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// @HEADER
// ************************************************************************
//
//               Rapid Optimization Library (ROL) Package
//                 Copyright (2014) Sandia Corporation
//
// Under terms of Contract DE-AC04-94AL85000, there is a non-exclusive
// license for use of this work by or on behalf of the U.S. Government.
//
// Redistribution and use in source and binary forms, with or without
// modification, are permitted provided that the following conditions are
// met:
//
// 1. Redistributions of source code must retain the above copyright
// notice, this list of conditions and the following disclaimer.
//
// 2. Redistributions in binary form must reproduce the above copyright
// notice, this list of conditions and the following disclaimer in the
// documentation and/or other materials provided with the distribution.
//
// 3. Neither the name of the Corporation nor the names of the
// contributors may be used to endorse or promote products derived from
// this software without specific prior written permission.
//
// THIS SOFTWARE IS PROVIDED BY SANDIA CORPORATION "AS IS" AND ANY
// EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
// IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR
// PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL SANDIA CORPORATION OR THE
// CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL,
// EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO,
// PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR
// PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF
// LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING
// NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS
// SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
//
// Questions? Contact lead developers:
//              Drew Kouri   (dpkouri@sandia.gov) and
//              Denis Ridzal (dridzal@sandia.gov)
//
// ************************************************************************
// @HEADER

#ifndef ROL_TRUNCATEDGAUSSIAN_HPP
#define ROL_TRUNCATEDGAUSSIAN_HPP

#include "ROL_Distribution.hpp"
#include "ROL_Gaussian.hpp"
#include "Teuchos_RCP.hpp"
#include "Teuchos_ParameterList.hpp"

namespace ROL {

template<class Real>
class TruncatedGaussian : public Distribution<Real> {
private:
  Real a_;
  Real b_;
  Real mean_;
  Real sdev_;

  Teuchos::RCP<Gaussian<Real> > gauss_;

  Real alpha_;
  Real beta_;
  Real phi_;
  Real Z_;

public: 

  TruncatedGaussian(const Real lo = -1., const Real up = 1.,
                    const Real mean = 0., const Real sdev = 1.)
    : a_((lo < up) ? lo : up), b_((up > lo) ? up : lo),
      mean_(mean), sdev_((sdev>0) ? sdev : 1.) {
    gauss_ = Teuchos::rcp(new Gaussian<Real>(mean_,sdev_));
    alpha_ = (a_-mean_)/sdev_;
    beta_  = (b_-mean_)/sdev_;
    phi_   = gauss_->evaluateCDF(alpha_);
    Z_     = gauss_->evaluateCDF(beta_)-gauss_->evaluateCDF(alpha_);
  }

  TruncatedGaussian(Teuchos::ParameterList &parlist) {
    Teuchos::ParameterList TGlist
      = parlist.sublist("SOL").sublist("Distribution").sublist("Truncated Gaussian");
    a_ = TGlist.get("Lower Bound",-1.);
    b_ = TGlist.get("Upper Bound",1.);
    Real tmp = a_;
    a_ = std::min(a_,b_);
    b_ = std::max(b_,tmp);

    mean_ = TGlist.get("Mean",0.);
    sdev_ = TGlist.get("Standard Deviation",1.);
    sdev_ = (sdev_ > 0.) ? sdev_ : 1.;

    gauss_ = Teuchos::rcp(new Gaussian<Real>(mean_,sdev_));
    alpha_ = (a_-mean_)/sdev_;
    beta_  = (b_-mean_)/sdev_;
    phi_   = gauss_->evaluateCDF(alpha_);
    Z_     = gauss_->evaluateCDF(beta_)-gauss_->evaluateCDF(alpha_);
  }

  Real evaluatePDF(const Real input) const {
    Real xi = (input-mean_)/sdev_;
    return ((input <= a_) ? 0.0 : ((input >= b_) ? 0.0 :
             gauss_->evaluatePDF(xi)/(sdev_*Z_)));
  }

  Real evaluateCDF(const Real input) const {
    Real xi = (input-mean_)/sdev_;
    return ((input <= a_) ? 0.0 : ((input >= b_) ? 1.0 : 
             (gauss_->evaluateCDF(xi)-phi_)/Z_));
  }

  Real integrateCDF(const Real input) const {
    TEUCHOS_TEST_FOR_EXCEPTION( true, std::invalid_argument,
      ">>> ERROR (ROL::TruncatedGaussian): Truncated Gaussian integrateCDF not implemented!");
    return ((input < 0.5*(a_+b_)) ? 0.0 : input - 0.5*(a_+b_));
  }

  Real invertCDF(const Real input) const {
    Real x = gauss_->invertCDF(Z_*input+phi_);
    return sdev_*x + mean_;
  }

  Real moment(const size_t m) const {
    Real phiA  = gauss_->evaluatePDF(alpha_);
    Real phiB  = gauss_->evaluatePDF(beta_);
    Real mean  = mean_ + sdev_*(phiA-phiB)/Z_;
    Real var   = sdev_*sdev_;
    Real val   = 0.0;
    switch(m) {
      case 1: val = mean;                                                                      break;
      case 2: val = var*(1.+(alpha_*phiA-beta_*phiB)/Z_-std::pow((phiA-phiB)/Z_,2))+mean*mean; break;
      default:
        TEUCHOS_TEST_FOR_EXCEPTION( true, std::invalid_argument,
          ">>> ERROR (ROL::TruncatedGaussian): Truncated Gaussian moment not implemented for m > 2!");
    }
    return val;
  }

  Real lowerBound(void) const {
    return a_;
  }
 
  Real upperBound(void) const {
    return b_;
  }
 
  void test(std::ostream &outStream = std::cout ) const {
    size_t size = 5;
    std::vector<Real> X(size,0.);
    std::vector<int> T(size,0);
    X[0] = a_-4.0*(Real)rand()/(Real)RAND_MAX; 
    T[0] = 0;
    X[1] = a_; 
    T[1] = 1;
    X[2] = (b_-a_)*(Real)rand()/(Real)RAND_MAX + a_; 
    T[2] = 0;
    X[3] = b_; 
    T[3] = 1;
    X[4] = b_+4.0*(Real)rand()/(Real)RAND_MAX; 
    T[4] = 0;
    Distribution<Real>::test(X,T,outStream);
  }
};

}

#endif