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DeepStock/hts/BuySellChecker.py
dosang.yoon 3d1f73c087 init
2022-07-08 15:25:03 +09:00

267 lines
11 KiB
Python

import math
import pandas as pd
from stockpredictor.analysis.Common import Common
from stockpredictor.analysis.Stochastic import Stochastic
from stockpredictor.analysis.RSI import RSI
from stockpredictor.analysis.MACD import MACD
from stockpredictor.analysis.IchimokuCloud import IchimokuCloud
class BuySellChecker:
common = None
stochastic = None
rsi = None
ichimokuCloud = None
def __init__(self):
self.common = Common()
self.stochastic = Stochastic()
self.rsi = RSI()
self.macd = MACD()
self.ichimokuCloud = IchimokuCloud()
return
def getPriceAndWeight1(self, data, i):
buy, weight, sell = -1, -1, -1
if i >= 3:
################
### sell 분석 ###
################
# 1. 볼린져밴드 상단이 최고와 종가 사이 아래에 있는 경우 매도한다.
#if (data["high"][i] - data["close"][i]) / 2 + data["close"][i] > data["upper"][i]:
# sell = data["high"][i]
# 2. slow_k가 90이 넘으면 매도한다.
if data["slow_k"][i] > 90:
sell = data["high"][i]
#if data["slow_k"][i] >= 85:
# if data["slow_d"][i-1] < data["slow_k"][i-1] and data["slow_k"][i] < data["slow_d"][i]:
# sell = data["high"][i]
# 3. 2시 이후에는 최고가가 볼린져밴드 상단 위에 있으면 매도한다.
if i > 300 and data["high"][i] > data["upper"][i]:
sell = data["high"][i]
##########################
### buy 분석 ###
##########################
if data["low"][i] < data["lower"][i] + 5 and data["open"][i] <= data["close"][i]:
if data["slow_k"][i-1] < 30 and data["slow_k"][i] < 30:
if data["slow_k"][i-1] < data["slow_k"][i]:
buy = data["low"][i]
if data["rsi"][i] < 25:
if data["rsi"][i - 2] < data["rsis"][i - 2] and data["rsi"][i - 1] < data["rsis"][i - 1] and data["rsis"][i] < data["rsi"][i]:
if data["close"][i] < data["avg5"][i]:
buy = data["close"][i]
else:
buy = data["low"][i]
weight = 1
#############################
### STOCHASTIC weight 분석 ###
#############################
if data["slow_k"][i] in (0, 1, 2, 3):
weight = 1
if data["slow_k"][i] in (4, 5, 6, 7, 8):
weight = 1
elif data["slow_k"][i] in (9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20):
weight = 1
elif data["slow_k"][i] in (21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31, 32, 33, 34, 35):
weight = 1
return buy, weight, sell
def getPriceAndWeight2(self, data, i):
buy, weight, sell = -1, -1, -1
################
### sell 분석 ###
################
# 1. 볼린져밴드 상단이 최고와 종가 사이 아래에 있는 경우 매도한다.
if (data["high"][i] - data["close"][i]) / 2 + data["close"][i] > data["upper"][i]:
sell = data["high"][i]
if data["slow_k"][i] >= 85:
if data["slow_d"][i - 1] < data["slow_k"][i - 1] and data["slow_k"][i] < data["slow_d"][i]:
sell = data["high"][i]
# 3. 2시 이후에는 최고가가 볼린져밴드 상단 위에 있으면 매도한다.
if i > 300 and data["high"][i] > data["upper"][i]:
sell = data["high"][i]
##########################
### STOCHASTIC buy 분석 ###
##########################
if i < 40:
pre_slow = data["slow_k"][i - 1] / data["slow_d"][i - 1] - 1
now_slow = data["slow_k"][i] / data["slow_d"][i] - 1
if pre_slow < 0 and 0 < now_slow:
if data["slow_k"][i] <= 35:
if (data["close"][i] - data["lower"][i]) / (data["upper"][i] - data["lower"][i]) < 0.35:
if data["slow_k"][i - 1] < data["slow_d"][i - 1] and data["slow_d"][i] < data["slow_k"][i]:
if data['avg10'][i] < data['avg5'][i]:
if data["open"][i] < data["close"][i]:
buy = data["close"][i]
else:
buy = data["low"][i]
else:
pre_slow = data["slow_k"][i - 1] / data["slow_d"][i - 1] - 1
now_slow = data["slow_k"][i] / data["slow_d"][i] - 1
if pre_slow < 0 and pre_slow < now_slow and -0.15 < now_slow:
if data["slow_k"][i] <= 30:
if (data["close"][i] - data["lower"][i]) / (data["upper"][i] - data["lower"][i]) < 0.35:
if data["slow_k"][i - 1] < data["slow_d"][i - 1] and data["slow_d"][i] < data["slow_k"][i]:
if data['avg10'][i] < data['avg5'][i]:
if data["close"][i] < data["avg5"][i]:
buy = data["close"][i]
else:
buy = data["low"][i]
#############################
### STOCHASTIC weight 분석 ###
#############################
if data["slow_k"][i] in (0, 1, 2, 3):
weight = 1
if data["slow_k"][i] in (4, 5, 6, 7, 8):
weight = 1
elif data["slow_k"][i] in (9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20):
weight = 1
elif data["slow_k"][i] in (21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31, 32, 33, 34, 35):
weight = 1
return buy, weight, sell
def getPriceAndWeight3(self, data, i):
buy, weight, sell = -1, -1, -1
# 381: 어제 날짜 데이터 개수
if i >= 381+3:
# 매수 분석
if data["macdo"][i] < 0 and data["macd"][i] < -5:
if data["macd"][i-3] > data["macd"][i-2] and data["macd"][i-2] > data["macd"][i-1] and data["macd"][i-1] < data["macd"][i]:
buy = data["close"][i]
# 표준편차를 이용한 매매
mean = (data["avg3"][i] + data["avg5"][i] + data["avg10"][i] + data["avg20"][i] + data["avg30"][i])/5
vsum = (data["avg3"][i] - mean) ** 2 + (data["avg5"][i] - mean) ** 2 + (data["avg10"][i] - mean) ** 2 + (data["avg20"][i] - mean) ** 2 + (data["avg30"][i] - mean) ** 2
variance = vsum / 5
std = math.sqrt(variance)
if std < 1:
sell = data["close"][i]
# 매도 분석
"""
if data["slow_d"][i] > 90 and data["rsi"][i] > 65:
if data["upper"][i] <= data["high"][i]:
sell = data["close"][i] - 5
"""
return buy, weight, sell
def analyze(self, result):
open = result["open"]
close = result["close"]
high = result["high"]
low = result["low"]
vol = result["vol"]
close_df = pd.DataFrame(close)
avg3_list = close_df.rolling(window=3).mean().fillna(close[0]).values.tolist()
avg3 = [item[0] for item in avg3_list]
avg5_list = close_df.rolling(window=5).mean().fillna(close[0]).values.tolist()
avg5 = [item[0] for item in avg5_list]
avg10_list = close_df.rolling(window=10).mean().fillna(close[0]).values.tolist()
avg10 = [item[0] for item in avg10_list]
avg20_list = close_df.rolling(window=20).mean().fillna(close[0]).values.tolist()
avg20 = [item[0] for item in avg20_list]
avg30_list = close_df.rolling(window=30).mean().fillna(close[0]).values.tolist()
avg30 = [item[0] for item in avg30_list]
avg60_list = close_df.rolling(window=60).mean().fillna(close[0]).values.tolist()
avg60 = [item[0] for item in avg60_list]
df = pd.DataFrame(close)
max20 = df.rolling(window=20).mean()
stddev20 = df.rolling(window=20).std()
upper_df = max20 + (stddev20 * 2) # 상단 볼린저 밴드
lower_df = max20 - (stddev20 * 2) # 하단 볼린저 밴드
upper, lower = [], []
for i in range(len(upper_df)):
if i < 10:
upper.append(upper_df.values[0][0])
lower.append(lower_df.values[0][0])
else:
upper.append(upper_df.values[i][0])
lower.append(lower_df.values[i][0])
point_temp = result["time"]
STOCK = []
for i in range(len(open)):
STOCK.append({'volume': vol[i], 'close': close[i], 'open': open[i], 'high': high[i], 'low': low[i],
'avg3': avg3[i], 'avg5': avg5[i],'avg10': avg10[i],'avg20': avg20[i],'avg30': avg30[i],'avg60': avg60[i]})
# stochastic 계산
stochastic_df = self.stochastic.apply(STOCK, n=30, m=5, t=5)
stochastic_df = stochastic_df.fillna(100)
fast_k = stochastic_df['fast_k'].values.tolist()
slow_k = stochastic_df['slow_k'].values.tolist()
slow_d = stochastic_df['slow_d'].values.tolist()
# macd 계산
macd_df = self.macd.apply(STOCK, short=12, long=26, t=9)
macd_df = macd_df.fillna(100)
macd = macd_df['macd'].values.tolist()
macds = macd_df['macds'].values.tolist()
macdo = macd_df['macdo'].values.tolist()
# rsi 계산
rsi_df = self.rsi.apply(STOCK, period=30, window=5)
rsi_df = rsi_df.fillna(100)
rsi = rsi_df['rsi'].values.tolist()
rsis = rsi_df['rsis'].values.tolist()
# ichimokuCloud 계산
# ichimokuCloud_df = self.ichimokuCloud.apply(STOCK, c=9, b=26, l=52)
# ichimokuCloud_df = rsi_df.fillna(100)
# changeLine = rsi_df['changeLine'].values.tolist()
# baseLine = rsi_df['baseLine'].values.tolist()
# leadingSpan1 = rsi_df['leadingSpan1'].values.tolist()
# leadingSpan2 = rsi_df['leadingSpan2'].values.tolist()
temp = {"date": point_temp,
"open": open, "high": high, "low": low, "close": close, "volume": vol, "upper": upper, "lower": lower,
"avg3": avg3, "avg5": avg5, "avg10": avg10, "avg20": avg20, "avg30": avg30, "avg60": avg60,
"macd": macd, "macds": macds, "macdo": macdo,
"fast_k": fast_k, "slow_k": slow_k, "slow_d": slow_d,
"rsi": rsi, "rsis": rsis}
data = pd.DataFrame(temp)
df_final_time = pd.DatetimeIndex(point_temp)
data.index = df_final_time
return data
def checkTransaction(self, data, stock_code):
size = len(data["close"])
bsLine = {}
bsLine['buy'] = [-1 for i in range(size)]
bsLine['weight'] = [-1 for i in range(size)]
bsLine['sell'] = [-1 for i in range(size)]
for i in range(size):
if stock_code == "252670":
buy, weight, sell = self.getPriceAndWeight3(data, i)
else:
buy, weight, sell = self.getPriceAndWeight3(data, i)
bsLine['buy'][i] = buy
bsLine['weight'][i] = weight
bsLine['sell'][i] = sell
return bsLine