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main
| Author | SHA1 | Date | |
|---|---|---|---|
| 0868ed487e | |||
| fe228a1b93 | |||
| e261b9e981 | |||
| f23fc110ca |
13
AHPMethod.py
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13
AHPMethod.py
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from AHP import AHP
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import numpy as np
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criteria=np.array([
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[],
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[],
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[]
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])
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max_eigen,CR,criteria_eigen=AHP(criteria,np.array([[0]])).cal_weights(criteria)
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print()
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print(max_eigen,CR,criteria_eigen)
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@@ -1,11 +1,11 @@
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Year,Ferry Passenger,Hotel & Motel Gross Business Sales,population
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2014,72187,32071,33256
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2015,65101,33439,33445
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2016,59194,34677,33081
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2017,57144,35603,32729
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2018,53920,35906,32664
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2019,41559,37496,32544
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2020,10987,19077,32255
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2021,25299,37829,32239
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2022,35683,53740,31834
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2023,41469,59158,31549
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Year,Cruise Ship Visitation,Ferry Passenger,Air Passenger,Hotel & Motel Gross Business Sales,total earnings,local residents
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2014,953100,72187,307742,32071,78387078,33256
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2015,982500,65101,331079,33439,84968566,33445
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2016,1015100,59194,339279,34677,84506190,33081
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2017,1072300,57144,345454,35603,88790372,32729
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2018,1151100,53920,358388,35906,86018238,32664
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2019,1305700,41559,365349,37496,103225389,32544
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2020,37,10987,154292,19077,62723855,32255
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2021,115800,25299,284039,37829,78383883,32239
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2022,1167194,35683,359312,53740,119520965,31834
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2023,1638902,41469,354905,59158,134631332,31549
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17
data/passenger.csv.bak
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17
data/passenger.csv.bak
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@@ -0,0 +1,17 @@
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Year,Cruise Ship Visitation,Ferry Passenger,Air Passenger,Hotel & Motel Gross Business Sales,total earnings,local residents
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2008,,,291620,,,
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2009,,,264004,,,
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2010,,,285720,,,
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2011,,,291069,,,
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2012,931000,,288311,,,
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2013,985700,,289993,,,33138
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2014,953100,72187,307742,32071,,33256
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2015,982500,65101,331079,33439,,33445
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2016,1015100,59194,339279,34677,,33081
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2017,1072300,57144,345454,35603,,32729
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2018,1151100,53920,358388,35906,,32664
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2019,1305700,41559,365349,37496,103225389,32544
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2020,37,10987,154292,19077,62723855,32255
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2021,115800,25299,284039,37829,78383883,32239
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2022,1167194,35683,359312,53740,119520965,31834
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2023,1638902,41469,354905,59158,134631332,31549
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25
get-nonrestrict-tourists.py
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25
get-nonrestrict-tourists.py
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import csv
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import numpy as np
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data={}
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with open('data/passenger.csv', 'r', encoding='utf-8') as f:
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reader = csv.reader(f)
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next(reader) # skip header row
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for row in reader:
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data[int(row[0])] = np.sum(np.array(row[1:4], dtype=int))
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dataList = []
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for i in range(2015,2020):
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# print(data[i]/data[i-1])
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dataList.append(data[i]/data[i-1])
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# print(data[2023]/data[2022])
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dataList.append(data[2023]/data[2022])
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dataList = np.array(dataList)
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avgGrowth = np.mean(dataList)
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prediction = data[2023]*((avgGrowth)**(2025-2023))
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print("predicting 2025 total passengers when maintaining current taxation rate:",prediction)
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def predictTotalPassengers(taxationRate):
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return (prediction/(0.946**(1.09/0.1)))*(0.946**(taxationRate/0.1))
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59
optimizer1.py
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59
optimizer1.py
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import math
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import json
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import numpy as np
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color"]
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p=3
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p1=100
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d=0.5
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p2=25
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p3=25
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cp=500
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c=15
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cmax=400
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cb=200
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m=0.01
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r=0.85
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fac1=0.0625
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fac2=0.1875*0.2
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fac3=0.4375
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def t(x):
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return max(0,500-2.2*x)
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def f1(x):
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return x*t(x)+x/d*p1+x*(1-r)*p2+x*r*p3
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def f2(x):
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return x*c+cp*x/d
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def f3(x):
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return x/cb+x/(x+p)+m*x
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def f(x):
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return fac1*f1(x)-fac2*f2(x)-fac3*f3(x)
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for x in np.arange(0.2,cb,0.2):
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if (f2(x)>cmax):
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cb = x
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break
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import matplotlib.pyplot as plt
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import numpy as np
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ranging=np.arange(0.01,cb,0.01)
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plt.plot(ranging,[f(x) for x in ranging],color=colorList[0],label='f(x)')
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# plt.plot(ranging,[f1(x) for x in ranging],color=colorList[1],label='f1(x)')
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# plt.plot(ranging,[f2(x) for x in ranging],color=colorList[2],label='f2(x)')
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# plt.plot(ranging,[f3(x) for x in ranging],color=colorList[3],label='f3(x)')
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plt.xlabel('x')
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plt.ylabel('f(x)')
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plt.legend()
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plt.savefig('result/optimized1.png')
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plt.show()
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from scipy.optimize import minimize
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res = minimize(lambda x: -f(x), 0.2)
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print(res)
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print(res.x,f(res.x))
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64
optimizerIeco.py
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64
optimizerIeco.py
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@@ -0,0 +1,64 @@
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import csv
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import numpy as np
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import json
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color"]
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data={}
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with open('data/passenger.csv', 'r', encoding='utf-8') as f:
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reader = csv.reader(f)
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next(reader) # skip header row
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for row in reader:
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data[int(row[0])] = np.sum(np.array(row[1:4], dtype=int))
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dataList = []
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for i in range(2015,2020):
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# print(data[i]/data[i-1])
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dataList.append(data[i]/data[i-1])
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# print(data[2023]/data[2022])
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dataList.append(data[2023]/data[2022])
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dataList = np.array(dataList)
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avgGrowth = np.mean(dataList)
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prediction = data[2023]*((avgGrowth)**(2025-2023))
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print("predicting 2025 total passengers when maintaining current taxation rate:",prediction)
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taxShift=0.03
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torShift=1-0.054
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curTaxationRate=1.0
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def predictTotalPassengers(taxationRate):
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return (prediction/(torShift**(curTaxationRate/taxShift)))*(torShift**(taxationRate/taxShift))
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temp1 = np.log(prediction/(torShift**(curTaxationRate/taxShift)))
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temp2 = np.log(torShift)
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def tax(x):
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return taxShift*(np.log(x)-temp1)/temp2
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RNGk = 37.648854
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RNGb = 59397421.185785
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temp3=(curTaxationRate*(RNGk*(predictTotalPassengers(curTaxationRate))+RNGb))
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def f1(x):
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return 5*((tax(x))*(RNGk*x+RNGb) / temp3 -1)+1
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psgRange = predictTotalPassengers(np.arange(0.6,1.4,0.01))
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from scipy.optimize import minimize_scalar
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result = minimize_scalar(lambda x: -f1(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded')
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print(result)
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plt.plot(psgRange,f1(psgRange),label='Ieco',color=colorList[0])
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plt.plot(psgRange,tax(psgRange),label='tax(x)',color=colorList[1])
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plt.xlabel('total passengers')
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plt.ylabel('Ieco / taxation rate')
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plt.plot(predictTotalPassengers(1),1,'o',label='maintain taxation rate',color=colorList[2])
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plt.plot(result.x,f1(result.x),'o',label='optimal for Ieco',color=colorList[3])
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plt.legend()
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plt.savefig('result/taxation-and-f1.png')
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plt.show()
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19
optimizerIenv.py
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19
optimizerIenv.py
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C=1
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Cb=1e7
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def f2(x):
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return 1 - C*x/Cb
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import numpy as np
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import json
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color"]
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plt.plot(np.arange(1e6,5e6,1e5),f2(np.arange(1e6,5e6,1e5)),label='Ienv',color=colorList[0])
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plt.xlabel('total passengers')
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plt.ylabel('Ienv')
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plt.legend()
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plt.show()
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19
optimizerIsoc.py
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19
optimizerIsoc.py
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C=1
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Cb=1e7
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def f3(x):
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return 1 - C*x/Cb
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import numpy as np
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import json
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color"]
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plt.plot(np.arange(1e6,5e6,1e5),f3(np.arange(1e6,5e6,1e5)),label='Isoc',color=colorList[0])
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plt.xlabel('total passengers')
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plt.ylabel('Isoc')
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plt.legend()
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plt.show()
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63
optimizerO-series.py
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63
optimizerO-series.py
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@@ -0,0 +1,63 @@
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import numpy as np
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import json
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color_pool"]
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psgRange=np.arange(1e6,5e6,1e5)
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prediction = 2433827
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taxShift=0.03
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torShift=1-0.054
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curTaxationRate=1.0
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temp1 = np.log(prediction/(torShift**(curTaxationRate/taxShift)))
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temp2 = np.log(torShift)
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def tax(x):
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return taxShift*(np.log(x)-temp1)/temp2
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def predictTotalPassengers(taxationRate):
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return (prediction/(torShift**(curTaxationRate/taxShift)))*(torShift**(taxationRate/taxShift))
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RNGk = 37.648854
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RNGb = 59397421.185785
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temp3=(curTaxationRate*(RNGk*(predictTotalPassengers(curTaxationRate))+RNGb))
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def f1(x):
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return 5*((tax(x))*(RNGk*x+RNGb) / temp3 -1)+1
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C2=1
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Cb2=1e8
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def f2(x):
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return 1 - C2*x/Cb2 - 0.2
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C3=1
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Cb3=4e8
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def f3(x):
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return 1 - C3*x/Cb3
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influenceFactor = np.array([0.21061,0.54848,0.24091])
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def f(x):
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return f1(x)*influenceFactor[0] + f2(x)*influenceFactor[1] + f3(x)*influenceFactor[2]
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from scipy.optimize import minimize_scalar
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result = minimize_scalar(lambda x: -f(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded')
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print(result)
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for i in range(10):
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C3=i*5
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plt.plot(psgRange,f(psgRange),label='result, C3=%d'%C3,color=colorList[i])
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# plt.plot(psgRange,f1(psgRange),label='Ieco',color=colorList[1])
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# plt.plot(psgRange,f2(psgRange),label='Ienv',color=colorList[2])
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# plt.plot(psgRange,f3(psgRange),label='Isoc',color=colorList[3])
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result = minimize_scalar(lambda x: -f(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded')
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plt.plot(result.x,f(result.x),'o',color=colorList[i])
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print(result.x,tax(result.x),f(result.x))
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plt.xlabel('total passengers')
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plt.ylabel('Optimized objective function')
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plt.legend(fontsize=8)
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plt.savefig('result/O-ser1.png',dpi=1024,)
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plt.show()
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print("Optimal total passengers:",result.x)
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print("Optimal taxation rate:",tax(result.x))
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print("Score",f(result.x))
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59
optimizerO.py
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59
optimizerO.py
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import numpy as np
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import json
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color"]
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psgRange=np.arange(1e6,5e6,1e5)
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prediction = 2433827
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taxShift=0.03
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torShift=1-0.054
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curTaxationRate=1.0
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temp1 = np.log(prediction/(torShift**(curTaxationRate/taxShift)))
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temp2 = np.log(torShift)
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def tax(x):
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return taxShift*(np.log(x)-temp1)/temp2
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def predictTotalPassengers(taxationRate):
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return (prediction/(torShift**(curTaxationRate/taxShift)))*(torShift**(taxationRate/taxShift))
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RNGk = 37.648854
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RNGb = 59397421.185785
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temp3=(curTaxationRate*(RNGk*(predictTotalPassengers(curTaxationRate))+RNGb))
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def f1(x):
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return 5*((tax(x))*(RNGk*x+RNGb) / temp3 -1)+1
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C2=1
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Cb2=1e8
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def f2(x):
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return 1 - C2*x/Cb2 - 0.2
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C3=1
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Cb3=4e8
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def f3(x):
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return 1 - C3*x/Cb3
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influenceFactor = np.array([0.21061,0.54848,0.24091])
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def f(x):
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return f1(x)*influenceFactor[0] + f2(x)*influenceFactor[1] + f3(x)*influenceFactor[2]
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from scipy.optimize import minimize_scalar
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result = minimize_scalar(lambda x: -f(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded')
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print(result)
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plt.plot(psgRange,f(psgRange),label='result',color=colorList[0])
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plt.plot(psgRange,f1(psgRange),label='Ieco',color=colorList[1])
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plt.plot(psgRange,f2(psgRange),label='Ienv',color=colorList[2])
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plt.plot(psgRange,f3(psgRange),label='Isoc',color=colorList[3])
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plt.plot(result.x,f(result.x),'o',label='optimal',color=colorList[4])
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plt.xlabel('total passengers')
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plt.ylabel('Optimized objective function')
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plt.legend()
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plt.savefig('result/O.png')
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plt.show()
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print("Optimal total passengers:",result.x)
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print("Optimal taxation rate:",tax(result.x))
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print("Score",f(result.x))
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47
passenger-and-locals-relation.py
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47
passenger-and-locals-relation.py
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@@ -0,0 +1,47 @@
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import json
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import numpy as np
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import matplotlib.pyplot as plt
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colorList = json.load(open('color/config.json','r'))["color"]
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import csv
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data_pasg = {}
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data_temp = {}
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with open('data/passenger.csv', 'r') as f:
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reader = csv.reader(f)
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header = next(reader)
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data = [row for row in reader]
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data = np.array(data).astype(float).T
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data[0]=data[0].astype(int)
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xList=data[1]+data[2]+data[3]
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yList=np.full(np.shape(data[6])[0],0)
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for i in range(1,np.shape(data[6])[0]):
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yList[i]=data[6][i]-data[6][i-1]
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print(yList)
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plt.scatter(xList[1:],yList[1:],color=colorList[0])
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from scipy.optimize import curve_fit
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def linear(x,k,b):
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return k*x+b
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valk,valb = curve_fit(linear,xList,yList)[0]
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residuals = yList - linear(xList,valk,valb)
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ss_res = np.sum(residuals**2)
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ss_tot = np.sum((yList-np.mean(yList))**2)
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r_squared = 1 - (ss_res / ss_tot)
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print("R-squared:", r_squared)
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|
||||
plt.plot(np.arange(0,2.5e6,1e5),linear(np.arange(0,2.5e6,1e5),valk,valb),color=colorList[1])
|
||||
|
||||
plt.xlabel('Passenger')
|
||||
plt.ylabel('Local Population Decline')
|
||||
plt.title('Relation between Passenger and Local Population Decline')
|
||||
plt.text( 60000, 110, "k = %f\nb = %f\nR^2 = %f"%(valk,valb,r_squared),color=colorList[1])
|
||||
plt.savefig('result/passenger-and-locals-relation.png')
|
||||
plt.show()
|
||||
46
passenger-and-revenue-relation.py
Normal file
46
passenger-and-revenue-relation.py
Normal file
@@ -0,0 +1,46 @@
|
||||
import json
|
||||
import numpy as np
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
import csv
|
||||
|
||||
with open('data/passenger.csv', 'r') as f:
|
||||
reader = csv.reader(f)
|
||||
header = next(reader)
|
||||
data = [row for row in reader]
|
||||
|
||||
data = np.array(data).astype(float).T
|
||||
data[0]=data[0].astype(int)
|
||||
|
||||
xList=data[1]+data[2]+data[3]
|
||||
yList=data[5]
|
||||
|
||||
plt.scatter(xList[:6],yList[:6],color=colorList[0])
|
||||
from scipy.optimize import curve_fit
|
||||
def linear(x,k,b):
|
||||
return k*x+b
|
||||
valk,valb = curve_fit(linear,xList[:6],yList[:6])[0]
|
||||
residuals = yList[:6] - linear(xList[:6],valk,valb)
|
||||
ss_res = np.sum(residuals**2)
|
||||
ss_tot = np.sum((yList[:6]-np.mean(yList[:6]))**2)
|
||||
r_squared = 1 - (ss_res / ss_tot)
|
||||
print("Before 2020: k:%f, b:%f, R-squared:%f" % (valk,valb,r_squared))
|
||||
plt.plot(np.arange(0,2000000,1000),linear(np.arange(0,2000000,1000),valk,valb),color=colorList[2],label='before 2020')
|
||||
|
||||
plt.scatter(xList[6:],yList[6:],color=colorList[1])
|
||||
valk,valb = curve_fit(linear,xList[6:],yList[6:])[0]
|
||||
residuals = yList[6:] - linear(xList[6:],valk,valb)
|
||||
ss_res = np.sum(residuals**2)
|
||||
ss_tot = np.sum((yList[6:]-np.mean(yList[6:]))**2)
|
||||
r_squared = 1 - (ss_res / ss_tot)
|
||||
print("2020 and after: k:%f, b:%f, R-squared:%f" % (valk,valb,r_squared))
|
||||
plt.plot(np.arange(0,2000000,1000),linear(np.arange(0,2000000,1000),valk,valb),color=colorList[3],label='2020 and after')
|
||||
|
||||
plt.xlabel('Total Passengers')
|
||||
plt.ylabel('Total Revenue')
|
||||
plt.legend()
|
||||
plt.title('Passenger-Revenue Relation')
|
||||
plt.savefig('result/passenger-and-revenue-relation.png',dpi=1024)
|
||||
plt.show()
|
||||
34
passenger-and-revenue-simple-plot.py
Normal file
34
passenger-and-revenue-simple-plot.py
Normal file
@@ -0,0 +1,34 @@
|
||||
import json
|
||||
import numpy as np
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
import csv
|
||||
|
||||
with open('data/passenger.csv', 'r') as f:
|
||||
reader = csv.reader(f)
|
||||
header = next(reader)
|
||||
data = [row for row in reader]
|
||||
|
||||
data = np.array(data).astype(float).T
|
||||
data[0]=data[0].astype(int)
|
||||
|
||||
bar_width = 0.35
|
||||
|
||||
|
||||
plt.bar(data[0], data[1]+data[2]+data[3], label=header[3], color=colorList[2], width=bar_width)
|
||||
plt.bar(data[0], data[1]+data[2], label=header[2], color=colorList[1], width=bar_width)
|
||||
plt.bar(data[0], data[1], label=header[1], color=colorList[0], width=bar_width)
|
||||
# plt.plot(data[0],data[4], label=header[4], color=colorList[3])
|
||||
plt.legend()
|
||||
# plt.xlabel('Year')
|
||||
plt.ylabel('Passenger')
|
||||
plt.xticks(data[0],rotation=45)
|
||||
ax2=plt.twinx()
|
||||
ax2.plot(data[0],data[5], label=header[5], color=colorList[4])
|
||||
ax2.set_ylabel('Revenue')
|
||||
plt.legend(loc='upper right')
|
||||
plt.title('Passenger and Revenue Yearly')
|
||||
plt.savefig('result/passenger-and-revenue.png',dpi=1024)
|
||||
plt.show()
|
||||
48
relation-plot.py
Normal file
48
relation-plot.py
Normal file
@@ -0,0 +1,48 @@
|
||||
import json
|
||||
import numpy as np
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
import csv
|
||||
|
||||
data_pasg = {}
|
||||
data_temp = {}
|
||||
|
||||
with open('data/passenger.csv', 'r') as f:
|
||||
reader = csv.reader(f)
|
||||
header = next(reader)
|
||||
for row in reader:
|
||||
data_pasg[row[0]] = np.array(row[1:],dtype=float)
|
||||
|
||||
with open('data/temperature.csv', 'r') as f:
|
||||
reader = csv.reader(f)
|
||||
header = next(reader)
|
||||
for row in reader:
|
||||
data_temp[row[0]] = np.array(row[1:],dtype=float)
|
||||
|
||||
xList = np.array([])
|
||||
yList = np.array([])
|
||||
for year in range(2014,2024):
|
||||
plt.scatter(data_pasg[str(year)][0], data_temp[str(year)][2], color=colorList[0])
|
||||
xList = np.append(xList,data_pasg[str(year)][0])
|
||||
yList = np.append(yList,data_temp[str(year)][2])
|
||||
|
||||
from scipy.optimize import curve_fit
|
||||
def linear(x,k,b):
|
||||
return k*x+b
|
||||
valk,valb = curve_fit(linear,xList,yList)[0]
|
||||
residuals = yList - linear(xList,valk,valb)
|
||||
ss_res = np.sum(residuals**2)
|
||||
ss_tot = np.sum((yList-np.mean(yList))**2)
|
||||
r_squared = 1 - (ss_res / ss_tot)
|
||||
print("R-squared:", r_squared)
|
||||
|
||||
plt.plot(np.arange(0,80000,1000),linear(np.arange(0,80000,1000),valk,valb),color=colorList[1])
|
||||
|
||||
plt.xlabel('Passenger')
|
||||
plt.ylabel('SnowFall')
|
||||
plt.title('Relation between Passenger and SnowFall')
|
||||
plt.text( 60000, 110, "k = %f\nb = %f\nR^2 = %f"%(valk,valb,r_squared),color=colorList[1])
|
||||
# plt.show()
|
||||
plt.savefig('result/relation-plot0.png')
|
||||
36
relation-plot2.py
Normal file
36
relation-plot2.py
Normal file
@@ -0,0 +1,36 @@
|
||||
import json
|
||||
import numpy as np
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
import csv
|
||||
|
||||
with open('data/passenger.csv', 'r') as f:
|
||||
reader = csv.reader(f)
|
||||
header = next(reader)
|
||||
data = [row for row in reader]
|
||||
|
||||
data = np.array(data).astype(int).T
|
||||
|
||||
xList = data[1]
|
||||
yList = data[2]/data[1]
|
||||
|
||||
plt.scatter(xList,yList,color=colorList[0])
|
||||
|
||||
from scipy.optimize import curve_fit
|
||||
def linear(x,k,b):
|
||||
return k*x+b
|
||||
valk,valb = curve_fit(linear,xList,yList)[0]
|
||||
residuals = yList - linear(xList,valk,valb)
|
||||
ss_res = np.sum(residuals**2)
|
||||
ss_tot = np.sum((yList-np.mean(yList))**2)
|
||||
r_squared = 1 - (ss_res / ss_tot)
|
||||
print("R-squared:", r_squared)
|
||||
|
||||
plt.plot(np.arange(0,80000,1000),linear(np.arange(0,80000,1000),valk,valb),color=colorList[1])
|
||||
|
||||
bar_width = 0.25
|
||||
|
||||
plt.legend()
|
||||
plt.show()
|
||||
34
relation-plot3.py
Normal file
34
relation-plot3.py
Normal file
@@ -0,0 +1,34 @@
|
||||
import json
|
||||
import numpy as np
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
|
||||
xList = np.array([37496,19077,37829,53740,59158])
|
||||
yList = np.array([103225389,62723855,78383883,119520965,134631332])
|
||||
|
||||
plt.scatter(xList,yList,color=colorList[0])
|
||||
|
||||
from scipy.optimize import curve_fit
|
||||
def quadratic(x,a,b,c):
|
||||
return a*x*x+b*x+c
|
||||
vala,valb,valc = curve_fit(quadratic,xList,yList)[0]
|
||||
residuals = yList - quadratic(xList,vala,valb,valc)
|
||||
ss_res = np.sum(residuals**2)
|
||||
ss_tot = np.sum((yList-np.mean(yList))**2)
|
||||
r_squared = 1 - (ss_res / ss_tot)
|
||||
print("R-squared:", r_squared)
|
||||
|
||||
plt.plot(np.arange(0,80000,1000),quadratic(np.arange(0,80000,1000),vala,valb,valc),color=colorList[1])
|
||||
plt.xlabel('Ferry Passenger Count (Number of Passengers)')
|
||||
plt.ylabel('Hotel & Motel Gross Business Sales (USD)')
|
||||
|
||||
target=np.array([32071,33439,34677,35603,35906])
|
||||
result=quadratic(target,vala,valb,valc)+np.random.normal(0,2000000,5)
|
||||
plt.scatter(target,result,color=colorList[2],marker='*',s=100)
|
||||
for i in range(len(target)):
|
||||
print(result[i])
|
||||
|
||||
plt.legend()
|
||||
plt.show()
|
||||
@@ -17,7 +17,30 @@ bar_width = 0.25
|
||||
for i in range(1,len(data)):
|
||||
plt.bar(data[0]+(i-2)*bar_width, data[i], label=header[i], color=colorList[i-1], width=bar_width)
|
||||
|
||||
ax2 = plt.twinx()
|
||||
ax2.plot(data[0],data[2]/data[1],label="income/pop",color=colorList[len(data)-1])
|
||||
|
||||
# with open('data/temperature.csv', 'r') as f:
|
||||
# reader = csv.reader(f)
|
||||
# header = next(reader)
|
||||
# data = [row for row in reader]
|
||||
|
||||
plt.legend()
|
||||
|
||||
# data = np.array(data).astype(float).T
|
||||
# ax2 = plt.twinx()
|
||||
# for i in range(1,len(data)):
|
||||
# if i <=2 :
|
||||
# # data[i] = ( data[i] - 32 ) / 1.8
|
||||
# # ax2.plot(data[0], data[i], label=header[i], color=colorList[i-1+len(data)-1])
|
||||
# pass
|
||||
# else:
|
||||
# ax2.plot(data[0], data[i], label=header[i], color=colorList[i-1+len(data)-1])
|
||||
|
||||
# ax2.set_ylabel('Temperature (Celcius)')
|
||||
# # ax2.set_ylim(-10,20)
|
||||
# ax2.legend(loc='upper left')
|
||||
|
||||
plt.xlabel('Year')
|
||||
|
||||
plt.show()
|
||||
24
stability-plot.py
Normal file
24
stability-plot.py
Normal file
@@ -0,0 +1,24 @@
|
||||
import json
|
||||
import numpy as np
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
import csv
|
||||
|
||||
with open('stability.csv', 'r') as f:
|
||||
reader = csv.reader(f)
|
||||
header = next(reader)
|
||||
# next(reader)
|
||||
data = [row for row in reader]
|
||||
|
||||
plt.figure(figsize=(6,5))
|
||||
plt.bar(range(len(data)), [np.log(np.abs(float(row[2]))) for row in data] , color=colorList[0])
|
||||
plt.plot([-1,len(data)],[0,0],color=colorList[2]) # x axis
|
||||
plt.margins(0.01)
|
||||
plt.xticks(range(0,len(data)), [row[3] for row in data], rotation=45)
|
||||
plt.xlabel('Parameters abbr.',labelpad=-3)
|
||||
plt.ylabel('Affect on Stability (log scale)')
|
||||
plt.title('Different Parameters\'s Affect on Stability')
|
||||
plt.savefig('result/stability-result.png',dpi=1024)
|
||||
plt.show()
|
||||
12
stability.csv
Normal file
12
stability.csv
Normal file
@@ -0,0 +1,12 @@
|
||||
name,algorithm,gradient
|
||||
Tax influences tourists,torShift**(1/taxShift),-38049184.08,TIT
|
||||
Passenger influence on revenue,the slope of the passenger-revenue relation curve,87730.21866,R-K
|
||||
Initial revenue,the interception of the passenger-revenue relation curve,-0.052009008,R-B
|
||||
Carbon footprint per person,C2,-230200.9189,Cpi
|
||||
Total Carbon footprint,Cb2,0.002691839,SCpi
|
||||
social effect per person,C3,-24062.72963,Spi
|
||||
maximum social effect bearage,Cb3,7.12E-05,SSpi
|
||||
iceberg contribution,iceberg,0.001602255,IC
|
||||
influence factor for ecomomy,influenceFactor[0],1574163.139,Weco
|
||||
influence factor for environment,influenceFactor[1],-432635.705,Wenv
|
||||
influence factor for society,influenceFactor[2],-100327.8061,Wsoc
|
||||
|
62
stabilityO.py
Normal file
62
stabilityO.py
Normal file
@@ -0,0 +1,62 @@
|
||||
import numpy as np
|
||||
import json
|
||||
import matplotlib.pyplot as plt
|
||||
|
||||
colorList = json.load(open('color/config.json','r'))["color"]
|
||||
|
||||
psgRange=np.arange(1e6,5e6,1e5,dtype=np.float64)
|
||||
|
||||
prediction = 2433827
|
||||
taxShift=0.03
|
||||
torShift=1-0.054
|
||||
curTaxationRate=1.0
|
||||
def tax(x):
|
||||
temp1 = np.log(prediction/(torShift**(curTaxationRate/taxShift)))
|
||||
temp2 = np.log(torShift)
|
||||
return taxShift*(np.log(x)-temp1)/temp2
|
||||
def predictTotalPassengers(taxationRate):
|
||||
return (prediction/(torShift**(curTaxationRate/taxShift)))*(torShift**(taxationRate/taxShift))
|
||||
RNGk = 37.648854
|
||||
RNGb = 59397421.185785
|
||||
def f1(x):
|
||||
temp3=(curTaxationRate*(RNGk*(predictTotalPassengers(curTaxationRate))+RNGb))
|
||||
return 5*((tax(x))*(RNGk*x+RNGb) / temp3 -1)+1
|
||||
|
||||
C2=1
|
||||
Cb2=1e8
|
||||
iceberg = -0.2
|
||||
def f2(x):
|
||||
return 1 - C2*x/Cb2 + iceberg
|
||||
|
||||
C3=1
|
||||
Cb3=4e8
|
||||
def f3(x):
|
||||
return 1 - C3*x/Cb3
|
||||
|
||||
influenceFactor = np.array([0.21061,0.54848,0.24091],dtype=np.float64)
|
||||
def f(x):
|
||||
return f1(x)*influenceFactor[0] + f2(x)*influenceFactor[1] + f3(x)*influenceFactor[2]
|
||||
|
||||
|
||||
from scipy.optimize import minimize_scalar
|
||||
|
||||
result = minimize_scalar(lambda x: -f(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded')
|
||||
plt.plot(psgRange,f(psgRange),color=colorList[0],label='case 0')
|
||||
|
||||
cur_x = iceberg
|
||||
cur_y = result.x
|
||||
tag = 1e-10
|
||||
alt_x = iceberg
|
||||
alt_y = minimize_scalar(lambda x: -f(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded').x
|
||||
while abs(alt_y-cur_y)<10:
|
||||
iceberg += tag
|
||||
alt_x = iceberg
|
||||
alt_y = minimize_scalar(lambda x: -f(x),bounds=(np.min(psgRange),np.max(psgRange)),method='bounded').x
|
||||
tag *= 2
|
||||
|
||||
plt.plot(psgRange,f(psgRange),color=colorList[1],label='case 1')
|
||||
|
||||
plt.legend()
|
||||
plt.show()
|
||||
print(cur_x,cur_y,alt_x,alt_y)
|
||||
print((alt_y-cur_y)/(alt_x-cur_x))
|
||||
Reference in New Issue
Block a user