Difference between revisions of "Useful math"

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(Basic math: added links)
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* ([https://en.wikipedia.org/wiki/Laplace_transform Laplace transformations] – more used in electrical system engineering)  
 
* ([https://en.wikipedia.org/wiki/Laplace_transform Laplace transformations] – more used in electrical system engineering)  
 
* [https://en.wikipedia.org/wiki/Convolution Convolution (aka folding)]
 
* [https://en.wikipedia.org/wiki/Convolution Convolution (aka folding)]
* [https://en.wikipedia.org/wiki/Linear_form Linear functional]
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* [https://en.wikipedia.org/wiki/Linear_form Linear functional] – [https://en.wikipedia.org/wiki/Adjoint_functors Adjoint_functors]
 
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* All sorts of tricks an hackery with matrix math – selfadjunctness & co
 
* All sorts of tricks an hackery with matrix math – selfadjunctness & co

Revision as of 18:54, 2 June 2021

This page is about useful math in the wide context of atomically precise manufacturing.


Specific application areas include:


  • friction and dissipation
  • thermally driven self assembly

  • quantum chemistry
  • molecular modelling

  • 3d modelling
  • differential geometry for larger scale gears
  • ...

Thermodynamics and statistical physics

Summing up over all the possible microstate configurations of a system.
Thereby deriving a partitioning function – (some exotic math involved in there)
From this partitioning function then thermodynamic laws can be re-derived and explained.
These thermodynamic laws can be (and historically have been) formerly phemomenologically derived.
Meaning derived from their effects not their causes.

Related:

  • Thermodynamic potentials and associated statistical ensembles
  • Transformation between the potentials – Legendre Transformation
  • Conjugated pairs of valuables (extrinsic and intrinsic) – a pairs product always gives the physical unit of energy

General note on solid state physics

Prevalent are long chains of simplifications by approximations that pile up and up and up.
Changing the application area of the models hugely may requires reevaluation of all these approximation steps.
Given that the chains of approximation are not formalized on computers (state 2021) this is difficult error prone and tedious.

Also: Following all the derivations from the lowermost assumptions
it becomes very evident that energy is a relative concept. (Not talking about relativity theory here).

Math for modelling with atomistic detail

From first principles – e.g. for quantum chemistry

The exact solutions of the Schrödinger equation for the hydrogen problem.
Using the property of it being a "separable partial differential equation"

  • Laguerre polynomials for the radial part
  • Spherical harmonics for the angular parts

The major reason why exact solutions are way off for other elements than hydrogen
(and the less relevant highly charged one electron ions) is the shielding effect of the inner electrons.
To get good approximations for orbitals it is necessary to do iterative self-consistent-field methods.
The exact hydrogen solutions can serve as a good initial guess starting point.

Also Useful in getting good starting points:

  • the Grahm Schmidt orthogonalization method
  • composing Gaussian distributions as base functions for orbitals
  • the Hartree-Fock method – helps filling up states consistent with pauli exclusion rules – antideterminant for fermionic states

Related: Density functional theory.

Phenomenological models – e.g. for molecular modelling

  • Lennard Jones potential – and similar ones – good for molecular dynamics simulations
  • Hund's rule of maximum multiplicity – not particularly useful in the context of chemically bond atoms

Misc

Derivation of London dispersion forces from first principles by
integrating over virtual electron states (related: virtual particles, feynman graphs) ...
Related: Born–Oppenheimer approximation – and its deceiving pseudo convergence (to check)

Generally useful math tools

Hamiltonian mechanics finds heavy use in in quantummechaincs.
Interestingly in gem-gum systems at slightly larger scales things behave very classically.
Lagrangian mechanics might be useful there.

Related: principle of least action and variational principle (and calculus)

Basic math




  • All sorts of tricks an hackery with matrix math – selfadjunctness & co

Useful for analysis of selfassembly and dissipation

Important for non-qunatum mechanical molecular dynamics simulations

Tools to set up the right initial distribution of particle motions:

Thermodynamics

Statistical ensemble (mathematical physics) (overcounting) (list of ensembles):

For more precise quantum mechanical calculations

  • Absolute square – to the the density from the wave function
  • Bra-ket notation – abstracting math from positional 3D space – treating positional space and impulse equally

  • Schrödinger equation – and exact exact solutions – and iterative methods
  • (Helium atom as the simplemost three body case and first case where there is electron shielding)
  • Approximations: Slater type orbital and Gaussian_orbital
  • "overlap integrals" – e.g. Orbital overlap – projections in vector spaces with functions as base vectors
  • (The crazy math symbol of an integral with a sum drawn over for quantum systems that contain both continuous band and discrete energy states)
  • Gram–Schmidt process – for getting a reasonable orthonormal basis as a starting point




Maybe more relevant for high energy free particle physics






  • Nöther's theorem – linking conserved quantities to invariance under transformations (aka symmetries) – related: generating functions => unusual math

Most fundamental concepts

  • causation vs correlation
  • necessity vs sufficiency (if and only if aka iff)
  • convergence ...

Useful algorithms in computer graphics

  • GJK algorithm (collision detection)
  • ...

Notes

  • Not to confuse "Holomorphic function" and "Holonomic constraints"