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Construction of global optimization constrained NLP test cases from unconstrained problems

机译:从无约束的问题构造全局优化约束的NLP测试用例

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This paper presents a novel construction technique for constrained nonconvex Nonlinear Programming Problem (NLP) test cases, derived from the evaluation tree structure of standardized bound constrained problems for which the global solution is known. It is demonstrated in a step-by-step procedure how first an equality constrained problem can be derived from an unconstrained one, with bounds imposed on all variables, using the Directed Acyclic Graph (DAG) of the unconstrained objective function and the use of interval arithmetic to derive bounds for the new variables introduced. An advantage of the proposed methodology is that several standard unconstrained global optimization test cases can be constructed for varying number of optimization variables, thus leading to adjustable size derived NLP's. Further to this in a second step it is demonstrated how any subset of the equalities derived can be relaxed into inequalities giving an equivalent optimization problem. Finally, in a third step it is demonstrated how, by reducing the number of equality constraints derived, it is possible to obtain more complex expressions in the constraints and objective function. The methodology is highlighted throughout by motivating examples and a sample code in Mathematica (TM) is provided in the Appendix. (C) 2016 The Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:本文提出了一种新的约束非凸非线性规划问题(NLP)测试用例的构造技术,该技术源自已知有全局解的标准化约束约束问题的评估树结构。通过分步过程演示了如何首先使用不受约束的目标函数的有向无环图(DAG)和区间的使用,从不受约束的问题导出等式约束问题,并在所有变量上施加边界推导引入的新变量的界限的算法。所提出的方法的优点在于,可以针对不同数量的优化变量构造几个标准的无约束全局优化测试用例,从而导致可调整大小的NLP。进一步在第二步中,证明了如何将得出的等式的任何子集放宽为不等式,从而给出等效的优化问题。最后,在第三步中,演示了如何通过减少派生的相等约束的数量来获得约束和目标函数中更复杂的表达式。通过激励示例来突出强调该方法,附录中提供了Mathematica(TM)中的示例代码。 (C)2016化学工程师学会。由Elsevier B.V.发布。保留所有权利。

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