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Derivative of any function f(x,y,z) :

Differential Calculus (revisited):. Derivative of any function f(x,y,z) :. Gradient of function f. Gradient of a function. Change in a scalar function f corresponding to a change in position dr.  f is a VECTOR. Geometrical interpretation of Gradient. Z. P. Q. dr. Y.

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Derivative of any function f(x,y,z) :

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  1. Differential Calculus (revisited): Derivative of any function f(x,y,z): Gradient of function f

  2. Gradient of a function Change in a scalar function f corresponding to a change in position dr  f is a VECTOR

  3. Geometrical interpretation of Gradient Z P Q dr Y change in f : X =0 => f  dr

  4. Z Q dr P Y X

  5. For a given |dr|, the change in scalar function f(x,y,z) is maximum when: => f is a vectoralong the direction of maximum rate of change of the function Magnitude: slope along this maximal direction

  6. If  f= 0 at some point (x0,y0,z0) => df = 0 for small displacements about the point (x0,y0,z0) (x0,y0,z0) is a stationary point of f(x,y,z)

  7. The Operator   is NOT a vector, but a VECTOR OPERATOR Satisfies: • Vector rules • Partial differentiation rules

  8.  can act: • On a scalar function f :f GRADIENT • On a vector function F as:.F DIVERGENCE • On a vector function F as: ×F CURL

  9. Divergence of a vector Divergence of a vector is a scalar. .F is a measure of how much the vector F spreads out (diverges) from the point in question.

  10. Physical interpretation of Divergence Flow of a compressible fluid: (x,y,z) -> density of the fluid at a point (x,y,z) v(x,y,z) -> velocity of the fluid at (x,y,z)

  11. Z G H C D dz E F dx Y A B dy X (rate of flow in)EFGH (rate of flow out)ABCD

  12. Net rate of flow out (along- x) Net rate of flow out through all pairs of surfaces (per unit time):

  13. Net rate of flow of the fluid per unit volume per unit time: DIVERGENCE

  14. Curl Curl of a vector is a vector ×F is a measure of how much the vector F “curls around” the point in question.

  15. Physical significance of Curl Circulation of a fluid around a loop: Y 3 2 4 1 X Circulation (1234)

  16. Circulation per unit area = ( × V )|z z-component of CURL

  17. Curvilinear coordinates: used to describe systems with symmetry. Spherical coordinates (r, , Ø)

  18. Cartesian coordinates in terms of spherical coordinates:

  19. Spherical coordinates in terms of Cartesian coordinates:

  20. Unit vectors in spherical coordinates Z r  Y  X

  21. Line element in spherical coordinates: Volume element in spherical coordinates:

  22. Area element in spherical coordinates: on a surface of a sphere (r const.) on a surface lying in xy-plane (const.)

  23. Gradient: Divergence:

  24. Curl:

  25. Fundamental theorem for gradient We know df = (f ).dl The total change in f in going from a(x1,y1,z1) to b(x2,y2,z2) along any path: Line integral of gradient of a function is given by the value of the function at the boundaries of the line.

  26. Corollary 1: Corollary 2:

  27. Field from Potential From the definition of potential: From the fundamental theorem of gradient: E = - V

  28. Electric Dipole Potential at a point due to dipole: z r  p y  x

  29. Electric Dipole E = - V Recall:

  30. Electric Dipole Using:

  31. Fundamental theorem for Divergence Gauss’ theorem, Green’s theorem The integral of divergence of a vector over a volume is equal to the value of the function over the closed surface that bounds the volume.

  32. Fundamental theorem for Curl Stokes’ theorem Integral of a curl of a vector over a surface is equal to the value of the function over the closed boundary that encloses the surface.

  33. THE DIRAC DELTA FUNCTION Recall:

  34. The volume integral of F:

  35. Surface integral of F over a sphere of radius R: From divergence theorem:

  36. From calculation of Divergence: By using the Divergence theorem:

  37. Note: as r  0; F  ∞ And integral of F over any volume containing the point r = 0

  38. The Dirac Delta Function (in one dimension)  Can be pictured as an infinitely high, infinitesimally narrow “spike” with area 1

  39. The Dirac Delta Function (x) NOT a Function But a Generalized Function OR distribution Properties:

  40. The Dirac Delta Function (in one dimension) Shifting the spike from 0 to a;

  41. The Dirac Delta Function (in one dimension) Properties:

  42. The Dirac Delta Function (in three dimension)

  43. The Paradox of Divergence of From calculation of Divergence: By using the Divergence theorem:

  44. So now we can write: Such that:

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