Coingecko:以太坊总共销毁了多少ETH?是通胀还是通缩

币界网Published on 2024-08-13Last updated on 2024-08-13

币界网报道:

作者:Shaun Paul Lee,Coingecko;编译:陶朱,

以太坊已销毁了多少 ETH?

截至 2024 年 8 月 5 日,以太坊网络自年初以来已累计销毁 465,657 个 ETH。2021 年 6 月 EIP-1559 实施后,共计销毁 436 万个 ETH。

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与此同时,2024 年第二季度销毁了 107,725 个 ETH,较第一季度下降了 -67.7%。2024 年第一季度,销毁了 333,555 个 ETH。

2024 年 7 月,销毁了 17,114 个 ETH,创下 2024 年月度历史新低,较 6 月下降了 -35.0%。与此同时,2024 年 3 月销毁了 147,620 个 ETH,创下 2024 年月度历史新高。然而,这一数字与 2022 年 1 月(上一轮牛市高峰期)销毁的 398,061 个 ETH 的历史最高值相去甚远。

以太坊是通货膨胀还是通货紧缩?

尽管在 2022 年第四季度至 2024 年第一季度期间处于通货紧缩状态,但以太坊现在处于通货膨胀状态。ETH 的发行量超过了销毁量,自 2024 年初以来,网络中增加了 540,958 个 ETH。与此同时,已销毁了 465,657 个 ETH,导致 2024 年网络净增 75,301 个 ETH。

按季度计算,2024 年第一季度是通货紧缩的,发行了 220,454 个 ETH,销毁了 333,555 个 ETH。这导致以太坊的供应量减少了 113,100 个 ETH。然而,随着整个 2024 年第二季度网络活动的下降,以太坊开始通货膨胀。整个季度,共发行了 228,543 个 ETH,销毁了 107,725 个 ETH,区块链中增加了 120,818 个 ETH。

谁销毁了最多的 ETH?

Uniswap 仍然是 ETH 的最大销毁者,2024 年共销毁了 71,915 个 ETH;2024 年 7 月,Uniswap 上共销毁了 2,470 个 ETH。虽然 Uniswap 一直是 ETH 销毁的主导者,但 ETH 销毁量急剧下降。其销毁率环比下降 -72.4%,从第一季度的 54,413 个 ETH 下降至第二季度的 15,031 个 ETH。排名前十的 ETH 销毁者占 2022 年销毁总量的 39.2%。

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ETH 转账是 ETH 销毁的第二大贡献者,今年迄今已销毁了 33,538 ETH。第一季度,ETH 转账销毁了 25,668 ETH,第二季度降至 6,838 ETH,环比下降 -73.4%。

Tether (USDT) 是第三大销毁者,2024 年销毁了 23,332 ETH。与 Uniswap 和 ETH 转账一样,其销毁率环比下降 -70.9% 至第二季度的 5,091 ETH,而第一季度为 17,480 ETH。

第四大销毁者是 Banana Gun (BANANA),销毁了 11,060 ETH。Telegram 交易机器人在第二季度销毁了 2,150 ETH,较第一季度(8,364 ETH)下降 74.3%。它支持的区块链上的 DEX 交易下滑影响了其销毁率。排名前 10 的其余协议各自销毁的 ETH 不到 10,000。

ETH 销毁率排名(2024 年)

2024 年 1 月 1 日至 2024 年 8 月 5 日期间,十大 ETH 销毁者排名如下:

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