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지표

Momentum and news impact candles - MetaTrader 5용 지표

Conor Mcnamara
Conor Mcnamara
I started learning C programming in 2010. From there I picked up many languages.
I'm working on several indicator projects and EA concepts.
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MQL5 프리랜스 이 코드를 기반으로 한 로봇이나 지표가 필요하신가요? 프리랜스로 주문하세요 프리랜스로 이동

Providing a clearer view of market direction and price activity with candles that are painted by bullish momentum (green), bearish momentum (red), weak or no momentum (gray), and news impact/candle expansion (silver).

Bullish momentum  = Green (0.0)

Bearish momentum = Red (1.0)

Weak momentum = Gray (2.0)

News impact (candle expansion) = Silver (3.0)


Default momentum period is 4 which finds sharp momentum changes

Momentum and news impact candles

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