【得得周报】全球数字货币总市值较上周上涨约4.70% | 09.23-09.29

链得得Pubblicato 2024-09-30Pubblicato ultima volta 2024-09-30

据得得智库数据统计,截至2024年09月29日12:00,全球数字货币市场共有币种14,675种。总市值共计 $2,417,034,455,469(约为24,170亿美元),本周数字货币总市值与上周相比上涨了约1,085亿美元,上涨幅度约为4.70%。

全球主流数字货币市场上周全面上行

据得得智库数据统计,截止2024年09月29日12:00,上周主流数字货币市场全面上行。

其中,BTC价格从 62,947.65 美元上涨至 65,526.13美元,涨幅约为4.10%;

ETH价格从 2,585.58 美元上涨至 2,647.25 美元,涨幅约为2.39%;

BNB价格从 583.13 美元上涨至 596.09 美元,涨幅约为2.22%;

LTC价格从 67.05 美元上涨至 68.89 美元,涨幅约为2.74%;

DOT价格从 4.37 美元上涨至 4.74 美元,涨幅约为8.47%。

SOL价格从 147.01 美元上涨至 155.60 美元,涨幅约为5.84%。

本周TOP 30数字货币市值整体较上周下跌0.62%

据得得智库数据统计,截至2024年09月29日12:00,全球数字货币市场共有币种14,675种。总市值共计 $2,417,034,455,469(约为24,170亿美元),本周数字货币总市值与上周相比上涨了约1,085亿美元,上涨幅度约为4.70%。

其中TOP 30数字货币的总市值为 $ 2,132,807,554,514(约为21,328亿美元),约占所有数字货币总市值的88.24%,相较上周相比下跌为0.62%。

本周市值排名第一的是BTC,约为12,948亿美元,TOP30总市值占比为60.71%,较上周上涨0.08%。

排名第二的是ETH,本周市值约为3,186亿美元,TOP30总市值占比为14.94%,较上周下跌0.23%。

排名第三的是USDT,本周市值约1,195亿美元,TOP30总市值占比为5.60%,较上周下跌0.21%。

TOP 30中数字货币排名整体波动较小,具体数字货币的占比分布如下图所示:

本周市值TOP 30的数字货币分为公链、平台币、稳定币、代币、DeFi等领域。

其中占比最多的领域是公链,占比为77.24%,排名第二的领域是稳定币,占比为7.57%。TOP 30数字货币领域分类的占比分布如下图所示:

本周比特币矿池中份额无明显波动

据得得智库统计,本周比特币共出区块980块。其中空块数量2块,空块占比0.20%。平均矿工费与块奖励占比1.87%。本周比特币TOP 10矿池份额占总份额的96.62%,具体矿池份额分布如下:

每周要闻回顾

行业进展

  • 南非加密货币市场的收入预计将在2024年达到2.46亿美元
  • Silvergate高管:“监管突然转向”导致银行关闭
  • UniSat CEO:团队正积极研究CAT20交易市场
  • 调查:七分之一的美国选民持有加密货币,倾向于支持特朗普
  • Silvergate高管:“监管突然转向”导致该银行在破产申请中关闭
  • MetaMask:用户现可使用多个DApp而无需切换网络
  • Jupiter已收购SolanaFM,前员工@0xmiir加入Jupiter团队

投融资

  • DePIN公司Grass完成A轮融资,Hack VC领投,Polychain Capital等参投
  • Helix Labs完成200万美元Pre-Seed轮融资,Tribe Capital等领投
  • Darkbright Studios完成600万美元种子轮融资,Bitkraft Ventures领投
  • Celestia Foundation完成1亿美元融资
  • 前端托管解决方案EarthFast完成140万美元Pre-Seed轮融资
  • Swan Chain完成数百万美元新一轮融资,OP基金会领投
  • AminoChain完成500万美元种子轮融资

一周政策复盘

  • 俄罗斯外长:普京称在美国大选中支持哈里斯是在开玩笑
  • 澳大利亚将出台新法规,多数加密相关公司需获得金融服务牌照
  • 阿根廷税务机关联合海岸防卫队捣毁一比特币矿机“走私团伙”
  • 阿根廷捣毁加密货币挖矿设备走私团伙
  • 俄罗斯警方关闭一家涉嫌跨境的加密货币交易所
  • 韩国加密货币交易所Bithumb更换合规官
  • 山西警方打掉一个诈骗并利用USDT洗钱的犯罪团伙

投资日历

09月23日(星期一)

  • 韩国虚拟资产投资超过 10 亿韩元的超高净值账户占市场总额的 47%

09月24日(星期二)

  • 央行:近期将下调存款准备金率0.5个百分点

09月25日(星期三)

  • /

09月26日(星期四)

  • BTC触65000 USDT,24H涨幅1.91%

09月27日(星期五)

  • 央行:自9月27日起下调金融机构存款准备金率0.5个百分点

09月28日(星期六)

  • CZ刑满释放后发布首条推文“GM”

09月29日(星期日)

  • 中国前副财长朱光耀:要重视研究加密货币的发展
链得得仅提供相关信息展示,不构成任何投资建议

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