3-4 Linear Programming Warm Up Lesson Presentation Lesson Quiz

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Presentation transcript:

3-4 Linear Programming Warm Up Lesson Presentation Lesson Quiz Holt Algebra 2

Warm Up 1. Graph the system of inequalities and classify the figure created by the solution region. y ≤ x – 2 y ≥ –2x – 2 x ≤ 4 x ≥ 1

Objective Solve linear programming problems.

Example 1 Graph each feasible region Maximize the objective function P = 25x + 30y under the following constraints. x ≥ 0 y ≥ 1.5 2.5x + 5y ≤ 20 3x + 2y ≤ 12

Example 1 Continued A. Use the constraints to graph the feasible region. x ≥ 0 y ≥ 1.5 2.5x + 5y ≤ 20 3x + 2y ≤ 12

Example 1 Continued B. Evaluate the objective function at the vertices of the feasible region. (x, y) 25x + 30y P($) (0, 4) 25(0) + 30(4) 120 (0, 1.5) 25(0) + 30(1.5) 45 (2, 3) 25(2) + 30(3) 140 (3, 1.5) 25(3) + 30(1.5) The maximum value occurs at the vertex (2, 3). P = 140

Vocabulary linear programming constraint feasible region objective function

Linear programming is method of finding a maximum or minimum value of a function that satisfies a given set of conditions called constraints. A constraint is one of the inequalities in a linear programming problem. The solution to the set of constraints can be graphed as a feasible region.

Example 2: Graphing a Feasible Region Yum’s Bakery bakes two breads, A and B. One batch of A uses 5 pounds of oats and 3 pounds of flour. One batch of B uses 2 pounds of oats and 3 pounds of flour. The company has 180 pounds of oats and 135 pounds of flour available. Write the constraints for the problem and graph the feasible region.

Let x = the number of bread A, and y = the number of bread B. Example 2 Continued Let x = the number of bread A, and y = the number of bread B. Write the constraints: x ≥ 0 The number of batches cannot be negative. y ≥ 0 The combined amount of oats is less than or equal to 180 pounds. 5x + 2y ≤ 180 The combined amount of flour is less than or equal to 135 pounds. 3x + 3y ≤ 135

Graph the feasible region Graph the feasible region. The feasible region is a quadrilateral with vertices at (0, 0), (36, 0), (30, 15), and (0, 45). Check A point in the feasible region, such as (10, 10), satisfies all of the constraints. 

In most linear programming problems, you want to do more than identify the feasible region. Often you want to find the best combination of values in order to minimize or maximize a certain function. This function is the objective function. The objective function may have a minimum, a maximum, neither, or both depending on the feasible region.

More advanced mathematics can prove that the maximum or minimum value of the objective function will always occur at a vertex of the feasible region.

Example 3: Solving Linear Programming Problems Yum’s Bakery wants to maximize its profits from bread sales. One batch of A yields a profit of $40. One batch of B yields a profit of $30. Use the profit information and the data from Example 1 to find how many batches of each bread the bakery should bake.

Example 3 Continued Step 1 Let P = the profit from the bread. Write the objective function: P = 40x + 30y Step 2 Recall the constraints and the graph from Example 1. x ≥ 0 y ≥ 0 5x + 2y ≤ 180 3x + 3y ≤ 135

Example 3 Continued Step 3 Evaluate the objective function at the vertices of the feasible region. (x, y) 40x + 30y P($) (0, 0) 40(0) + 30(0) (0, 45) 40(0) + 30(45) 1350 (30, 15) 40(30) + 30(15) 1650 (36, 0) 40(36) + 30(0) 1440 The maximum value occurs at the vertex (30, 15). Yum’s Bakery should make 30 batches of bread A and 15 batches of bread B to maximize the amount of profit.

Lesson Quiz 1. Ace Guitars produces acoustic and electric guitars. Each acoustic guitar yields a profit of $30, and requires 2 work hours in factory A and 4 work hours in factory B. Each electric guitar yields a profit of $50 and requires 4 work hours in factory A and 3 work hours in factory B. Each factory operates for at most 10 hours each day. Graph the feasible region. Then, find the number of each type of guitar that should be produced each day to maximize the company’s profits.

Lesson Quiz 1 acoustic; 2 electric