Solana (SOL) plunges 11% to $87 as DApp revenue crashes to 18-month low of $22M. Funding rates hit zero while bears target potential $80 retest. The post SolanaSolana (SOL) plunges 11% to $87 as DApp revenue crashes to 18-month low of $22M. Funding rates hit zero while bears target potential $80 retest. The post Solana

Solana (SOL) Tumbles 11% Amid Plunging DApp Revenue and Zero Funding Rates

2026/03/20 16:01
3 min read
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Key Highlights

  • Solana’s SOL token plummeted 11% over a three-day period, declining from $97.70 to $87 and triggering $25 million in liquidations.
  • Perpetual futures funding rates for SOL have reached 0%, indicating minimal bullish interest in leveraged trading.
  • DApp revenue on the Solana network plunged to $22 million, marking an 18-month low from $36 million recorded eight weeks earlier.
  • Specialized derivative platforms like Hyperliquid now dominate with over 80% of perpetual futures trading volume.
  • Corporate SOL holders including Forward Industries and DeFi Development Corp. are experiencing losses on their treasury positions.

The Solana ecosystem has encountered significant headwinds this week. Following a peak of $97.70 earlier this week, the SOL token experienced an 11% correction over 72 hours, bottoming out at $87. This sharp decline resulted in $25 million worth of long position liquidations, dampening market sentiment among traders.

Solana (SOL) PriceSolana (SOL) Price

The futures market signals are equally concerning. Funding rates for SOL perpetual futures contracts have collapsed to approximately 0%, indicating a complete absence of bullish appetite for leveraged long positions. Typically, these rates maintain levels around 9% when market participants exhibit optimistic positioning. For the past 30 days, bearish traders have dominated the derivatives landscape.

The options market reflects similar pessimism. Deribit’s 30-day delta skew metric surged to 12% this Thursday, suggesting that put options—which generate profits from declining prices—command higher premiums than call options. This premium structure reveals that sophisticated market participants and institutional traders are positioning defensively against additional downside, despite SOL already trading 70% beneath its record high.

Network Revenue Decline Compounds Market Weakness

The revenue generated by Solana’s decentralized applications has contracted to an 18-month nadir of $22 million. This represents a significant decline from the $36 million recorded merely two months prior. While this deterioration isn’t exclusive to Solana—BNB Chain witnessed a 52% revenue contraction during the same timeframe—it underscores widespread weakness in blockchain network activity.

Source; DefiLlama

Solana maintains its position as the leading blockchain for decentralized exchange activity, powered by platforms such as Pump, Raydium, and Orca. However, the derivatives trading landscape tells a different narrative. Purpose-built derivative chains—including Hyperliquid, Edgex, Zklighter, and Aster—have captured more than 80% of the perpetual contract trading market.

The introduction of an officially sanctioned S&P 500 Index perpetual futures product on Hyperliquid, created by Trade[XYZ], has further diverted liquidity and trader attention from Solana-based protocols. The tokenized equities sector is now approaching $1.1 billion in aggregate assets.

Technical Analysis Shows Bearish Pattern Formation

From a technical perspective, market analysts have identified a bearish fractal developing on Solana’s price chart. Analyst Elja highlighted that the current price action bears striking resemblance to a January 2026 pattern where SOL rallied into resistance zones before experiencing a sharp reversal. Both instances feature similar characteristics: upward movement into resistance following a decline, followed by rapid momentum loss.

https://twitter.com/Eljaboom/status/2034310769488416909?s=20

With a market capitalization of $51 billion, SOL trades at a 42% discount relative to BNB’s $88 billion valuation. Nevertheless, Solana demonstrates superior fundamentals in certain metrics—generating $20.8 million in 30-day network fees compared to BNB Chain’s $9.1 million, while maintaining a total value locked (TVL) of $6.9 billion versus BNB Chain’s $5.7 billion.

Corporate entities such as Forward Industries and DeFi Development Corp., which incorporated SOL into their balance sheet strategies, are presently facing unrealized losses on these holdings.

The post Solana (SOL) Tumbles 11% Amid Plunging DApp Revenue and Zero Funding Rates appeared first on Blockonomi.

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