[t] += d;
626
627          if (_excess[s] < _delta) ++next_node;
628        }
629
630        if (_delta == 1) break;
631        if (++phase_cnt > _phase_num / 4) factor = 2;
632        _delta = _delta <= factor ? 1 : _delta / factor;
633      }
634
635      // Handling non-zero lower bounds
636      if (_lower) {
637        for (EdgeIt e(_graph); e != INVALID; ++e)
638          (*_flow)[e] += (*_lower)[e];
639      }
640      return true;
641    }
642
643    /// Execute the successive shortest path algorithm.
644    bool startWithoutScaling() {
645      // Finding excess nodes
646      for (NodeIt n(_graph); n != INVALID; ++n)
647        if (_excess[n] > 0) _excess_nodes.push_back(n);
648      if (_excess_nodes.size() == 0) return true;
649      int next_node = 0;
650
651      // Finding shortest paths
652      Node s, t;
653      while ( _excess[_excess_nodes[next_node]] > 0 ||
654              ++next_node < int(_excess_nodes.size()) )
655      {
656        // Running Dijkstra
657        s = _excess_nodes[next_node];
658        if ((t = _dijkstra->run(s)) == INVALID) return false;
659
660        // Augmenting along a shortest path from s to t
661        Capacity d = std::min(_excess[s], -_excess[t]);
662        Node u = t;
663        Edge e;
664        if (d > 1) {
665          while ((e = _pred[u]) != INVALID) {
666            Capacity rc;
667            if (u == _graph.target(e)) {
668              rc = _res_cap[e];
669              u = _graph.source(e);
670            } else {
671              rc = (*_flow)[e];
672              u = _graph.target(e);
673            }
674            if (rc < d) d = rc;
675          }
676        }
677        u = t;
678        while ((e = _pred[u]) != INVALID) {
679          if (u == _graph.target(e)) {
680            (*_flow)[e] += d;
681            _res_cap[e] -= d;
682            u = _graph.source(e);
683          } else {
684            (*_flow)[e] -= d;
685            _res_cap[e] += d;
686            u = _graph.target(e);
687          }
688        }
689        _excess[s] -= d;
690        _excess[t] += d;
691      }
692
693      // Handling non-zero lower bounds
694      if (_lower) {
695        for (EdgeIt e(_graph); e != INVALID; ++e)
696          (*_flow)[e] += (*_lower)[e];
697      }
698      return true;
699    }
700
701  }; //class CapacityScaling
702
703  ///@}
704
705} //namespace lemon
706
707#endif //LEMON_CAPACITY_SCALING_H
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