//**********************************************BBAlgorithm*********************************************************************************
        /// <summary>
        /// performs a Branch and Bound search of the state space of partial tours
        /// stops when time limit expires and uses BSSF as solution
        /// </summary>
        /// <returns>results array for GUI that contains three ints: cost of solution, time spent to find solution, number of solutions found during search (not counting initial BSSF estimate)</returns>
        public string[] bBSolveProblem()
        {
            string[] results = new string[3];

            // TODO: Add your implementation for a branch and bound solver here.
            //Initalize variables. Takes O(1) space and time
            int numOfCitiesLeft        = Cities.Length;
            int numOfSolutions         = 0;
            int numOfStatesCreated     = 0;
            int numOfStatesNotExpanded = 0;

            //Initalize time variable for stopping the algorithm after the default of 60 seconds. Takes O(1) space and time
            DateTime start = DateTime.Now;
            DateTime end   = start.AddSeconds(time_limit / 1000);

            //Create initial root state and set its priority to its lower bound. Takes O(n^2) space and time as discussed above
            TSPState initialState = createInitialState();

            numOfStatesCreated++;
            initialState.setPriority(calculateKey(numOfCitiesLeft - 1, initialState.getLowerBound()));

            //Create initial BSSF greedily
            double bssfBound = createGreedyBssf();

            PriorityQueue queue = new PriorityQueue(Cities.Length);

            queue.insert(initialState);

            // Branch and Bound until the queue is empty, we have exceeded the time limit, or we found the optimal solution

            /* This loop will have a iterate 2^n times approximately with expanding and pruning for each state, then for each state it
             * does O(n^2) work by reducing the matrix, so over all O((n^2)*(2^n)) time and space as well as it creates a nxn
             * matrix for each state*/
            while (!queue.isEmpty() && DateTime.Now < end && queue.getMinLB() != bssfBound)
            {
                // Grab the next state in the queue
                TSPState currState = queue.deleteMin();

                // check if lower bound is less than the BSSF, else prune it
                if (currState.getLowerBound() < bssfBound)
                {
                    // Branch and create the child states
                    for (int i = 0; i < Cities.Length; i++)
                    {
                        // First check that we haven't exceeded the time limit
                        if (DateTime.Now >= end)
                        {
                            break;
                        }

                        // Make sure we are only checking cities that we haven't checked already
                        if (currState.getPath().Contains(Cities[i]))
                        {
                            continue;
                        }

                        // Create the State
                        double[,] oldCostMatrix = currState.getCostMatrix();
                        double[,] newCostMatrix = new double[Cities.Length, Cities.Length];
                        // Copy the old array in the new one to modify the new without affecting the old
                        for (int k = 0; k < Cities.Length; k++)
                        {
                            for (int l = 0; l < Cities.Length; l++)
                            {
                                newCostMatrix[k, l] = oldCostMatrix[k, l];
                            }
                        }
                        City   lastCityinCurrState = (City)currState.getPath()[currState.getPath().Count - 1];
                        double oldLB = currState.getLowerBound();
                        setUpMatrix(ref newCostMatrix, Array.IndexOf(Cities, lastCityinCurrState), i, ref oldLB);
                        double    newLB   = oldLB + reduceMatrix(ref newCostMatrix);
                        ArrayList oldPath = currState.getPath();
                        ArrayList newPath = new ArrayList();
                        foreach (City c in oldPath)
                        {
                            newPath.Add(c);
                        }
                        newPath.Add(Cities[i]);
                        TSPState childState = new TSPState(ref newPath, ref newLB, ref newCostMatrix);
                        numOfStatesCreated++;

                        // Prune States larger than the BSSF
                        if (childState.getLowerBound() < bssfBound)
                        {
                            City   firstCity      = (City)childState.getPath()[0];
                            City   lastCity       = (City)childState.getPath()[childState.getPath().Count - 1];
                            double costToLoopBack = lastCity.costToGetTo(firstCity);

                            // If we found a solution and it goes back from last city to first city
                            if (childState.getPath().Count == Cities.Length && costToLoopBack != double.MaxValue)
                            {
                                childState.setLowerBound(childState.getLowerBound() + costToLoopBack);
                                bssf      = new TSPSolution(childState.getPath());
                                bssfBound = bssf.costOfRoute();
                                numOfSolutions++;
                                numOfStatesNotExpanded++; // this state is not expanded because it is not put on the queue
                            }
                            else
                            {
                                // Set the priority for the state and add the new state to the queue
                                numOfCitiesLeft = Cities.Length - childState.getPath().Count;
                                childState.setPriority(calculateKey(numOfCitiesLeft, childState.getLowerBound()));
                                queue.insert(childState);
                            }
                        }
                        else
                        {
                            numOfStatesNotExpanded++; // States that are pruned are not expanded
                        }
                    }
                }
                currState = null;
            }
            numOfStatesNotExpanded += queue.getSize(); // if the code terminated before queue is empty, then those states never got expanded
            Console.WriteLine("Number of states generated: " + numOfStatesCreated);
            Console.WriteLine("Number of states not Expanded: " + numOfStatesNotExpanded);
            Console.WriteLine("Max Number of states put in queue: " + queue.getMaxNumOfItems());
            end = DateTime.Now;
            TimeSpan diff    = end - start;
            double   seconds = diff.TotalSeconds;

            results[COST]  = System.Convert.ToString(bssf.costOfRoute());   // load results into array here, replacing these dummy values
            results[TIME]  = System.Convert.ToString(seconds);
            results[COUNT] = System.Convert.ToString(numOfSolutions);

            return(results);
        }
示例#2
0
        /// <summary>
        /// performs a Branch and Bound search of the state space of partial tours
        /// stops when time limit expires and uses BSSF as solution
        /// </summary>
        /// <returns>results array for GUI that contains three ints: cost of solution, time spent to find solution, number of solutions found during search (not counting initial BSSF estimate)</returns>
        public string[] bBSolveProblem()
        {
            string[]              results            = new string[3];
            int                   solutionCount      = 0;
            Stopwatch             timer              = new Stopwatch();
            PriorityQueue <State> pQueue             = new PriorityQueue <State>();
            int                   maxStoredStates    = 0;
            int                   bssfUpdates        = 0;
            int                   totalStatesCreated = 0;
            int                   totalStatesPruned  = 0;

            timer.Start();
            string[] intialResults = defaultSolveProblem();
            double   bestCostSoFar = Int32.Parse(intialResults[COST]);

            Console.WriteLine("BestCostSoFar: " + bestCostSoFar);

            State initialState = initializeState();

            this.reduceState(ref initialState);
            pQueue.insert(initialState, (int)initialState.lowerBound);

            while (!pQueue.isEmpty() && timer.Elapsed.Seconds < 60)             // while queue is not empty or has not passed 60 seconds
            {
                State parentState = pQueue.deleteMin();
                if (parentState.lowerBound >= bestCostSoFar)                 // trim queue if state has worse bound than bssf
                {
                    totalStatesPruned++;
                    continue;
                }
                for (int i = 0; i < this.Cities.Length; i++)
                {
                    if (!parentState.visited.Contains(i))
                    {
                        // createChild
                        totalStatesCreated++;
                        State childState = parentState.getCopy();
                        this.addCityToRoute(ref childState, i);
                        this.reduceState(ref childState);
                        if (childState.route.Count == this.Cities.Count())                         // if route is complete
                        {
                            TSPSolution newSolution = new TSPSolution(childState.route);
                            double      cost        = newSolution.costOfRoute();
                            if (cost < bestCostSoFar)
                            {
                                bssfUpdates++;
                                bestCostSoFar = cost;
                                bssf.Route    = childState.route;
                            }
                        }
                        else                                           // route is not complete
                        {
                            if (childState.lowerBound < bestCostSoFar) // don't insert in queue if state has worse bound than bssf
                            {
                                pQueue.insert(childState, (int)childState.lowerBound);
                                if (pQueue.getCount() > maxStoredStates)
                                {
                                    maxStoredStates = pQueue.getCount();
                                }
                            }
                            else
                            {
                                totalStatesPruned++;
                            }
                        }
                    }
                }
            }

            timer.Stop();

            results[COST]  = costOfBssf().ToString();
            results[TIME]  = timer.Elapsed.ToString();
            results[COUNT] = solutionCount.ToString();


            Console.WriteLine("===================================");
            Console.WriteLine("StatesCreated: " + totalStatesCreated);
            Console.WriteLine("StatesPruned: " + totalStatesPruned);
            Console.WriteLine("bssfUpdates: " + bssfUpdates);
            Console.WriteLine("MaxStoredStates: " + maxStoredStates);


            return(results);
        }