Files
miSim/test/parametricTestSuite.m
2026-01-28 15:42:52 -08:00

154 lines
8.1 KiB
Matlab

classdef parametricTestSuite < matlab.unittest.TestCase
properties (Access = private)
% System under test
testClass = miSim;
domain = rectangularPrism;
obstacles = cell(1, 0);
% RNG control
seed = 1234567890;
%% Diagnostic Parameters
% No effect on simulation dynamics
makeVideo = true; % disable video writing for big performance increase
makePlots = true; % disable plotting for big performance increase (also disables video)
plotCommsGeometry = false; % disable plotting communications geometries
protectedRange = 0;
%% Test iterations
csvPath = fullfile(matlab.project.rootProject().RootFolder, "test", "testIterations.csv");
end
methods (TestMethodSetup)
function rngSetup(tc)
% Allow for controlling the random seed for reproducibility
rng(tc.seed);
end
end
methods (Static)
function params = readIterationsCsv(csvPath)
arguments (Input)
csvPath (1, 1) string;
end
arguments (Output)
params (1, 1) struct;
end
% File input validation
assert(isfile(csvPath), "%s is not a valid filepath.");
assert(endsWith(csvPath, ".csv"), "%s is not a CSV file.");
% Read file
csv = readtable(csvPath, "TextType", "String", "NumHeaderLines", 0, "VariableNamingRule", "Preserve");
csv.Properties.VariableNames = ["timestep", "maxIter", "minAlt", "discretizationStep", "sensorPerformanceMinimum", "initialStepSize", "barrierGain", "barrierExponent", "numObstacles", "numAgents", "collisionRadius", "comRange", "alphaDist", "betaDist", "alphaTilt", "betaTilt"];
for ii = 1:size(csv.Properties.VariableNames, 2)
csv.(csv.Properties.VariableNames{ii}) = cell2mat(cellfun(@(x) str2num(x), csv.(csv.Properties.VariableNames{ii}), "UniformOutput", false));
end
% Put params into standard structure
params = struct("timestep", csv.timestep, "maxIter", csv.maxIter, "minAlt", csv.minAlt, "discretizationStep", csv.discretizationStep, ...
"sensorPerformanceMinimum", csv.sensorPerformanceMinimum, "initialStepSize", csv.initialStepSize, ...
"barrierGain", csv.barrierGain, "barrierExponent", csv.barrierExponent, "numObstacles", csv.numObstacles,...
"numAgents", csv.numAgents, "collisionRadius", csv.collisionRadius, "comRange", csv.comRange, "alphaDist", csv.alphaDist, "betaDist", csv.betaDist, "alphaTilt", csv.alphaTilt, "betaTilt", csv.betaTilt);
end
end
methods (Test)
% Test cases
function csv_parametric_tests(tc)
% Read in parameters to iterate over
params = tc.readIterationsCsv(tc.csvPath);
% Test case setup
l = 10; % domain size
sensorModel = sigmoidSensor;
collisionGeometry = spherical;
% Iterate over test cases defined in CSV
for ii = 1:size(params.timestep, 1)
% Set up square domain
tc.domain = tc.domain.initialize([zeros(1, 3); l * ones(1, 3)], REGION_TYPE.DOMAIN, "Domain");
tc.domain.objective = tc.domain.objective.initialize(objectiveFunctionWrapper([.75 * l, 0.75 * l]), tc.domain, params.discretizationStep(ii), tc.protectedRange, params.sensorPerformanceMinimum(ii));
% Initialize agents
agents = cell(params.numAgents(ii), 1);
[agents{:}] = deal(agent);
% Initialize sensor model
sensorModel = sensorModel.initialize(params.alphaDist(ii, 1), params.betaDist(ii, 1), params.alphaTilt(ii, 1), params.betaTilt(ii, 1));
% Place first agent randomly in the quadrant opposite the objective
% not too close to the domain boundaries
bounds = [params.collisionRadius(ii, 1) * ones(1, 2), max([params.collisionRadius(ii, 1), params.minAlt(ii)]); l / 2 * ones(1, 2), l - params.collisionRadius(ii, 1)];
agentPos = bounds(1, :) + (bounds(2, :) - bounds(1, :)) .* rand(1, 3);
% Keep trying new positions until the greatest possible
% sensor performance clears the threshold (meaning this
% agent has the ability to make a partition)
while sensorModel.sensorPerformance(agentPos, [agentPos(1:2), 0]) < params.sensorPerformanceMinimum(ii)
agentPos = bounds(1, :) + (bounds(2, :) - bounds(1, :)) .* rand(1, 3);
end
% Initialize agent
collisionGeometry = collisionGeometry.initialize(agentPos, params.collisionRadius(ii, 1), REGION_TYPE.COLLISION, "Agent 1 Collision Region");
agents{1} = agents{1}.initialize(agentPos, collisionGeometry, sensorModel, params.comRange(ii, 1), params.maxIter(ii), params.initialStepSize(ii), "Agent 1", tc.plotCommsGeometry);
% Set up remaining agents in random (valid) locations
for jj = 2:size(agents, 1)
% Initialize sensor model
sensorModel = sensorModel.initialize(params.alphaDist(ii, jj), params.betaDist(ii, jj), params.alphaTilt(ii, jj), params.betaTilt(ii, jj));
% Base next agent's location on random previous agent's location
baseAgentIdx = randi(jj - 1);
retry = true;
while retry
agentPos = agents{baseAgentIdx}.commsGeometry.random();
% Check that the agent's greatest sensor
% performance clears the threshold for partitioning
if sensorModel.sensorPerformance(agentPos, [agentPos(1:2), 0]) < params.sensorPerformanceMinimum(ii)
retry = true;
continue;
end
% Check that candidate position is well inside the domain
bounds = [params.collisionRadius(ii, jj) * ones(1, 2), max([params.collisionRadius(ii, jj), params.minAlt(ii)]); l / 2 * ones(1, 2), l - params.collisionRadius(ii, jj)];
if ~isequal(agentPos < bounds, [false, false, false; true, true, true])
retry = true;
continue;
end
% Check that candidate position does not collide with existing agents
for kk = 1:(jj - 1)
if norm(agents{kk}.pos - agentPos, 2) < agents{kk}.collisionGeometry.radius + params.collisionRadius(ii, jj)
retry = true;
continue;
end
end
retry = false;
end
% Initialize agent
collisionGeometry = collisionGeometry.initialize(agentPos, params.collisionRadius(ii, jj), REGION_TYPE.COLLISION, sprintf("Agent %d Collision Region", jj));
agents{jj} = agents{jj}.initialize(agentPos, collisionGeometry, sensorModel, params.comRange(ii, jj), params.maxIter(ii), params.initialStepSize(ii), sprintf("Agent %d", jj), tc.plotCommsGeometry);
end
% Set up simulation
agents = agents(randperm(numel(agents))); % randomly shuffle agents to make the network more interesting (probably)
tc.testClass = tc.testClass.initialize(tc.domain, agents, params.barrierGain(ii), params.barrierExponent(ii), params.minAlt(ii), params.timestep(ii), params.maxIter(ii), tc.obstacles, tc.makePlots, tc.makeVideo);
% Save simulation parameters to output file
tc.testClass.writeParams();
% Run
tc.testClass = tc.testClass.run();
% Cleanup
tc.testClass = tc.testClass.teardown();
end
end
end
end