Abstract:
Developments in information and communication technology has made significant impact on every sector.
Unfortunately, limited research exists regarding information systems for the distribution networks in Supply Chain. This
study made an effort to investigate the linkage between information systems and transportation cost optimization in
FMCG (Fast Moving Consumer Goods) sector. Information systems should support the management at operational and
strategic level. The study focused on the operational level implementation of information system with machine learning
and big data analytics. Factors, variables and constraints affecting the cost of transportation were identified from
industry experts and literature. Then a case study approach applied by analyzing the distribution network data of a Sri
Lankan FMCG company. A quantitative model was developed to reflect the transport cost structure and a software
model was developed considering the constraints and the cost structure, to reduce the cost of transportation by big data
analytics, machine learning and computer simulation. Developed model has been compared with the existing model of
transportation in the FMCG manufacturer to benchmark the optimization. In proposed model, the usage of vehicles are
reduced, thereby minimizing the transportation cost by increasing the consolidation possibilities, route planning and
stacking models.