Abstract

Supplier selection and order quantity allocation have a strong influence on a company’s profitability and the total cost of finished products. From an optimization perspective, the processes of selecting the right suppliers and allocating orders are modeled through a cost function that considers different elements, such as the price of raw materials, ordering costs, and holding costs. Obtaining the optimal solution for these models represents a complex problem due to their discontinuity, non-linearity, and high multi-modality. Under such conditions, it is not possible to use classical optimization methods. On the other hand, metaheuristic schemes have been extensively employed as alternative optimization techniques to solve difficult problems. Among the metaheuristic computation algorithms, the Grey Wolf Optimization (GWO) algorithm corresponds to a relatively new technique based on the hunting behavior of wolves. Even though GWO allows obtaining satisfying results, its limited exploration reduces its performance significantly when it faces high multi-modal and discontinuous cost functions. In this paper, a modified version of the GWO scheme is introduced to solve the complex optimization problems of supplier selection and order quantity allocation. The improved GWO method called iGWO includes weighted factors and a displacement vector to promote the exploration of the search strategy, avoiding the use of unfeasible solutions. In order to evaluate its performance, the proposed algorithm has been tested on a number of instances of a difficult problem found in the literature. The results show that the proposed algorithm not only obtains the optimal cost solutions, but also maintains a better search strategy, finding feasible solutions in all instances.

Highlights

  • The purchase of raw materials for industrial manufacturing is an important task

  • Demand dit represents the amount of the product i that is required in period t, and it is known along the planning horizon

  • It has been selected in order to maintain compatibility with other studies reported in the literature

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Summary

Introduction

The purchase of raw materials for industrial manufacturing is an important task. Materials must be purchased at the right times and quantities since a shortage (an interruption of the production due to the lack of raw materials) causes large monetary losses. Considering the importance of the EOQ model, in [3] the authors presented a survey describing the main results of the purchasing problem. It shows the extensions of Harris’ model that have been developed over the years, such as purchasing models, including multi-stage inventory systems and scheduling or productivity issues. This work considered a multi-product, multi-constraint inventory system from suppliers and incremental quantity discounts Another example is the work proposed in [16], where the supplier selection and order quantity allocation problems for multiple products have been analyzed. Different from linear programming techniques, the proposed method can solve supplier selection and purchasing problems under very complex and realistic scenarios, since it does not assume linearity and unimodality in its operation.

Problem Description and Model Formulation
Assumptions of the Model
Variables and Parameters
Objective Function
Original Grey Wolf Optimizer
Encircling Prey
Hunting
Attacking Prey
Search for Prey
Improved Grey Wolf Optimizer
Weighted Factors
Displacement Vector
Experimental Results
Statistical
Exploration-Exploitation Study
Evolution
Conclusions
Full Text
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