Curl and Divergence
RECALL: $\grad{f} = {\partial f\over\partial x}\,\ii + {\partial f\over\partial y}\,\jj + {\partial f\over\partial z}\,\kk$
It is convenient to think of $\grad$ as a differential operator (called “del”), written as $$\grad = {\partial\over\partial x}\,\ii + {\partial\over\partial y}\,\jj + {\partial\over\partial z}\,\kk$$ Thus, $\grad{f}$ (“del f”) is obtained by “multiplying” $\grad$ by $f$, being careful of course to interpret “multiplication” as partial differentiation.
The operator $\grad$ can also be used to express divergence and curl. We have seen that if $$\FF = F_x\,\ii + F_y\,\jj + F_z\,\kk$$ then $$\Curl\FF = \left( \Partial{F_z}{y } - \Partial{F_y}{z } \right) \,\ii + \left( \Partial{F_x}{z } - \Partial{F_z}{x } \right) \,\jj + \left( \Partial{F_y}{x } - \Partial{F_x}{y } \right) \,\kk $$ But this looks like a cross product! Rather than memorizing this formula, it is much easier to compute the curl directly using the determinant rule for cross product $$\Curl\FF = \grad\times\FF = \left| \matrix{\ii& \jj& \kk\cr \noalign{\smallskip} {\partial\over\partial x}& {\partial\over\partial y}& {\partial\over\partial z}\cr \noalign{\smallskip} F_x& F_y& F_z\cr} \right| $$ Similarly, the divergence of $\FF$ looks like a dot product, and can be written $$\hbox{div}\,\FF = \grad\cdot\FF = \Partial{F_x}{x } + \Partial{F_y}{y } + \Partial{F_z}{z }$$ In both cases, care must be taken to correctly interpret “multiplication” as differentiation, as above.
This notation also helps you remember that the curl of a vector field is again a vector field, but the divergence of a vector field is a scalar field (i.e. a function), and of course the gradient of a function is a vector field.
There are several useful identities involving these operators. First of all, like all derivatives, they are linear. Second, there are the product rules \begin{eqnarray*} \grad\times(f\GG) &=& \grad{f}\times\GG + f\,(\grad\times\GG) \\ \grad\cdot(f\GG) &=& \grad{f}\cdot\GG + f\,(\grad\cdot\GG) \end{eqnarray*} which are both of the form:
- The derivative of a product is the derivative of the first factor times the second factor, plus the first factor times the derivative of the second factor.
Two further identities are \begin{eqnarray*} \grad\times\grad f &=& 0 \\ \grad\cdot(\grad\times\FF) &=& 0 \end{eqnarray*} The first identity follows from Stokes' Theorem, which we now write in the form $$ \Oint \FF\cdot d\rr = \Sint (\grad\times\FF) \cdot d\SS $$ If $\FF=\grad f$, it is conservative, so the left-hand side must be zero by path independence for any closed curve $C$, which forces the integrand on the right-hand side to vanish identically, which proves the identity.
To prove the second identity, suppose that both $S_1$ and $S_2$ meet the requirements of Stokes' Theorem for the same curve $C$. We can think of $S_1$ and $S_2$ as being two different butterfly nets (or soap bubbles) on the same wire frame $C$. Supposing that $S_1$ is above $S_2$, the outward unit normal to the closed surface $S=S_1+S_2$ is the upward unit normal to $S_1$, but the downward unit normal to $S_2$. Thus, \begin{eqnarray*} \Int_V \grad\cdot(\grad\times\FF) \, dV &=& \Sint (\grad\times\FF)\cdot\nn_{\rm out} \, \dS \\ &=& \Int_{S_1} (\grad\times\FF)\cdot\nn_{\rm up} \, \dS - \Int_{S_2} (\grad\times\FF)\cdot\nn_{\rm up} \, \dS \\ &=& \Oint\FF\cdot d\rr - \Oint\FF\cdot d\rr = 0 \end{eqnarray*} where the Divergence Theorem was used in the first step. This shows that the above integrals are zero over any volume $V$, forcing the integrand to vanish, which is the second identity.
The new notation for the divergence also allows us to write the Divergence Theorem as $$ \Sint\FF\cdot d\SS = \Int_V\grad\cdot\FF\>dV $$ There is also a 2-dimensional version of the Divergence Theorem, which is really a corollary of Green's Theorem, and which says $$\Oint \FF\cdot\nn \, ds = \Int_R \grad\cdot\FF \> dA$$ where $C$ is a closed curve in the plane, $\nn$ is its outward pointing unit normal vector, and $R$ is the region inside the curve. The integral on the left defines flux in two dimensions.
Finally, a further useful combination is given by $$\triangle{f} = \nabla^2{f} = \grad\cdot(\grad{f})$$ and is called the Laplacian of $f$.
GOALS
- Know how to find the divergence and curl of a vector field.
- Know the properties of divergence and curl.