Derive the results for the optimal use of renewable resources under the discrete and continuous time frames.

Introduction

Renewable resources like forests, fish populations, and fresh water are naturally replenished over time. However, their overuse can lead to depletion beyond regeneration capacity. Optimal use of renewable resources ensures sustainable consumption without exhausting future supply. This post explores how we can derive the optimal use of renewable resources in both discrete and continuous time frames using basic economic models.

1. Concept of Optimal Use of Renewable Resources

Optimal use aims to balance resource extraction and natural regeneration. The goal is to maximize net benefits from the resource over time while ensuring it remains available for future generations.

The mathematical tools used to derive optimality conditions differ for discrete and continuous time models but share the same economic intuition.

2. Discrete Time Framework

In the discrete model, time moves in distinct steps (e.g., years). The renewable resource grows following a function like the logistic growth model:

Xt+1 = Xt + G(Xt) - Ht
  • Xt = stock of the resource at time t
  • G(Xt) = natural growth of the resource
  • Ht = amount harvested or used

Objective:

Maximize the discounted sum of net benefits:

Max Σ [B(Ht)] / (1 + r)t
  • B(Ht) = benefit from harvesting
  • r = discount rate

Optimality Condition (Discrete):

The marginal benefit of harvesting today should equal the discounted marginal value of the resource left for tomorrow:

MB(Ht) = (1 / (1 + r)) × MB(Ht+1) × (1 + G'(Xt))

This ensures we do not overharvest and allow the resource to grow.

3. Continuous Time Framework

In continuous time models, changes happen instantaneously. This framework uses calculus and differential equations.

Stock Dynamics:

𝑑X/𝑑t = G(X) - H(t)
  • X(t) = resource stock at time t
  • H(t) = harvesting rate
  • G(X) = natural growth (often logistic: G(X) = rX(1 – X/K))

Objective Function:

Max ∫ e-δt × B(H(t)) dt
  • δ = social discount rate
  • e-δt = discounting future benefits

Hamiltonian Function:

We use the Hamiltonian to solve the optimal control problem:

H = e-δt × B(H(t)) + λ(t) × [G(X) - H(t)]
  • λ(t) = shadow price or marginal value of the resource stock

First-Order Conditions:

  1. ∂H/∂H(t) = e-δt × B'(H(t)) – λ(t) = 0
  2. 𝑑λ/𝑑t = δλ(t) – λ(t)G'(X(t))

Interpretation:

  • Equating marginal benefit to the shadow price of the resource
  • The shadow price evolves over time depending on growth rate and discounting

4. Golden Rule Level of Harvesting

Both models lead to a steady state or sustainable yield where growth equals harvesting:

H* = G(X*)

This is the point where the stock of the resource remains constant over time, ensuring sustainability.

5. Comparison: Discrete vs Continuous

Aspect Discrete Continuous
Time Step-by-step (t, t+1) Flows continuously
Method Difference equations Differential equations
Tool Dynamic programming Optimal control theory
Practical Use Annual decisions Real-time systems

Conclusion

Optimal use of renewable resources involves maintaining a balance between harvesting and regeneration. Whether using discrete or continuous models, the key idea remains the same: maximize long-term benefits while preserving the resource base. These models are essential for policy-making in resource economics, environmental planning, and sustainable development.

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