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-rw-r--r--lib/loader.py71
1 files changed, 0 insertions, 71 deletions
diff --git a/lib/loader.py b/lib/loader.py
index e8b5090..77b8652 100644
--- a/lib/loader.py
+++ b/lib/loader.py
@@ -1864,50 +1864,6 @@ class MIMOSA:
return calfunc, caldata
- """
- def calcgrad(self, currents, threshold):
- grad = np.gradient(running_mean(currents * self.voltage, 10))
- # len(grad) == len(currents) - 9
- subst = []
- lastgrad = 0
- for i in range(len(grad)):
- # minimum substate duration: 10ms
- if np.abs(grad[i]) > threshold and i - lastgrad > 50:
- # account for skew introduced by running_mean and current
- # ramp slope (parasitic capacitors etc.)
- subst.append(i+10)
- lastgrad = i
- if lastgrad != i:
- subst.append(i+10)
- return subst
-
- # TODO konfigurierbare min/max threshold und len(gradidx) > X, binaere
- # Sache nach noetiger threshold. postprocessing mit
- # "zwei benachbarte substates haben sehr aehnliche werte / niedrige stddev" -> mergen
- # ... min/max muessen nicht vorgegeben werden, sind ja bekannt (0 / np.max(grad))
- # TODO bei substates / index foo den offset durch running_mean beachten
- # TODO ggf. clustering der 'abs(grad) > threshold' und bestimmung interessanter
- # uebergaenge dadurch?
- def gradfoo(self, currents):
- gradients = np.abs(np.gradient(running_mean(currents * self.voltage, 10)))
- gradmin = np.min(gradients)
- gradmax = np.max(gradients)
- threshold = np.mean([gradmin, gradmax])
- gradidx = self.calcgrad(currents, threshold)
- num_substates = 2
- while len(gradidx) != num_substates:
- if gradmax - gradmin < 0.1:
- # We did our best
- return threshold, gradidx
- if len(gradidx) > num_substates:
- gradmin = threshold
- else:
- gradmax = threshold
- threshold = np.mean([gradmin, gradmax])
- gradidx = self.calcgrad(currents, threshold)
- return threshold, gradidx
- """
-
def analyze_states(self, charges, trigidx, ua_func):
u"""
Split log data into states and transitions and return duration, energy, and mean power for each element.
@@ -1942,27 +1898,6 @@ class MIMOSA:
for idx in trigger_indices:
range_raw = charges[previdx:idx]
range_ua = ua_func(range_raw)
- substates = {}
-
- if previdx != 0 and idx - previdx > 200:
- thr, subst = 0, [] # self.gradfoo(range_ua)
- if len(subst):
- statelist = []
- prevsubidx = 0
- for subidx in subst:
- statelist.append(
- {
- "duration": (subidx - prevsubidx) * 10,
- "uW_mean": np.mean(
- range_ua[prevsubidx:subidx] * self.voltage
- ),
- "uW_std": np.std(
- range_ua[prevsubidx:subidx] * self.voltage
- ),
- }
- )
- prevsubidx = subidx
- substates = {"threshold": thr, "states": statelist}
isa = "state"
if not is_state:
@@ -1981,12 +1916,6 @@ class MIMOSA:
if self.with_traces:
data["uW"] = range_ua * self.voltage
- if "states" in substates:
- data["substates"] = substates
- ssum = np.sum(list(map(lambda x: x["duration"], substates["states"])))
- if ssum != data["us"]:
- logger.warning("duration %d vs %d" % (data["us"], ssum))
-
if isa == "transition":
# subtract average power of previous state
# (that is, the state from which this transition originates)