Newer
Older
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
# coding=utf-8
import os
from earthdiagnostics.diagnostic import Diagnostic, DiagnosticOption, DiagnosticDomainOption, \
DiagnosticFrequencyOption, DiagnosticVariableOption
from earthdiagnostics.frequency import Frequencies
from earthdiagnostics.utils import Utils, TempFile
from earthdiagnostics.modelingrealm import ModelingRealm
class DailyMean(Diagnostic):
"""
Calculates daily mean for a given variable
:original author: Javier Vegas-Regidor<javier.vegas@bsc.es>
:created: July 2016
:param data_manager: data management object
:type data_manager: DataManager
:param startdate: startdate
:type startdate: str
:param member: member number
:type member: int
:param chunk: chunk's number
:type chunk: int
:param variable: variable's name
:type variable: str
:param domain: variable's domain
:type domain: ModelingRealm
:param frequency: original frequency
:type frequency: str
:param grid: original data grid
:type grid: str
"""
alias = 'daymean'
"Diagnostic alias for the configuration file"
def __init__(self, data_manager, startdate, member, chunk, domain, variable, frequency, grid):
Diagnostic.__init__(self, data_manager)
self.startdate = startdate
self.member = member
self.chunk = chunk
self.variable = variable
self.domain = domain
self.frequency = frequency
self.grid = grid
def __str__(self):
return 'Calculate daily mean Startdate: {0} Member: {1} Chunk: {2} ' \
'Variable: {3}:{4} Original frequency: {5} Grid: {6}'.format(self.startdate, self.member, self.chunk,
self.domain, self.variable,
self.frequency, self.grid)
def __eq__(self, other):
return self.startdate == other.startdate and self.member == other.member and self.chunk == other.chunk and \
self.domain == other.domain and self.variable == other.variable and self.frequency == other.frequency and \
self.grid == other.grid
@classmethod
def generate_jobs(cls, diags, options):
"""
Creates a job for each chunk to compute the diagnostic
:param diags: Diagnostics manager class
:type diags: Diags
:param options: variable, domain, frequency=day, grid=''
:type options: list[str]
:return:
"""
options_available = (DiagnosticVariableOption('variable'),
DiagnosticDomainOption('domain'),
DiagnosticFrequencyOption('frequency'),
DiagnosticOption('grid', ''))
options = cls.process_options(options, options_available)
job_list = list()
for startdate, member, chunk in diags.config.experiment.get_chunk_list():
job_list.append(DailyMean(diags.data_manager, startdate, member, chunk,
options['domain'], options['variable'], options['frequency'], options['grid']))
return job_list
def compute(self):
"""
Runs the diagnostic
"""
day_mean = TempFile.get()
variable_file = self.data_manager.get_file(self.domain, self.variable, self.startdate, self.member, self.chunk,
frequency=self.frequency, grid=self.grid)
handler = Utils.openCdf(variable_file)
if 'region' in handler.variables:
noregion = TempFile.get()
Utils.nco.ncks(input=variable_file, output=noregion, options='-O -C -x -v region')
Utils.cdo.daymean(input=noregion, output=day_mean)
monmean_handler = Utils.openCdf(day_mean)
Utils.copy_variable(handler, monmean_handler, 'region')
monmean_handler.close()
else:
Utils.cdo.daymean(input=variable_file, output=day_mean)
os.remove(variable_file)
self.send_file(day_mean, self.domain, self.variable, self.startdate, self.member, self.chunk,
frequency=Frequencies.daily, grid=self.grid)