Please only use this with TrailingBuy
Timeframe
5m
Direction
Long Only
Stoploss
-99.0%
Trailing Stop
No
ROI
0m: 10.3%, 3m: 5.0%, 5m: 3.3%, 61m: 2.7%
Interface Version
N/A
Startup Candles
168
Indicators
10
freqtrade/freqtrade-strategies
Strategy 003 author@: Gerald Lonlas github@: https://github.com/freqtrade/freqtrade-strategies
import freqtrade.vendor.qtpylib.indicators as qtpylib
import numpy as np
import talib.abstract as ta
import time
import logging
from freqtrade.strategy.interface import IStrategy
from freqtrade.strategy import merge_informative_pair, DecimalParameter, stoploss_from_open, RealParameter
from pandas import DataFrame, Series
from datetime import datetime, timedelta, timezone
from freqtrade.persistence import Trade
logger = logging.getLogger(__name__)
def bollinger_bands(stock_price, window_size, num_of_std):
rolling_mean = stock_price.rolling(window=window_size).mean()
rolling_std = stock_price.rolling(window=window_size).std()
lower_band = rolling_mean - (rolling_std * num_of_std)
return np.nan_to_num(rolling_mean), np.nan_to_num(lower_band)
def ha_typical_price(bars):
res = (bars['ha_high'] + bars['ha_low'] + bars['ha_close']) / 3.
return Series(index=bars.index, data=res)
class ClucHAnix_hhll(IStrategy):
"""
Please only use this with TrailingBuy
"""
#hypered params
buy_params = {
##
"max_slip": 0.73,
##
"bbdelta_close": 0.01846,
"bbdelta_tail": 0.98973,
"close_bblower": 0.00785,
"closedelta_close": 0.01009,
"rocr_1h": 0.5411,
##
"buy_hh_diff_48": 6.867,
"buy_ll_diff_48": -12.884,
}
# Sell hyperspace params:
sell_params = {
"pPF_1": 0.011,
"pPF_2": 0.064,
"pSL_1": 0.011,
"pSL_2": 0.062,
# sell signal params
"high_offset": 0.907,
"high_offset_2": 1.211,
"sell_bbmiddle_close": 0.97286,
"sell_fisher": 0.48492,
}
# ROI table:
minimal_roi = {
"0": 0.103,
"3": 0.05,
"5": 0.033,
"61": 0.027,
"125": 0.011,
"292": 0.005,
}
# Stoploss:
stoploss = -0.99 # use custom stoploss
# Trailing stop:
trailing_stop = False
trailing_stop_positive = 0.001
trailing_stop_positive_offset = 0.012
trailing_only_offset_is_reached = False
"""
END HYPEROPT
"""
timeframe = '5m'
# Make sure these match or are not overridden in config
use_sell_signal = True
sell_profit_only = False
ignore_roi_if_buy_signal = False
# Custom stoploss
use_custom_stoploss = True
process_only_new_candles = True
startup_candle_count = 168
order_types = {
'buy': 'market',
'sell': 'market',
'emergencysell': 'market',
'forcebuy': "market",
'forcesell': 'market',
'stoploss': 'market',
'stoploss_on_exchange': False,
'stoploss_on_exchange_interval': 60,
'stoploss_on_exchange_limit_ratio': 0.99
}
# buy params
is_optimize_clucHA = False
rocr_1h = RealParameter(0.5, 1.0, default=0.54904, space='buy', optimize = is_optimize_clucHA )
bbdelta_close = RealParameter(0.0005, 0.02, default=0.01965, space='buy', optimize = is_optimize_clucHA )
closedelta_close = RealParameter(0.0005, 0.02, default=0.00556, space='buy', optimize = is_optimize_clucHA )
bbdelta_tail = RealParameter(0.7, 1.0, default=0.95089, space='buy', optimize = is_optimize_clucHA )
close_bblower = RealParameter(0.0005, 0.02, default=0.00799, space='buy', optimize = is_optimize_clucHA )
is_optimize_hh_ll = False
buy_hh_diff_48 = DecimalParameter(0.0, 15, default=1.087 , optimize = is_optimize_hh_ll )
buy_ll_diff_48 = DecimalParameter(-23, 40, default=1.087 , optimize = is_optimize_hh_ll )
## Slippage params
is_optimize_slip = False
max_slip = DecimalParameter(0.33, 0.80, default=0.33, decimals=3, optimize=is_optimize_slip , space='buy', load=True)
# sell params
is_optimize_sell = False
sell_fisher = RealParameter(0.1, 0.5, default=0.38414, space='sell', optimize = is_optimize_sell)
sell_bbmiddle_close = RealParameter(0.97, 1.1, default=1.07634, space='sell', optimize = is_optimize_sell)
high_offset = DecimalParameter(0.90, 1.2, default=sell_params['high_offset'], space='sell', optimize = is_optimize_sell)
high_offset_2 = DecimalParameter(0.90, 1.5, default=sell_params['high_offset_2'], space='sell', optimize = is_optimize_sell)
is_optimize_trailing = False
pPF_1 = DecimalParameter(0.011, 0.020, default=0.016, decimals=3, space='sell', load=True, optimize = is_optimize_trailing)
pSL_1 = DecimalParameter(0.011, 0.020, default=0.011, decimals=3, space='sell', load=True, optimize = is_optimize_trailing)
pPF_2 = DecimalParameter(0.040, 0.100, default=0.080, decimals=3, space='sell', load=True, optimize = is_optimize_trailing)
pSL_2 = DecimalParameter(0.020, 0.070, default=0.040, decimals=3, space='sell', load=True, optimize = is_optimize_trailing)
def informative_pairs(self):
pairs = self.dp.current_whitelist()
informative_pairs = [(pair, '1h') for pair in pairs]
return informative_pairs
# come from BB_RPB_TSL
def custom_stoploss(self, pair: str, trade: 'Trade', current_time: datetime,
current_rate: float, current_profit: float, **kwargs) -> float:
# hard stoploss profit
PF_1 = self.pPF_1.value
SL_1 = self.pSL_1.value
PF_2 = self.pPF_2.value
SL_2 = self.pSL_2.value
sl_profit = -0.99
# For profits between PF_1 and PF_2 the stoploss (sl_profit) used is linearly interpolated
# between the values of SL_1 and SL_2. For all profits above PL_2 the sl_profit value
# rises linearly with current profit, for profits below PF_1 the hard stoploss profit is used.
if current_profit > PF_2:
sl_profit = SL_2 + (current_profit - PF_2)
elif current_profit > PF_1:
sl_profit = SL_1 + ((current_profit - PF_1) * (SL_2 - SL_1) / (PF_2 - PF_1))
else:
sl_profit = -0.99
# Only for hyperopt invalid return
if sl_profit >= current_profit:
return -0.99
return stoploss_from_open(sl_profit, current_profit)
## Confirm Entry
def confirm_trade_entry(self, pair: str, order_type: str, amount: float, rate: float, time_in_force: str, **kwargs) -> bool:
dataframe, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
max_slip = self.max_slip.value
if(len(dataframe) < 1):
return False
dataframe = dataframe.iloc[-1].squeeze()
if ((rate > dataframe['close'])) :
slippage = ( (rate / dataframe['close']) - 1 ) * 100
if slippage < max_slip:
return True
else:
return False
return True
def custom_sell(self, pair: str, trade: 'Trade', current_time: 'datetime', current_rate: float,
current_profit: float, **kwargs):
dataframe, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
last_candle = dataframe.iloc[-1]
previous_candle_1 = dataframe.iloc[-2]
previous_candle_2 = dataframe.iloc[-3]
max_profit = ((trade.max_rate - trade.open_rate) / trade.open_rate)
max_loss = ((trade.open_rate - trade.min_rate) / trade.min_rate)
# stoploss - deadfish
if ( (current_profit < -0.063)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['bb_width'] < 0.043)
and (last_candle['close'] > last_candle['bb_middleband2'] * 0.954)
and (last_candle['volume_mean_12'] < last_candle['volume_mean_24'] * 2.37)
):
return 'sell_stoploss_deadfish'
# stoploss - pump
if (last_candle['hl_pct_change_48_1h'] > 0.95):
if (
(-0.04 > current_profit > -0.08)
and (max_profit < 0.005)
and (max_loss < 0.08)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['sma_200_dec_20'])
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (last_candle['cmf'] < -0.25)
and (last_candle['cmf_1h'] < -0.0)
):
return 'sell_stoploss_p_48_1_1'
elif (
(-0.04 > current_profit > -0.08)
and (max_profit < 0.01)
and (max_loss < 0.08)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['sma_200_dec_20'])
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (last_candle['cmf'] < -0.25)
and (last_candle['cmf_1h'] < -0.0)
):
return 'sell_stoploss_p_48_1_2'
if (last_candle['hl_pct_change_36_1h'] > 0.7):
if (
(-0.04 > current_profit > -0.08)
and (max_loss < 0.08)
and (max_profit > (current_profit + 0.1))
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['sma_200_dec_20'])
and (last_candle['sma_200_dec_20_1h'])
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (last_candle['cmf'] < -0.25)
and (last_candle['cmf_1h'] < -0.0)
):
return 'sell_stoploss_p_36_1_1'
if (last_candle['hl_pct_change_36_1h'] > 0.5):
if (
(-0.05 > current_profit > -0.08)
and (max_loss < 0.08)
and (max_profit > (current_profit + 0.1))
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['sma_200_dec_20'])
and (last_candle['sma_200_dec_20_1h'])
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (last_candle['cmf'] < -0.25)
and (last_candle['cmf_1h'] < -0.0)
and (last_candle['rsi'] < 40.0)
):
return 'sell_stoploss_p_36_2_1'
if (last_candle['hl_pct_change_24_1h'] > 0.6):
if (
(-0.04 > current_profit > -0.08)
and (max_loss < 0.08)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['sma_200_dec_20'])
and (last_candle['sma_200_dec_20_1h'])
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (last_candle['cmf'] < -0.25)
and (last_candle['cmf_1h'] < -0.0)
):
return 'sell_stoploss_p_24_1_1'
return None
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
# # Heikin Ashi Candles
heikinashi = qtpylib.heikinashi(dataframe)
dataframe['ha_open'] = heikinashi['open']
dataframe['ha_close'] = heikinashi['close']
dataframe['ha_high'] = heikinashi['high']
dataframe['ha_low'] = heikinashi['low']
# Set Up Bollinger Bands
mid, lower = bollinger_bands(ha_typical_price(dataframe), window_size=40, num_of_std=2)
dataframe['lower'] = lower
dataframe['mid'] = mid
dataframe['bbdelta'] = (mid - dataframe['lower']).abs()
dataframe['closedelta'] = (dataframe['ha_close'] - dataframe['ha_close'].shift()).abs()
dataframe['tail'] = (dataframe['ha_close'] - dataframe['ha_low']).abs()
dataframe['bb_lowerband'] = dataframe['lower']
dataframe['bb_middleband'] = dataframe['mid']
# BB 20
bollinger2 = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe['bb_lowerband2'] = bollinger2['lower']
dataframe['bb_middleband2'] = bollinger2['mid']
dataframe['bb_upperband2'] = bollinger2['upper']
dataframe['bb_width'] = ((dataframe['bb_upperband2'] - dataframe['bb_lowerband2']) / dataframe['bb_middleband2'])
dataframe['ema_fast'] = ta.EMA(dataframe['ha_close'], timeperiod=3)
dataframe['ema_slow'] = ta.EMA(dataframe['ha_close'], timeperiod=50)
dataframe['ema_24'] = ta.EMA(dataframe['close'], timeperiod=24)
dataframe['ema_200'] = ta.EMA(dataframe['close'], timeperiod=200)
# SMA
dataframe['sma_9'] = ta.SMA(dataframe['close'], timeperiod=9)
dataframe['sma_200'] = ta.SMA(dataframe['close'], timeperiod=200)
# HMA
dataframe['hma_50'] = qtpylib.hull_moving_average(dataframe['close'], window=50)
# volume
dataframe['volume_mean_12'] = dataframe['volume'].rolling(12).mean().shift(1)
dataframe['volume_mean_24'] = dataframe['volume'].rolling(24).mean().shift(1)
dataframe['volume_mean_slow'] = dataframe['volume'].rolling(window=30).mean()
# ROCR
dataframe['rocr'] = ta.ROCR(dataframe['ha_close'], timeperiod=28)
# hh48
dataframe['hh_48'] = ta.MAX(dataframe['high'], 48)
dataframe['hh_48_diff'] = (dataframe['hh_48'] - dataframe['close']) / dataframe['hh_48'] * 100
# ll48
dataframe['ll_48'] = ta.MIN(dataframe['low'], 48)
dataframe['ll_48_diff'] = (dataframe['close'] - dataframe['ll_48']) / dataframe['ll_48'] * 100
rsi = ta.RSI(dataframe)
dataframe["rsi"] = rsi
rsi = 0.1 * (rsi - 50)
dataframe["fisher"] = (np.exp(2 * rsi) - 1) / (np.exp(2 * rsi) + 1)
# RSI
dataframe['rsi_fast'] = ta.RSI(dataframe, timeperiod=4)
dataframe['rsi_slow'] = ta.RSI(dataframe, timeperiod=20)
# sma dec 20
dataframe['sma_200_dec_20'] = dataframe['sma_200'] < dataframe['sma_200'].shift(20)
# EMA of VWMA Oscillator
dataframe['ema_vwma_osc_32'] = ema_vwma_osc(dataframe, 32)
dataframe['ema_vwma_osc_64'] = ema_vwma_osc(dataframe, 64)
dataframe['ema_vwma_osc_96'] = ema_vwma_osc(dataframe, 96)
# CMF
dataframe['cmf'] = chaikin_money_flow(dataframe, 20)
# 1h tf
inf_tf = '1h'
informative = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe=inf_tf)
inf_heikinashi = qtpylib.heikinashi(informative)
informative['ha_close'] = inf_heikinashi['close']
informative['rocr'] = ta.ROCR(informative['ha_close'], timeperiod=168)
informative['sma_200'] = ta.SMA(informative['close'], timeperiod=200)
informative['hl_pct_change_48'] = range_percent_change(informative, 'HL', 48)
informative['hl_pct_change_36'] = range_percent_change(informative, 'HL', 36)
informative['hl_pct_change_24'] = range_percent_change(informative, 'HL', 24)
informative['sma_200_dec_20'] = informative['sma_200'] < informative['sma_200'].shift(20)
# CMF
informative['cmf'] = chaikin_money_flow(informative, 20)
dataframe = merge_informative_pair(dataframe, informative, self.timeframe, inf_tf, ffill=True)
return dataframe
def populate_buy_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[
( dataframe['rocr_1h'].gt(self.rocr_1h.value) )
&
( (
(dataframe['lower'].shift().gt(0)) &
(dataframe['bbdelta'].gt(dataframe['ha_close'] * self.bbdelta_close.value)) &
(dataframe['closedelta'].gt(dataframe['ha_close'] * self.closedelta_close.value)) &
(dataframe['tail'].lt(dataframe['bbdelta'] * self.bbdelta_tail.value)) &
(dataframe['ha_close'].lt(dataframe['lower'].shift())) &
(dataframe['ha_close'].le(dataframe['ha_close'].shift()))
)
|
(
(dataframe['ha_close'] < dataframe['ema_slow']) &
(dataframe['ha_close'] < self.close_bblower.value * dataframe['bb_lowerband'])
)
)
&
(dataframe['hh_48_diff'] > self.buy_hh_diff_48.value)
&
(dataframe['ll_48_diff'] > self.buy_ll_diff_48.value)
,'buy'] = 1
return dataframe
def populate_sell_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[
( (
(dataframe['fisher'] > self.sell_fisher.value) &
(dataframe['ha_high'].le(dataframe['ha_high'].shift(1))) &
(dataframe['ha_high'].shift(1).le(dataframe['ha_high'].shift(2))) &
(dataframe['ha_close'].le(dataframe['ha_close'].shift(1))) &
(dataframe['ema_fast'] > dataframe['ha_close']) &
((dataframe['ha_close'] * self.sell_bbmiddle_close.value) > dataframe['bb_middleband'])
)
|
(
(dataframe['close'] > dataframe['sma_9']) &
(dataframe['close'] > (dataframe['ema_24'] * self.high_offset_2.value)) &
(dataframe['rsi'] > 50) &
(dataframe['rsi_fast'] > dataframe['rsi_slow'])
)
|
(
(dataframe['sma_9'] > (dataframe['sma_9'].shift(1) + dataframe['sma_9'].shift(1) * 0.005 )) &
(dataframe['close'] < dataframe['hma_50']) &
(dataframe['close'] > (dataframe['ema_24'] * self.high_offset.value)) &
(dataframe['rsi_fast'] > dataframe['rsi_slow'])
)
)
&
(dataframe['volume'] > 0)
,'sell'] = 1
return dataframe
# Volume Weighted Moving Average
def vwma(dataframe: DataFrame, length: int = 10):
"""Indicator: Volume Weighted Moving Average (VWMA)"""
# Calculate Result
pv = dataframe['close'] * dataframe['volume']
vwma = Series(ta.SMA(pv, timeperiod=length) / ta.SMA(dataframe['volume'], timeperiod=length))
vwma = vwma.fillna(0, inplace=True)
return vwma
# Exponential moving average of a volume weighted simple moving average
def ema_vwma_osc(dataframe, len_slow_ma):
slow_ema = Series(ta.EMA(vwma(dataframe, len_slow_ma), len_slow_ma))
return ((slow_ema - slow_ema.shift(1)) / slow_ema.shift(1)) * 100
def range_percent_change(dataframe: DataFrame, method, length: int) -> float:
"""
Rolling Percentage Change Maximum across interval.
:param dataframe: DataFrame The original OHLC dataframe
:param method: High to Low / Open to Close
:param length: int The length to look back
"""
if method == 'HL':
return (dataframe['high'].rolling(length).max() - dataframe['low'].rolling(length).min()) / dataframe['low'].rolling(length).min()
elif method == 'OC':
return (dataframe['open'].rolling(length).max() - dataframe['close'].rolling(length).min()) / dataframe['close'].rolling(length).min()
else:
raise ValueError(f"Method {method} not defined!")
# Chaikin Money Flow
def chaikin_money_flow(dataframe, n=20, fillna=False) -> Series:
"""Chaikin Money Flow (CMF)
It measures the amount of Money Flow Volume over a specific period.
http://stockcharts.com/school/doku.php?id=chart_school:technical_indicators:chaikin_money_flow_cmf
Args:
dataframe(pandas.Dataframe): dataframe containing ohlcv
n(int): n period.
fillna(bool): if True, fill nan values.
Returns:
pandas.Series: New feature generated.
"""
mfv = ((dataframe['close'] - dataframe['low']) - (dataframe['high'] - dataframe['close'])) / (dataframe['high'] - dataframe['low'])
mfv = mfv.fillna(0.0) # float division by zero
mfv *= dataframe['volume']
cmf = (mfv.rolling(n, min_periods=0).sum()
/ dataframe['volume'].rolling(n, min_periods=0).sum())
if fillna:
cmf = cmf.replace([np.inf, -np.inf], np.nan).fillna(0)
return Series(cmf, name='cmf')
class ClucHAnix_hhll_TB(ClucHAnix_hhll):
# Original idea by @MukavaValkku, code by @tirail and @stash86
#
# This class is designed to inherit from yours and starts trailing buy with your buy signals
# Trailing buy starts at any buy signal and will move to next candles if the trailing still active
# Trailing buy stops with BUY if : price decreases and rises again more than trailing_buy_offset
# Trailing buy stops with NO BUY : current price is > initial price * (1 + trailing_buy_max) OR custom_sell tag
# IT IS NOT COMPATIBLE WITH BACKTEST/HYPEROPT
#
process_only_new_candles = True
custom_info_trail_buy = dict()
# Trailing buy parameters
trailing_buy_order_enabled = True
trailing_expire_seconds = 1800
# If the current candle goes above min_uptrend_trailing_profit % before trailing_expire_seconds_uptrend seconds, buy the coin
trailing_buy_uptrend_enabled = False
trailing_expire_seconds_uptrend = 90
min_uptrend_trailing_profit = 0.02
debug_mode = True
trailing_buy_max_stop = 0.02 # stop trailing buy if current_price > starting_price * (1+trailing_buy_max_stop)
trailing_buy_max_buy = 0.000 # buy if price between uplimit (=min of serie (current_price * (1 + trailing_buy_offset())) and (start_price * 1+trailing_buy_max_buy))
init_trailing_dict = {
'trailing_buy_order_started': False,
'trailing_buy_order_uplimit': 0,
'start_trailing_price': 0,
'buy_tag': None,
'start_trailing_time': None,
'offset': 0,
'allow_trailing': False,
}
def trailing_buy(self, pair, reinit=False):
# returns trailing buy info for pair (init if necessary)
if not pair in self.custom_info_trail_buy:
self.custom_info_trail_buy[pair] = dict()
if (reinit or not 'trailing_buy' in self.custom_info_trail_buy[pair]):
self.custom_info_trail_buy[pair]['trailing_buy'] = self.init_trailing_dict.copy()
return self.custom_info_trail_buy[pair]['trailing_buy']
def trailing_buy_info(self, pair: str, current_price: float):
# current_time live, dry run
current_time = datetime.now(timezone.utc)
if not self.debug_mode:
return
trailing_buy = self.trailing_buy(pair)
duration = 0
try:
duration = (current_time - trailing_buy['start_trailing_time'])
except TypeError:
duration = 0
finally:
logger.info(
f"pair: {pair} : "
f"start: {trailing_buy['start_trailing_price']:.4f}, "
f"duration: {duration}, "
f"current: {current_price:.4f}, "
f"uplimit: {trailing_buy['trailing_buy_order_uplimit']:.4f}, "
f"profit: {self.current_trailing_profit_ratio(pair, current_price)*100:.2f}%, "
f"offset: {trailing_buy['offset']}")
def current_trailing_profit_ratio(self, pair: str, current_price: float) -> float:
trailing_buy = self.trailing_buy(pair)
if trailing_buy['trailing_buy_order_started']:
return (trailing_buy['start_trailing_price'] - current_price) / trailing_buy['start_trailing_price']
else:
return 0
def trailing_buy_offset(self, dataframe, pair: str, current_price: float):
# return rebound limit before a buy in % of initial price, function of current price
# return None to stop trailing buy (will start again at next buy signal)
# return 'forcebuy' to force immediate buy
# (example with 0.5%. initial price : 100 (uplimit is 100.5), 2nd price : 99 (no buy, uplimit updated to 99.5), 3price 98 (no buy uplimit updated to 98.5), 4th price 99 -> BUY
current_trailing_profit_ratio = self.current_trailing_profit_ratio(pair, current_price)
default_offset = 0.005
trailing_buy = self.trailing_buy(pair)
if not trailing_buy['trailing_buy_order_started']:
return default_offset
# example with duration and indicators
# dry run, live only
last_candle = dataframe.iloc[-1]
current_time = datetime.now(timezone.utc)
trailing_duration = current_time - trailing_buy['start_trailing_time']
if trailing_duration.total_seconds() > self.trailing_expire_seconds:
if ((current_trailing_profit_ratio > 0) and (last_candle['buy'] == 1)):
# more than 1h, price under first signal, buy signal still active -> buy
return 'forcebuy'
else:
# wait for next signal
return None
elif (self.trailing_buy_uptrend_enabled and (trailing_duration.total_seconds() < self.trailing_expire_seconds_uptrend) and (current_trailing_profit_ratio < (-1 * self.min_uptrend_trailing_profit))):
# less than 90s and price is rising, buy
return 'forcebuy'
if current_trailing_profit_ratio < 0:
# current price is higher than initial price
return default_offset
trailing_buy_offset = {
0.06: 0.02,
0.03: 0.01,
0: default_offset,
}
for key in trailing_buy_offset:
if current_trailing_profit_ratio > key:
return trailing_buy_offset[key]
return default_offset
# end of trailing buy parameters
# -----------------------------------------------------
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe = super().populate_indicators(dataframe, metadata)
self.trailing_buy(metadata['pair'])
return dataframe
def confirm_trade_entry(self, pair: str, order_type: str, amount: float, rate: float, time_in_force: str, **kwargs) -> bool:
val = super().confirm_trade_entry(pair, order_type, amount, rate, time_in_force, **kwargs)
if val:
if self.trailing_buy_order_enabled and self.config['runmode'].value in ('live', 'dry_run'):
val = False
dataframe, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
if(len(dataframe) >= 1):
last_candle = dataframe.iloc[-1].squeeze()
current_price = rate
trailing_buy = self.trailing_buy(pair)
trailing_buy_offset = self.trailing_buy_offset(dataframe, pair, current_price)
if trailing_buy['allow_trailing']:
if (not trailing_buy['trailing_buy_order_started'] and (last_candle['buy'] == 1)):
# start trailing buy
# self.custom_info_trail_buy[pair]['trailing_buy']['trailing_buy_order_started'] = True
# self.custom_info_trail_buy[pair]['trailing_buy']['trailing_buy_order_uplimit'] = last_candle['close']
# self.custom_info_trail_buy[pair]['trailing_buy']['start_trailing_price'] = last_candle['close']
# self.custom_info_trail_buy[pair]['trailing_buy']['buy_tag'] = f"initial_buy_tag (strat trail price {last_candle['close']})"
# self.custom_info_trail_buy[pair]['trailing_buy']['start_trailing_time'] = datetime.now(timezone.utc)
# self.custom_info_trail_buy[pair]['trailing_buy']['offset'] = 0
trailing_buy['trailing_buy_order_started'] = True
trailing_buy['trailing_buy_order_uplimit'] = last_candle['close']
trailing_buy['start_trailing_price'] = last_candle['close']
trailing_buy['buy_tag'] = last_candle['buy_tag']
trailing_buy['start_trailing_time'] = datetime.now(timezone.utc)
trailing_buy['offset'] = 0
self.trailing_buy_info(pair, current_price)
logger.info(f'start trailing buy for {pair} at {last_candle["close"]}')
elif trailing_buy['trailing_buy_order_started']:
if trailing_buy_offset == 'forcebuy':
# buy in custom conditions
val = True
ratio = "%.2f" % ((self.current_trailing_profit_ratio(pair, current_price)) * 100)
self.trailing_buy_info(pair, current_price)
logger.info(f"price OK for {pair} ({ratio} %, {current_price}), order may not be triggered if all slots are full")
elif trailing_buy_offset is None:
# stop trailing buy custom conditions
self.trailing_buy(pair, reinit=True)
logger.info(f'STOP trailing buy for {pair} because "trailing buy offset" returned None')
elif current_price < trailing_buy['trailing_buy_order_uplimit']:
# update uplimit
old_uplimit = trailing_buy["trailing_buy_order_uplimit"]
self.custom_info_trail_buy[pair]['trailing_buy']['trailing_buy_order_uplimit'] = min(current_price * (1 + trailing_buy_offset), self.custom_info_trail_buy[pair]['trailing_buy']['trailing_buy_order_uplimit'])
self.custom_info_trail_buy[pair]['trailing_buy']['offset'] = trailing_buy_offset
self.trailing_buy_info(pair, current_price)
logger.info(f'update trailing buy for {pair} at {old_uplimit} -> {self.custom_info_trail_buy[pair]["trailing_buy"]["trailing_buy_order_uplimit"]}')
elif current_price < (trailing_buy['start_trailing_price'] * (1 + self.trailing_buy_max_buy)):
# buy ! current price > uplimit && lower thant starting price
val = True
ratio = "%.2f" % ((self.current_trailing_profit_ratio(pair, current_price)) * 100)
self.trailing_buy_info(pair, current_price)
logger.info(f"current price ({current_price}) > uplimit ({trailing_buy['trailing_buy_order_uplimit']}) and lower than starting price price ({(trailing_buy['start_trailing_price'] * (1 + self.trailing_buy_max_buy))}). OK for {pair} ({ratio} %), order may not be triggered if all slots are full")
elif current_price > (trailing_buy['start_trailing_price'] * (1 + self.trailing_buy_max_stop)):
# stop trailing buy because price is too high
self.trailing_buy(pair, reinit=True)
self.trailing_buy_info(pair, current_price)
logger.info(f'STOP trailing buy for {pair} because of the price is higher than starting price * {1 + self.trailing_buy_max_stop}')
else:
# uplimit > current_price > max_price, continue trailing and wait for the price to go down
self.trailing_buy_info(pair, current_price)
logger.info(f'price too high for {pair} !')
else:
logger.info(f"Wait for next buy signal for {pair}")
if (val == True):
self.trailing_buy_info(pair, rate)
self.trailing_buy(pair, reinit=True)
logger.info(f'STOP trailing buy for {pair} because I buy it')
return val
def populate_buy_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe = super().populate_buy_trend(dataframe, metadata)
if self.trailing_buy_order_enabled and self.config['runmode'].value in ('live', 'dry_run'):
last_candle = dataframe.iloc[-1].squeeze()
trailing_buy = self.trailing_buy(metadata['pair'])
if (last_candle['buy'] == 1):
if not trailing_buy['trailing_buy_order_started']:
open_trades = Trade.get_trades([Trade.pair == metadata['pair'], Trade.is_open.is_(True), ]).all()
if not open_trades:
logger.info(f"Set 'allow_trailing' to True for {metadata['pair']} to start trailing!!!")
# self.custom_info_trail_buy[metadata['pair']]['trailing_buy']['allow_trailing'] = True
trailing_buy['allow_trailing'] = True
initial_buy_tag = last_candle['buy_tag'] if 'buy_tag' in last_candle else 'buy signal'
dataframe.loc[:, 'buy_tag'] = f"{initial_buy_tag} (start trail price {last_candle['close']})"
else:
if (trailing_buy['trailing_buy_order_started'] == True):
logger.info(f"Continue trailing for {metadata['pair']}. Manually trigger buy signal!!")
dataframe.loc[:,'buy'] = 1
dataframe.loc[:, 'buy_tag'] = trailing_buy['buy_tag']
# dataframe['buy'] = 1
return dataframe