Computational
Chemistry
An Introduction to Molecular Dynamic
Simulations
Shalayna Lair
Molecular Mechanics, Chem 5369
University of Texas at El Paso
“Computational chemistry
simulates chemical structures and
reactions numerically, based in
full or in part on the fundamental
laws of physics.”
Foresman and Frisch
In Exploring Chemistry with Electronic Structure Methods, 1996
Outline
 Introduction
 Schrödinger's Equation
 How to Conduct a Project
 Type of Calculations
 Computational Models
• Molecular Mechanics
• Semi Empirical
• Ab Initio
• Density Functional Theory
 Basis Sets
 Accuracy Comparison
 Summary
Introduction
 Computational chemistry is a branch of
chemistry concerned with theoretically
determining properties of molecules.
 Because of the difficulty of dealing with
nanosized materials, computational
modeling has become an important
characterization tool in nanotechnology.
Schrödinger’s Equation: Hψ = Eψ
 The Schrödinger equation is the basis of quantum mechanics and
gives a complete description of the electronic structure of a
molecule. If the equation could be fully solved all information
pertaining to a molecule could be determined.
 Complex mathematical equation that completely describes the
chemistry of a molecular system.
 Not solvable for systems with many atoms.
 Due to the difficulty of the equation computers are used in conjunction
with simplifications and parameterizations to solve the equation.
 Describes both the wave and particle behavior of electrons.
 The wavefunction is described by ψ while the particle behavior is
represented by E.
 In systems with more than one electron, the wavefunction is dependent
on the position of the atoms; this makes it important to have an
accurate geometric description of a system.
Erwin Schrödinger, 1927
http://hyperphysics.phy-astr.gsu.edu/hbase/quantum/schr.html
Schrödinger Cont…
 Development of the Schrödinger
equation from other fundamental laws
of physics.
“Anyone can do calculations
nowadays.
Anyone can also operate a scalpel.
That doesn’t mean all our medical
problems are solved.”
Karl Irikura
Conducting a Computational Project
 These questions should be answered
 What do you want to know?
 How accurate does the prediction need to be?
 How much time can be devoted to the problem?
 What approximations are being made?
 The answers to these questions will determine the
type of calculation, model and basis set to be
used.
* from D. Young
Types of Calculations
 There are three basic types of calculations.
From these calculations, other information can
be determined.
 Single-Point Energy:
predict stability, reaction
mechanisms
 Geometry Optimization:
predict shape
 Frequency: predict
spectra
Atomic model of a Buckyball (C60)
Computational Models
 A model is a system of equations, or computations
used to determine the energetics of a molecule
 Different models use different approximations (or
levels of theory) to produce results of varying levels
of accuracy.
 There is a trade off between accuracy and
computational time.
 There are two main types of models; those that use
Schrödinger's equation (or simplifications of it) and
those that do not.
Computational Models
 Types of Models
(Listed in order from most to least accurate)
 Ab initio
• uses Schrödinger's equation,
but with approximations
 Semi Empirical
• uses experimental parameters
and extensive simplifications of
Schrödinger's equation
 Molecular Mechanics
• does not use Schrödinger's
equation Simulated (12,0) zigzag carbon
nanotube
Ab Initio
 Ab initio translated from Latin means “from first
principles.” This refers to the fact that no experimental
data is used and computations are based on quantum
mechanics.
 Different Levels of Ab Initio Calculations
 Hartree-Fock (HF)
• The simplest ab initio calculation
• The major disadvantage of HF calculations is that electron
correlation is not taken into consideration.
 The Møller-Plesset Perturbation Theory (MP)
 Density Functional Theory (DFT)
 Configuration Interaction (CI) Take into consideration
electron correlation
Ab Initio
 Approximations used in some ab initio calculations
 Central field approximation: integrates the electron-
electron repulsion term, giving an average effect instead
of an explicit energy
 Linear combination of atomic orbitals (LCAO): is used to
describe the wave function and these functions are then
combined into a determinant. This allows the equation
to show that an electron was put in an orbital, but the
electron cannot be specified.
Density Functional Theory
 Considered an ab initio method, but different from other ab
initio methods because the wavefunction is not used to
describe a molecule, instead the electron density is used.
 Three types of DFT calculations exist:
 local density approximation (LDA) – fastest method, gives less
accurate geometry, but provides good band structures
 gradient corrected - gives more accurate geometries
 hybrids (which are a combination of DFT and HF methods) - give
more accurate geometries
DFT  These types of calculations
are fast becoming the most
relied upon calculations for
nanotube and fullerene
systems.
 DFT methods take less
computational time than HF
calculations and are
considered more accurate
 This (15,0) short zigzag
carbon nanotube was
simulated with two different
models: Hartree-Fock and
DFT. The differences in
energetics are shown in the
table.
DFT: -6139.46 HF: -6132.89
% Difference: 0.11% (units: a.u.)
Semi Empirical
 Semi empirical methods use experimental data to
parameterize equations
 Like the ab initio methods, a Hamiltonian and wave function
are used
 much of the equation is approximated or eliminated
 Less accurate than ab initio methods but also much faster
 The equations are parameterized to reproduce specific results,
usually the geometry and heat of formation, but these methods
can be used to find other data.
Molecular Mechanics
 Simplest type of calculation
 Used when systems are very large and approaches that are more
accurate become to costly (in time and memory)
 Does not use any quantum mechanics instead uses
parameters derived from experimental or ab initio data
 Uses information like bond stretching, bond bending, torsions,
electrostatic interactions, van der Waals forces and hydrogen
bonding to predict the energetics of a system
 The energy associated with a certain type of bond is applied
throughout the molecule. This leads to a great simplification of
the equation
 It should be clarified that the energies obtained from molecular
mechanics do not have any physical meaning, but instead
describe the difference between varying conformations (type of
isomer). Molecular mechanics can supply results in heat of
formation if the zero of energy is taken into account.
Basis Sets
 In chemistry a basis set is a group of mathematical functions used to
describe the shape of the orbitals in a molecule, each basis set is a
different group of constants used in the wavefunction of the
Schrödinger equation.
 The accuracy of a calculation is dependent on both the model and
the type of basis set applied to it.
 Once again there is a trade off between accuracy and time. Larger
basis sets will describe the orbitals more accurately but take longer
to solve.
 General expression for a basis function = N * e(- * r)
 where: N is the normalization constant,  is the orbital exponent, and r
is the radius of the orbital in angstroms.
Examples of Basis Sets
 STO-3G basis set - simplest basis set, uses the minimal
number of functions to describe each atom in the molecule
 for nanotube systems this means hydrogen is described by one
function (for the 1s orbital), while carbon is described by five
functions (1s, 2s, 2px, 2py and 2pz).
 Split valence basis sets use two functions to describe different
sizes of the same orbitals.
 For example with a split valence basis set H would be described
by two functions while C would be described by 10 functions.
 6-31G or 6-311G (which uses three functions for each orbital, a
triple split valence set).
 Polarized basis sets - improve accuracy by allowing the shape
of orbitals to change by adding orbitals beyond that which is
necessary for an atom
 6-31G(d) (also known as the 6-31G*) - adds a d function to
carbon atoms
“The underlying physical laws
necessary for the mathematical
theory of a large part of physics and
the whole of chemistry are thus
completely known, and the difficulty
is only that the exact application of
these laws leads to equations much
too complicated to be soluble.”
P.A.M. Dirac, 1929
Accuracy Comparison
Method//Model/Basis Set Total Energy*
(kcal/mol)
Bond Length
(Å)
Mol. Mech.// MM2 0.5 (ΔHf
°) 0.01
Semi Emp.//AM1 18.8 0.048
Semi Emp.//PM3 17.2 0.037
Ab Initio//HF/STO-3G 93.3 0.055
Ab Initio//HF/6-31+G(d,p) 46.7 -
DFT//B3LYP/6-31G(d) 7.9 0.02
DFT//B3LYP/6-31+G(d,p) 3.9 -
DFT//MP2/6-31+G(d,p) 11.4 -
*mean absolute deviation
Table 1. Comparison of the accuracy of different models
and basis sets to experimental data.
Summary
 Schrödinger's equation is the basis of
computational chemistry, if it could be solved all
electronic information for a molecule would be
known.
 Since Schrödinger's equation cannot be
completely solved for molecules with more than
a few atoms, computers are used to solve
approximations of the equation.
 The level of accuracy and computational time of
a simulation is dependent on the model and
basis set used.
References
 Chem Viz at
http://www.shodor.org/chemviz/basis/students/introduction.html
 D. YOUNG, in “Computational Chemistry, A Practical Guide for
Applying Techniques to Real World Problems” (Wiley-
Interscience, New York, 2001).
 J. SIMMONS, in An Introduction to Theoretical Chemistry”
(Cambridge Press, Cambridge, 2003).
 J. B. FORESMAN AND Æ. FRISCH, in “Exploring Chemistry
with Electronic Structure Methods, 2nd Edition” (Gaussian,
Inc., Pittsburgh, PA, 1996).

computationalchemistry_12-6.ppt

  • 1.
    Computational Chemistry An Introduction toMolecular Dynamic Simulations Shalayna Lair Molecular Mechanics, Chem 5369 University of Texas at El Paso
  • 2.
    “Computational chemistry simulates chemicalstructures and reactions numerically, based in full or in part on the fundamental laws of physics.” Foresman and Frisch In Exploring Chemistry with Electronic Structure Methods, 1996
  • 3.
    Outline  Introduction  Schrödinger'sEquation  How to Conduct a Project  Type of Calculations  Computational Models • Molecular Mechanics • Semi Empirical • Ab Initio • Density Functional Theory  Basis Sets  Accuracy Comparison  Summary
  • 4.
    Introduction  Computational chemistryis a branch of chemistry concerned with theoretically determining properties of molecules.  Because of the difficulty of dealing with nanosized materials, computational modeling has become an important characterization tool in nanotechnology.
  • 5.
    Schrödinger’s Equation: Hψ= Eψ  The Schrödinger equation is the basis of quantum mechanics and gives a complete description of the electronic structure of a molecule. If the equation could be fully solved all information pertaining to a molecule could be determined.  Complex mathematical equation that completely describes the chemistry of a molecular system.  Not solvable for systems with many atoms.  Due to the difficulty of the equation computers are used in conjunction with simplifications and parameterizations to solve the equation.  Describes both the wave and particle behavior of electrons.  The wavefunction is described by ψ while the particle behavior is represented by E.  In systems with more than one electron, the wavefunction is dependent on the position of the atoms; this makes it important to have an accurate geometric description of a system.
  • 6.
    Erwin Schrödinger, 1927 http://hyperphysics.phy-astr.gsu.edu/hbase/quantum/schr.html SchrödingerCont…  Development of the Schrödinger equation from other fundamental laws of physics.
  • 7.
    “Anyone can docalculations nowadays. Anyone can also operate a scalpel. That doesn’t mean all our medical problems are solved.” Karl Irikura
  • 8.
    Conducting a ComputationalProject  These questions should be answered  What do you want to know?  How accurate does the prediction need to be?  How much time can be devoted to the problem?  What approximations are being made?  The answers to these questions will determine the type of calculation, model and basis set to be used. * from D. Young
  • 9.
    Types of Calculations There are three basic types of calculations. From these calculations, other information can be determined.  Single-Point Energy: predict stability, reaction mechanisms  Geometry Optimization: predict shape  Frequency: predict spectra Atomic model of a Buckyball (C60)
  • 10.
    Computational Models  Amodel is a system of equations, or computations used to determine the energetics of a molecule  Different models use different approximations (or levels of theory) to produce results of varying levels of accuracy.  There is a trade off between accuracy and computational time.  There are two main types of models; those that use Schrödinger's equation (or simplifications of it) and those that do not.
  • 11.
    Computational Models  Typesof Models (Listed in order from most to least accurate)  Ab initio • uses Schrödinger's equation, but with approximations  Semi Empirical • uses experimental parameters and extensive simplifications of Schrödinger's equation  Molecular Mechanics • does not use Schrödinger's equation Simulated (12,0) zigzag carbon nanotube
  • 12.
    Ab Initio  Abinitio translated from Latin means “from first principles.” This refers to the fact that no experimental data is used and computations are based on quantum mechanics.  Different Levels of Ab Initio Calculations  Hartree-Fock (HF) • The simplest ab initio calculation • The major disadvantage of HF calculations is that electron correlation is not taken into consideration.  The Møller-Plesset Perturbation Theory (MP)  Density Functional Theory (DFT)  Configuration Interaction (CI) Take into consideration electron correlation
  • 13.
    Ab Initio  Approximationsused in some ab initio calculations  Central field approximation: integrates the electron- electron repulsion term, giving an average effect instead of an explicit energy  Linear combination of atomic orbitals (LCAO): is used to describe the wave function and these functions are then combined into a determinant. This allows the equation to show that an electron was put in an orbital, but the electron cannot be specified.
  • 14.
    Density Functional Theory Considered an ab initio method, but different from other ab initio methods because the wavefunction is not used to describe a molecule, instead the electron density is used.  Three types of DFT calculations exist:  local density approximation (LDA) – fastest method, gives less accurate geometry, but provides good band structures  gradient corrected - gives more accurate geometries  hybrids (which are a combination of DFT and HF methods) - give more accurate geometries
  • 15.
    DFT  Thesetypes of calculations are fast becoming the most relied upon calculations for nanotube and fullerene systems.  DFT methods take less computational time than HF calculations and are considered more accurate  This (15,0) short zigzag carbon nanotube was simulated with two different models: Hartree-Fock and DFT. The differences in energetics are shown in the table. DFT: -6139.46 HF: -6132.89 % Difference: 0.11% (units: a.u.)
  • 16.
    Semi Empirical  Semiempirical methods use experimental data to parameterize equations  Like the ab initio methods, a Hamiltonian and wave function are used  much of the equation is approximated or eliminated  Less accurate than ab initio methods but also much faster  The equations are parameterized to reproduce specific results, usually the geometry and heat of formation, but these methods can be used to find other data.
  • 17.
    Molecular Mechanics  Simplesttype of calculation  Used when systems are very large and approaches that are more accurate become to costly (in time and memory)  Does not use any quantum mechanics instead uses parameters derived from experimental or ab initio data  Uses information like bond stretching, bond bending, torsions, electrostatic interactions, van der Waals forces and hydrogen bonding to predict the energetics of a system  The energy associated with a certain type of bond is applied throughout the molecule. This leads to a great simplification of the equation  It should be clarified that the energies obtained from molecular mechanics do not have any physical meaning, but instead describe the difference between varying conformations (type of isomer). Molecular mechanics can supply results in heat of formation if the zero of energy is taken into account.
  • 18.
    Basis Sets  Inchemistry a basis set is a group of mathematical functions used to describe the shape of the orbitals in a molecule, each basis set is a different group of constants used in the wavefunction of the Schrödinger equation.  The accuracy of a calculation is dependent on both the model and the type of basis set applied to it.  Once again there is a trade off between accuracy and time. Larger basis sets will describe the orbitals more accurately but take longer to solve.  General expression for a basis function = N * e(- * r)  where: N is the normalization constant,  is the orbital exponent, and r is the radius of the orbital in angstroms.
  • 19.
    Examples of BasisSets  STO-3G basis set - simplest basis set, uses the minimal number of functions to describe each atom in the molecule  for nanotube systems this means hydrogen is described by one function (for the 1s orbital), while carbon is described by five functions (1s, 2s, 2px, 2py and 2pz).  Split valence basis sets use two functions to describe different sizes of the same orbitals.  For example with a split valence basis set H would be described by two functions while C would be described by 10 functions.  6-31G or 6-311G (which uses three functions for each orbital, a triple split valence set).  Polarized basis sets - improve accuracy by allowing the shape of orbitals to change by adding orbitals beyond that which is necessary for an atom  6-31G(d) (also known as the 6-31G*) - adds a d function to carbon atoms
  • 20.
    “The underlying physicallaws necessary for the mathematical theory of a large part of physics and the whole of chemistry are thus completely known, and the difficulty is only that the exact application of these laws leads to equations much too complicated to be soluble.” P.A.M. Dirac, 1929
  • 21.
    Accuracy Comparison Method//Model/Basis SetTotal Energy* (kcal/mol) Bond Length (Å) Mol. Mech.// MM2 0.5 (ΔHf °) 0.01 Semi Emp.//AM1 18.8 0.048 Semi Emp.//PM3 17.2 0.037 Ab Initio//HF/STO-3G 93.3 0.055 Ab Initio//HF/6-31+G(d,p) 46.7 - DFT//B3LYP/6-31G(d) 7.9 0.02 DFT//B3LYP/6-31+G(d,p) 3.9 - DFT//MP2/6-31+G(d,p) 11.4 - *mean absolute deviation Table 1. Comparison of the accuracy of different models and basis sets to experimental data.
  • 22.
    Summary  Schrödinger's equationis the basis of computational chemistry, if it could be solved all electronic information for a molecule would be known.  Since Schrödinger's equation cannot be completely solved for molecules with more than a few atoms, computers are used to solve approximations of the equation.  The level of accuracy and computational time of a simulation is dependent on the model and basis set used.
  • 23.
    References  Chem Vizat http://www.shodor.org/chemviz/basis/students/introduction.html  D. YOUNG, in “Computational Chemistry, A Practical Guide for Applying Techniques to Real World Problems” (Wiley- Interscience, New York, 2001).  J. SIMMONS, in An Introduction to Theoretical Chemistry” (Cambridge Press, Cambridge, 2003).  J. B. FORESMAN AND Æ. FRISCH, in “Exploring Chemistry with Electronic Structure Methods, 2nd Edition” (Gaussian, Inc., Pittsburgh, PA, 1996).