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Approximate Greatest Descent Methods for Optimization with Equality Constraints

机译:具有等式约束优化的近似最大下降法

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In an optimization problem with equality constraints the optimal value function divides the state space into two parts. At a point where the objective function is less than the optimal value, a good iteration must increase the value of the objective function. Thus, a good iteration must be a balance between increasing or decreasing the objective function and decreasing a constraint violation function. This implies that at a point where the constraint violation function is large, we should construct noninferior solutions relative to points in a local search region. By definition, an accessory function is a linear combination of the objective function and a constraint violation function. We show that a way to construct an acceptable iteration, at a point where the constraint violation function is large, is to minimize an accessory function. We develop a two-phases method. In Phase I some constraints may not be approximately satisfied or the current point is not close to the solution. Iterations are generated by minimizing an accessory function. Once all the constraints are approximately satisfied, the initial values of the Lagrange multipliers are defined. A test with a merit function is used to determine whether or not the current point and the Lagrange multipliers are both close to the optimal solution. If not, Phase I is continued. If otherwise, Phase II is activated and the Newton method is used to compute the optimal solution and fast convergence is achieved.
机译:在具有等式约束的优化问题中,最优值函数将状态空间分为两部分。在目标函数小于最佳值时,良好的迭代必须增加目标函数的值。因此,良好的迭代必须是增加或减少目标函数与减少约束违反函数之间的平衡。这意味着在约束违反函数较大的点上,我们应该构造相对于局部搜索区域中的点的劣等解。根据定义,辅助函数是目标函数和约束违反函数的线性组合。我们表明,在约束违反函数较大的时候构造可接受的迭代的方法是最小化辅助函数。我们开发了一种两阶段方法。在阶段I中,可能无法满足某些约束条件,或者当前点距离解决方案不近。通过最小化附件功能来生成迭代。一旦满足所有约束条件,就定义了拉格朗日乘数的初始值。使用具有优值函数的测试来确定当前点和拉格朗日乘数是否都接近最佳解。如果没有,则继续第一阶段。否则,将激活阶段II,并使用牛顿法来计算最佳解,从而实现快速收敛。

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