Timeframe
1h
Direction
Long & Short
Stoploss
-10.0%
Trailing Stop
Yes
ROI
0m: 10.0%, 120m: 2.5%
Interface Version
N/A
Startup Candles
26
Indicators
5
freqtrade/freqtrade-strategies
Strategy 003 author@: Gerald Lonlas github@: https://github.com/freqtrade/freqtrade-strategies
"""
Supertrend strategy:
* Description: Generate a 3 supertrend indicators for 'buy' strategies & 3 supertrend indicators for 'sell' strategies
Buys if the 3 'buy' indicators are 'up'
Sells if the 3 'sell' indicators are 'down'
* Author: @juankysoriano (Juan Carlos Soriano)
* github: https://github.com/juankysoriano/
*** NOTE: This Supertrend strategy is just one of many possible strategies using `Supertrend` as indicator. It should on any case used at your own risk.
It comes with at least a couple of caveats:
1. The implementation for the `supertrend` indicator is based on the following discussion: https://github.com/freqtrade/freqtrade-strategies/issues/30 . Concretelly https://github.com/freqtrade/freqtrade-strategies/issues/30#issuecomment-853042401
2. The implementation for `supertrend` on this strategy is not validated; meaning this that is not proven to match the results by the paper where it was originally introduced or any other trusted academic resources
"""
import logging
from numpy.lib import math
from freqtrade.strategy import IStrategy, IntParameter
from pandas import DataFrame
import talib.abstract as ta
import numpy as np
import pandas as pd
class FastSupertrend_optim3_rsi_80(IStrategy):
# Buy params, Sell params, ROI, Stoploss and Trailing Stop are values generated by 'freqtrade hyperopt --strategy Supertrend --hyperopt-loss ShortTradeDurHyperOptLoss --timerange=20210101- --timeframe=1h --spaces all'
# It's encourage you find the values that better suites your needs and risk management strategies
INTERFACE_VERSION: int = 3
# Buy hyperspace params:
buy_params = {
"buy_m1": 1,
"buy_m2": 3,
"buy_m3": 6,
"buy_p1": 8,
"buy_p2": 8,
"buy_p3": 8,
}
# Sell hyperspace params:
sell_params = {
"sell_m1": 1,
"sell_m2": 3,
"sell_m3": 6,
"sell_p1": 16,
"sell_p2": 16,
"sell_p3": 18,
}
# ROI table:
#minimal_roi = {"0": 0.1, "120": 0.025}
minimal_roi = {"0": 0.99}
# Stoploss:
stoploss = -0.1
can_short = True
# Trailing stop:
trailing_stop = True
trailing_stop_positive = 0.001
trailing_stop_positive_offset = 0.02
trailing_only_offset_is_reached = True
timeframe = '1h'
startup_candle_count = 26
buy_m1 = IntParameter(1, 7, default=1, space='buy', load=True, optimize=True)
buy_m2 = IntParameter(1, 7, default=3, space='buy', load=True, optimize=True)
buy_m3 = IntParameter(1, 7, default=4, space='buy', load=True, optimize=True)
buy_p1 = IntParameter(7, 21, default=14, space='buy', load=True, optimize=True)
buy_p2 = IntParameter(7, 21, default=10, space='buy', load=True, optimize=True)
buy_p3 = IntParameter(7, 21, default=10, space='buy', load=True, optimize=True)
sell_m1 = IntParameter(1, 7, default=1, space='sell', load=True, optimize=True)
sell_m2 = IntParameter(1, 7, default=3, space='sell', load=True, optimize=True)
sell_m3 = IntParameter(1, 7, default=4, space='sell', load=True, optimize=True)
sell_p1 = IntParameter(7, 21, default=14, space='sell', load=True, optimize=True)
sell_p2 = IntParameter(7, 21, default=10, space='sell', load=True, optimize=True)
sell_p3 = IntParameter(7, 21, default=10, space='sell', load=True, optimize=True)
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe['supertrend_1_buy'] = self.supertrend(dataframe, self.buy_m1.value, int(self.buy_p1.value))['STX']
dataframe['supertrend_2_buy'] = self.supertrend(dataframe, self.buy_m2.value, int(self.buy_p2.value))['STX']
dataframe['supertrend_3_buy'] = self.supertrend(dataframe, self.buy_m3.value, int(self.buy_p3.value))['STX']
dataframe['supertrend_1_sell'] = self.supertrend(dataframe, self.sell_m1.value, int(self.sell_p1.value))['STX']
dataframe['supertrend_2_sell'] = self.supertrend(dataframe, self.sell_m2.value, int(self.sell_p2.value))['STX']
dataframe['supertrend_3_sell'] = self.supertrend(dataframe, self.sell_m3.value, int(self.sell_p3.value))['STX']
dataframe['rsi'] = ta.RSI(dataframe['close'], timeperiod=14)
dataframe['rsi_ema'] = ta.EMA(dataframe['rsi'], timeperiod=14)
return dataframe
def populate_entry_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[
(dataframe['supertrend_1_buy'] == 'up') &
(dataframe['supertrend_2_buy'] == 'up') &
(dataframe['supertrend_3_buy'] == 'up') &
(dataframe['rsi_ema'] < 80) &
(dataframe['volume'] > 0),
'enter_long',
] = 1
dataframe.loc[
(dataframe['supertrend_1_sell'] == 'down') &
(dataframe['supertrend_2_sell'] == 'down') &
(dataframe['supertrend_3_sell'] == 'down') &
(dataframe['rsi_ema'] > 20) &
(dataframe['volume'] > 0),
'enter_short',
] = 1
return dataframe
def populate_exit_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[
(dataframe['supertrend_3_sell'] == 'down'),
'exit_long',
] = 1
dataframe.loc[
(dataframe['supertrend_3_buy'] == 'up'),
'exit_short',
] = 1
return dataframe
"""
Supertrend Indicator; adapted for freqtrade
from: https://github.com/freqtrade/freqtrade-strategies/issues/30
"""
def supertrend(self, dataframe: DataFrame, multiplier, period):
df = dataframe.copy()
last_row = len(df)
df['TR'] = ta.TRANGE(df)
df['ATR'] = ta.SMA(df['TR'], period)
st = 'ST_' + str(period) + '_' + str(multiplier)
stx = 'STX_' + str(period) + '_' + str(multiplier)
# Compute basic upper and lower bands
BASIC_UB = ((df['high'] + df['low']) / 2 + multiplier * df['ATR']).values
BASIC_LB = ((df['high'] + df['low']) / 2 - multiplier * df['ATR']).values
FINAL_UB = np.zeros(last_row)
FINAL_LB = np.zeros(last_row)
ST = np.zeros(last_row)
CLOSE = df['close'].values
# Compute final upper and lower bands
for i in range(period, last_row):
FINAL_UB[i] = BASIC_UB[i] if BASIC_UB[i] < FINAL_UB[i - 1] or CLOSE[i - 1] > FINAL_UB[i - 1] else FINAL_UB[i - 1]
FINAL_LB[i] = BASIC_LB[i] if BASIC_LB[i] > FINAL_LB[i - 1] or CLOSE[i - 1] < FINAL_LB[i - 1] else FINAL_LB[i - 1]
# Set the Supertrend value
for i in range(period, last_row):
ST[i] = FINAL_UB[i] if ST[i - 1] == FINAL_UB[i - 1] and CLOSE[i] <= FINAL_UB[i] else \
FINAL_LB[i] if ST[i - 1] == FINAL_UB[i - 1] and CLOSE[i] > FINAL_UB[i] else \
FINAL_LB[i] if ST[i - 1] == FINAL_LB[i - 1] and CLOSE[i] >= FINAL_LB[i] else \
FINAL_UB[i] if ST[i - 1] == FINAL_LB[i - 1] and CLOSE[i] < FINAL_LB[i] else 0.00
df_ST = pd.DataFrame(ST, columns=[st])
df = pd.concat([df, df_ST],axis=1)
# Mark the trend direction up/down
df[stx] = np.where(
(df[st] > 0.00), np.where((df['close'] < df[st]), 'down', 'up'), np.NaN
)
df.fillna(0, inplace=True)
return DataFrame(index=df.index, data={
'ST' : df[st],
'STX' : df[stx]
})