Cao Cejun, Xie Yuting, Liu Yang, Liu Jiahui, Zhang Fanshun
Collaborative Innovation Center for Chongqing's Modern Trade Logistics & Supply Chain, School of Management Science and Engineering, Chongqing Technology and Business University, Chongqing, 400067, PR China.
School of Management Science and Engineering, Chongqing Technology and Business University, Chongqing, 400067, PR China.
J Clean Prod. 2023 Feb 20;389:135985. doi: 10.1016/j.jclepro.2023.135985. Epub 2023 Jan 11.
A safe and effective medical waste transport network is beneficial to control the COVID-19 pandemic and at least decelerate the spread of novel coronavirus. Seldom studies concentrated on a two-phase COVID-19 medical waste transport in the presence of multi-type vehicle selection, sustainability, and infection probability, which is the focus of this paper. This paper aims to identify the priority of sustainable objectives and observe the impacts of multi-phase and infection probability on the results. Thus, such a problem is formulated as a mixed-integer programming model to minimise total potential infection risks, minimise total environmental risks, and maximise total economic benefits. Then, a hybrid solution strategy is designed, incorporating a lexicographic optimisation approach and a linear weighted sum method. A real-world case study from Chongqing is used to illustrate this methodology. Results indicate that the solution strategy guides a good COVID-19 medical waste transport scheme within 1 min. The priority of sustainable objectives is society, economy, and environment in the first and second phases because the total of case No.35 is 3.20%. A decentralised decision mode is preferred to design a COVID-19 medical waste transport network at the province level. Whatever the infection probability is, infection risk is the most critical concern in the COVID-19 medical waste clean-up activities. Environmental and economic sustainability performance also should be considered when infection probability is more than a certain threshold.
一个安全有效的医疗废物运输网络有利于控制新冠疫情,并至少减缓新型冠状病毒的传播。很少有研究关注在存在多种车辆选择、可持续性和感染概率的情况下的两阶段新冠医疗废物运输,而这正是本文的重点。本文旨在确定可持续目标的优先级,并观察多阶段和感染概率对结果的影响。因此,将这样一个问题构建为一个混合整数规划模型,以最小化总潜在感染风险、最小化总环境风险并最大化总经济效益。然后,设计了一种混合求解策略,结合了字典序优化方法和线性加权和法。通过重庆的一个实际案例研究来说明这种方法。结果表明,该求解策略能在1分钟内指导制定出一个良好的新冠医疗废物运输方案。在第一阶段和第二阶段,可持续目标的优先级是社会、经济和环境,因为35号案例的总量为3.20%。在省级层面设计新冠医疗废物运输网络时,更倾向于采用分散决策模式。无论感染概率如何,感染风险都是新冠医疗废物清理活动中最关键的问题。当感染概率超过一定阈值时,还应考虑环境和经济可持续性表现。