Geo 599 – Concepts in Ecosystem Informatics

Module 1- Disturbance propagation in stream networks in space and time

J.A. Jones.

Part 1 of 4.

1. Key concepts.

A) a list of 5 to 10 key terms/concepts that we (faculty and students) should all know, from your disciplines (and be prepared to define them)

1-Disturbance, succession, disturbance history of a site

Disturbance – deviation from succession; physical or biological sudden change

Succession – predictable sequence of (plant) species and (vegetation) structure in time

Disturbance history of a site:

- multiple disturbances

- multiple types

- order is important (Harvard Forest)

2-Laws of thermodynamics, pressure gradients, heat/energy transfer, latent heat

Laws of thermodynamics:

- conservation of matter and energy

- entropy (declining free energy)

-

Pressure gradients – produce motion of air, water

Solar energy

Heat/energy transfer

- conduction

- convection

- radiation

Energy transfer through changes of state

- latent heat

- heat of vaporization (endothermic)

- heat of condensation (exothermic)

Energy to do work

- potential

- kinetic

- Coriolis forces

3-Climate, seasonality, atmospheric and ocean circulation

Laws of thermodynamics + changes of state of water + motion of air and water

= atmospheric circulation AND ocean conveyor belt AND climate

+ rotation, orbit, tilt of Earth and orbital variations

= seasons, glacial cycles

4-Hydrologic cycle, roles of vegetation

hydro cycle = movement of water through

- atmosphere

- biosphere

- geosphere

processes in hydrologic cycle that are tied to vegetation

- interception

- throughfall, stemflow

- evaporation

- transpiration

- soil moisture

5-Networks: small world, branching hierarchical v. patchworks: adjacency, linear distances

networks

- arcs, nodes

- branching hierarchical

- small world

- in space, in time (evolution)

patchworks

- patch size

- patch spacing

- amount of edge

6-Scale, grain, extent, scaling laws, self-similarity, fractals, power law

Scale = grain and extent

Scaling laws

- self-similarity

- power law

- fractals

7-Spatial transfers of water, sediment, wood in landscapes; Landform evolution

Water storage and routing

- soil moisture, water in veg and atmosphere

- floods, flood routing

sediment and wood storage and routing

- sediment on hillslopes

- wood on hillslopes

- sediment in streams

- wood in streams

8-Causality, experiments, observational studies, causal inference

Causality

- cause

- effect

- attribute

Experiment

- control

- treatment

- replicate

- temporal stability, causal transience

- unit homogeneity

9-Empirical models: Statistical significance, type 1 and type 2 errors, statistical power

Model fit to data

- goodness of fit

- types of error (fail to reject the null, fail to accept the alternative)

- selection of functional form, overfitting

Statistical power

10-Simulation and optimization models: discriminating among multiple solutions (JCA papers; Revelle, Church)

Simulation model: equations, variables

Optimization model: objective function equation, constraint equations, variables

Integer vs. continuous optimization (networks vs. patchworks)

Selecting among feasible solutions: solution algorithms; heuristics
Geo 599 – Concepts in Ecosystem Informatics

Module 1- Disturbance propagation in stream networks in space and time

J.A. Jones.

Pre-test

1. What are the laws of thermodynamics and what sorts of equations do they permit us to write about physical entities?

2. Name several forms of energy or energy transfer and give an example of each that involves water.

3. Earth is an open system with respect to ______, but a closed system with respect to ______(name some form(s) of energy/matter). Sketch an open system and a closed system.

4. How do various forms of energy and heat exchanges give rise to atmospheric and ocean circulation?

5. Draw the hydrologic cycle. List the components that are linked to vegetation.

6. Draw a branching hierarchical network and a small world network. How do they differ in form and function?

7. How do statistical methods help one to discriminate among alternative empirical models?

8. How does optimization help one to discriminate among alternative mathematical models for a given process?