LD Capital: 0x Protocol短期资金面分析

Odaily星球日报Published on 2023-11-13Last updated on 2023-11-13

Abstract

ZRX近期与Upbit地址交互频繁,Upbit地址持仓增长也较为显著,交易比较活跃。链上大户地址建仓信号不明显,近期基本面无较大利好。

原文作者: Jill, LD Capital

LD Capital: 0x Protocol短期资金面分析

项目简介

0x Protocol 是基于以太坊构建的交易(Exchange)智能合约,该项目成立于 2016 年,其模型为链下订单簿链上结算,该种结算机制使得链下参与者中继方成为了0x协议的 B 端用户。目前集成0x协议的中继方达到 78 个,包括 DefiLlama、Metamask、Coinbase 等。

2020 年,0x正式推出基于0x API 协议制作的 DEX Matcha

LD Capital: 0x Protocol短期资金面分析

来源:0x浏览器,LD Capital

基本面

0x Protocol 治理代币 ZRX,总量 10 亿枚,当前流通市值达到 4.6 亿美元,代币接近全流通。过去 24 小时交易量达到 8.6 亿美元,交易换手率极高。

LD Capital: 0x Protocol短期资金面分析

来源:CoinmarketCap,LD Capital

根据 etherscan 链上数据显示,排名前 30 的大户地址占比达到 63% ,中心化交易所地址占比达到 19% 左右,其中 Upbit 地址持仓占比达到 10.9% ,成为 ZRX 链上持币第一的地址。

LD Capital: 0x Protocol短期资金面分析

来源:Etherscan,LD Capital

根据 nansen 数据显示,Upbit 地址在近一个月内持仓增加 400 万枚左右,持仓增长 3.7% 。而 Upbit 另一地址持仓则在近一个月内增加将近 400 万枚,目前 Upbit 总持仓占比 11.37% 。

LD Capital: 0x Protocol短期资金面分析

来源:nansen,LD Capital

多个小鲸鱼地址在近一个月内建仓,持仓占比 1.33% 。

LD Capital: 0x Protocol短期资金面分析

来源:nansen,LD Capital

根据0x bdc 地址历史转账记录来看,该地址在 2022 年 12 月接收到这笔代币,而在今年 1 月份开始,陆续向 Coinbase 出售,当前该地址尚剩余 743 万枚,或为潜在抛压。

LD Capital: 0x Protocol短期资金面分析

交易放量

根据 Trading View 数据显示,币安现货在 10 月 9 日开始放量,筹码集中区在$ 0.25 ~$ 0.33 ,目前已经穿过阻力区。当前价格区间内筹码集中程度相对较低,阻力相对较小。

LD Capital: 0x Protocol短期资金面分析

来源:Trading View,LD Capital

合约数据

币安在 2020 年 6 月 29 日上线 ZRX 合约。从当前合约数据来看, 11 月 11 日下午 1 点左右,ZRX 合约持仓开始增加,主动买量也有一定程度的增加,不过多空人数比和大户持仓量多空比都小于 1 ,散户和大户都相对看空,主动卖量因此也相对较大。由合约数据可见,合约建仓信号并不明显。

LD Capital: 0x Protocol短期资金面分析

总结:ZRX 近期与 Upbit 地址交互频繁,Upbit 地址持仓增长也较为显著,交易比较活跃。链上大户地址建仓信号不明显,近期基本面无较大利好。

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