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Nonlinear programming using an expanded Lagrangian function: A water resources management case study.

机译:使用扩展的拉格朗日函数进行非线性规划:水资源管理案例研究。

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Optimal planning and operation of large hydro-power systems, when realistically considered, usually result in non-linear, non-convex optimization problems of high dimension which can be difficult to solve using most optimization techniques. Our goal is to use a special form of potential function called the Expanded Lagrangian Function combined with the trust region algorithm to solve large-scale optimization problems arising in the applications of water resources management problems.; Our trust region algorithm uses a linear combination of an inexact Newton's direction and a steepest descent direction, to obtain a feasible descent direction. A bi-dimensional trust region scheme is used to obtain fast convergence. The inexact Newton's direction is obtained by solving a linear system of equations using a pre-conditioned conjugate gradient method which uses drop-tolerance pre-conditioner with RCM ordering.; The proposed method is tested on real data of 90 years of information for the Great Lakes water resources problem. The same application is solved with LANCELOT, using two different features of this software.; The results of the studies have shown that both algorithms converge to optimum objective values within a 3.0% difference from each other with LANCELOT providing worser objective values in most cases. Computer time required by both algorithms are comparable, with LANCELOT being somewhat slower.; The optimal storage levels and releases obtained from the proposed method when compared with past operations provide a significantly better operation.
机译:现实地考虑大型水电系统的最佳规划和运行,通常会导致高维非线性,非凸优化问题,而使用大多数优化技术可能很难解决这些问题。我们的目标是使用一种特殊形式的势函数,称为扩展拉格朗日函数,结合信任域算法,以解决在水资源管理问题的应用中出现的大规模优化问题。我们的信赖域算法使用不精确的牛顿方向和最陡的下降方向的线性组合,以获得可行的下降方向。二维信任区域方案用于获得快速收敛。不精确的牛顿方向是通过使用预处理共轭梯度方法求解线性方程组而获得的,该方法使用了带有RCM排序的耐压预处理器。针对大湖水资源问题,该方法在90年信息的真实数据上进行了测试。使用该软件的两个不同功能,使用LANCELOT解决了相同的应用程序。研究结果表明,两种算法都在不超过3.0%的差异内收敛到最佳目标值,而在大多数情况下,LANCELOT提供的目标值更差。两种算法所需的计算机时间是可比的,但LANCELOT的速度稍慢一些。与过去的操作相比,从建议的方法获得的最佳存储级别和释放量提供了明显更好的操作。

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