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42 rrc pulse fixes #50

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Mar 23, 2023
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30 changes: 28 additions & 2 deletions torchsig/datasets/synthetic.py
Original file line number Diff line number Diff line change
Expand Up @@ -280,7 +280,12 @@ def _generate_samples(self, item: Tuple) -> np.ndarray:
symbols = const[symbol_nums]
zero_padded = np.zeros((self.iq_samples_per_symbol * len(symbols),), dtype=np.complex64)
zero_padded[::self.iq_samples_per_symbol] = symbols
self.pulse_shape_filter = self._rrc_taps(11, signal_description.excess_bandwidth)

# estimate total filter length for pulse shape
AdB = 72 # sidelobe attenuation level, 72 dB -> 12 bit dynamic range
pulse_shape_filter_length = estimate_filter_length(AdB,1,signal_description.excess_bandwidth)
pulse_shape_filter_span = int((pulse_shape_filter_length-1)/2) # convert filter length into the span
self.pulse_shape_filter = self._rrc_taps(pulse_shape_filter_span, signal_description.excess_bandwidth)
xp = cp if self.use_gpu else np
filtered = xp.convolve(xp.array(zero_padded), xp.array(self.pulse_shape_filter), "same")

Expand All @@ -296,7 +301,8 @@ def _rrc_taps(self, size_in_symbols: int, alpha: float = .35) -> np.ndarray:
n = np.arange(-M * Ns, M * Ns + 1)
taps = np.zeros(int(2 * M * Ns + 1))
for i in range(int(2 * M * Ns + 1)):
if abs(1 - 16 * alpha ** 2 * (n[i] / Ns) ** 2) <= np.finfo(np.float64).eps / 2:
# handle the discontinuity at t=+-Ns/(4*alpha)
if (n[i]*4*alpha == Ns or n[i]*4*alpha == -Ns):
taps[i] = 1 / 2. * ((1 + alpha) * np.sin((1 + alpha) * np.pi / (4. * alpha)) - (1 - alpha) * np.cos(
(1 - alpha) * np.pi / (4. * alpha)) + (4 * alpha) / np.pi * np.sin(
(1 - alpha) * np.pi / (4. * alpha)))
Expand Down Expand Up @@ -925,3 +931,23 @@ def _generate_samples(self, item: Tuple) -> np.ndarray:
np.random.set_state(orig_state) # return numpy back to its previous state

return modulated[-self.num_iq_samples:]


def estimate_filter_length ( AdB, fs, transitionBandwidth ):
# estimate the length of an FIR filter using harris' approximaion,
# N ~= (sampling rate/transition bandwidth)*(sidelobe attenuation in dB / 22)
# fred harris, Multirate Signal Processing for Communication Systems,
# Second Edition, p.59
filter_length = int(np.round((fs/transitionBandwidth)*(AdB/22)))

# odd-length filters are desirable because they do not introduce a half-sample delay
if (np.mod(filter_length,2) == 0):
filter_length += 1

return filter_length