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A Probabilistic Tree-Based Representation for Non-convex Minimum Cost Flow Problems

机译:基于概率的树木的非凸性最小成本流动问题的表示

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摘要

Network flow optimisation has many real-world applications. The minimum cost flow problem (MCFP) is one of the most common network flow problems. Mathematical programming methods often assume the linearity and convexity of the underlying cost function, which is not realistic in many real-world situations. Solving large-sized MCFPs with nonlinear non-convex cost functions poses a much harder problem. In this paper, we propose a new representation scheme for solving non-convex MCFPs using genetic algorithms (GAs). The most common representation scheme for solving the MCFP in the literature using a GA is priority-based encoding, but it has some serious limitations including restricting the search space to a small part of the feasible set. We introduce a probabilistic tree-based representation scheme (PTbR) that is far superior compared to the priority-based encoding. Our extensive experimental investigations show the advantage of our encoding compared to previous methods for a variety of cost functions.
机译:网络流优化有许多现实世界应用。最小成本流量问题(MCFP)是最常见的网络流问题之一。数学编程方法通常假设潜在成本函数的线性和凸性,这在许多真实世界的情况下都不逼真。用非线性非凸起成本函数解决大型MCFP姿势造成更加困难的问题。在本文中,我们提出了一种使用遗传算法(气体)来求解非凸MCFP的新的表示方案。使用GA在文献中求解MCFP的最常见的表示方案是基于优先的编码,但它具有一些严重的限制,包括将搜索空间限制为可行集的一小部分。我们介绍了与基于优先级的编码相比远优越的概率基于树的表示方案(PTBR)。我们广泛的实验调查显示了与以往的各种成本函数的方法相比,我们的编码的优势。

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