Author:
Delgoshaei Aidin,Ariffin Mohd Khairol Anuar Mohd
Abstract
Purpose
Medicine distribution logistics pattern in pharmaceutical supply chains is a hot topic, which aims to predict applicable and efficient medicine distribution patterns so that the medicine can be distributed effectively. This research aims to propose a new method, named density-distance method, that works based on Kth proximity using patient features (including age, gender, education, inherent diseases, systemic diseases and disorders); geographical features (city, state, population, density, land area) and supply chain features (destination and transportation system).
Design/methodology/approach
The proposed method of this research consists of two main phases where in the first phase, quantitative data analytics will be carried out to find out the significant factors and their impacts on medicine distribution. Then, in the next phase, a new Kth-proximity density-distance-based method is proposed to determine the best locations for the wholesalers while designing a supply chain.
Findings
The findings show that the proposed method can effectively design a supply chain network using realistic features. In addition, it is found that while the distance-density aggregate index is applied, the wholesalers' locations will be different compared to classic supply chain designs. The results show that age, public hygiene level and density are the most influential during designing new supply chains.
Practical implications
The outcomes of this research can be used in the medicine supply chains to predict appropriate medicine distribution logistics patterns.
Originality/value
In this research, the machine learning method based on the nearest neighbor has been used for the first time in the design of the supply chain network.
Reference63 articles.
1. Research on measurement of supply chain finance credit risk based on internet of things;International Journal of Distributed Sensor Networks,2019
2. Integrating design and retail in the clothing value chain: an empirical study of the organisation of design;International Journal of Operations and Production Management,2006
3. Support vector machine with K-fold validation to improve the industry’s sustainability performance classification;Procedia Computer Science,2021
4. Big data analytics and artificial intelligence technologies based collaborative platform empowering absorptive capacity in health care supply chain: an empirical study;Journal of Business Research,2023
5. Locating facilities on the Manhattan metric with arbitrarily shaped barriers and convex forbidden regions;Transportation Science,1989