1 CM Optimal Resource Control Model & General continuous time optimal control model of a forest resource, comparative dynamics and CO2 storage consideration.

Slides:



Advertisements
Similar presentations
The Maximum Principle: Continuous Time Main purpose: to introduce the maximum principle as a necessary condition that must be satisfied by any optimal.
Advertisements

Chapter 8 The Maximum Principle: Discrete Time 8.1 Nonlinear Programming Problems We begin by starting a general form of a nonlinear programming problem.
Chapter 9 Maintenance and Replacement The problem of determining the lifetime of an asset or an activity simultaneously with its management during that.
Linear Programming Problem
Chapter 5 Finance Application (i) Simple Cash Balance Problem (ii) Optimal Equity Financing of a corporation (iii) Stochastic Application Cash Balance.
1 Optimal CCS, Carbon Capture and Storage, Under Risk International Seminars in Life Sciences Universidad Politécnica de Valencia Thursday Updated.
THE DERIVATIVE AND THE TANGENT LINE PROBLEM
Profit-Maximization. Economic Profit u Profit maximization provides the rationale for firms to choose the feasible production plan. u Profit is the difference.
If f (x) is a differentiable function over [ a, b ], then at some point between a and b : Mean Value Theorem for Derivatives.
Tools for optimal coordination of CCS, power industry capacity expansion and bio energy raw material production and harvesting Peter Lohmander Prof. Dr.
OPTIMAL PRESENT RESOURCE EXTRACTION UNDER THE INFLUENCE OF FUTURE RISK Professor Dr Peter Lohmander SLU, Sweden,
A second order ordinary differential equation has the general form
APPLICATIONS OF DIFFERENTIATION
Endogenous Technological Change Slide 1 Endogenous Technological Change Schumpeterian Growth Theory By Paul Romer.
Ch 5.1: Review of Power Series
Ch 5.1: Review of Power Series Finding the general solution of a linear differential equation depends on determining a fundamental set of solutions of.
Chapter 13 Stochastic Optimal Control The state of the system is represented by a controlled stochastic process. Section 13.2 formulates a stochastic optimal.
Definition and Properties of the Production Function Lecture II.
Boyce/DiPrima 9 th ed, Ch 3.1: 2 nd Order Linear Homogeneous Equations-Constant Coefficients Elementary Differential Equations and Boundary Value Problems,
Applied Economics for Business Management
Partial and Total derivatives Derivative of a function of several variables Notation and procedure.
Applications of Calculus. The logarithmic spiral of the Nautilus shell is a classical image used to depict the growth and change related to calculus.
Managerial Economics Managerial Economics = economic theory + mathematical eco + statistical analysis.
Lecture 35 Numerical Analysis. Chapter 7 Ordinary Differential Equations.
Rolle’s theorem and Mean Value Theorem ( Section 3.2) Alex Karassev.
Mean Value Theorem for Derivatives.
1 Cost Minimization and Cost Curves Beattie, Taylor, and Watts Sections: 3.1a, 3.2a-b, 4.1.
1 Copyright © Cengage Learning. All rights reserved. Differentiation 2.
Simulating the value of Asian Options Vladimir Kozak.
Optimal continuous cover forest management: - Economic and environmental effects and legal considerations Professor Dr Peter Lohmander
Simple Rules for Differentiation. Objectives Students will be able to Apply the power rule to find derivatives. Calculate the derivatives of sums and.
Lecture #9. Review Homework Set #7 Continue Production Economic Theory: product-product case.
Chapter 1 Partial Differential Equations
Analysis of the speed of convergence Lionel Artige HEC – Université de Liège 30 january 2010.
Integrals 5. The Fundamental Theorem of Calculus 5.4.
INTEGRALS The Fundamental Theorem of Calculus INTEGRALS In this section, we will learn about: The Fundamental Theorem of Calculus and its significance.
Copyright © Cengage Learning. All rights reserved. 4 Integrals.
Boyce/DiPrima 9 th ed, Ch 5.1: Review of Power Series Elementary Differential Equations and Boundary Value Problems, 9 th edition, by William E. Boyce.
1 Some new equations presented at NCSU Peter Lohmander.
1 Optimal dynamic control of the forest resource with changing energy demand functions and valuation of CO2 storage Presentation at the Conference: The.
Advanced Operations Research Models Instructor: Dr. A. Seifi Teaching Assistant: Golbarg Kazemi 1.
Lecture 7 and 8 The efficient and optimal use of natural resources.
Faculty of Economics Optimization Lecture 3 Marco Haan February 28, 2005.
Copyright © Cengage Learning. All rights reserved.
ANTIDERIVATIVES Definition: reverse operation of finding a derivative.
1 Optimal activities over time in a typical forest industry company in the presence of stochastic markets - A flexible approach and possible extensions!
Optimal continuous natural resource extraction with increasing risk in prices and stock dynamics Professor Dr Peter Lohmander
Chapter 3.2 The Derivative as a Function. If f ’ exists at a particular x then f is differentiable (has a derivative) at x Differentiation is the process.
Beattie, Taylor, and Watts Sections: 3.1b-c, 3.2c, , 5.2a-d
Review of PMP Derivation We want to find control u(t) which minimizes the function: x(t) = x*(t) +  x(t); u(t) = u*(t) +  u(t); (t) = *(t) +  (t);
Chapter 4 The Maximum Principle: General Inequality Constraints.
Copyright © Cengage Learning. All rights reserved. 4.4 Indefinite Integrals and the Net Change Theorem.
Optimization of adaptive control functions in multidimensional forest management via stochastic simulation and grid search Version Peter Lohmander.
Section 9.4 – Solving Differential Equations Symbolically Separation of Variables.
Rolle’s theorem and Mean Value Theorem (Section 4.2)
A general dynamic function for the basal area of individual trees derived from a production theoretically motivated autonomous differential equation Version.
Differential Equations
Copyright © Cengage Learning. All rights reserved.
Copyright © Cengage Learning. All rights reserved.
Week 7 2. The dynamics of games Consider the following questions:
Business Mathematics MTH-367
Copyright © Cengage Learning. All rights reserved.
A second order ordinary differential equation has the general form
Copyright © Cengage Learning. All rights reserved.
The Fundamental Theorem of Calculus
Optimal stochastic control in continuous time with Wiener processes: - General results and applications to optimal wildlife management KEYNOTE Version.
Copyright © Cengage Learning. All rights reserved.
Objectives To be able to find a specific function when given the derivative and a known location.
Copyright © Cengage Learning. All rights reserved.
Mathematics for Economists [Section A – Part 1 / 4]
Presentation transcript:

1 CM Optimal Resource Control Model & General continuous time optimal control model of a forest resource, comparative dynamics and CO2 storage consideration effects Peter Lohmander Presented in the seminar series of Dept. of Forest Economics, Swedish University of Agricultural Sciences, Umea, Sweden, Thursday , 1400 – 1500 HRS Marginally updated

2 First some General optimal control theory

3

4

5

6

7 Taylor expansion:

8

9

10

11

12

13

14

15

16 is not a function of Hence, we may exclude from the optimization.

17 is optimized via We assume an unconstrained local maximum.

18

19 The adjoint equation:

20 Terminal boundary condition:

21

22 The maximum principle: Necessary conditions for to be an optimal control:

23 Now, a more specific Optimal control model

24

25

26

27 Determination of the time derivative of via the adjoint equation:

28

29 Determination of the time derivative of via

30

31 The time derivative ofas determined via must equal the time derivative of as determined via the adjoint equation:

32 Definition: Observation: This differential equation can be used to determine the optimal control function.

33 Solution of the homogenous differential equation: Let

34 Determination of the particular solution: Let

35

36

37 Conclusion: The optimal control function is:

38 Determination of the optimal stock path equation:

39 The optimal control function is introduced in the differential equation of the stock path equation:

40 As a result, the differential equation of the optimal stock path equation is:

41 Solution of the homogenous differential equation: Let

42 Determination of the particular solution: Let:

43

44

45

46 Conclusion: The optimal stock path equation is:

47 Determination ofvia the initial and terminal conditions

48

49

50

51

52

53

54

55

56

57

58 Determination ofviaand

59 Conclusion: The optimal adjoint variable path equation is:

60 Determination of the optimal objective function value:

61

62

63

64

65

66

67

68

69 Now, we determine, the antiderivative of K.. Below, we exclude the constant of integration.

70

71 Code section for calculation of J (in JavaScript): var r2 = r-g1; var z1 = 1/(2*k3)*(f1/r2 + f2/r2/r2 - k1); var z2 = 1/(2*k3)*(f2/r2 - k2); var c0 = 1/g1*(z1+(z2-g2)/g1 - g0); var c1 = (z2-g2)/g1;

72 var sysdet = Math.exp(r2*t1)/(g1-r2) *Math.exp(g1*t2) - Math.exp(r2*t2) /(g1-r2)*Math.exp(g1*t1); var A = ( (x1-c0-c1*t1)*Math.exp(g1*t2) -(x2-c0-c1*t2)*Math.exp(g1*t1) ) -/sysdet; var B = ( Math.exp(r2*t1)/(g1-r2)*(x2-c0-c1*t2) – Math.exp(r2*t2)/(g1-r2)*(x1-c0-c1*t1)) /sysdet;

73 var D = A/(g1-r2); var w0 = f1*c0 + k1*z1 + k3*z1*z1; var w1 = f1*c1 + f2*c0 + k1*z2 + k2*z1 + 2*k3*z1*z2; var w2 = f2*c1 + k2*z2 + k3*z2*z2; var w3 = f1*B; var w4 = f1*D + k1*A + 2*k3*z1*A; var w5 = k3*A*A; var w6 = f2*B; var w7 = f2*D + k2*A + 2*k3*z2*A;

74 var s0 = - r; var s1 = g1 - r; var s2 = r2 - r; var s3 = 2*r2 - r;

75 var AntidK2 = w0*(1/s0*Math.exp(s0*t2)) + w1*(Math.exp(s0*t2)*(t2/s0 - 1/(s0*s0))) + w2*(Math.exp(s0*t2)*((s0*s0*t2*t2-2*s0*t2+2) /(s0*s0*s0))) + w3*(1/s1*Math.exp(s1*t2)) + w4*(1/s2*Math.exp(s2*t2)) + w5*(1/s3*Math.exp(s3*t2)) + w6*(Math.exp(s1*t2)*(t2/s1 - 1/(s1*s1))) + w7*(Math.exp(s2*t2)*(t2/s2 - 1/(s2*s2))) ;

76 var AntidK1 = w0*(1/s0*Math.exp(s0*t1)) + w1*(Math.exp(s0*t1)*(t1/s0 - 1/(s0*s0))) + w2*(Math.exp(s0*t1)*((s0*s0*t1*t1-2*s0*t1 + 2) /(s0*s0*s0))) + w3*(1/s1*Math.exp(s1*t1)) + w4*(1/s2*Math.exp(s2*t1)) + w5*(1/s3*Math.exp(s3*t1)) + w6*(Math.exp(s1*t1)*(t1/s1 - 1/(s1*s1))) + w7*(Math.exp(s2*t1)*(t1/s2 - 1/(s2*s2))) ; var Integral = AntidK2 - AntidK1; var J = Integral;

77 General observations of optimal solutions: First we consider the following objective function. Note that the stock level does not influence the objective function directly in this first version of the problem.

78 The Hamiltonian function is:

79 When we have an interior optimum, the first order derivative of the objective function with respect to the control variable is 0. As a result, we find that the present value of the marginal profit, is equal to the marginal resource value at the same point in time,.

80 The adjoint equation says that Since, we know that

81 Now, we make the following definition:, consists of many different parts. The resource, with total stock Different parts of the resource have different relative growth. A particular part of the resource,, has relative growth.

82 We may define the relative growth of that particular unit as (is the stock level of that particular unit and is the growth.)

83 When we integrate, we arrange the different particular resource units in such a way that

84

85 Observation: The relative decrease of the marginal resource value over time is equal to the relative growth of the marginal resource unit.

86 Example with explanation from forestry: If the marginal cubic metre grows by 5% per year (and will give 0.05 new cubic metres next year) then the value of the marginal cubic metre this year is 5% higher than the value of the marginal cubic metre next year.

87 The value of an already existing cubic metre must be higher than the value of a cubic metre in the future year since the cubic metre that we already have may give us more than one cubic metre in the future year, thanks to the growth.

88 The relative marginal resource value decrease is higher in case the relative marginal growth is higher.

89 The relationship between the speed of change of the relative marginal resource value and direct valuation of the stock level

90 Here, we add to the objective function.

91 As a result, we get:

92 The Hamiltonian function becomes:

93 These derivatives are obtained:

94 The adjoint equation gives a modified result:

95

96 Observation: >0 implies that becomes more negative ifincreases.

97 Explanation and connection to forestry: means that the stock gives an “instant contribution” to the objective function. One such case is if the forest owner continuously gets paid for the amount of stored CO2 in the forest. In such a case, one cubic metre that exists now (and that will not be instantly harvested), will give contributions in this period and in the following period.

98 One cubic metre that will exist in the next period, but not already in this period, will not “be able” to give the contribution during this period. As a result, the fact that we get “instant contributions”, directly from the stock, means that the relative marginal value of the stock falls faster over time.

99 Software for the optimal control model

100

101

102

103 J t x u Lambda

104 Optimal strategy and dynamic effects of the rate of interest

105

106

107

108

109 Comparisions with alternatives that are not optimal:

110 Optimal strategy and dynamic effects of the slope of the demand function

111

112

113

114

115

116 Comparisions with two alternatives:

117 Optimal strategy and dynamic effects of the terminal condition

118

119

120

121

122

123 Optimal strategy and dynamic effects of continuous stock level valuation

124

125

126

127

128

129 Optimal strategy and dynamic effects of continuous stock level valuation in combination with variations of the the slope of the demand function

130

131

132

133

134

135 Optimal strategy and dynamic effects of the growth function

136

137

138

139

140