149 lines
		
	
	
		
			4.1 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			149 lines
		
	
	
		
			4.1 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| #!/bin/env python
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| __author__ = 'dongyun.zdy'
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| 
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| 
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| import math
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| import numpy as np
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| from scipy.optimize import leastsq
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| from scipy.optimize import curve_fit
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| import sys
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| from lmfit import Model
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| import getopt
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| import os
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| #
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| # def array_model_form(args):
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| #     # (
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| #     #     Nelem,
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| #     # ) = args
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| #
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| #     Telem_ence = 0.00898860
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| #     Telem_copy = 0.00631888
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| #
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| #     Nelem = args
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| #
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| #     ELEM_PER_PAGE = 1024
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| #     extend_cnt = math.ceil(math.log(float(Nelem)/ELEM_PER_PAGE, 2))
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| #     if extend_cnt < 0:
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| #         extend_cnt = 0
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| #     copy_cnt = ELEM_PER_PAGE * (math.pow(2, extend_cnt) - 1)
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| #
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| #     total_cost = Telem_ence * Nelem
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| #     #total_cost += Tmem_alloc * extend_cnt
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| #     total_cost += Telem_copy * copy_cnt
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| #
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| #     return total_cost
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| 
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| def array_model_form(args,
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|                      #Tstartup,
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|                      Telem_ence,
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|                      Telem_copy,
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|                      #Tmem_alloc
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|                      ):
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|     # (
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|     #     Nelem,
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|     # ) = args
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| 
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|     Nelem = args
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| 
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|     ELEM_PER_PAGE = 1024
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|     extend_cnt = math.ceil(math.log(float(Nelem)/ELEM_PER_PAGE, 2))
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|     if extend_cnt < 0:
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|         extend_cnt = 0
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|     copy_cnt = ELEM_PER_PAGE * (math.pow(2, extend_cnt) - 1)
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| 
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|     total_cost = Telem_ence * Nelem
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|     #total_cost += Tmem_alloc * extend_cnt
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|     total_cost += Telem_copy * copy_cnt
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| 
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|     return total_cost
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| 
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| def material_model_arr(arg_sets,
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|                        # Tstartup,
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|                        Telem_ence,
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|                        Telem_copy,
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|                        #Tmem_alloc
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|                        ):
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|     res = []
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|     for single_arg_set in arg_sets:
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|         res.append(array_model_form(single_arg_set,
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|                                     # Tstartup,
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|                                     Telem_ence,
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|                                     Telem_copy,
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|                                     #Tmem_alloc
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|                                     ))
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|     return np.array(res)
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| 
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| material_model = Model(material_model_arr)
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| # material_model.set_param_hint("Tstartup", min=0.0)
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| material_model.set_param_hint("Telem_ence", min=0.0)
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| material_model.set_param_hint("Telem_copy", min=0.0)
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| #material_model.set_param_hint("Tmem_alloc", min=0.0)
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| 
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| def extract_info_from_line(line):
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|     splited = line.split(",")
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|     line_info = []
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|     for item in splited:
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|         line_info.append(float(item))
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|     return line_info
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| 
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| 
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| if __name__ == '__main__':
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|     #file_name = "scan_model.res.formal.prep"
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|     #out_file_name = "scan_model.fit"
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|     file_name = "array_result_final"
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|     out_file_name = "array_model"
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|     if os.path.exists(out_file_name):
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|         os.remove(out_file_name)
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|     #sys.argv.extend("-i arr.prep -o arr.model".split(" "))
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| 
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|     output_fit_res = True
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|     wrong_arg = False
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|     opts,args = getopt.getopt(sys.argv[1:],"i:o:")
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|     for op, value in opts:
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|         if "-i" == op:
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|             file_name = value
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|         elif "-o" == op:
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|             output_fit_res = True
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|             out_file_name = value
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|         else:
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|             wrong_arg = True
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| 
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|     if wrong_arg:
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|         print "wrong arg"
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|         sys.exit(1)
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| 
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|     file = open(file_name, "r")
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|     arg_sets = []
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|     times = []
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|     case_params = []
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|     for line in file:
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|         if line.startswith('#'):
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|             continue
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|         case_param = extract_info_from_line(line)
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|         case_params.append(case_param)
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|         arg_sets.append((case_param[0]))
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|         times.append(case_param[1])
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|     file.close()
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|     arg_sets_np = np.array(arg_sets)
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|     times_np = np.array(times)
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|     #10, 0.20406430879623488, 0.016618100054245379, 14.0, 4.5, 37.0, -0.005, 0.5, -7.0
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|     result = material_model.fit(times_np, arg_sets=arg_sets_np,
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|                             # Tstartup=10.0,
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|                             Telem_ence=1.0,
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|                             Telem_copy=1.0,
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|                             #Tmem_alloc=1.0
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|                             )
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| 
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| 
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|     # res_line = str(result.best_values["Tstartup"]) + ","
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|     res_line = str(result.best_values["Telem_ence"]) + ","
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|     res_line += str(result.best_values["Telem_copy"])# + ","
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|     #res_line += str(result.best_values["Tmem_alloc"])
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| 
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|     print result.fit_report()
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| 
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|     if output_fit_res:
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|         out_file = open(out_file_name, "w")
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|         out_file.write(res_line)
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|         out_file.close()
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