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Eco Wave Power Global AB Stock Price Chart

  • The current trend is moderately bullish and WAVE is experiencing selling pressure, which indicates risk of future bearish movement.

Eco Wave Power Global AB Price Chart Indicators

Moving Averages Level Buy or Sell
8-day SMA: 6.93 Sell
20-day SMA: 7.3 Sell
50-day SMA: 7.76 Sell
200-day SMA: 7.27 Sell
8-day EMA: 6.84 Sell
20-day EMA: 5.67 Buy
50-day EMA: 3.4 Buy
200-day EMA: 1.07 Buy

Eco Wave Power Global AB Technical Analysis Indicators

Chart Indicators Level Buy or Sell
MACD (12, 26): 1.49 Buy
Relative Strength Index (14 RSI): 40.49 Sell
Chaikin Money Flow: -346 -
Bollinger Bands Level Buy or Sell
Bollinger Bands (25): ( - ) Buy
Bollinger Bands (100): ( - ) Buy

Eco Wave Power Global AB Technical Analysis

Technical Analysis: Buy or Sell?
8-day SMA:
20-day SMA:
50-day SMA:
200-day SMA:
8-day EMA:
20-day EMA:
50-day EMA:
200-day EMA:
MACD (12, 26):
Relative Strength Index (14 RSI):
Bollinger Bands (25):
Bollinger Bands (100):

Technical Analysis for Eco Wave Power Global AB Stock

Is Eco Wave Power Global AB Stock a Buy?

WAVE Technical Analysis vs Fundamental Analysis

Sell
44
Eco Wave Power Global AB (WAVE) is a Sell

Is Eco Wave Power Global AB a Buy or a Sell?

Eco Wave Power Global AB Stock Info

Market Cap:
40M
Price in USD:
6.84
Share Volume:
8.2K

Eco Wave Power Global AB 52-Week Range

52-Week High:
17.63
52-Week Low:
4.41
Sell
44
Eco Wave Power Global AB (WAVE) is a Sell

Eco Wave Power Global AB Share Price Forecast

Is Eco Wave Power Global AB Stock a Buy?

Fundamental Analysis of Eco Wave Power Global AB

Is Eco Wave Power Global AB a good investment?

  • Analysts estimate an earnings decrease this quarter of $0.07 per share, a decrease next quarter of $0.00 per share, a decrease this year of $0.61 per share, and an increase next year of $0.23 per share.

Technical Analysis of Eco Wave Power Global AB

Should I short Eco Wave Power Global AB stock?

* Eco Wave Power Global AB stock forecasts short-term for next days and weeks may differ from long term prediction for next month and year based on timeline differences.