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Production Optimization With Adjoint Models Under Nonlinear Control-State Path Inequality Constraints

机译:非线性控制状态路径不等式约束下伴随模型的生产优化

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The general petroleum-production optimization problem falls into the category of optimal control problems with nonlinear control-state path inequality constraints (i.e., constraints that must be satisfied at every time step), and it is acknowledged that such path constraints involving state variables can be difficult to handle. Currently, one category of methods implicitly incorporates the constraints into the forward and adjoint equations to address this issue. However, these methods either are impractical for the production optimization problem or require complicated modifications to the forward-model equations (the simulator). Therefore, the usual approach is to formulate this problem as a constrained nonlinear-programming (NLP) problem in which the constraints are calculated explicitly after the dynamic system is solved. The most popular of this category of methods for optimal control problems has been the penalty-function method and its variants, which are, however, extremely inefficient. All other constrained NLP algorithms require a gradient for each constraint, which is impractical for an optimal control problem with path constraints because one adjoint must be solved for each constraint at each time step in every iteration. The authors propose an approximate feasible-direction NLP algorithm based on the objective-function gradient and a combined gradient for the active constraints. This approximate feasible direction is then converted into a true feasible direction by projecting it onto the active constraints and solving the constraints during the forward-model evaluation itself. The approach has various advantages. First, only two adjoint evaluations are required in each iteration. Second, the solutions obtained are feasible (within a specified tolerance) because feasibility is maintained by the forward model itself, implying that any solution can be considered a useful solution. Third, large step sizes are possible during the line search, which may lead to significant reductions in the number of forward-and adjoint-model evaluations and large reductions in the magnitude of the objective function. Through two examples, the authors demonstrate that this algorithm provides a practical and efficient strategy for production optimization with nonlinear path constraints.
机译:一般的石油生产优化问题属于具有非线性控制状态路径不等式约束(即必须在每个时间步必须满足的约束)的最优控制问题,并且公认可以将涉及状态变量的此类路径约束设为难以处理。当前,一类方法将约束隐式地合并到正向方程和伴随方程中,以解决此问题。但是,这些方法对于生产优化问题不切实际,或者需要对正向模型方程式(模拟器)进行复杂的修改。因此,通常的方法是将此问题表述为约束非线性规划(NLP)问题,其中在求解动态系统后明确计算约束。在这类用于最佳控制问题的方法中,最受欢迎的是罚函数法及其变体,但是效率极低。所有其他受约束的NLP算法都需要为每个约束添加一个梯度,这对于具有路径约束的最优控制问题是不切实际的,因为必须在每次迭代的每个时间步上为每个约束求解一个伴随。作者提出了一种基于目标函数梯度和主动约束的组合梯度的近似可行方向NLP算法。然后,通过将其投影到活动约束上并在正向模型评估本身中求解约束,将该近似可行方向转换为真实可行方向。该方法具有各种优点。首先,每次迭代仅需要两次伴随评估。其次,获得的解决方案是可行的(在指定的公差范围内),因为可行性是由正向模型本身维护的,这意味着任何解决方案都可以视为有用的解决方案。第三,在行搜索期间可能会出现较大的步长,这可能会导致前向模型和伴随模型评估的数量显着减少,并且目标函数的大小也会显着减少。通过两个示例,作者证明了该算法为具有非线性路径约束的生产优化提供了一种实用而有效的策略。

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