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LuneraysFlu_step2

Baptiste Lesquoy edited this page May 9, 2022 · 22 revisions

2. Definition of monitors and chart outputs

This second step illustrates how to create monitors and charts to follows the evolution of variables and to add an ending condition to the simulation.

Result of the Luneray Flu model 2.

Formulation

  • Add three new global dynamic variables to follow the evolution of the number of infected people agents, of not infected people agents and of the rate of infected people.
  • Define an ending condition for the simulation
  • Define a monitor to follow the rate of infected people agents
  • Define a chart to follow the rate of infected people agents

Model Definition

global section

global variables

GAMA offers the possibility to define a dynamic variable that will be recomputed at each simulation step by using the update facet when defining a variable. When an agent is activated, first, it recomputes each of its variables with an update facet (in their definition order), then it activates each of its reflexes (in their definition order).

To better follow the evolution of sick people, we add three new global variables to the model:

  • nb_people_infected of type int with nb_infected_init as init value and updated at each simulation step by the number of infected people
  • nb_people_not_infected of type int with (nb_people - nb_infected_init) as init value and updated at each simulation step by the number of not infected people
  • infected_rate of type float updated at each simulation step by the number of infected people divided by the number of people.
global{
    //... other attributes
    int nb_people_infected <- nb_infected_init update: people count (each.is_infected);
    int nb_people_not_infected <- nb_people - nb_infected_init update: nb_people - nb_people_infected;
    float infected_rate update: nb_people_infected/nb_people;
    //... init
}

We used the count operator that allows to count the number of elements of a list for which the left condition is true. The keyword each represents each element of the list.

Ending condition

The simplest way to add an ending condition to a model is to add a global reflex that is activated at the end of the simulation that will pause the simulation (use of the pause global action).

In our model, we add a new reflex called end_simulation that will be activated when the infected rate is 1.0 (i.e. all the people agents are infected) and that will apply the pause action.

global {
    //.. variable and init definition
	
    reflex end_simulation when: infected_rate = 1.0 {
	do pause;
    }
} 

experiment

monitor

GAMA provides modelers with the possibility to define monitors. A monitor allows to follow the value of an arbitrary expression in GAML. It will appear, in the User Interface, in a small window on its own and be recomputed every time step (or according to its refresh facet).

Definition of a monitor:

  • value: mandatory, the expression whose value will be displayed by the monitor.
  • refresh: bool, optional: if the expression is true, compute (default is true).

For our model, we define a monitor to follow the value of the infected_rate variable:

experiment main_experiment type:gui{
    //...parameters
    output {
	monitor "Infected people rate" value: infected_rate;
		
        //...display
    }
}

Chart

In GAMA, charts are considered as a display layer. GAMA can display 3 main types of charts using the type facet:

  • histogram
  • pie
  • series/xy/scatter: both display series with lines or dots, with 3 subtypes :
    • series: to display the evolution of one/several variables (vs time or not).
    • xy: to specify both x and y value. To allow stacked plots, only one y value for each x value.
    • scatter: free x and y values for each series.

In our model, we define a new display called chart_display that will be refreshed every 10 simulation steps. In this display, we add a series chart with 2 layers of data:

  • susceptible: the number of people that are not infected (in green)
  • infected: the number of people that are infected (in red)
experiment main_experiment type:gui{
    //...parameters
    output {
	//...display and monitors
		
	display chart_display refresh:every(10 #cycles) {
	    chart "Disease spreading" type: series {
		data "susceptible" value: nb_people_not_infected color: #green;
		data "infected" value: nb_people_infected color: #red;
	    }
	}
    }
}

Complete Model

https://github.com/gama-platform/gama/blob/GAMA_1.8.2/msi.gama.models/models/Tutorials/Luneray%20flu/models/model2.gaml

Next step: Importation of GIS data

  1. What's new (Changelog)
  1. Installation and Launching
    1. Installation
    2. Launching GAMA
    3. Updating GAMA
    4. Installing Plugins
  2. Workspace, Projects and Models
    1. Navigating in the Workspace
    2. Changing Workspace
    3. Importing Models
  3. Editing Models
    1. GAML Editor (Generalities)
    2. GAML Editor Tools
    3. Validation of Models
  4. Running Experiments
    1. Launching Experiments
    2. Experiments User interface
    3. Controls of experiments
    4. Parameters view
    5. Inspectors and monitors
    6. Displays
    7. Batch Specific UI
    8. Errors View
  5. Running Headless
    1. Headless Batch
    2. Headless Server
    3. Headless Legacy
  6. Preferences
  7. Troubleshooting
  1. Introduction
    1. Start with GAML
    2. Organization of a Model
    3. Basic programming concepts in GAML
  2. Manipulate basic Species
  3. Global Species
    1. Regular Species
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    3. Interaction between Agents
    4. Attaching Skills
    5. Inheritance
  4. Defining Advanced Species
    1. Grid Species
    2. Graph Species
    3. Mirror Species
    4. Multi-Level Architecture
  5. Defining GUI Experiment
    1. Defining Parameters
    2. Defining Displays Generalities
    3. Defining 3D Displays
    4. Defining Charts
    5. Defining Monitors and Inspectors
    6. Defining Export files
    7. Defining User Interaction
  6. Exploring Models
    1. Run Several Simulations
    2. Batch Experiments
    3. Exploration Methods
  7. Optimizing Model Section
    1. Runtime Concepts
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  8. Multi-Paradigm Modeling
    1. Control Architecture
    2. Defining Differential Equations
  1. Manipulate OSM Data
  2. Diffusion
  3. Using Database
  4. Using FIPA ACL
  5. Using BDI with BEN
  6. Using Driving Skill
  7. Manipulate dates
  8. Manipulate lights
  9. Using comodel
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  14. Writing Unit Tests
  15. Ensure model's reproducibility
  16. Going further with extensions
    1. Calling R
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    3. Using Git from GAMA
  1. Built-in Species
  2. Built-in Skills
  3. Built-in Architecture
  4. Statements
  5. Data Type
  6. File Type
  7. Expressions
    1. Literals
    2. Units and Constants
    3. Pseudo Variables
    4. Variables And Attributes
    5. Operators [A-A]
    6. Operators [B-C]
    7. Operators [D-H]
    8. Operators [I-M]
    9. Operators [N-R]
    10. Operators [S-Z]
  8. Exhaustive list of GAMA Keywords
  1. Installing the GIT version
  2. Developing Extensions
    1. Developing Plugins
    2. Developing Skills
    3. Developing Statements
    4. Developing Operators
    5. Developing Types
    6. Developing Species
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    8. Index of annotations
  3. Introduction to GAMA Java API
    1. Architecture of GAMA
    2. IScope
  4. Using GAMA flags
  5. Creating a release of GAMA
  6. Documentation generation

  1. Predator Prey
  2. Road Traffic
  3. 3D Tutorial
  4. Incremental Model
  5. Luneray's flu
  6. BDI Agents

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