Introduction to Mathematical Physics/Differentials and derivatives

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Definitions

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The notion of derivative is less general and is usually defined for function for a part of R to a vectorial space as follows: Template:IMP/defn We will however see in this appendix some generalization of derivatives.

Derivatives in the distribution's sense

Definition

Derivative\index{derivative in the distribution sense} in the usual function sense is not defined for non continuous functions. Distribution theory allows in particular to generalize the classical derivative notion to non continuous functions. Template:IMP/defn Template:IMP/defn

Case of distributions of several variables

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Using derivatives without precautions, the action of differential operators in the distribution sense can be written, in the case where the functions on which they are acting are discontinuous on a surface S: Template:IMP/eq


Template:IMP/eq

Template:IMP/eq

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where f is a scalar function, a a vectorial function, σ represents the jump of a or f through surface S and δS, is the surfacic Dirac distribution. Those formulas allow to show the Green function introduced for tensors. The geometrical implications of the differential operators are considered at next appendix chaptens

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Differentiation of Stochastic processes

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When one speaks of stochastic\index{stochastic process} processes ([#References|references]), one adds the time notion. Taking again the example of the dices, if we repeat the experiment N times, then the number of possible results is Ω=6N (the size of the set Ω grows exponentially with N). We can define using this Ω a probability P. So, from the first random variable X, we can define another random variable Xt: Template:IMP/defn Xt is called a stochastic function of X or a stochastic process. Generally probability P(Xt[x,x+dx[ at ti) depends on the history of values of Xt before ti. One defines the conditional probability P(Xt=ti[x,x+dx[|Xtti) as the probability of Xt to take a value between x and x+dx, at time ti knowing the values of Xt for times anterior to ti (or Xt "history"). A Markov process is a stochastic process with the property that for any set of succesive times t1,,tn one has: Template:IMP/eq Pi|j denotes the probability for i conditions to be satisfied, knowing j anterior events. In other words, the expected value of Xt at time tn depends only on the value of Xt at previous time tn1. It is defined by the transition matrix by P1 and P1|1 (or equivalently by the transition density function f1(x,t) and f1|1(x2,t2|x1,t1). It can be seen ([#References|references]) that two functions f1 and f1|1 defines a Markov\index{Markov process} process if and only if they verify:

  • the Chapman-Kolmogorov equation\index{Chapman-Kolmogorov equation}:

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Template:IMP/eq A Wiener process\index{Wiener process}\index{Brownian motion} (or Brownian motion) is a Markov process for which: Template:IMP/eq Using equation eqnecmar, one gets: Template:IMP/eq

As stochastic processes were defined as a function of a random variable and time, a large class\footnote{This definition excludes however discontinuous cases such as Poisson processes} of stochastic processes can be defined as a function of Brownian motion (or Wiener process) Wt. This our second definition of a stochastic process: Template:IMP/defn For instance a model of the temporal evolution of stocks ([#References|references]) is Template:IMP/eq A stochastic differential equation Template:IMP/eq gives an implicit definition of the stochastic process. The rules of differentiation with respect to the Brownian motion variable Wt differs from the rules of differentiation with respect to the ordinary time variable. They are given by the It\^o formula\index{It\^o formula} ([#References|references]). To understand the difference between the differentiation of a newtonian function and a stochastic function consider the Taylor expansion, up to second order, of a function f(Wt): Template:IMP/eq Usually (for newtonian functions), the differential df(Wt) is just f'(Wt)dWt. But, for a stochastic process f(Wt) the second order term 12f'(Wt)(dWt)2 is no more neglectible. Indeed, as it can be seen using properties of the Brownian motion, we have: Template:IMP/eq or Template:IMP/eq Figure figbrown illustrates the difference between a stochastic process (simple brownian motion in the picture) and a differentiable function. The brownian motion has a self similar structure under progressive zooms. \begin{figure} \begin{tabular}[t]{c c}

\epsffile{b0_3} \epsffile{n0_3}

\epsffile{b0_4} \epsffile{n0_4}

\epsffile{b0_5} \epsffile{n0_5} \end{tabular} | center | frame |Comparison of a progressive zooming on a brownian motion and on a differentiable function}Template:IMP/label]] Let us here just mention the most basic scheme to integrate stochastic processes using computers. Consider the time integration problem: Template:IMP/eq with initial value: Template:IMP/eq The most basic way to approximate the solution of previous problem is to use the Euler (or Euler-Maruyama). This schemes satisfies the following iterative scheme: Template:IMP/eq More sofisticated methods can be found in ([#References|references]).

Functional derivative

Let (ϕ) be a functional. To calculate the differential dI(ϕ) of a functional I(ϕ) one express the difference I(ϕ+dϕ)I(ϕ) as a functional of dϕ.

The functional derivative of I noted δIδϕ is given by the limit: Template:IMP/eq where a is a real and ϕi=ϕ(ia).

Here are some examples: Template:IMP/exmp

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Comparison of tensor values at different points

Expansion of a function in serie about x=a

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Note that the reciproque of the theorem is false: f(x)=1x3sin(x) is a function that admits a expansion around zero at order 2 but isn't two times derivable.

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Non objective quantities

Consider two points M and M of coordinates xi and xi+dxi. A first variation often considered in physics is: Template:IMP/label Template:IMP/eq The non objective variation is Template:IMP/eq Note that dai is not a tensor and that equation eqapdai assumes that ei doesn't change from point M to point M. It doesn't obey to tensor transformations relations. This is why it is called non objective variation. An objective variation that allows to define a tensor is presented at next section: it takes into account the variations of the basis vectors.

Template:IMP/label Template:IMP/exmp Derivative introduced at example exmpderr is not objective, that means that it is not invariant by axis change. In particular, one has the famous vectorial derivation formula: Template:IMP/label Template:IMP/eq

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Template:IMP/exmp Template:IMP/label Template:IMP/exmp


The following property can be showed ([#References|references]): \begin{prop} Let us consider the integral: Template:IMP/eq where V is a connex variety of dimension p (volume, surface...) that is followed during its movement and ω a differential form of degree p expressed in Euler variables. The particular derivative of I verifies: Template:IMP/eq \end{prop} A proof of this result can be found in ([#References|references]). Template:IMP/exmp

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Covariant derivative

In this section a derivative that is independent from the considered reference frame is introduced (an objective derivative). Consider the difference between a quantity a evaluated in two points M and M.

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As at section secderico: Template:IMP/eq Variation dei is linearly connected to the ej's {\it via} the tangent application: Template:IMP/eq Rotation vector depends linearly on the displacement: Template:IMP/label Template:IMP/eq

Symbols Γikj called Christoffel symbols[1] are not[2] tensors. they connect properties of space at M and its properties at point M. By a change of index in equation eqchr : Template:IMP/label Template:IMP/eq As the xj's are independent variables: Template:IMP/defn The differential can thus be noted: Template:IMP/eq which is the generalization of the differential: Template:IMP/eq considered when there are no tranformation of axes. This formula can be generalized to tensors. Template:IMP/rem Template:IMP/rem Template:IMP/rem

Covariant differential operators

Following differential operators with tensorial properties can be defined:

  • Gradient of a scalar: Template:IMP/eq with ai=Vxi.
  • Rotational of a vector Template:IMP/eq with bik=akxiaixk. the tensoriality of the rotational can be shown using the tensoriality of the covariant derivative: Template:IMP/eq
  • Divergence of a contravariant density: Template:IMP/eq where d=aixi.

For more details on operators that can be defined on tensors, see

([#References|references]). 

In an orthonormal euclidian space on has the following relations:

Template:IMP/eq and Template:IMP/eq Template:IMP/eq

  1. I a space with metrics gij coefficients Γhki can expressed as functions of coefficients gij.
  2. Just as aixj is not a tensor. However, d(aiei) given by equation eqcovdiff does have the tensors properties

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