Source code for pySimBlocks.gui.blocks.sources.white_noise

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from pySimBlocks.gui.blocks.block_meta import BlockMeta
from pySimBlocks.gui.blocks.parameter_meta import ParameterMeta
from pySimBlocks.gui.blocks.port_meta import PortMeta


[docs] class WhiteNoiseMeta(BlockMeta): """Describe the GUI metadata of the white-noise source block.""" def __init__(self): """Initialize white-noise block metadata. Args: None. Raises: None. """ self.name = "WhiteNoise" self.category = "sources" self.type = "white_noise" self.summary = "Multi-dimensional Gaussian white noise source." self.description = ( "Generates independent Gaussian noise samples at each simulation step:\n" "$$\n" "y_i(t) \\sim \\mathcal{N}(\\mu_i, \\sigma_i^2)\n" "$$\n" ) self.parameters = [ ParameterMeta( name="mean", type="scalar | vector | matrix", description="Mean value of the noise." ), ParameterMeta( name="std", type="scalar | vector | matrix", description="Standard deviation of the noise." ), ParameterMeta( name="seed", type="int", description="Random seed for reproducibility." ), ParameterMeta( name="sample_time", type="float", description="Block execution period." ) ] self.outputs = [ PortMeta( name="out", display_as="out", shape=["n", "m"], description="Gaussian noise output signal." ) ]