// Copyright 2020 Google LLC // Licensed under the Apache License, Version 2.0 (the "License"); // you may not use this file except in compliance with the License. // You may obtain a copy of the License at // // http://www.apache.org/licenses/LICENSE-2.0 // // Unless required by applicable law or agreed to in writing, software // distributed under the License is distributed on an "AS IS" BASIS, // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. // See the License for the specific language governing permissions and // limitations under the License. // // Uncapacitated Facility Location Problem. // A description of the problem can be found here: // https://en.wikipedia.org/wiki/Facility_location_problem. // The variant which is tackled by this model does not consider capacities // for facilities. Moreover, all cost are based on euclidean distance factors, // i.e. the problem we really solve is a Metric Facility Location. For the // sake of simplicity, facilities and demands are randomly located. Distances // are assumed to be in meters and times in seconds. #include #include #include "google/protobuf/text_format.h" #include "ortools/base/commandlineflags.h" #include "ortools/base/random.h" #include "ortools/base/integral_types.h" #include "ortools/base/logging.h" #include "ortools/linear_solver/linear_solver.h" DEFINE_int32(verbose, 0, "Verbosity level."); DEFINE_int32(facilities, 20, "Candidate facilities to consider."); DEFINE_int32(clients, 100, "Clients to serve."); DEFINE_double(fix_cost, 5000, "Cost of opening a facility."); namespace operations_research { typedef struct { double x{0}; double y{0}; } Location; typedef struct { int f{-1}; int c{-1}; MPVariable* x{nullptr}; } Edge; static double Distance(const Location& src, const Location& dst) { return sqrt((src.x-dst.x)*(src.x-dst.x) + (src.y-dst.y)*(src.y-dst.y)); } static void UncapacitatedFacilityLocation(int32 facilities, int32 clients, double fix_cost, MPSolver::OptimizationProblemType optimization_problem_type) { LOG(INFO) << "Starting " << __func__; // Local Constants const int32 kXMax = 1000; const int32 kYMax = 1000; const double kMaxDistance = 6*sqrt((kXMax*kYMax))/facilities; const int kStrLen = 1024; // char buffer for names char name_buffer[kStrLen+1]; name_buffer[kStrLen] = '\0'; LOG(INFO) << "Facilities/Clients/Fix cost/MaxDist: " << facilities << "/" << clients << "/" << fix_cost << "/" << kMaxDistance; // Setting up facilities and demand points MTRandom randomizer(/*fixed seed*/20191029); std::vector facility(facilities); std::vector client(clients); for (int i = 0; i < facilities; ++i) { facility[i].x = randomizer.Uniform(kXMax + 1); facility[i].y = randomizer.Uniform(kYMax + 1); } for (int i = 0; i < clients; ++i) { client[i].x = randomizer.Uniform(kXMax + 1); client[i].y = randomizer.Uniform(kYMax + 1); } // Setup uncapacitated facility location model: // Min sum( c_f * x_f : f in Facilities) + sum(x_{f,c} * x_{f,c} : {f,c} in E) // s.t. (1) sum(x_{f,c} : f in Facilities) >= 1 forall c in Clients // (2) x_f - x_{f,c} >= 0 forall {f,c} in E // (3) x_f in {0,1} forall f in Facilities // // We consider E as the pairs {f,c} in Facilities x Clients such that // Distance(f,c) <= kMaxDistance MPSolver solver("UncapacitatedFacilityLocation", optimization_problem_type); const double infinity = solver.infinity(); MPObjective* objective = solver.MutableObjective(); objective->SetMinimization(); // Add binary facilities variables std::vector xf{}; for (int f = 0; f < facilities; ++f) { snprintf(name_buffer, kStrLen, "x[%d](%g,%g)", f, facility[f].x, facility[f].y); MPVariable* x = solver.MakeBoolVar(name_buffer); xf.push_back(x); objective->SetCoefficient(x, fix_cost); } // Build edge variables std::vector edges; for (int c = 0; c < clients; ++c) { snprintf(name_buffer, kStrLen, "R-Client[%d](%g,%g)", c, client[c].x, client[c].y); MPConstraint* client_constraint = solver.MakeRowConstraint(/* lb */1, /* ub */infinity, name_buffer); for (int f = 0; f < facilities; ++f) { double distance = Distance(facility[f], client[c]); if (distance > kMaxDistance) continue; Edge edge{}; snprintf(name_buffer, kStrLen, "x[%d,%d]", f, c); edge.x = solver.MakeNumVar(/* lb */0, /*ub */1, name_buffer); edge.f = f; edge.c = c; edges.push_back(edge); objective->SetCoefficient(edge.x, distance); // coefficient for constraint (1) client_constraint->SetCoefficient(edge.x, 1); // add constraint (2) snprintf(name_buffer, kStrLen, "R-Edge[%d,%d]", f, c); MPConstraint* edge_constraint = solver.MakeRowConstraint(/* lb */0, /* ub */infinity, name_buffer); edge_constraint->SetCoefficient(edge.x, -1); edge_constraint->SetCoefficient(xf[f], 1); } }// End adding all edge variables LOG(INFO) << "Number of variables = " << solver.NumVariables(); LOG(INFO) << "Number of constraints = " << solver.NumConstraints(); // display on screen LP if small enough if (clients <= 10 && facilities <= 10) { std::string lp_string{}; solver.ExportModelAsLpFormat(/* obfuscate */false, &lp_string); std::cout << "LP-Model:\n" << lp_string << std::endl; } // Set options and solve if (optimization_problem_type != MPSolver::SCIP_MIXED_INTEGER_PROGRAMMING) solver.SetNumThreads(8); solver.EnableOutput(); const MPSolver::ResultStatus result_status = solver.Solve(); // Check that the problem has an optimal solution. if (result_status != MPSolver::OPTIMAL) { LOG(FATAL) << "The problem does not have an optimal solution!"; } else { LOG(INFO) << "Optimal objective value = " << objective->Value(); if (FLAGS_verbose) { std::vector> solution(facilities); for (auto& edge : edges) { if (edge.x->solution_value() < 0.5) continue; solution[edge.f].push_back(edge.c); } std::cout << "\tSolution:\n"; for (int f = 0; f < facilities; ++f) { if (solution[f].size() < 1) continue; assert(xf[f]->solution_value() > 0.5); snprintf(name_buffer, kStrLen, "\t Facility[%d](%g,%g):", f, facility[f].x, facility[f].y); std::cout << name_buffer; int i = 1; for (auto c : solution[f]) { snprintf(name_buffer, kStrLen, " Client[%d](%g,%g)", c, client[c].x, client[c].y); if(i++ >= 5) { std::cout << "\n\t\t"; i = 1; } std::cout << name_buffer; } std::cout << "\n"; } } std::cout << "\n"; LOG(INFO) << ""; LOG(INFO) << "Advanced usage:"; LOG(INFO) << "Problem solved in " << solver.DurationSinceConstruction() << " milliseconds"; LOG(INFO) << "Problem solved in " << solver.iterations() << " iterations"; LOG(INFO) << "Problem solved in " << solver.nodes() << " branch-and-bound nodes"; } } void RunAllExamples(int32 facilities, int32 clients, double fix_cost) { #if defined(USE_CBC) LOG(INFO) << "---- Integer programming example with CBC ----"; UncapacitatedFacilityLocation(facilities, clients, fix_cost, MPSolver::CBC_MIXED_INTEGER_PROGRAMMING); #endif #if defined(USE_GLPK) LOG(INFO) << "---- Integer programming example with GLPK ----"; UncapacitatedFacilityLocation(facilities, clients, fix_cost, MPSolver::GLPK_MIXED_INTEGER_PROGRAMMING); #endif #if defined(USE_SCIP) LOG(INFO) << "---- Integer programming example with SCIP ----"; UncapacitatedFacilityLocation(facilities, clients, fix_cost, MPSolver::SCIP_MIXED_INTEGER_PROGRAMMING); #endif #if defined(USE_GUROBI) LOG(INFO) << "---- Integer programming example with Gurobi ----"; UncapacitatedFacilityLocation(facilities, clients, fix_cost, MPSolver::GUROBI_MIXED_INTEGER_PROGRAMMING); #endif // USE_GUROBI #if defined(USE_CPLEX) LOG(INFO) << "---- Integer programming example with CPLEX ----"; UncapacitatedFacilityLocation(facilities, clients, fix_cost, MPSolver::CPLEX_MIXED_INTEGER_PROGRAMMING); #endif // USE_CPLEX LOG(INFO) << "---- Integer programming example with CP-SAT ----"; UncapacitatedFacilityLocation(facilities, clients, fix_cost, MPSolver::SAT_INTEGER_PROGRAMMING); } } // namespace operations_research int main(int argc, char** argv) { google::InitGoogleLogging(argv[0]); gflags::SetUsageMessage( std::string("This program solve a (randomly generated)\n") + std::string("Uncapacitated Facility Location Problem. Sample Usage:\n")); gflags::ParseCommandLineFlags(&argc, &argv, true); CHECK_LT(0, FLAGS_facilities) << "Specify an instance size greater than 0."; CHECK_LT(0, FLAGS_clients) << "Specify a non-null client size."; CHECK_LT(0, FLAGS_fix_cost) << "Specify a non-null client size."; FLAGS_logtostderr = 1; operations_research::RunAllExamples(FLAGS_facilities, FLAGS_clients, FLAGS_fix_cost); return EXIT_SUCCESS; }