Eco-Optimized Route Planning
A Sustainable Short-Path Algorithm for Product Delivery
1Cheekatla Srinivas
Lecturer in Computer Science
University College of Science, Saifabad, Osmania University.
ABSTRACT
Efficient product delivery is a critical component of modern logistics, and optimizing delivery routes can significantly reduce costs and environmental impact. This study proposes a short-path algorithm tailored for eco-friendly product delivery, incorporating factors such as carbon emissions, fuel consumption, traffic patterns, and vehicle-specific constraints. The algorithm models the delivery network as a weighted graph, where edge weights reflect both logistical and environmental costs.
By integrating real-time data on road conditions, traffic congestion, and renewable energy infrastructure, the algorithm dynamically identifies routes that minimize emissions while ensuring timely deliveries. Multi-objective optimization techniques are employed to balance efficiency with sustainability goals, allowing for the consideration of both economic and environmental objectives in decision-making. This approach demonstrates how environmentally conscious logistics can align with operational objectives, supporting green supply chains and regulatory compliance, especially in industries where sustainability is a key concern. Moreover, the system incorporates adaptive learning mechanisms to continuously improve route planning by leveraging historical data on delivery performance, which further refines the optimization process over time. The proposed solution is particularly relevant for urban deliveries and intercity logistics, offering a scalable framework adaptable to various vehicle types, including electric and hybrid fleets. The ability to integrate electric vehicles' charging station data and energy consumption into the route planning process enhances the overall sustainability of the delivery network.
The results highlight the potential for reducing the environmental footprint of logistics operations while maintaining economic viability. By optimizing delivery routes in real-time, businesses can achieve significant fuel savings, lower emissions, and increase operational efficiency. This work contributes to the growing field of sustainable logistics and serves as a foundation for future advancements in green transportation systems. It also lays the groundwork for incorporating emerging technologies like autonomous vehicles, machine learning for traffic prediction, and advanced energy management systems to further enhance the sustainability and efficiency of product delivery networks.
Keywords: Eco-optimization, route planning, sustainable logistics, short-path algorithm, product delivery