Intelligent search for accurate solutions to the planning open-pit mining

A. A. Zuenko, R. Makedonov, Yurii A. Oleynik
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引用次数: 1

Abstract

A method of intelligent search for accurate solutions to the planning of open-pit mining has been developed. The method is implemented within the framework of the Constraint Programming Paradigm that allows us to process heterogeneous qualitative and quantitative constraints (in particular, economic, technological, etc.) simultaneously, as well as to maintain the model of subject domain being developed which is open to adding new constraints or deleting existing constraints. Various constraints can be added to the model, including those for which it is difficult to find a suitable analytical expression. In contrast to existing methods of local search the proposed method systematically explores the search space. The method allows us to find a global optimum in large dimensional spaces that describe practically significant problems arising in production. Currently, to solve this problem, the methods of integer linear programming are widely used. But its fundamental disadvantage is the need to represent all the constraints in the form of linear equalities and inequalities. However, in practice, some combinatorial optimization problems cannot be linearized and solved using traditional methods of mathematical programming. The developed method is illustrated by the example of a three-dimensional problem of finding the position of an intermediate pit wall by the processing periods taking into account the specified performance for mineral and overburden rocks and the objective profit function taking into account discounting. The types of constraints necessary for modeling the problem under consideration are identified. The possibility of applying the existing inference procedures on constraints is considered for these types. The method proposed makes it possible to obtain accurate solutions due to the intellectualization of the solution process by using highly efficient algorithms of reducing the search space for each type of constraints and specialized heuristics for pruning unpromising alternatives in the search tree.
智能搜索为露天开采规划提供精确的解决方案
提出了一种露天矿开采规划精确解的智能搜索方法。该方法在约束编程范式的框架内实现,该框架允许我们同时处理异构的定性和定量约束(特别是经济、技术等),并维护正在开发的主题领域模型,该模型可以开放地添加新的约束或删除现有的约束。可以向模型中添加各种约束,包括那些难以找到合适的解析表达式的约束。与现有的局部搜索方法相比,该方法系统地探索搜索空间。该方法使我们能够在描述生产中出现的实际重大问题的大维度空间中找到全局最优。目前,为了解决这一问题,普遍采用整数线性规划方法。但它的根本缺点是需要用线性等式和不等式的形式来表示所有的约束。然而,在实际应用中,一些组合优化问题不能线性化,不能用传统的数学规划方法求解。通过考虑矿物和覆岩的特定性能和考虑折现的目标利润函数的处理周期确定中间坑壁位置的三维问题的实例说明了所开发的方法。确定了对所考虑的问题进行建模所需的约束类型。考虑了对这些类型的约束应用现有推理过程的可能性。由于求解过程的智能化,该方法使用了高效的算法来减少每种约束的搜索空间,并使用了专门的启发式算法来修剪搜索树中没有希望的备选项,因此可以获得准确的解。
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