HPotter

T3 3 Averages

This function is an Pine version of the moving average described in
the January, 1998 issue of S&C magazine, p.57, "Smoothing Techniques
for More Accurate Signals", by Tim Tillson. It is translated from the
MetaStock code presented in the article. The function uses a version
of the XAverage, written by me, which allows variables as inputs.

The most popular method of interpreting a moving average is to compare
the relationship between a moving average of the security's price with
the security's price itself (or between several moving averages).

סקריפט קוד פתוח

ברוח TradingView אמיתית, מחבר הסקריפט הזה פרסם אותו בקוד פתוח, כך שסוחרים יכולים להבין ולאמת אותו. כל הכבוד למחבר! אתה יכול להשתמש בו בחינם, אך שימוש חוזר בקוד זה בפרסום כפוף לכללי הבית. אתה יכול להכניס אותו למועדפים כדי להשתמש בו בגרף.

כתב ויתור

המידע והפרסומים אינם אמורים להיות, ואינם מהווים, עצות פיננסיות, השקעות, מסחר או סוגים אחרים של עצות או המלצות שסופקו או מאושרים על ידי TradingView. קרא עוד בתנאים וההגבלות.

רוצה להשתמש בסקריפ זה בגרף?
////////////////////////////////////////////////////////////
//  Copyright by HPotter v1.0 21/05/2014
// This function is an Pine version of the moving average described in
// the January, 1998 issue of S&C magazine, p.57, "Smoothing Techniques
// for More Accurate Signals", by Tim Tillson. It is translated from the
// MetaStock code presented in the article. The function uses a version
// of the XAverage, written by me, which allows variables as inputs.
// The most popular method of interpreting a moving average is to compare
// the relationship between a moving average of the security's price with
// the security's price itself (or between several moving averages).
////////////////////////////////////////////////////////////
study(title="T3 3 Averages", shorttitle="T3")
Length = input(5, minval=1)
hline(0, color=gray, linestyle=line)
xPrice = close
xe1 = ema(xPrice, Length)
xe2 = ema(xe1, Length)
xe3 = ema(xe2, Length)
xe4 = ema(xe3, Length)
xe5 = ema(xe4, Length)
xe6 = ema(xe5, Length)
b = 0.7
c1 = -b*b*b
c2 = 3*b*b+3*b*b*b
c3 = -6*b*b-3*b-3*b*b*b
c4 = 1+3*b+b*b*b+3*b*b
nT3Average = c1 * xe6 + c2 * xe5 + c3 * xe4 + c4 * xe3
nSlope = nT3Average - nT3Average[2]
Res1 = nSlope
Res2 = nSlope[1]
Res3 = nT3Average - nT3Average[1]
plot(iff(Res2 > 10 or Res3 > 10,na, Res1), color=blue, title="Slope")
plot(iff(Res2 > 10 or Res3 > 10,na, Res2), color=red, title="Slope2")
plot(iff(Res2 > 10 or Res3 > 10,na, Res3), color=green, title="Slope1per")

רעיונות קשורים