Approximating Linear Programming by Geometric Programming and Its Application to Urban Planning

Harrison O.A., Christy C.N., Bridget N.O., Immaculata O.O., Sylvester A.I.
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Abstract

In this study, we approximated linear programming by geometric programming; the developed method converts linear programming to geometric programming. We applied the developed method to Neighbourhood planning, a vital aspect of urban planning, and obtained the optimal cost of Neighbourhood designs. The method demonstrated that geometric programming is a robust non-linear optimization model that can be extended to approximate linear optimization problems. This method has obvious advantages in the sense that it allows every decision variable to contribute to the optimal objective function. This is not the case with the known regular Simplex method and the Interior Point Algorithm of solution to linear programming which assign zeros to some variables when the matrix of the non-basic variables is rectangular or when some of the non-basic variables did not enter the basis. The developed method was used to find the global optimal solution, optimal primal and dual decision variables. The solution was better compared to the linear programming method via Simplex method or Interior Point Algorithm because it achieved the global optimal solution. We observed that in addition to achieving the global optimal solution, we obtained the optimal dual decision variables which was absent in the other methods and all the primal decision variables have value against the other methods that assigned some of the variables with zeroes.
用几何规划逼近线性规划及其在城市规划中的应用
在本研究中,我们用几何规划来逼近线性规划;该方法将线性规划转化为几何规划。我们将开发的方法应用于城市规划的一个重要方面——邻里规划,并获得了邻里设计的最优成本。该方法证明了几何规划是一种鲁棒的非线性优化模型,可以推广到近似线性优化问题。该方法具有明显的优点,因为它允许每个决策变量都对最优目标函数做出贡献。这与已知的正则单纯形法和求解线性规划的内点算法不同,当非基本变量的矩阵是矩形时,或者当某些非基本变量没有进入基时,将某些变量赋零。该方法用于寻找全局最优解、最优原决策变量和对偶决策变量。该方法实现了全局最优解,优于单纯形法和内点算法的线性规划方法。我们观察到,除了实现全局最优解外,我们还获得了其他方法所没有的最优对偶决策变量,并且所有原始决策变量对其他方法都有值,这些方法将一些变量赋值为零。
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