Merge pull request #18 from nuluh/feature/15-normalize-dataset-by-preprocess-relatives-value-between-two-acceloremeter-sensors
Feature/15 normalize dataset by preprocess relatives value between two acceloremeter sensors
This commit was merged in pull request #18.
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.gitignore
vendored
2
.gitignore
vendored
@@ -1,4 +1,4 @@
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# Ignore CSV files in the data directory and all its subdirectories
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data/**/*.csv
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.venv/
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*.pyc
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File diff suppressed because one or more lines are too long
@@ -16,8 +16,10 @@ os.makedirs(processed_path, exist_ok=True)
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# Define the number of zeros to pad
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num_damages = 5
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num_tests = 10
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num_sensors = 2
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damage_pad = len(str(num_damages))
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test_pad = len(str(num_tests))
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sensor_pad = len(str(num_sensors))
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for damage in range(1, num_damages + 1): # 5 Damage levels starts from 1
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damage_folder = f"DAMAGE_{damage:0{damage_pad}}"
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@@ -25,23 +27,24 @@ for damage in range(1, num_damages + 1): # 5 Damage levels starts from 1
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os.makedirs(damage_path, exist_ok=True)
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for test in range(1, 11): # 10 Tests per damage level
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# Filename for the CSV
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csv_filename = f"D{damage:0{damage_pad}}_TEST{test:0{test_pad}}.csv"
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csv_path = os.path.join(damage_path, csv_filename)
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for sensor in range(1, 3): # 2 Sensors per test
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# Filename for the CSV
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csv_filename = f"D{damage:0{damage_pad}}_TEST{test:0{test_pad}}_{sensor:0{sensor_pad}}.csv"
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csv_path = os.path.join(damage_path, csv_filename)
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# Generate dummy data
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num_rows = 10
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start_time = datetime.now()
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timestamps = [start_time + timedelta(seconds=i*0.0078125) for i in range(num_rows)]
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values = np.random.randn(num_rows) # Random float values
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# Generate dummy data
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num_rows = 10
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start_time = datetime.now()
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timestamps = [start_time + timedelta(seconds=i*0.0078125) for i in range(num_rows)]
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values = np.random.randn(num_rows) # Random float values
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# Create DataFrame
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df = pd.DataFrame({
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"Time": timestamps,
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"Value": values
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})
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# Create DataFrame
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df = pd.DataFrame({
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"Time": timestamps,
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"Value": values
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})
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# Save the CSV file with a custom header
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with open(csv_path, 'w') as file:
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file.write('sep=,\n') # Writing the separator hint
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df.to_csv(file, index=False)
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# Save the CSV file with a custom header
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with open(csv_path, 'w') as file:
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file.write('sep=,\n') # Writing the separator hint
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df.to_csv(file, index=False)
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