SlideShare une entreprise Scribd logo
1  sur  56
Télécharger pour lire hors ligne
The Effective Fragment Molecular Orbital
                 Method
Casper Steinmann1             Dmitri G. Fedorov2           Jan H. Jensen1
      1
          Department of Chemistry, University of Copenhagen, Denmark
                  2
                      AIST, Umezono, Tsukuba, Ibaraki, Japan




                                                                            September 14th, 2011
Outline

1   Motivation


2   The Fragment Molecular Orbital Method


3   The Effective Fragment Potential Method


4   The Effective Fragment Molecular Orbital Method


5   Results




                                                      2 / 45
Motivation
Treatment of Very Large Systems
  • We want quantum mechanics (QM) to do chemistry.
  • We want the speed of force-fields (MM) to treat large systems.

Usually done via hybrid QM/MM methods




We propose a fragment based, on-the-fly parameterless polarizable
force-field.
  • A merger between FMO and EFP.
  • FMO: Faster FMO by the use of classical approximations
  • EFP: Flexible EFP’s.




                                                                    3 / 45
FMO




      4 / 45
FMO2 Method
The two-body FMO2 method on a system of N fragments
                                    N          N
                      FMO
                  E           =         EI +         (EIJ − EI − EJ ),
                                    I          I>J

with fragment energies obtained as
                                             ˆ
                                    EX = ΨX |HX |ΨX

where
                                                                                            
                              all                                         all
ˆ
HX =          − 1    2
                      i   +
                                       −ZC
                                               +
                                                               1
                                                                      +
                                                                                 ρK (r )
                                                                                          dr 
                 2                  |ri − RC |       j>i
                                                           |ri − rj |           |ri − r |
        i∈X                   C                                           K∈X
         NR
   +    EX




                                                                                                 5 / 45
FMO2 Method
Using a single Slater determinant to represent |ΨX , we obtain

                            ˆ
                            f X φX =     X X
                                 k       k φk .

Here,
                 ˆ     ˆ    ˆ           ˜
                 f X = hX + V X + g X = hX + g X ,
                                  ˆ          ˆ
where
                    all                   all
             ˆ               −ZC                   ρK (r )
             VX =                    +                      dr
                          |r1 − RC |              |r1 − r |
                    C∈X                  K∈X




                                                                 6 / 45
FMO2 Method
expanding our molecular orbitals φ in a basis set

                          φX =
                           k
                                        X
                                       Cµk χµ
                                  µ


we obtain, the Fock matrix elements of V X
                                      all          all
                       ˆ
               Vµν = µ|V X |ν =
                X
                                            uK +
                                             µν
                                                          K
                                                         υµν
                                     K∈X           K∈X

which are given as
                                         −ZC
                     uK = µ|
                      µν                         |ν ,
                                      |r1 − RC |
                               C∈K

and
                       K              K
                      υµν =          Dλσ (µν|λσ).
                              λσ∈K

                                                               7 / 45
FMO approximations
FMO2 formally scales as O(N 2 ), wants to be O(N ). We need
distance-based approximations:

                                         |ri   − rj |
                    RI,J = min         vdw        vdw
                            i∈I,j∈J   ri       + rj

  • 1) Approximate ESP (Resppc ):

                                                              QC
             uK =
              µν
                            K
                           Dλσ (µν|λσ) →             µ|              |ν
                                                          |r1 − RC |
                    λσ∈K                       C∈K

  • 2) Approximate dimer interaction (Resdim ):

    EIJ ≈ EI +EJ +Tr DI uJ +Tr DJ uI +                          I   J
                                                               Dµν Dλσ (µν|λσ)

Usually, Resdim and Resppc are equal (2.0)


                                                                                 8 / 45
A couple of pictures to help




                               9 / 45
A couple of pictures to help




                               10 / 45
Covalent Bonds in FMO
In FMO, bonds are detatched instead of capped.

                         BDA|-BAA




                                                 11 / 45
HOP vs. AFO
Two methods in FMO: hybrid orbital projection (HOP) and adaptive
frozen orbitals (AFO)

Both modifies the Fock-operator
                   ˆ     ˜
                   f X = hX + g X +
                              ˆ           Bk |φ φ|
                                      k


  • HOP: External model system generated and used
  • AFO: Generated on the fly automatically:




                                                                   12 / 45
AFO




      13 / 45
AFO




      14 / 45
AFO




      We shall return to AFO later ...




                                         15 / 45
EFP




      16 / 45
EFP
EFP is an approximation to the RHF interaction energy, E int

                    E int = E RHF −        EI ≈ E EFP
                                            0

                                       I

The EFP energy

                     E EFP =           EFP   ind
                                     ∆EIJ + Etotal
                               I>J

                      EFP   es     xr    ct
                    ∆EIJ = EIJ + (EIJ + EIJ )
 es
EIJ using distributed multipoles.
 ind
Etotal using induced dipoles based on distributed polarizabilities.




                                                                      17 / 45
EFP
EFP is an approximation to the RHF interaction energy, E int

                    E int = E RHF −        EI ≈ E EFP
                                            0

                                       I

The EFP energy

                     E EFP =           EFP   ind
                                     ∆EIJ + Etotal
                               I>J

                      EFP   es     xr    ct
                    ∆EIJ = EIJ + (EIJ + EIJ )
 es
EIJ using distributed multipoles.
 ind
Etotal using induced dipoles based on distributed polarizabilities.

  • The internal geometry is fixed.




                                                                      17 / 45
EFP
EFP is an approximation to the RHF interaction energy, E int

                    E int = E RHF −        EI ≈ E EFP
                                            0

                                       I

The EFP energy

                     E EFP =           EFP   ind
                                     ∆EIJ + Etotal
                               I>J

                      EFP   es     xr    ct
                    ∆EIJ = EIJ + (EIJ + EIJ )
 es
EIJ using distributed multipoles.
 ind
Etotal using induced dipoles based on distributed polarizabilities.

  • The internal geometry is fixed.
  • You need to construct the EFP’s before you can use them



                                                                      17 / 45
EFMO




       18 / 45
What is the EFMO method?
You start with FMO ...
  • Remove the ESP
Now you have N gas phase calculations.

Then you mix in some EFP
  • Use EFP to describe many-body interactions




                                                 19 / 45
EFMO RHF Energy
The two-body FMO2 method on a system of N fragments

           E EFMO =          0
                            EI −→ do MAKEFP
                        I
                       Resdim ≥RI,J
                                       0     0    0    ind
                   +                  EIJ − EI − EJ − EIJ
                            IJ
                       Resdim <RI,J
                                       es
                   +                  EIJ
                            IJ
                        ind
                   +   Etot ,

  • QM: Gas phase RHF (and MP2) calculations
  • MM: Interaction energies by Effective Fragment Potentials
          0
* obtain EI , q, µ and Ω and α from RHF via a fake MAKEFP run.

                                                                 20 / 45
A couple of pictures to help




                               21 / 45
A couple of pictures to help




                               22 / 45
Correlation in EFMO
Correlation as in FMO

                        E = E EFMO + E COR .

Here E COR is
                N            RI,J <Rcor
     E COR =         COR
                    EI   +                 COR   COR
                                          EIJ − EI      COR
                                                     − EJ   .
                I               IJ




                                                                23 / 45
EFMO vs. EFP vs. FMO
EFMO vs. EFP
  • EFMO energy includes internal energy, i.e. total energy can be
    obtained.
  • Short range interactions are computed using QM.
we assume E ex and E ct are negligible when RI,J > Resdim .

EFMO vs. FMO
  • No ESP, i.e. one SCC iteration.
  • Many-body interactions are entirely classical.


General EFMO considerations
  • Calculation of classical parameters on-the-fly.
  • Every EFMO calculation requires re-evaluation of EFP
    parameters.

                                                                     24 / 45
Rigorous Analysis of Small Water Clusters
 • Water trimer: Estimate lower bound to energy error
 • Water pentamer: Estimate upper bound to energy error




                                                          25 / 45
Rigorous Analysis of Small Water Trimer
Kitaura-Morokuma energy analysis

              ∆3 E int     6-31G(d)        6-31++G(d)
                         -1.9 kcal/mol   -1.45 kcal/mol

Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX




                                                          26 / 45
Rigorous Analysis of Small Water Trimer
Kitaura-Morokuma energy analysis

              ∆3 E int     6-31G(d)          6-31++G(d)
                         -1.9 kcal/mol     -1.45 kcal/mol

Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX


            ∆3 E ind         6-31G(d)          6-31++G(d)
                           -0.9 kcal/mol     -1.67 kcal/mol
            EFMO error      1.0 kcal/mol     -0.22 kcal/mol




                                                              26 / 45
Rigorous Analysis of Small Water Trimer
Kitaura-Morokuma energy analysis

              ∆3 E int     6-31G(d)          6-31++G(d)
                         -1.9 kcal/mol     -1.45 kcal/mol

Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX


            ∆3 E ind         6-31G(d)          6-31++G(d)
                           -0.9 kcal/mol     -1.67 kcal/mol
            EFMO error      1.0 kcal/mol     -0.22 kcal/mol




                                                              26 / 45
Rigorous Analysis of Small Water Trimer
Kitaura-Morokuma energy analysis

              ∆3 E int     6-31G(d)          6-31++G(d)
                         -1.9 kcal/mol     -1.45 kcal/mol

Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX


            ∆3 E ind         6-31G(d)          6-31++G(d)
                           -0.9 kcal/mol     -1.67 kcal/mol
            EFMO error      1.0 kcal/mol     -0.22 kcal/mol

6-31G(d):
  • Lower bound to the error in energy is ≈ 0.33 kcal/mol/HB
6-31++G(d):
  • Lower bound to the error in energy is ≈ -0.07 kcal/mol/HB



                                                                26 / 45
Rigorous Analysis of Small Water Pentamer
Kitaura-Morokuma energy analysis

             ∆n E int      6-31G(d)        6-31++G(d)
                        -6.10 kcal/mol   -5.14 kcal/mol

Many-body terms ∆n E ind +∆n E EX + ∆n E CT + ∆n E MIX




                                                          27 / 45
Rigorous Analysis of Small Water Pentamer
Kitaura-Morokuma energy analysis

             ∆n E int      6-31G(d)          6-31++G(d)
                        -6.10 kcal/mol     -5.14 kcal/mol

Many-body terms ∆n E ind +∆n E EX + ∆n E CT + ∆n E MIX


           ∆n E ind          6-31G(d)          6-31++G(d)
                          -1.97 kcal/mol     -3.68 kcal/mol
           EFMO error     -4.13 kcal/mol     -1.46 kcal/mol




                                                              27 / 45
Rigorous Analysis of Small Water Pentamer
Kitaura-Morokuma energy analysis

              ∆n E int      6-31G(d)          6-31++G(d)
                         -6.10 kcal/mol     -5.14 kcal/mol

Many-body terms ∆n E ind +∆n E EX + ∆n E CT + ∆n E MIX


           ∆n E ind           6-31G(d)          6-31++G(d)
                           -1.97 kcal/mol     -3.68 kcal/mol
           EFMO error      -4.13 kcal/mol     -1.46 kcal/mol

6-31G(d):
  • Upper bound to the error in energy is ≈ 1.03 kcal/mol/HB
6-31++G(d):
  • Upper bound to the error in energy is ≈ 0.37 kcal/mol/HB



                                                               27 / 45
Rigorous analysis of Small Water Clusters
6-31G(d):
  • Lower bound to the error in energy is ≈ 0.33 kcal/mol/HB
  • Upper bound to the error in energy is ≈ 1.03 kcal/mol/HB


6-31++G(d):
  • Lower bound to the error in energy is ≈ -0.07 kcal/mol/HB
  • Upper bound to the error in energy is ≈ 0.37 kcal/mol/HB




                                                                28 / 45
20 water molecule clusters

6-31G(d)            ∆E [kcal/mol/HB]   [kcal/mol]   Resdim = 2.0
             EFMO        0.53             15.8
             FMO2        -0.39           -11.6
6-31++G(d)
             EFMO        -0.08            -2.5
             FMO2        -0.76           -21.8




                                                                   29 / 45
EFMO Gradient

          ∂E EFMO              ∂ 0
                  =              E
            ∂xI               ∂xI I
                         I
                        RI,J ≤Rcut
                                       ∂    0     ∂ ind
                    +                     ∆EIJ −    E
                                      ∂xI        ∂xI IJ
                             I>J
                        RI,J >Rcut
                                      ∂ es   ∂ ind       M
                    +                   E +    E      + TxI
                                     ∂xI IJ ∂xI total
                             I>J

TM is the contribution to the gradient on atom I due to torques
  I
arising from nearby atoms.




                                                                  30 / 45
EFMO Gradient
 • For water clusters,       EFMO
                         XI Ea
                                       EFMO
                                    − En    ≈ 10−4 Hartree / Bohr




                                                                    31 / 45
EFMO Gradient
 • For water clusters,       EFMO
                         XI Ea
                                       EFMO
                                    − En    ≈ 10−4 Hartree / Bohr




                 "Those are not good gradients."




                                                                    31 / 45
Wait until you see the covalently bonded systems then.


                                                         32 / 45
EFMO for Covalent Systems
Covalent systems pose a problem in EFMO because ...
 • ... Inherent close (and even overlapping) electrostatics.
 • ... Inherent close position of polarizable points and nearby
   electrostatics.




                                                                  33 / 45
Back to the drawing board




    a)                      b)                 c)
    H                H           H                          H
H                           H
         C   C                       C5   +   C1    C

    H                H                                      H
                 H               H                      H




                                                                34 / 45
Back to the drawing board
 • 1) The frozen orbital (during the SCF) is allowed to mix during
   Foster-Boys localization.




                                                                     35 / 45
Back to the drawing board
 • 1) The frozen orbital (during the SCF) is allowed to mix during
   Foster-Boys localization.
     • 1) Crap. Errors ≈ 50 kcal/mol. FMO2: ≈ 5 kcal/mol




                                                                     35 / 45
Back to the drawing board
 • 1) The frozen orbital (during the SCF) is allowed to mix during
   Foster-Boys localization.
      • 1) Crap. Errors ≈ 50 kcal/mol. FMO2: ≈ 5 kcal/mol
 • 2) The localized orbital is kept frozen, i.e. as it is during the SCF.




                                                                            35 / 45
Back to the drawing board
 • 1) The frozen orbital (during the SCF) is allowed to mix during
   Foster-Boys localization.
      • 1) Crap. Errors ≈ 50 kcal/mol. FMO2: ≈ 5 kcal/mol
 • 2) The localized orbital is kept frozen, i.e. as it is during the SCF.
      • 2) Works, Errors grows with system size and are on-par with
        FMO2. Requires much more screening.




                                                                            35 / 45
Energies for Conformers of Polypeptides

      k(R, α, β) = 1 − exp −                                  αβ|R|2      1+         αβ|R|2
                                                          N
                                                  1
                                    AM,X =                         M    X
                                                                  EI − EI .
                                                  N
                                                          I


                                    Peptide MAD for EFMO/2 vs. Screening Parameter
                              12


                              10
         AEFMO,X [kcal/mol]




                              8


                              6
                                                                                P1(RHF)
                                                                                P1(MP2)
                                                                                P2(RHF)
                              4                                                 P2(MP2)
                                                                                P3(RHF)
                                                                                P3(MP2)
                              2
                              0.1       0.2         0.3            0.4    0.5             0.6
                                                               
                                                                                                36 / 45
Energies for Conformers of Polypeptides

      k(R, α, β) = 1 − exp −                          αβ|R|2       1+           αβ|R|2
                                                 N
                                            1
                               AM,X =                       M    X
                                                           EI − EI .
                                            N
                                                  I


                                 Peptide MAD for 2 Residues per Fragment
                           8
                               FMO2-RHF/HOP
                           7   FMO2-MP2/HOP
                               FMO2-RHF/AFO
                           6   FMO2-MP2/AFO
                               EFMO-RHF
                           5   EFMO-MP2
         AM,X [kcal/mol]




                           4

                           3

                           2

                           1

                           0   P1                     P2                   P3

                                                                                         37 / 45
Energies for Proteins

Table: Energy Error of EFMO and FMO2/AFO compared to ab initio
calculations on proteins using two residues per fragment.

                      Nres        EFMO       FMO2/AFO
                              Rcut = 2.0     Rcut = 2.0
                             RHF     MP2     RHF    MP2
             1L2Y      20      3.2    -4.3    1.7    6.4
             1UAO      10      1.8     1.5    0.4    1.4

  • Timings: 5 times faster than FMO2.
  • Requires lots of screening.




                                                                 38 / 45
Back to the drawing board
 • The backbone is the main problem.
 • Errors around 10−3 (10−4 ) Hartree / Bohr




 • Timings: 1.5 times faster than FMO2-MP2




                                               39 / 45
Timings

                                            Gain-Factor in CPU walltime for increasing CPU count
                                   40


                                   35


                                   30
          Gain-Factor in CPU walltime




                                   25


                                   20


                                    15


                                    10


                                        5

                                             5      10      15         20      25   30     35      40
                                                                 Total CPU count


                                                                                                        40 / 45
Summary
 • Successful merger of the FMO and EFP method
 • For molecular clusters, it performer pretty good.
 • For systems with covalent bonds, work is needed.
 • Faster than FMO2, roughly same accuracy.




                                                       41 / 45
Outlook
 • EFMO-PCM (meeting with Hui Li tomorrow)
 • EFMO QM/MM (Based on FMO/FD)
 • More EFP, less QM (Spencer Pruitt)




                                             42 / 45
Acknowledgements
Jan H. Jensen
Dmitri G. Fedorov

Bad Boys of Quantum Chemistry:
Anders Christensen
Mikael W. Ibsen (FragIt)
Luca De Vico (FragIt)
Kasper Thofte


$$ - Insilico Rational Engineering of Novel Enzymes (IRENE)




                                                              43 / 45
Thank you for your attention




          proteinsandwavefunctions.blogspot.com




                                                  44 / 45
Gradient Contribution

                       K            dwA = −dum − dvA
                                      m
                                             A
                                                   m

                             m        m                    m
      J                    duA = wA (τA · vA ) + uA × wA (τA · wA )
                             m         m                 m
      r
                           dvA = −wA (τA · uA )+vA ×wA (τA · wA )
      1

                  r2
duI
            dvI

uI
       vI
I     dwI




                                                                      45 / 45

Contenu connexe

Tendances

Coherent feedback formulation of a continuous quantum error correction protocol
Coherent feedback formulation of a continuous quantum error correction protocolCoherent feedback formulation of a continuous quantum error correction protocol
Coherent feedback formulation of a continuous quantum error correction protocolhendrai
 
Methods available in WIEN2k for the treatment of exchange and correlation ef...
Methods available in WIEN2k for the treatment  of exchange and correlation ef...Methods available in WIEN2k for the treatment  of exchange and correlation ef...
Methods available in WIEN2k for the treatment of exchange and correlation ef...ABDERRAHMANE REGGAD
 
Neutral Electronic Excitations: a Many-body approach to the optical absorptio...
Neutral Electronic Excitations: a Many-body approach to the optical absorptio...Neutral Electronic Excitations: a Many-body approach to the optical absorptio...
Neutral Electronic Excitations: a Many-body approach to the optical absorptio...Claudio Attaccalite
 
Bag of Pursuits and Neural Gas for Improved Sparse Codin
Bag of Pursuits and Neural Gas for Improved Sparse CodinBag of Pursuits and Neural Gas for Improved Sparse Codin
Bag of Pursuits and Neural Gas for Improved Sparse CodinKarlos Svoboda
 
Tele4653 l6
Tele4653 l6Tele4653 l6
Tele4653 l6Vin Voro
 
Omiros' talk on the Bernoulli factory problem
Omiros' talk on the  Bernoulli factory problemOmiros' talk on the  Bernoulli factory problem
Omiros' talk on the Bernoulli factory problemBigMC
 
Bayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal modelsBayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal modelskhbrodersen
 
Recent developments for the quantum chemical investigation of molecular syste...
Recent developments for the quantum chemical investigation of molecular syste...Recent developments for the quantum chemical investigation of molecular syste...
Recent developments for the quantum chemical investigation of molecular syste...Stephan Irle
 
Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010
Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010
Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010Colm Connaughton
 
Characteristics features, economical aspects and environmental
Characteristics features, economical aspects and environmentalCharacteristics features, economical aspects and environmental
Characteristics features, economical aspects and environmentalAlexander Decker
 
Introduction to Quantum Monte Carlo
Introduction to Quantum Monte CarloIntroduction to Quantum Monte Carlo
Introduction to Quantum Monte CarloClaudio Attaccalite
 
Cluster-cluster aggregation with (complete) collisional fragmentation
Cluster-cluster aggregation with (complete) collisional fragmentationCluster-cluster aggregation with (complete) collisional fragmentation
Cluster-cluster aggregation with (complete) collisional fragmentationColm Connaughton
 
Munich07 Foils
Munich07 FoilsMunich07 Foils
Munich07 FoilsAntonini
 
Aerospace Engineering Seminar Series
Aerospace Engineering Seminar SeriesAerospace Engineering Seminar Series
Aerospace Engineering Seminar Seriestrumanellis
 
Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...
Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...
Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...Stephan Irle
 
Many-body Green functions theory for electronic and optical properties of or...
Many-body Green functions theory for  electronic and optical properties of or...Many-body Green functions theory for  electronic and optical properties of or...
Many-body Green functions theory for electronic and optical properties of or...Claudio Attaccalite
 
Master's Thesis Presentation 2013/02/19
Master's Thesis Presentation 2013/02/19Master's Thesis Presentation 2013/02/19
Master's Thesis Presentation 2013/02/19Yuhei Iwata
 
What can we learn from molecular dynamics simulations of carbon nanotube and ...
What can we learn from molecular dynamics simulations of carbon nanotube and ...What can we learn from molecular dynamics simulations of carbon nanotube and ...
What can we learn from molecular dynamics simulations of carbon nanotube and ...Stephan Irle
 
Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...
Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...
Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...Kyle Poe
 

Tendances (20)

Coherent feedback formulation of a continuous quantum error correction protocol
Coherent feedback formulation of a continuous quantum error correction protocolCoherent feedback formulation of a continuous quantum error correction protocol
Coherent feedback formulation of a continuous quantum error correction protocol
 
Methods available in WIEN2k for the treatment of exchange and correlation ef...
Methods available in WIEN2k for the treatment  of exchange and correlation ef...Methods available in WIEN2k for the treatment  of exchange and correlation ef...
Methods available in WIEN2k for the treatment of exchange and correlation ef...
 
Neutral Electronic Excitations: a Many-body approach to the optical absorptio...
Neutral Electronic Excitations: a Many-body approach to the optical absorptio...Neutral Electronic Excitations: a Many-body approach to the optical absorptio...
Neutral Electronic Excitations: a Many-body approach to the optical absorptio...
 
Bag of Pursuits and Neural Gas for Improved Sparse Codin
Bag of Pursuits and Neural Gas for Improved Sparse CodinBag of Pursuits and Neural Gas for Improved Sparse Codin
Bag of Pursuits and Neural Gas for Improved Sparse Codin
 
Tele4653 l6
Tele4653 l6Tele4653 l6
Tele4653 l6
 
Omiros' talk on the Bernoulli factory problem
Omiros' talk on the  Bernoulli factory problemOmiros' talk on the  Bernoulli factory problem
Omiros' talk on the Bernoulli factory problem
 
Bayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal modelsBayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal models
 
Recent developments for the quantum chemical investigation of molecular syste...
Recent developments for the quantum chemical investigation of molecular syste...Recent developments for the quantum chemical investigation of molecular syste...
Recent developments for the quantum chemical investigation of molecular syste...
 
Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010
Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010
Weak Isotropic three-wave turbulence, Fondation des Treilles, July 16 2010
 
Characteristics features, economical aspects and environmental
Characteristics features, economical aspects and environmentalCharacteristics features, economical aspects and environmental
Characteristics features, economical aspects and environmental
 
Introduction to Quantum Monte Carlo
Introduction to Quantum Monte CarloIntroduction to Quantum Monte Carlo
Introduction to Quantum Monte Carlo
 
Cluster-cluster aggregation with (complete) collisional fragmentation
Cluster-cluster aggregation with (complete) collisional fragmentationCluster-cluster aggregation with (complete) collisional fragmentation
Cluster-cluster aggregation with (complete) collisional fragmentation
 
Munich07 Foils
Munich07 FoilsMunich07 Foils
Munich07 Foils
 
Aerospace Engineering Seminar Series
Aerospace Engineering Seminar SeriesAerospace Engineering Seminar Series
Aerospace Engineering Seminar Series
 
Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...
Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...
Density-Functional Tight-Binding (DFTB) as fast approximate DFT method - An i...
 
Many-body Green functions theory for electronic and optical properties of or...
Many-body Green functions theory for  electronic and optical properties of or...Many-body Green functions theory for  electronic and optical properties of or...
Many-body Green functions theory for electronic and optical properties of or...
 
Master's Thesis Presentation 2013/02/19
Master's Thesis Presentation 2013/02/19Master's Thesis Presentation 2013/02/19
Master's Thesis Presentation 2013/02/19
 
What can we learn from molecular dynamics simulations of carbon nanotube and ...
What can we learn from molecular dynamics simulations of carbon nanotube and ...What can we learn from molecular dynamics simulations of carbon nanotube and ...
What can we learn from molecular dynamics simulations of carbon nanotube and ...
 
Introduction to DFT Part 2
Introduction to DFT Part 2Introduction to DFT Part 2
Introduction to DFT Part 2
 
Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...
Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...
Investigation of Steady-State Carrier Distribution in CNT Porins in Neuronal ...
 

Similaire à The Effective Fragment Molecular Orbital Method

Rank awarealgs small11
Rank awarealgs small11Rank awarealgs small11
Rank awarealgs small11Jules Esp
 
Rank awarealgs small11
Rank awarealgs small11Rank awarealgs small11
Rank awarealgs small11Jules Esp
 
Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods Pierre Jacob
 
Recent developments on unbiased MCMC
Recent developments on unbiased MCMCRecent developments on unbiased MCMC
Recent developments on unbiased MCMCPierre Jacob
 
Unbiased MCMC with couplings
Unbiased MCMC with couplingsUnbiased MCMC with couplings
Unbiased MCMC with couplingsPierre Jacob
 
Testing for mixtures by seeking components
Testing for mixtures by seeking componentsTesting for mixtures by seeking components
Testing for mixtures by seeking componentsChristian Robert
 
CVPR2010: Advanced ITinCVPR in a Nutshell: part 6: Mixtures
CVPR2010: Advanced ITinCVPR in a Nutshell: part 6: MixturesCVPR2010: Advanced ITinCVPR in a Nutshell: part 6: Mixtures
CVPR2010: Advanced ITinCVPR in a Nutshell: part 6: Mixtureszukun
 
Intro probability 4
Intro probability 4Intro probability 4
Intro probability 4Phong Vo
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...ijceronline
 
Simulation of Magnetically Confined Plasma for Etch Applications
Simulation of Magnetically Confined Plasma for Etch ApplicationsSimulation of Magnetically Confined Plasma for Etch Applications
Simulation of Magnetically Confined Plasma for Etch Applicationsvvk0
 
Dsp U Lec10 DFT And FFT
Dsp U   Lec10  DFT And  FFTDsp U   Lec10  DFT And  FFT
Dsp U Lec10 DFT And FFTtaha25
 
Unbiased Hamiltonian Monte Carlo
Unbiased Hamiltonian Monte CarloUnbiased Hamiltonian Monte Carlo
Unbiased Hamiltonian Monte CarloJeremyHeng10
 
Mit2 092 f09_lec23
Mit2 092 f09_lec23Mit2 092 f09_lec23
Mit2 092 f09_lec23Rahman Hakim
 
Chapter 9 computation of the dft
Chapter 9 computation of the dftChapter 9 computation of the dft
Chapter 9 computation of the dftmikeproud
 
Unbiased Markov chain Monte Carlo
Unbiased Markov chain Monte CarloUnbiased Markov chain Monte Carlo
Unbiased Markov chain Monte CarloJeremyHeng10
 

Similaire à The Effective Fragment Molecular Orbital Method (20)

Dft
DftDft
Dft
 
Rank awarealgs small11
Rank awarealgs small11Rank awarealgs small11
Rank awarealgs small11
 
Rank awarealgs small11
Rank awarealgs small11Rank awarealgs small11
Rank awarealgs small11
 
Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods
 
Recent developments on unbiased MCMC
Recent developments on unbiased MCMCRecent developments on unbiased MCMC
Recent developments on unbiased MCMC
 
Unbiased MCMC with couplings
Unbiased MCMC with couplingsUnbiased MCMC with couplings
Unbiased MCMC with couplings
 
Testing for mixtures by seeking components
Testing for mixtures by seeking componentsTesting for mixtures by seeking components
Testing for mixtures by seeking components
 
CVPR2010: Advanced ITinCVPR in a Nutshell: part 6: Mixtures
CVPR2010: Advanced ITinCVPR in a Nutshell: part 6: MixturesCVPR2010: Advanced ITinCVPR in a Nutshell: part 6: Mixtures
CVPR2010: Advanced ITinCVPR in a Nutshell: part 6: Mixtures
 
Intro probability 4
Intro probability 4Intro probability 4
Intro probability 4
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
 
Simulation of Magnetically Confined Plasma for Etch Applications
Simulation of Magnetically Confined Plasma for Etch ApplicationsSimulation of Magnetically Confined Plasma for Etch Applications
Simulation of Magnetically Confined Plasma for Etch Applications
 
Md2521102111
Md2521102111Md2521102111
Md2521102111
 
Quantum chaos of generic systems - Marko Robnik
Quantum chaos of generic systems - Marko RobnikQuantum chaos of generic systems - Marko Robnik
Quantum chaos of generic systems - Marko Robnik
 
Dsp U Lec10 DFT And FFT
Dsp U   Lec10  DFT And  FFTDsp U   Lec10  DFT And  FFT
Dsp U Lec10 DFT And FFT
 
SSA slides
SSA slidesSSA slides
SSA slides
 
Unbiased Hamiltonian Monte Carlo
Unbiased Hamiltonian Monte CarloUnbiased Hamiltonian Monte Carlo
Unbiased Hamiltonian Monte Carlo
 
Mit2 092 f09_lec23
Mit2 092 f09_lec23Mit2 092 f09_lec23
Mit2 092 f09_lec23
 
Chapter 9 computation of the dft
Chapter 9 computation of the dftChapter 9 computation of the dft
Chapter 9 computation of the dft
 
Pairing scott
Pairing scottPairing scott
Pairing scott
 
Unbiased Markov chain Monte Carlo
Unbiased Markov chain Monte CarloUnbiased Markov chain Monte Carlo
Unbiased Markov chain Monte Carlo
 

Dernier

The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Disha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfDisha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfchloefrazer622
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Disha Kariya
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfsanyamsingh5019
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformChameera Dedduwage
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxSayali Powar
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introductionMaksud Ahmed
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
9548086042 for call girls in Indira Nagar with room service
9548086042  for call girls in Indira Nagar  with room service9548086042  for call girls in Indira Nagar  with room service
9548086042 for call girls in Indira Nagar with room servicediscovermytutordmt
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAssociation for Project Management
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docxPoojaSen20
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDThiyagu K
 

Dernier (20)

The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Disha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfDisha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdf
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdf
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
9548086042 for call girls in Indira Nagar with room service
9548086042  for call girls in Indira Nagar  with room service9548086042  for call girls in Indira Nagar  with room service
9548086042 for call girls in Indira Nagar with room service
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across Sectors
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docx
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SD
 

The Effective Fragment Molecular Orbital Method

  • 1. The Effective Fragment Molecular Orbital Method Casper Steinmann1 Dmitri G. Fedorov2 Jan H. Jensen1 1 Department of Chemistry, University of Copenhagen, Denmark 2 AIST, Umezono, Tsukuba, Ibaraki, Japan September 14th, 2011
  • 2. Outline 1 Motivation 2 The Fragment Molecular Orbital Method 3 The Effective Fragment Potential Method 4 The Effective Fragment Molecular Orbital Method 5 Results 2 / 45
  • 3. Motivation Treatment of Very Large Systems • We want quantum mechanics (QM) to do chemistry. • We want the speed of force-fields (MM) to treat large systems. Usually done via hybrid QM/MM methods We propose a fragment based, on-the-fly parameterless polarizable force-field. • A merger between FMO and EFP. • FMO: Faster FMO by the use of classical approximations • EFP: Flexible EFP’s. 3 / 45
  • 4. FMO 4 / 45
  • 5. FMO2 Method The two-body FMO2 method on a system of N fragments N N FMO E = EI + (EIJ − EI − EJ ), I I>J with fragment energies obtained as ˆ EX = ΨX |HX |ΨX where   all all ˆ HX = − 1 2 i + −ZC + 1 + ρK (r ) dr  2 |ri − RC | j>i |ri − rj | |ri − r | i∈X C K∈X NR + EX 5 / 45
  • 6. FMO2 Method Using a single Slater determinant to represent |ΨX , we obtain ˆ f X φX = X X k k φk . Here, ˆ ˆ ˆ ˜ f X = hX + V X + g X = hX + g X , ˆ ˆ where all all ˆ −ZC ρK (r ) VX = + dr |r1 − RC | |r1 − r | C∈X K∈X 6 / 45
  • 7. FMO2 Method expanding our molecular orbitals φ in a basis set φX = k X Cµk χµ µ we obtain, the Fock matrix elements of V X all all ˆ Vµν = µ|V X |ν = X uK + µν K υµν K∈X K∈X which are given as −ZC uK = µ| µν |ν , |r1 − RC | C∈K and K K υµν = Dλσ (µν|λσ). λσ∈K 7 / 45
  • 8. FMO approximations FMO2 formally scales as O(N 2 ), wants to be O(N ). We need distance-based approximations: |ri − rj | RI,J = min vdw vdw i∈I,j∈J ri + rj • 1) Approximate ESP (Resppc ): QC uK = µν K Dλσ (µν|λσ) → µ| |ν |r1 − RC | λσ∈K C∈K • 2) Approximate dimer interaction (Resdim ): EIJ ≈ EI +EJ +Tr DI uJ +Tr DJ uI + I J Dµν Dλσ (µν|λσ) Usually, Resdim and Resppc are equal (2.0) 8 / 45
  • 9. A couple of pictures to help 9 / 45
  • 10. A couple of pictures to help 10 / 45
  • 11. Covalent Bonds in FMO In FMO, bonds are detatched instead of capped. BDA|-BAA 11 / 45
  • 12. HOP vs. AFO Two methods in FMO: hybrid orbital projection (HOP) and adaptive frozen orbitals (AFO) Both modifies the Fock-operator ˆ ˜ f X = hX + g X + ˆ Bk |φ φ| k • HOP: External model system generated and used • AFO: Generated on the fly automatically: 12 / 45
  • 13. AFO 13 / 45
  • 14. AFO 14 / 45
  • 15. AFO We shall return to AFO later ... 15 / 45
  • 16. EFP 16 / 45
  • 17. EFP EFP is an approximation to the RHF interaction energy, E int E int = E RHF − EI ≈ E EFP 0 I The EFP energy E EFP = EFP ind ∆EIJ + Etotal I>J EFP es xr ct ∆EIJ = EIJ + (EIJ + EIJ ) es EIJ using distributed multipoles. ind Etotal using induced dipoles based on distributed polarizabilities. 17 / 45
  • 18. EFP EFP is an approximation to the RHF interaction energy, E int E int = E RHF − EI ≈ E EFP 0 I The EFP energy E EFP = EFP ind ∆EIJ + Etotal I>J EFP es xr ct ∆EIJ = EIJ + (EIJ + EIJ ) es EIJ using distributed multipoles. ind Etotal using induced dipoles based on distributed polarizabilities. • The internal geometry is fixed. 17 / 45
  • 19. EFP EFP is an approximation to the RHF interaction energy, E int E int = E RHF − EI ≈ E EFP 0 I The EFP energy E EFP = EFP ind ∆EIJ + Etotal I>J EFP es xr ct ∆EIJ = EIJ + (EIJ + EIJ ) es EIJ using distributed multipoles. ind Etotal using induced dipoles based on distributed polarizabilities. • The internal geometry is fixed. • You need to construct the EFP’s before you can use them 17 / 45
  • 20. EFMO 18 / 45
  • 21. What is the EFMO method? You start with FMO ... • Remove the ESP Now you have N gas phase calculations. Then you mix in some EFP • Use EFP to describe many-body interactions 19 / 45
  • 22. EFMO RHF Energy The two-body FMO2 method on a system of N fragments E EFMO = 0 EI −→ do MAKEFP I Resdim ≥RI,J 0 0 0 ind + EIJ − EI − EJ − EIJ IJ Resdim <RI,J es + EIJ IJ ind + Etot , • QM: Gas phase RHF (and MP2) calculations • MM: Interaction energies by Effective Fragment Potentials 0 * obtain EI , q, µ and Ω and α from RHF via a fake MAKEFP run. 20 / 45
  • 23. A couple of pictures to help 21 / 45
  • 24. A couple of pictures to help 22 / 45
  • 25. Correlation in EFMO Correlation as in FMO E = E EFMO + E COR . Here E COR is N RI,J <Rcor E COR = COR EI + COR COR EIJ − EI COR − EJ . I IJ 23 / 45
  • 26. EFMO vs. EFP vs. FMO EFMO vs. EFP • EFMO energy includes internal energy, i.e. total energy can be obtained. • Short range interactions are computed using QM. we assume E ex and E ct are negligible when RI,J > Resdim . EFMO vs. FMO • No ESP, i.e. one SCC iteration. • Many-body interactions are entirely classical. General EFMO considerations • Calculation of classical parameters on-the-fly. • Every EFMO calculation requires re-evaluation of EFP parameters. 24 / 45
  • 27. Rigorous Analysis of Small Water Clusters • Water trimer: Estimate lower bound to energy error • Water pentamer: Estimate upper bound to energy error 25 / 45
  • 28. Rigorous Analysis of Small Water Trimer Kitaura-Morokuma energy analysis ∆3 E int 6-31G(d) 6-31++G(d) -1.9 kcal/mol -1.45 kcal/mol Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX 26 / 45
  • 29. Rigorous Analysis of Small Water Trimer Kitaura-Morokuma energy analysis ∆3 E int 6-31G(d) 6-31++G(d) -1.9 kcal/mol -1.45 kcal/mol Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX ∆3 E ind 6-31G(d) 6-31++G(d) -0.9 kcal/mol -1.67 kcal/mol EFMO error 1.0 kcal/mol -0.22 kcal/mol 26 / 45
  • 30. Rigorous Analysis of Small Water Trimer Kitaura-Morokuma energy analysis ∆3 E int 6-31G(d) 6-31++G(d) -1.9 kcal/mol -1.45 kcal/mol Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX ∆3 E ind 6-31G(d) 6-31++G(d) -0.9 kcal/mol -1.67 kcal/mol EFMO error 1.0 kcal/mol -0.22 kcal/mol 26 / 45
  • 31. Rigorous Analysis of Small Water Trimer Kitaura-Morokuma energy analysis ∆3 E int 6-31G(d) 6-31++G(d) -1.9 kcal/mol -1.45 kcal/mol Many-body terms ∆3 E ind +∆3 E xr + ∆3 E ct + ∆3 E MIX ∆3 E ind 6-31G(d) 6-31++G(d) -0.9 kcal/mol -1.67 kcal/mol EFMO error 1.0 kcal/mol -0.22 kcal/mol 6-31G(d): • Lower bound to the error in energy is ≈ 0.33 kcal/mol/HB 6-31++G(d): • Lower bound to the error in energy is ≈ -0.07 kcal/mol/HB 26 / 45
  • 32. Rigorous Analysis of Small Water Pentamer Kitaura-Morokuma energy analysis ∆n E int 6-31G(d) 6-31++G(d) -6.10 kcal/mol -5.14 kcal/mol Many-body terms ∆n E ind +∆n E EX + ∆n E CT + ∆n E MIX 27 / 45
  • 33. Rigorous Analysis of Small Water Pentamer Kitaura-Morokuma energy analysis ∆n E int 6-31G(d) 6-31++G(d) -6.10 kcal/mol -5.14 kcal/mol Many-body terms ∆n E ind +∆n E EX + ∆n E CT + ∆n E MIX ∆n E ind 6-31G(d) 6-31++G(d) -1.97 kcal/mol -3.68 kcal/mol EFMO error -4.13 kcal/mol -1.46 kcal/mol 27 / 45
  • 34. Rigorous Analysis of Small Water Pentamer Kitaura-Morokuma energy analysis ∆n E int 6-31G(d) 6-31++G(d) -6.10 kcal/mol -5.14 kcal/mol Many-body terms ∆n E ind +∆n E EX + ∆n E CT + ∆n E MIX ∆n E ind 6-31G(d) 6-31++G(d) -1.97 kcal/mol -3.68 kcal/mol EFMO error -4.13 kcal/mol -1.46 kcal/mol 6-31G(d): • Upper bound to the error in energy is ≈ 1.03 kcal/mol/HB 6-31++G(d): • Upper bound to the error in energy is ≈ 0.37 kcal/mol/HB 27 / 45
  • 35. Rigorous analysis of Small Water Clusters 6-31G(d): • Lower bound to the error in energy is ≈ 0.33 kcal/mol/HB • Upper bound to the error in energy is ≈ 1.03 kcal/mol/HB 6-31++G(d): • Lower bound to the error in energy is ≈ -0.07 kcal/mol/HB • Upper bound to the error in energy is ≈ 0.37 kcal/mol/HB 28 / 45
  • 36. 20 water molecule clusters 6-31G(d) ∆E [kcal/mol/HB] [kcal/mol] Resdim = 2.0 EFMO 0.53 15.8 FMO2 -0.39 -11.6 6-31++G(d) EFMO -0.08 -2.5 FMO2 -0.76 -21.8 29 / 45
  • 37. EFMO Gradient ∂E EFMO ∂ 0 = E ∂xI ∂xI I I RI,J ≤Rcut ∂ 0 ∂ ind + ∆EIJ − E ∂xI ∂xI IJ I>J RI,J >Rcut ∂ es ∂ ind M + E + E + TxI ∂xI IJ ∂xI total I>J TM is the contribution to the gradient on atom I due to torques I arising from nearby atoms. 30 / 45
  • 38. EFMO Gradient • For water clusters, EFMO XI Ea EFMO − En ≈ 10−4 Hartree / Bohr 31 / 45
  • 39. EFMO Gradient • For water clusters, EFMO XI Ea EFMO − En ≈ 10−4 Hartree / Bohr "Those are not good gradients." 31 / 45
  • 40. Wait until you see the covalently bonded systems then. 32 / 45
  • 41. EFMO for Covalent Systems Covalent systems pose a problem in EFMO because ... • ... Inherent close (and even overlapping) electrostatics. • ... Inherent close position of polarizable points and nearby electrostatics. 33 / 45
  • 42. Back to the drawing board a) b) c) H H H H H H C C C5 + C1 C H H H H H H 34 / 45
  • 43. Back to the drawing board • 1) The frozen orbital (during the SCF) is allowed to mix during Foster-Boys localization. 35 / 45
  • 44. Back to the drawing board • 1) The frozen orbital (during the SCF) is allowed to mix during Foster-Boys localization. • 1) Crap. Errors ≈ 50 kcal/mol. FMO2: ≈ 5 kcal/mol 35 / 45
  • 45. Back to the drawing board • 1) The frozen orbital (during the SCF) is allowed to mix during Foster-Boys localization. • 1) Crap. Errors ≈ 50 kcal/mol. FMO2: ≈ 5 kcal/mol • 2) The localized orbital is kept frozen, i.e. as it is during the SCF. 35 / 45
  • 46. Back to the drawing board • 1) The frozen orbital (during the SCF) is allowed to mix during Foster-Boys localization. • 1) Crap. Errors ≈ 50 kcal/mol. FMO2: ≈ 5 kcal/mol • 2) The localized orbital is kept frozen, i.e. as it is during the SCF. • 2) Works, Errors grows with system size and are on-par with FMO2. Requires much more screening. 35 / 45
  • 47. Energies for Conformers of Polypeptides k(R, α, β) = 1 − exp − αβ|R|2 1+ αβ|R|2 N 1 AM,X = M X EI − EI . N I Peptide MAD for EFMO/2 vs. Screening Parameter 12 10 AEFMO,X [kcal/mol] 8 6 P1(RHF) P1(MP2) P2(RHF) 4 P2(MP2) P3(RHF) P3(MP2) 2 0.1 0.2 0.3 0.4 0.5 0.6   36 / 45
  • 48. Energies for Conformers of Polypeptides k(R, α, β) = 1 − exp − αβ|R|2 1+ αβ|R|2 N 1 AM,X = M X EI − EI . N I Peptide MAD for 2 Residues per Fragment 8 FMO2-RHF/HOP 7 FMO2-MP2/HOP FMO2-RHF/AFO 6 FMO2-MP2/AFO EFMO-RHF 5 EFMO-MP2 AM,X [kcal/mol] 4 3 2 1 0 P1 P2 P3 37 / 45
  • 49. Energies for Proteins Table: Energy Error of EFMO and FMO2/AFO compared to ab initio calculations on proteins using two residues per fragment. Nres EFMO FMO2/AFO Rcut = 2.0 Rcut = 2.0 RHF MP2 RHF MP2 1L2Y 20 3.2 -4.3 1.7 6.4 1UAO 10 1.8 1.5 0.4 1.4 • Timings: 5 times faster than FMO2. • Requires lots of screening. 38 / 45
  • 50. Back to the drawing board • The backbone is the main problem. • Errors around 10−3 (10−4 ) Hartree / Bohr • Timings: 1.5 times faster than FMO2-MP2 39 / 45
  • 51. Timings Gain-Factor in CPU walltime for increasing CPU count 40 35 30 Gain-Factor in CPU walltime 25 20 15 10 5 5 10 15 20 25 30 35 40 Total CPU count 40 / 45
  • 52. Summary • Successful merger of the FMO and EFP method • For molecular clusters, it performer pretty good. • For systems with covalent bonds, work is needed. • Faster than FMO2, roughly same accuracy. 41 / 45
  • 53. Outlook • EFMO-PCM (meeting with Hui Li tomorrow) • EFMO QM/MM (Based on FMO/FD) • More EFP, less QM (Spencer Pruitt) 42 / 45
  • 54. Acknowledgements Jan H. Jensen Dmitri G. Fedorov Bad Boys of Quantum Chemistry: Anders Christensen Mikael W. Ibsen (FragIt) Luca De Vico (FragIt) Kasper Thofte $$ - Insilico Rational Engineering of Novel Enzymes (IRENE) 43 / 45
  • 55. Thank you for your attention proteinsandwavefunctions.blogspot.com 44 / 45
  • 56. Gradient Contribution K dwA = −dum − dvA m A m m m m J duA = wA (τA · vA ) + uA × wA (τA · wA ) m m m r dvA = −wA (τA · uA )+vA ×wA (τA · wA ) 1 r2 duI dvI uI vI I dwI 45 / 45