Javascript must be enabled to continue!
Rafflesia Optimization Algorithm Applied in the Logistics Distribution Centers Location Problem
View through CrossRef
<p>Intelligent evolutionary algorithm is an important method to solve optimization problems. Most of their inspiration comes from the laws of nature and biology. This paper proposes a new intelligent evolutionary algorithm based on the life habits of Rafflesia, which is called Rafflesia Optimization Algorithm. It mainly consists of three stages: attracting insects, swallowing insects, and spreading seeds. In the first stage, the ROA algorithm performs the local search to find the optimal solution. In the second stage, it improves execution efficiency and solution accuracy by reducing the number of individuals. In the third stage, it performs the global search to jump out of the local optimal position. In the experimental part, this paper uses numerical functions (the CEC2013 benchmark function set) and practical application problems (the logistics distribution centers location problem) to test the performance of the ROA algorithm, and compares it with seven meta-heuristics algorithms. The experimental results prove the effectiveness and practicability of the ROA algorithm.</p>
<p> </p>
Journal of Internet Technology
Title: Rafflesia Optimization Algorithm Applied in the Logistics Distribution Centers Location Problem
Description:
<p>Intelligent evolutionary algorithm is an important method to solve optimization problems.
Most of their inspiration comes from the laws of nature and biology.
This paper proposes a new intelligent evolutionary algorithm based on the life habits of Rafflesia, which is called Rafflesia Optimization Algorithm.
It mainly consists of three stages: attracting insects, swallowing insects, and spreading seeds.
In the first stage, the ROA algorithm performs the local search to find the optimal solution.
In the second stage, it improves execution efficiency and solution accuracy by reducing the number of individuals.
In the third stage, it performs the global search to jump out of the local optimal position.
In the experimental part, this paper uses numerical functions (the CEC2013 benchmark function set) and practical application problems (the logistics distribution centers location problem) to test the performance of the ROA algorithm, and compares it with seven meta-heuristics algorithms.
The experimental results prove the effectiveness and practicability of the ROA algorithm.
</p>
<p> </p>.
Related Results
Equilibrium Study of Logistics Demand and Logistics Resource Allocation in Guangdong Province
Equilibrium Study of Logistics Demand and Logistics Resource Allocation in Guangdong Province
Abstract
Logistics serve as a crucial link between production and consumption. The balanced allocation of logistics demand and resources can promote the balanced developmen...
Logistics capability, logistics outsourcing and firm performance in an e‐commerce market
Logistics capability, logistics outsourcing and firm performance in an e‐commerce market
PurposeEffective and efficient supply chain management is critical to the success of firms engaging in e‐commerce. The purpose of this paper is to examine the impact of logistics c...
Diagnosis of delivery vulnerability in a logistics system for logistics risk management
Diagnosis of delivery vulnerability in a logistics system for logistics risk management
PurposeDelivery vulnerability is a critically important theme in logistics risk management. However, while logistics service providers often collect and retain massive amounts of l...
Modeling Hybrid Metaheuristic Optimization Algorithm for Convergence Prediction
Modeling Hybrid Metaheuristic Optimization Algorithm for Convergence Prediction
The project aims at the design and development of six hybrid nature inspired algorithms based on Grey Wolf Optimization algorithm with Artificial Bee Colony Optimization algorithm ...
Modeling Hybrid Metaheuristic Optimization Algorithm for Convergence Prediction
Modeling Hybrid Metaheuristic Optimization Algorithm for Convergence Prediction
The project aims at the design and development of six hybrid nature inspired algorithms based on Grey Wolf Optimization algorithm with Artificial Bee Colony Optimization algorithm ...
An improved Coati Optimization Algorithm with multiple strategies for engineering design optimization problems
An improved Coati Optimization Algorithm with multiple strategies for engineering design optimization problems
AbstractAiming at the problems of insufficient ability of artificial COA in the late optimization search period, loss of population diversity, easy to fall into local extreme value...
INFLUENCE OF INFORMATION TECHNOLOGIES ON THE INNOVATIVE DEVELOPMENT OF LOGISTICS MANAGEMENT
INFLUENCE OF INFORMATION TECHNOLOGIES ON THE INNOVATIVE DEVELOPMENT OF LOGISTICS MANAGEMENT
The article determines that the innovative development of logistics management is a key condition for the successful reconstruction of the innovative management model in general. I...
Development prediction of logistics industry in Henan province and its dynamic analysis
Development prediction of logistics industry in Henan province and its dynamic analysis
Purpose
– The purpose of this paper is to establish a group of grey prediction models and relative degree model to study the characteristics and trend of the logist...

