利用Rprop求解圆形面积约束下的欧氏多设施定位问题

G. M. Nasira, T. Balaji
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引用次数: 0

摘要

本研究考虑了具有圆形区域约束的多设施选址问题,该问题具有源和目标之间的相互作用。详细的文献调查表明,涉及区域约束的问题很少受到关注。利用库恩-塔克理论得到了数学公式和解析解。数学求解过程非常复杂且耗时。因此,本文尝试用人工神经网络求解一个复杂的、有约束的多设施选址问题。通过数值算例证明,在可接受范围内,弹性反向传播Rprop模型与解析法得到的模型具有较好的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving Euclidean multifacility location problems under circular area constraints using Rprop
The present work considers multifacility location problems with circular area constraints having interactions between sources and destinations. A detailed literature survey reveals that a little attention has been paid to problem involving area constraints. Mathematical formulation and the analytical solutions have been obtained by using Kuhn-Tucker theory. The mathematical solution procedure is very complex and time consuming. Hence, an attempt has been made to get the solution of a complex, constrained multifacility location problem using artificial neural networks ANN. With the help of numerical examples, it has been established that within the acceptable limits resilient back-propagation Rprop model compares well with those obtained through analytical method.
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