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Gengui Zhou
Information about the author Gengui Zhou will soon be added to the site.
Found
10 papers
in total
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Designing a closed‐loop supply chain with stochastic product returns: a Genetic Algorithm approach
2011
In the recent past, some scholars and logisticians have begun to explore the...
A genetic algorithm approach to the balanced allocation of customers to multiple warehouses with varying capacities
2005
With the increasing importance of seamless supply chain integration to business...
A genetic algorithm approach to the bi-criteria allocation of customers to warehouses
2003
In today's customer-centric business environment, a firm's ability to allocate its...
Supply chain modeling: Past, present and future
2002
Over the years, most of the firms have focused their attention to the effectiveness...
The balanced allocation of customers to multiple distribution centers in the supply chain network: A genetic algorithm approach
2002
In a typical location-allocation problem, customer demand data are often aggregated...
The application of evolutionary computation to a multi-stage production planning problem
2001
We propose a new evolutionary computation approach to deal with the multistage...
One-dimensional machine location problem with backtracking of jobs on a flow line
2001
In modern manufacturing systems, many flow line production systems have been adopted...
A note on genetic algorithms for degree-constrained spanning tree problems
1997
The degree-constrained spanning tree problem is of high practical importance. Up to...
Genetic algorithm approach on multi-criteria minimum spanning tree problem
1999
Minimum Spanning Tree (MST) problem is of high importance in network optimization. The...
An effective genetic algorithm approach to the quadratic minimum spanning tree problem
1998
In this paper we present a new approach to solve the quadratic minimum spanning tree...
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