宇脉科技申请一种基于区块链的智能通信方法及系统专利,实现智能通信的安全与高效管控

币界网2024-07-26 tarihinde yayınlandı2024-07-26 tarihinde güncellendi

币界网报道:

金融界 2024 年 7 月 23 日消息,天眼查知识产权信息显示,浙江宇脉科技股份有限公司申请一项名为“一种基于区块链的智能通信方法及系统“,公开号 CN202410815362.X ,申请日期为 2024 年 6 月。

专利摘要显示,本发明提供一种基于区块链的智能通信方法及系统,涉及通信传输技术领域,方法包括:获取发送端的数据发送请求;判断发送端是否获得证书颁发机构颁发的许可证;证书颁发机构将数据发送请求中含有的利用私钥对待传输数据进行哈希运算得到的哈希区块转发至安全控制中心;安全控制中心判断发送端的哈希区块是否有效;若是,允许发送端添加至区块链中;否则,拒绝发送端添加到区块链中;在发送端代表的区块与接收端代表的区块之间建立通信链路;以接收信号强度为基础,构建通信链路的链路指纹;通过链路指纹对待传输数据进行加密;接收端接收到待传输数据时,将待传输数据转发至安全控制中心;安全控制中心根据链路指纹判断待传输数据是否正常。

本文源自:金融界

作者:情报员

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