# -*- coding: utf-8 -*-
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# University of Ljubljana.
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from typing import Tuple
import numpy as np
from xopto.mcvox.mcdetector.base import Detector
from xopto.mcvox import cltypes, mctypes, mcobject
from xopto.mcvox.mcutil.fiber import MultimodeFiber
from xopto.mcvox.mcutil import geometry
[docs]class LinearArray(Detector):
[docs] @staticmethod
def cl_type(mc: mcobject.McObject) -> cltypes.Structure:
T = mc.types
class ClLinearArray(cltypes.Structure):
'''
Structure that that represents a detector in the Monte Carlo
simulator core.
Fields
------
transformation: mc_point3f_t
Transforms coordinates from Monte Carlo to the detector.
first_position: mc_point2f_t
The center of the first optical fiber in the array.
delta_position: mc_point2f_t
Distance vector between two neighboring optical fibers.
core_r_squared: mc_fp_t
Squared radius of the optical fibers.
cos_min: mc_fp_t
Cosine of the maximum acceptance angle (in the detector
coordinate space).
offset: mc_int_t
The offset of the first accumulator in the Monte Carlo
detector buffer.
'''
_fields_ = [
('transformation', T.mc_matrix3f_t),
('first_position', T.mc_point2f_t),
('delta_position', T.mc_point2f_t),
('core_r_squared', T.mc_fp_t),
('cos_min', T.mc_fp_t),
('offset', T.mc_size_t),
]
return ClLinearArray
[docs] def cl_declaration(self, mc: mcobject.McObject) -> str:
'''
Structure that defines the detector in the Monte Carlo simulator.
'''
loc = self.location
Loc = loc.capitalize()
return '\n'.join((
'struct MC_STRUCT_ATTRIBUTES Mc{}Detector{{'.format(Loc),
' mc_matrix3f_t transformation;'
' mc_point2f_t first_position;'
' mc_point2f_t delta_position;'
' mc_fp_t core_r_squared;',
' mc_fp_t cos_min;',
' mc_size_t offset;',
'};'
))
[docs] def cl_implementation(self, mc: mcobject.McObject) -> str:
'''
Implementation of the detector accumulator in the Monte Carlo simulator.
'''
loc = self.location
Loc = loc.capitalize()
return '\n'.join((
'void dbg_print_{}_detector(__mc_detector_mem const Mc{}Detector *detector){{'.format(loc, Loc),
' dbg_print("Mc{}Detector - LinearArray fiber array detector:");'.format(Loc),
' dbg_print_matrix3f(INDENT "transformation:", &detector->transformation);',
' dbg_print_point2f(INDENT "first_position:", &detector->first_position);',
' dbg_print_point2f(INDENT "delta_position:", &detector->delta_position);',
' dbg_print_float(INDENT "core_r_squared (mm2):", detector->core_r_squared*1e6f);',
' dbg_print_float(INDENT "cos_min:", detector->cos_min);',
' dbg_print_size_t(INDENT "offset:", detector->offset);',
'};',
'',
'inline void mcsim_{}_detector_deposit('.format(loc),
' McSim *mcsim, ',
' mc_point3f_t const *pos, mc_point3f_t const *dir, ',
' mc_fp_t weight){',
'',
' __global mc_accu_t *address;',
'',
' dbg_print_status(mcsim, "{} LinearArray fiber array detector hit");'.format(Loc),
'',
' __mc_detector_mem const Mc{}Detector *detector = '.format(Loc),
' mcsim_{}_detector(mcsim);'.format(loc),
'',
' mc_size_t fiber_index = {}; /* invalid index ... no fiber hit */'.format(self._n),
'',
' mc_fp_t dx, dy, r_squared;',
' mc_point3f_t mc_pos, detector_pos;',
' mc_fp_t fiber_x = detector->first_position.x;',
' mc_fp_t fiber_y = detector->first_position.y;',
'',
' pragma_unroll_hint({})'.format(self._n),
' for(mc_size_t index=0; index < {}; ++index){{'.format(self._n),
' mc_pos.x = pos->x - fiber_x;',
' mc_pos.y = pos->y - fiber_y;',
' mc_pos.z = FP_0;',
'',
' mc_matrix3f_t transformation = detector->transformation;',
' transform_point3f(&transformation, &mc_pos, &detector_pos);',
' dx = detector_pos.x;',
' dy = detector_pos.y;',
' r_squared = dx*dx + dy*dy;',
'',
' if (r_squared <= detector->core_r_squared){',
' /* hit this fiber */',
' fiber_index = index;',
' break;',
' };',
'',
' fiber_x += detector->delta_position.x;',
' fiber_y += detector->delta_position.y;',
' };',
'',
' if (fiber_index >= {})'.format(self._n),
' return;',
'',
' address = mcsim_accumulator_buffer_ex(',
' mcsim, detector->offset + fiber_index);',
'',
' /* Transfor direction vector component z into the detector space. */',
' mc_fp_t pz = transform_point3f_z(&detector->transformation, dir);',
' dbg_print_float("Packet direction z:", pz);',
' uint32_t ui32w = weight_to_int(weight)*',
' (detector->cos_min <= mc_fabs(pz));',
'',
' if (ui32w > 0){',
' dbg_print("{} LinearArray fiber array detector depositing:");'.format(Loc),
' dbg_print_uint(INDENT "uint weight:", ui32w);',
' dbg_print_size_t(INDENT "to fiber index:", fiber_index);',
' accumulator_deposit(address, ui32w);',
' };',
'};',
))
def __init__(self, fiber: MultimodeFiber, n=1,
spacing: float = None, orientation: Tuple[float, float] = (1.0, 0.0),
position: Tuple[float, float] = (0.0, 0.0),
direction: Tuple[float, float, float] = (0.0, 0.0, 1.0)):
'''
Optical fiber probe detector with a linear array of optical fibers that
are optionally tilted(direction parameter). The optical fibers are
always polished in a way that forms a tight optical contact with
the surface of the sample.
Parameters
----------
fiber: MultimodeFiber
Optical properties of the fibers.
n: int
The number of optical fibers in the linear array. This option
is a compile-time feature and caanot be changed once the detector
object is created.
spacing: float
Spacing between the optical fibers. If spacing is None,
a tight layout is used with spacing set to the outer diameter
of the fiber cladding.
orientation: (float, float)
Vector that points in the direction of the linear fiber array.
By default the fibers are place in the direction of x axis,
i.e. vector (1.0, 0.0).
The orientation must point in the direction from the first to
the last optical fiber!
position: (float, float)
Position of the center of the linear fiber array.
direction: (float, float, float)
Reference direction / orientation of the detector fibers. Fibers
are oriented in this direction and polished to form a tight optical
contact with the sample (the fiber cross sections are ellipsoids
if the direction is not perpendicular, i.e different
from (0, 0, 1).
'''
if isinstance(fiber, LinearArray):
la = fiber
fiber = la.fiber
n = la.n
spacing = la.spacing
orientation = la.orientation
position = la.position
direction = la.direction
nphotons = la.nphotons
raw_data = np.copy(la.raw)
else:
nphotons = 0
n = max(int(n), 1)
raw_data = np.zeros((n,))
if spacing is None:
spacing = fiber.dcladding
super().__init__(raw_data, nphotons)
self._n = 0
self._fiber = None
self._spacing = 0.0
self._orientation = np.array((1.0, 0.0))
self._direction = np.array((0.0, 0.0, 1.0))
self._position = np.array((0.0, 0.0))
self._set_fiber(fiber)
self._n = max(int(n), 1)
self._set_spacing(spacing)
self._set_orientation(orientation)
self._set_position(position)
self._set_direction(direction)
[docs] def update(self, other: 'LinearArray' or dict):
'''
Update this detector configuration from the other detector. The
other detector must be of the same type as this detector or a dict with
appropriate fields.
Parameters
----------
other: LinearArray or dict
This source is updated with the configuration of the other source.
'''
if isinstance(other, LinearArray):
self.fiber = other.fiber
self.spacing = other.spacing
self.orientation = other.orientation
self.position = other.position
self.direction = other.direction
elif isinstance(other, dict):
self.fiber = other.get('fiber', self.fiber)
self.spacing = other.get('spacing', self.spacing)
self.orientation = other.get('orientation', self.orientation)
self.position = other.get('position', self.position)
self.direction = other.get('direction', self.direction)
def _get_fiber(self) -> Tuple[float, float]:
return self._fiber
def _set_fiber(self, value: float or Tuple[float, float]):
self._fiber = value
fiber = property(_get_fiber, _set_fiber, None,
'Properties of the optical fibers used by the detector.')
def _get_n_fiber(self) -> int:
return self._n
n = property(_get_n_fiber, None, None,
'Number of optical fiber in the linear array.')
def _get_spacing(self) -> float:
return self._spacing
def _set_spacing(self, value:float):
self._spacing = float(value)
spacing = property(_get_spacing, _set_spacing, None,
'Spacing between the centers of the optical fibers')
def _get_orientation(self) -> Tuple[float, float]:
return self._orientation
def _set_orientation(self, orientation: Tuple[float, float]):
self._orientation[:] = orientation
norm = np.linalg.norm(self._orientation)
if norm == 0.0:
raise ValueError('Orientation vector norm/length must not be 0!')
self._orientation *= 1.0/norm
orientation = property(_get_orientation, _set_orientation, None,
'Orientation / direction of the linear fiber array.')
def _get_position(self) -> Tuple[float, float]:
return self._position
def _set_position(self, value: float or Tuple[float, float]):
self._position[:] = value
position = property(_get_position, _set_position, None,
'Position of the fiber array center as a tuple (x, y).')
def _get_direction(self) -> Tuple[float, float, float]:
return self._direction
def _set_direction(self, direction: Tuple[float, float, float]):
self._direction[:] = direction
norm = np.linalg.norm(self._direction)
if norm == 0.0:
raise ValueError('Direction vector norm/length must not be 0!')
self._direction *= 1.0/norm
direction = property(_get_direction, _set_direction, None,
'Detector reference direction.')
[docs] def check(self):
'''
Check if the configuration has errors and raise exceptions if so.
'''
if self._spacing < self.fiber.dcore:
raise ValueError('Spacing between the optical fibers is smaller '
'than the diameter of the fiber core!')
return True
[docs] def fiber_position(self, index: int) -> Tuple[float, float]:
'''
Returns the position of the fiber center as a tuple (x, y).
Parameters
----------
index: int
Fiber index from 0 to n - 1.
Returns
-------
position: (float, float)
The position of the fiber center as a tuple (x, y).
'''
if index >= self._n or index < -self._n:
raise IndexError('The fiber index is out of valid range!')
left = self._position - self._orientation*self._spacing*(self._n - 1)*0.5
return tuple(left + self._spacing*self._orientation*int(index))
def _get_normalized(self) -> np.ndarray:
return self.raw*(1.0/max(self.nphotons, 1.0))
normalized = property(_get_normalized, None, None, 'Normalized.')
reflectance = property(_get_normalized, None, None, 'Reflectance.')
transmittance = property(_get_normalized, None, None, 'Transmittance.')
[docs] def cl_pack(self, mc: mcobject.McObject,
target : cltypes.Structure = None) -> cltypes.Structure:
'''
Fills the structure (target) with the data required by the
Monte Carlo simulator.
See the :py:meth:`LinearArray.cl_type` method for a detailed list
of fields.
Parameters
----------
mc: mcobject.McObject
Monte Carlo simulator instance.
target: cltypes.Structure
Ctypes structure that is filled with the source data.
Returns
-------
target: cltypes.Structure
Filled structure received as an input argument or a new
instance if the input argument target is None.
'''
if target is None:
target_type = self.cl_type(mc)
target = target_type()
allocation = mc.cl_allocate_rw_accumulator_buffer(self, self.shape)
target.offset = allocation.offset
adir = self._direction[0], self._direction[1], abs(self._direction[2])
T = geometry.transform_base(adir, (0.0, 0.0, 1.0))
target.transformation.fromarray(T)
target.core_r_squared = 0.25*self.fiber.dcore**2
target.cos_min = (1.0 - (self._fiber.na/self._fiber.ncore)**2)**0.5
target.first_position.fromarray(self.fiber_position(0))
target.delta_position.fromarray(self._orientation*self._spacing)
return target
[docs] def todict(self):
'''
Save the accumulator configuration without the accumulator data to
a dictionary. Use the :meth:`LinearArray.fromdict` method to create a new
accumulator instance from the returned data.
Returns
-------
data: dict
Accumulator configuration as a dictionary.
'''
return {
'type':'LinearArray',
'fiber': self._fiber.todict(),
'n': self._n,
'orientation': self._orientation,
'spacing': self._spacing,
'position':self._position.tolist(),
'direction':self.direction.tolist(),
}
[docs] @staticmethod
def fromdict(data):
'''
Create an accumulator instance from a dictionary.
Parameters
----------
data: dict
Dictionary created by the :py:meth:`LinearArray.todict` method.
'''
detector_type = data.pop('type')
if detector_type != 'LinearArray':
raise TypeError(
'Expected a "LinearArray" type bot got "{}"!'.format(
detector_type))
fiber = data.pop('fiber')
fiber = MultimodeFiber.fromdict(fiber)
return LinearArray(fiber, **data)
def __str__(self):
return 'LinearArray(fiber={}, n={}, spacing={}, orientation=({}, {}), '\
'position=({}, {}), direction=({}, {}, {}))'.format(
self._fiber, self._n, self._spacing, *self._orientation,
*self._position, *self._direction)
def __repr__(self):
return '{} #{}'.format(self.__str__(), id(self))