以太坊第二季度的烧钱率暴跌67%

币界网Published on 2024-07-22Last updated on 2024-07-22

币界网报道:

以太坊的通缩叙事似乎处于危险之中。

CoinGecko的一份新的季度web3报告显示,2024年第二季度,以太坊经历了自2022年9月通过the Merge向权益证明共识过渡以来的最高季度通胀率。

该报告指出,在第二季度以太坊的基础交易销毁机制删除了228500枚新发行的硬币中的107725枚后,以太坊的供应量增加了120800枚ETH(4.213亿美元)。

这一趋势导致以太坊的季度烧钱率下降了66.7%,第二季度网络仅出现7天的通缩趋势,低于第一季度的66天。

以太坊燃烧率。来源:CoinGecko。

天然气费用低

据Ultra Sound Money称,以太坊的燃烧率暴跌是由一系列非常低的天然气价格推动的,该网络目前对一笔典型的交易只收取3 gwei的费用。上个月,费用降至2020年以来的最低水平,仅为1.9 gwei。

以太坊的供应量自12月初以来首次超过1.202亿,此前在4月初出现了通货膨胀。ETH的供应量现在每周膨胀5万至6万ETH。自TheMerge以来,ETH的供应量仍下降了近293000。

ETH供应波动。来源:Ultra Sound Money。

这一趋势给以太坊带来了一把双刃剑,低交易费用既为更大的网络采用铺平了道路,也回答了自2020年DeFi Summer出现以来对网络的主要批评之一。

然而,许多投资者被以太坊合并后的通缩承诺所吸引,2022年的费用和交易数据表明,以太坊的供应将在合并后迅速减少。

邓村事件后烧伤率下降

值得注意的是,该网络在4月份的通货膨胀转折发生在3月13日以太坊Dencun升级激活几周后。

根据GrowThePie的数据,Dencun通过用二进制大对象(blob)替换气体密集型调用数据,显著降低了与第2层交易相关的成本,导致大多数顶级L2网络的费用超过90%。

Arbitrum、OP Mainnet和Base各自支付了42.1万至100万美元的每日费用,以验证以太坊主网上的交易,该交易在3月5日达到当地高点。然而,Arbitrum的第1层成本在7月份已降至每天1000至10000美元,而Base和OP Mainnet仅支付数百美元。

将状态数据发布到以太坊上所支付的L2费用。来源:GrowThePie。

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