1Monte Carlo Backward Particle Tracking
Step 1 β Enter Synthetic Mode
Click 'Go to Synthetic Case Area' to create a blank domain.
Step 2 β Add River Boundaries
Click
to add river zones on left (prescribed head = 0 m) and right (prescribed head = -10 m) edges. The head difference drives regional flow from left to right.
Step 3 β Add a Pumping Well with Particles
Click to add a pumping well near the right edge with a pumping rate of -2500 mΒ³/day. Check the box next to 'Add Particle' β this automatically places particles around the well for backward (reverse) tracking. The particles will be traced backward through the flow field to identify where the well's water comes from.
Step 4 β Assign K as a Random Field
Click
the 'Zone=DM' button to create a domain-wide zone. Assign hydraulic conductivity as a random field β same statistical parameters as Tutorials 15-17.
Step 5 β Enable Monte Carlo Simulation
Click
to open Solver Options. Check 'Monte Carlo Simulation' with the default 10 realizations. Each realization will generate a new K field, solve flow, and trace particles backward from the well.
Step 6 β Configure Time Settings
Still in Simulation Settings, set the tracking duration:
Time step: 50 days
Simulation length: 1095 days (3 years)
This defines the 3-year time-of-travel capture zone β the area that contributes water to the well within 3 years. Longer tracking times produce larger capture zones.
Step 7 β Enable Capture Zone Display
Click
to access Display Settings. Check 'MCS Display' and ensure 'Capture Zone' is checked underneath. Change Main Display to
'Vectors Only' for a clear view of particle paths and the accumulating capture zone.
Step 8 β Run the Simulation
Submit the model. Watch each realization unfold:
Realizations 1-2: Flow vectors and backward particle paths for the current realization only β the capture zone is unique to that K field
Realization 3+: The current realization's particles AND the accumulating mean capture zone are displayed β you watch the probabilistic capture zone converge as more realizations are added
Step 9 β View the Probabilistic Capture Zone
After all 10 realizations complete, the map shows the probabilistic capture zone β a color-coded probability map where darker regions have higher probability of being within the capture zone. The core area near the well has ~100% probability; the fringes have lower probability, reflecting uncertainty about where exactly the capture zone boundary lies.
Key Concepts
Backward tracking = "where does my water come from?": Forward tracking (Tutorial 3) answers "where does water go?" Backward tracking reverses the question β particles are released at the well and traced upstream against the flow direction. The area they sweep defines the capture zone β the land surface area that contributes water (and potentially contamination) to the well.
Time-of-travel capture zones: The 1095-day simulation length defines a 3-year time-of-travel capture zone. Particles traced for 3 years delineate where water entering the well TODAY originated 3 years ago. Regulators commonly require 1-year, 5-year, and 10-year capture zones β each progressively larger β for tiered wellhead protection.
Capture probability vs. deterministic boundary: A deterministic model draws one boundary β inside or outside. The probabilistic approach assigns a probability to every location. A site at 90% probability needs immediate protection. A site at 10% may only need monitoring. This proportional approach is more scientifically honest and more economically efficient than the binary deterministic alternative.
Convergence with more realizations: With 10 realizations, the probability map is rough β 10% increments. With 100 realizations, you get 1% resolution. With 1000, the map becomes smooth and stable. IGW-NET's constant-memory approach makes large realization counts feasible β the probability map converges without running out of memory.
2What's Next
The stochastic chapter is complete. Continue the learning path:
Tutorial 19: Automatic Parameter Estimation β systematic calibration using optimization algorithms
Tutorial 20: Theis Solution β verify your model against analytical solutions
Tutorial 21: Unstructured Grid β flexible mesh for complex geometries