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Multiobjective fuzzy vehicle routing using Twitter data: Reimagining the delivery of essential goods

机译:多目标模糊车途使用推特数据进行路由:重新称像必需品的交付

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The world faced a major disruption in the form of the coronavirus disease (COVID-19) pandemic, which caused many countries to impose severe restrictions on movement, popularly known as "lockdown." These lockdowns impacted transportation adversely, leading to massive disruptions in global and local supply chains. As the local markets were shut down, more people started turning to e-commerce logistics platforms offering doorstep deliveries of essential items (food and medicines). This resulted in an explosion in demand for such services, and businesses struggled to complete their deliveries. Additionally, the volume of real-time text data suddenly increased, as these customers started sharing their feedback on social media platforms. The availability of real-time raw text data and its popularity for solving complex business problems motivated the development of the approach proposed herein to address last-mile delivery issues. Thus, this paper suggests the use of Twitter data to identify the various grievances of customers about e-commerce logistics platforms. Natural language processing, a popular tool for text analytics, is employed to extract consumer tweets from the Twitter profiles of such businesses and subsequently to clean, process, and analyse them. Issues are categorized and used as objectives in a multiobjective fuzzy vehicle routing problem (VRP). An integrated hybrid fuzzy VRP is developed and coded to solve last-mile delivery issues. Experimental results and comparative analyses highlight the benefits of the novel approach. Managerial insights and scope for future research assist in the further development of the idea.
机译:世界面临的冠状病毒病(COVID-19)的流行,使得不少国家对运动的严格限制,俗称的形式严重破坏“锁定”。这些lockdowns影响交通的不利,导致全球和本地供应链大规模中断。由于当地市场被关闭,更多的人开始转向电子商务的物流平台,提供必要的物品(食品和药品)的家门口交货。这导致了对这种服务的爆炸性需求,和企业努力完成他们交付。此外,实时文本的数据量突然增大,因为这些客户开始分享在社会化媒体平台,他们的反馈。实时原始文本数据的可用性和解决激励的方式发展复杂的业务问题的人气在此提出,解决最后一英里交付问题。因此,本文建议使用Twitter的数据,以确定有关电子商务的物流平台客户的各种不满。自然语言处理,文本分析的流行工具,被用来提取这些企业的Twitter账户消费鸣叫,然后清洗,处理和分析它们。问题进行分类并在一个多目标模糊车辆路径问题(VRP)用作目标。集成式混合模糊VRP开发和编码解决最后一英里交付问题。实验结果和比较分析突出了新方法的好处。管理见解和范围为今后的研究有助于思想的进一步发展。

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