An Adjoint Inexact Trust Region Method for Nonlinear Constraint Production Optimization

Chithra Chakra, M. A. Kobaisi
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Abstract

Production optimization is the method for seeking the best possible well control and schedule plans in order to enhance reservoir performance under a given state and economic constraints. Determining the optimal injection and production control strategies through adjoint gradient-based optimization is a well-known practice in today’s modern reservoir management. However, apt handling of nonlinear control inputs, state and output constraints can be quite tedious with effects on the computational efficiency of the optimization algorithms used in practical production optimal control problems. In this paper, we develop an adjoint based interior-point inexact trust filter sequential quadratic programming (IITRF-SQP) method for solving constrained production optimization problems. Inexact trust-region is an extension of a filter trust region approach, which is used when the control input constraints Jacobians are of high dimension and are expensive to compute. The output constraints are handled using an interior-point method called- modified barrier-augmented Lagrangian, in which inequality constraints are treated by a modified barrier term and equality constraints with augmented Lagrangian terms. The algorithm we present uses the approximate information of Jacobians achieved through composite-step computation, which eliminates the cost of direct calculation of Jacobians and Hessians (gradients). The gradient information that provides criticality measure of the objective function is calculated using the adjoint method. Two numerical experiments on optimal water-flooding are presented. Performance comparisons of the proposed IITRF-SQP method with Lagrangian barrier method and sequential linear quadratic programming (SLQP) for solving production optimization problem are carried out. Results indicate that the gradient-based adjoint coupled with IITRF-SQP was able to improve net present value (NPV) through optimal production profiles with better computational efficacy via reduced convergence time and number of gradient and objective function evaluations.
非线性约束生产优化的伴随不精确信赖域方法
生产优化是在给定的状态和经济约束下,寻求最佳的井控和进度计划,以提高油藏性能的方法。通过伴随梯度优化确定最优注入和生产控制策略是当今现代油藏管理中众所周知的做法。然而,处理非线性控制输入、状态和输出约束是相当繁琐的,并且会影响实际生产最优控制问题中使用的优化算法的计算效率。本文提出了一种基于伴随的内点不精确信任滤波序列二次规划(IITRF-SQP)方法,用于求解约束生产优化问题。非精确信任域是滤波器信任域方法的扩展,用于控制输入约束雅可比矩阵高维且计算成本高的情况。输出约束使用一种称为修正势垒-增广拉格朗日的内点法处理,其中不等式约束用修正势垒项处理,等式约束用增广拉格朗日项处理。该算法利用复合步计算得到的雅可比矩阵的近似信息,消除了直接计算雅可比矩阵和Hessians(梯度)的代价。利用伴随法计算提供目标函数临界度量的梯度信息。给出了两个最优水驱数值实验。将所提出的IITRF-SQP方法与拉格朗日障碍法和顺序线性二次规划(SLQP)求解生产优化问题进行了性能比较。结果表明,基于梯度的伴随函数与IITRF-SQP耦合能够通过优化生产剖面来提高净现值(NPV),并且通过减少收敛时间和梯度和目标函数评估次数来提高计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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