random-stuff/python_scripts/arc_sst_anom.py

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import json
import matplotlib.pyplot as plt
import numpy, pandas
import requests
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import sys
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sst_urls = {
"world": "https://climatereanalyzer.org/clim/sst_daily/json/oisst2.1_world2_sst_day.json",
"natlan": "https://climatereanalyzer.org/clim/sst_daily/json/oisst2.1_natlan1_sst_day.json"
}
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print(sys.argv[1])
start_range = 29
start_year = 1982
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res = requests.get(sst_urls[list(sst_urls)[int(sys.argv[1])]])
data = json.loads(res.text)
data = data[1:-3]
temps = numpy.array([i['data'] for i in data], numpy.float32).T
cols = [i['name'] for i in data]
df = pandas.DataFrame(temps, columns = cols)
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for col in cols:
if int(col) % 4 != 0:
df[col].iloc[60:] = df[col].iloc[60:].shift(1)
mean = df[df.columns[:start_range + 1]].mean(axis=1)
sd = df[df.columns[:start_range + 1]].std(axis=1)
diffs = pandas.DataFrame(columns = cols, dtype=numpy.float32)
for col in cols[start_range:]:
diffs[col] = (df[col] - mean) / sd
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series = diffs.melt().drop('variable', axis=1).rename(columns={'value': f'sd ({start_year}-{start_year + start_range})'})
series.plot(figsize=(20,5))
plt.xticks(numpy.arange(0,len(series),366)[start_range+1:], (numpy.arange(0, len(series), 366)[start_range+1:] / 366 + start_year).astype(int)) # fix labels
plt.show()