An application oriented multi-agent based approach to dynamic load/truck planning
Authored by Adil Baykasoglu, Vahit Kaplanoglu
Date Published: 2015
DOI: 10.1016/j.eswa.2015.04.011
Sponsors:
No sponsors listed
Platforms:
JACK Intelligent Agents
Model Documentation:
Other Narrative
Flow charts
Ontologies
Model Code URLs:
http://www.sciencedirect.com/science/article/pii/S0957417415002419
Abstract
Truck operations decisions for transportation logistics pose challenges
especially when loads are lessthan-truckload (LTL). Within a dynamic
business environment load planners should consider effective utilization
of resources and profitability of their operations. Multi-agent based
system provides effective mechanisms for the management of dynamic
operations in transportation. The algorithms for transportation domain
that are available in the literature are generally focusing on
generation of effective solutions for planning/scheduling problems
without considering real transportation systems dynamics. Multi-agent
based design of the load/truck planning problems is supposed to be
helpful for integration of algorithms with real-time logistics
controlling systems. The cooperative structure of the multi-agent based
approach is motivated by real-world third party logistics (3PL) company
operations. Negotiation mechanism among the agents is used to handle the
dynamic events. The proposed approach is tested via simulation by using
LTL data from a 3PL logistics company. The approach generates feasible
and profitable decisions under dynamic circumstances by using
negotiation/bidding mechanisms. Proposed approach is implemented by
using JACK, an agent development framework. A multi-agent based dynamic
load/truck control system (MABDLCS) is also developed along with this
approach. MABDLCS could be used for both testing some transportation
scenarios and for real time vehicle/load control purposes. The solutions
obtained by using the proposed approach demonstrated that MAS is
contributing on problem solution quality while generating real-time
schedules. (C) 2015 Elsevier Ltd. All rights reserved.
Tags
Simulation
Design
Management
Supply chain
Load consolidation
architecture
transportation
Logistics
Framework
Decision-support-system