Extreme Optimization > Mathematics Library for .NET > QuickStart Samples > RootBracketingSolvers QuickStart Sample (VB.NET)

Extreme Optimization Mathematics Library for .NET

RootBracketingSolvers QuickStart Sample (VB.NET)

Illustrates the use of the root bracketing solvers (Extreme.Mathematics.EquationSolvers namespace) for solving equations in Visual Basic .NET.

C# code Back to QuickStart Samples

' The RootBracketingSolver and derived classes reside in the 
' Extreme.Mathematics.EquationSolvers namespace.
Imports Extreme.Mathematics.EquationSolvers
' Function delegates reside in the Extreme.Mathematics
' namespace.
Imports Extreme.Mathematics

Namespace Extreme.Mathematics.QuickStart.VB
    ' Illustrates the use of the root bracketing solvers 
    ' in the Extreme.Mathematics.EquationSolvers namespace of the Extreme
    ' Optimization Mathematics Library for .NET.
    Module RootBracketingSolvers

        Sub Main()
            ' Root bracketing solvers are used to solve 
            ' non-linear equations in one variable.
            '
            ' Root bracketing solvers start with an interval
            ' which is known to contain a root. This interval
            ' is made smaller and smaller in successive 
            ' iterations until a certain tolerance is reached,
            ' or the maximum number of iterations has been
            ' exceeded.
            '
            ' The properties and methods that give you control
            ' over the iteration are shared by all classes
            ' that implement iterative algorithms.

            '
            ' Target function
            '
            ' The function we are trying to solve must be
            ' provided as a RealFunction. For more
            ' information about this delegate, see the
            ' Functions QuickStart sample.
            Dim f As RealFunction = _
                New RealFunction(AddressOf Math.Cos)
            ' All root bracketing solvers inherit from
            ' RootBracketingSolver, an abstract base class.
            Dim solver As RootBracketingSolver

            '
            ' Bisection method
            '

            ' The bisection method halves the interval during
            ' each iteration. It is implemented by the
            ' BisectionSolver class.
            Console.WriteLine("BisectionSolver: cos(x) = 0 over [1,2]")
            solver = New BisectionSolver()
            solver.LowerBound = 1
            solver.UpperBound = 2
            solver.TargetFunction = f
            Dim result As Double = solver.Solve()
            ' The Status property indicates
            ' the result of running the algorithm.
            Console.WriteLine("  Result: {0}", _
                solver.Status)
            ' The result is also available through the
            ' Result property.
            Console.WriteLine("  Solution: {0}", solver.Result)
            ' You can find out the estimated error of the result
            ' through the EstimatedError property:
            Console.WriteLine("  Estimated error: {0}", _
                solver.EstimatedError)
            Console.WriteLine("  # iterations: {0}", _
                solver.IterationsNeeded)

            '
            ' Regula Falsi method
            '
            ' The Regula Falsi method optimizes the selection
            ' of the next interval. Unfortunately, the 
            ' optimization breaks down in some cases.
            ' Here is an example:
            Console.WriteLine("RegulaFalsiSolver: cos(x) = 0 over [1,2]")
            solver = New RegulaFalsiSolver()
            solver.LowerBound = 1
            solver.UpperBound = 2
            solver.TargetFunction = f
            result = solver.Solve()
            Console.WriteLine("  Result: {0}", _
                solver.Status)
            Console.WriteLine("  Solution: {0}", solver.Result)
            Console.WriteLine("  Estimated error: {0}", _
                solver.EstimatedError)
            Console.WriteLine("  # iterations: {0}", _
                solver.IterationsNeeded)

            ' However, for sin(x) = 0, everything is fine:
            Console.WriteLine("RegulaFalsiSolver: sin(x) = 0 over [-0.5,1]")
            solver = New RegulaFalsiSolver()
            solver.LowerBound = -0.5
            solver.UpperBound = 1
            solver.TargetFunction = _
                New RealFunction(AddressOf Math.Sin)
            result = solver.Solve()
            Console.WriteLine("  Result: {0}", _
                solver.Status)
            Console.WriteLine("  Solution: {0}", solver.Result)
            Console.WriteLine("  Estimated error: {0}", _
                solver.EstimatedError)
            Console.WriteLine("  # iterations: {0}", _
                solver.IterationsNeeded)

            '
            ' Dekker-Brent method
            '
            ' The Dekker-Brent method combines the best of
            ' both worlds. It is the most robust and, on average,
            ' the fastest method.
            Console.WriteLine("DekkerBrentSolver: cos(x) = 0 over [1,2]")
            solver = New DekkerBrentSolver()
            solver.LowerBound = 1
            solver.UpperBound = 2
            solver.TargetFunction = f
            result = solver.Solve()
            Console.WriteLine("  Result: {0}", _
                solver.Status)
            Console.WriteLine("  Solution: {0}", solver.Result)
            Console.WriteLine("  Estimated error: {0}", _
                solver.EstimatedError)
            Console.WriteLine("  # iterations: {0}", _
                solver.IterationsNeeded)

            '
            ' Controlling the process
            '
            Console.WriteLine("Same with modified parameters:")
            ' You can set the maximum # of iterations:
            ' If the solution cannot be found in time, the
            ' Status will return a value of
            ' AlgorithmStatus.IterationLimitExceeded
            solver.MaxIterations = 20
            ' You can specify how convergence is to be tested
            ' through the ConvergenceCriterion property:
            solver.ConvergenceCriterion = _
                         ConvergenceCriterion.WithinRelativeTolerance
            ' And, of course, you can set the absolute or
            ' relative tolerance.
            solver.RelativeTolerance = 0.00001
            ' In this example, the absolute tolerance will be 
            ' ignored.
            solver.AbsoluteTolerance = 1.0E-24
            solver.LowerBound = 157081
            solver.UpperBound = 157082
            solver.TargetFunction = f
            result = solver.Solve()
            Console.WriteLine("  Result: {0}", _
                solver.Status)
            Console.WriteLine("  Solution: {0}", solver.Result)
            ' The estimated error will be less than 0.157
            Console.WriteLine("  Estimated error: {0}", _
                solver.EstimatedError)
            Console.WriteLine("  # iterations: {0}", _
                solver.IterationsNeeded)

            Console.Write("Press Enter key to exit...")
            Console.ReadLine()

        End Sub

    End Module

End Namespace
Overview
Introduction
Features
Documentation
QuickStart Samples
Sample Applications
Downloads
Get it now!
Download trial version
How to Buy
Search

"The Extreme Optimization Statistics Library for .NET is a major boon for those doing statistical work in .NET. I strongly recommend this product."
- Marc Brooks

"I have made it my mission to institutionalize the value of good API design.  I strongly believe that this is key to making developers more productive and happy on our platform. It is clear that you value good API design in your work, and take to heart developer productivity and synergy with the .NET framework."
- Brad Abrams,
Lead Program Manager, Microsoft.

This is a partial list of companies who are using our libraries:
ABB Robotics
Allstate
Applied Materials
Arcam
Astra Schedule
Babson College
Canadian Council on Learning
Canyon Associates
Caxton Associates
CECity
Constellation Energy
CreditSights
DeepOcean
Duke University
Dynamotive
Elecsoft
Engelhard Corporation
Epcor
Equipoise Software
Galileo International
GAM UK
Gammex
GlaxoSmithKline
Global Matrix
The Hartford
Infinera Corporation
Intel
JDS Uniphase
LaBranche & Co.
Learning & Skills Council
Jacobs Consultancy
Litman Gregory
Lucas Systems
Malvern Instruments
Medrio
Merck & Co.
Mintera.
Monitor Software
MorningStar
NanoString Technologies
Paletta Invent
Parametric Portfolio Associates
Prosanos
RATA Associates
RiskShield
Ramboll
Standard & Poor's
Strategic Analysis Corporation
Univ. of Alicante
Univ. of South Carolina
vielife
Xerox
US Army