Bitcoin erases BTC price dip but $48.2K is now key to avoid bull trap

Bitcoin (BTC) quickly regained lost ground on Aug. 25 after a brief dip towards $47,000 failed to keep bulls down.

Rebound or bull trap?

Data from Cointelegraph Markets Pro and TradingView tracked BTC/USD as it returned to higher levels almost as quickly as it lost them earlier in the day.

At the time of writing, the pair traded at near $48,700, having gained $1,500 in a matter of hours.

Analysis had hinted at a rebound even as lower lows continued to come on the hourly chart, these coming true as volume and relative strength index (RSI) performance improved.

“Looking good so far,” trader Scott Melker, who originally noticed the RSI move, subsequently added.

For trader and analyst Rekt Capital, however, there was no need to celebrate too soon. Bitcoin, he warned, needed to definitively reclaim levels above $48,000.

“BTC is showing some small signs of recovery,” he told Twitter followers in comments on an accompanying chart.

“But if $BTC can’t reclaim the red area/blue level soon then this recovery will have merely been a relief rally to turn previous support into new resistance.”

Zooming out removes all doubt

Elsewhere, bullish sentiment remained firmly in place.

Related: Bitcoin bullish cross on weekly chart paints $225K BTC price target if history repeats

PlanB, the creator of the stock-to-flow family of Bitocin price models, reiterated that both the BTC/USD 200-week moving average and Bitcoin’s realized cap were at all-time highs.

“Nobody who bought bitcoin and hodled 4+ years (200 weeks) lost money, EVER!” he tweeted in an optimistic take alongside a chart showing the metrics.

Bitcoin had never fallen below the 200-week moving average. Its delta price, which fellow analyst William Clemente explained is the difference between average cap and realized cap, has also never been violated and currently stands at $15,200.

Delta tends to act as definitive support, and is tested only during the pit of bear markets.

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