TTK4135 - Optimalisering og regulering

Problem 1 (25%) Definitions

a)

Gradient

It points in the direction of the greatest rate of increase of the function, and its magnitude gives the rate of increase in that direction.

The gradient is a vector composed of the partial derivatives of the function with respect to each of its variables, where .


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b)

Jacobian

The Jacobian is a generalization of the Gradient where we look at a continuously differentiable function .


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c) The resulting gradient will be

d) The resulting jacobian will be

Problem 2 (25%) Linear

Let , where

a)

This is the jacobian of , since is a vector with two elements.

b)

When and .

Problem 3 (25%) Nonlinear

Let , where

a) Gradient With Respect to a Variable The dimensions of is

will have dimensions , while will have dimensions . They are therefore a transpose different.

b) Method 1

Method 2

c) We have , and calculate

d) Using a variant of the product rule, we first differentiate with respect to the “first x”, and then with respect to the “second x” similar to how we did in a) and b)

Since is symmetric, , we get

Problem 4 (25%) Common case

Given this scalar operator

Find

a)

b)

c)