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Maths

Exponential Growth and Decay Models

Overview

Students apply exponential functions to real-world situations — population growth, radioactive decay, compound interest, cooling — developing both the mathematical and contextual understanding of these models.

Learning Objective
Students construct and use exponential models for growth and decay, interpret parameters in context, solve exponential equations using logarithms, and evaluate the appropriateness of a model.

Resources needed

  • Calculator
  • Graph paper (optional)
  • Mini whiteboards

Lesson stages

0 / 7 done
  1. 1 A bacterium doubles every hour. Start: 1. After 1h: 2. After 2h: 4. After 3h: 8. Compare with a colony growing by 10 per hour (linear). Plot both to n=8. 'Exponential growth eventually outpaces any linear growth — dramatically.'
  2. 2 N = N₀ × aᵗ where N₀ = initial amount, a = growth factor (a>1 for growth, 0<a<1 for decay), t = time. For the bacteria: N = 1 × 2ᵗ. For 5% annual growth from initial 1000: N = 1000 × 1.05ᵗ. Students identify N₀ and a in three models.
  3. 3 A radioactive substance halves every 10 years (half-life = 10). N = N₀ × (0.5)^(t/10). Or equivalently: N = N₀ × e^(−λt) where λ = ln2/10. Calculate remaining amount after 30 years from 200g: N = 200 × (0.5)³ = 25g. Students apply to three decay problems.
  4. 4 When does 1000 × 1.05ᵗ reach 2000? 1.05ᵗ = 2. Take log: t log 1.05 = log 2. t = log2/log1.05 ≈ 14.2 years. Students solve four 'when does it reach?' problems using logs.
  5. 5 A cooling model: T = 20 + 60e^(−0.1t). 'What is the initial temperature?' (20+60=80°C.) 'What does the 20 represent?' (Room temperature — the long-term value.) 'What does 0.1 represent?' (Rate of cooling.) Students interpret two more models.
  6. 6 A population is modelled as P = 1000 × 1.02ᵗ. 'Predict population in 200 years.' Calculate. 'Does this seem realistic? What assumptions does the model make? What real factors might it ignore?' Discuss limitations.
  7. 7 If y = aᵇˣ, then log y = log a + x log b — a linear relationship. Students plot log y against x for exponential data and observe a straight line, connecting exponential models to linear regression.

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Variations

  • Extend to natural exponential e and natural logarithm ln
  • Newton's law of cooling as a differential equation
  • Logistic growth as a more realistic population model
More information

Display: growth factor, decay factor, half-life, doubling time, initial value, long-term behaviour. Teach: 'a > 1 means growth; 0 < a < 1 means decay.'

Focus on N = N₀ × aᵗ only, without e^(−λt) form. Provide pre-built tables of values. Use calculator for all computations. Restrict to growth before decay.

Do students correctly identify N₀ and a from context? Can they use logs to solve for t? Do they interpret parameters meaningfully in context? Can they discuss model limitations?

Scientific calculator required. All work on plain paper. Graphs drawn by hand for small number of data points.

Students may confuse the decay factor (0.5 for halving) with the proportion remaining (also 0.5). Reinforce: 'the decay factor is multiplied each period — if it is 0.5, the amount halves.'