...
首页> 外文期刊>Complexity >Optimization of Cross-Border e-Commerce Logistics Supervision System Based on Internet of Things Technology
【24h】

Optimization of Cross-Border e-Commerce Logistics Supervision System Based on Internet of Things Technology

机译:基于事物互联网技术的跨境电子商务物流监督系统优化

获取原文
           

摘要

Based on the Internet of Things technology, this paper proposes building a cross-border e-commerce logistics supervision system and determines the evaluation index system from the overall framework design of the system, supply chain supervision process optimization, risk supervision optimization, and system order degree optimization. First of all, the framework adopts the national certification center to supervise the logistics service platform and logistics service platform to supervise the logistics participants of the secondary supervision system. Then, functions such as swarm intelligence contract, legal anonymous identity authentication, intelligent transaction matching, abnormal data analysis and detection, privacy protection, and traceability are realized under the framework of the supervision system. Then, the security analysis and transaction supervision component software are used to verify the security, control, and operating efficiency of the transaction supervision framework. Finally, in a real crowd sourcing logistics enterprise platform to run on the software component, the actual measurement, the measured results show that the proposed cross-border supervision system is safe and controllable, and electronic business logistics protects users and data privacy, prevents forgery and fraud, and realizes the user behavior and user data in addition to auditability and traceability.
机译:本文基于事物互联网技术,提出建立跨境电子商务物流监督系统,并确定系统的整体框架设计,供应链监督过程优化,风险监督优化和系统订单中的评价指标体系学位优化。首先,该框架采用国家认证中心监督物流服务平台和物流服务平台,监督二级监督系统的物流参与者。然后,在监督系统的框架下,在监督系统的框架下实现了诸如群体智能合同,法律匿名身份认证,智能交易匹配,异常数据分析和检测,隐私保护和可追溯性。然后,安全性分析和交易监督组件软件用于验证交易监督框架的安全性,控制和操作效率。最后,在真正的人群采购物流企业平台上运行软件组件,实际测量,测量结果表明,建议的跨境监督系统是安全可控的,电子商务物流保护用户和数据隐私,防止伪造和欺诈,除了审计性和可追溯性之外,还实现了用户行为和用户数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号