Research on integration of enterprise ERP and E-commerce systems based on adaptive ant colony optimization

Guangbo Lin, Ninggui Duan
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Abstract

Integrating the E-commerce system with an enterprise resource planning tool can help the firm improve performance, maintain customers, and increase sales. In Enterprise Resource Planning, integration features can be provided either as developed features or as separate assignments and contributions. Problems with the online platform, improper addresses, rejected payments, and especially apparent transactions are frequent problems for online buyers. The enhanced Adaptive Ant Colony Optimization is utilized to optimize the rural E-commerce express of transportation. Several innovative routes can lower the downlink transportation cost and reach all collecting places with a fast delivery route. Convolutional Neural Networks were utilized to increase the collective innovation of the E-commerce platform and simplify network communication. E-commerce is a mechanism used to market information services and products. Hence, ERP-AACO-CNN has been designed to integrate Enterprise Resource Planning and E-commerce, and business operations can stream smoothly from the front to the back of the business. Statistics on sales orders, customers, stock levels, price, and essential performance measurement systems. The automated invoices, frequent communications, financial report preparation, product and service delivery, and material requirements planning. The most significant results will likely finance businesses that employ it as a stimulant for a wide-ranging process improvement. In addition, E-commerce is a valuable innovation that connects buyers and sellers in various corners of the globe. Customer satisfaction is projected to be more significant than fault detection at 95.2 % accuracy for the proposed method’s E-commerce system with the superior value. According to client demand, an E-commerce system is the most accurate development at a given input level, and a future ERP is 64.9% efficient. The proposed approach has a 24.5% random error rate and a 13.2% mean square error rate. A comparison of E-commerce and enterprise ERP precision to the proposed technique yields 83.8% better results.
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基于自适应蚁群优化的企业 ERP 与电子商务系统整合研究
将电子商务系统与企业资源规划工具整合起来,可以帮助企业提高业绩、维护客户和增加销售额。在企业资源规划中,整合功能既可以作为已开发的功能提供,也可以作为单独的任务和贡献提供。在线平台问题、地址不当、拒绝付款,尤其是明显的交易,是在线买家经常遇到的问题。增强型自适应蚁群优化技术可用于优化农村电子商务快递运输。几条创新路线可以降低下行运输成本,并以快速的配送路线到达所有收货地。利用卷积神经网络提高电子商务平台的集体创新能力,简化网络通信。电子商务是一种用于营销信息服务和产品的机制。因此,ERP-AACO-CNN 的设计将企业资源规划和电子商务整合在一起,使业务运营从前台顺利流向后台。销售订单、客户、库存水平、价格和基本绩效衡量系统的统计数据。自动化发票、频繁沟通、财务报告编制、产品和服务交付以及物料需求计划。最重要的成果可能会资助那些将其作为促进广泛流程改进的催化剂的企业。此外,电子商务是一项有价值的创新,它将全球各个角落的买家和卖家联系在一起。对于所提出的具有卓越价值的电子商务系统而言,客户满意度预计比故障检测更重要,准确率为 95.2%。根据客户需求,在给定的输入水平下,电子商务系统的开发准确度最高,而未来的企业资源规划系统的效率为 64.9%。建议方法的随机误差率为 24.5%,均方误差率为 13.2%。将电子商务和企业 ERP 的精确度与所提出的技术进行比较,结果提高了 83.8%。
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