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Incremental-like bundle methods with application to energy planning

机译:类增量方法在能源计划中的应用

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An important field of application of non-smooth optimization refers to decomposition of large-scale or complex problems by Lagrangian duality. In this setting, the dual problem consists in maximizing a concave non-smooth function that is defined as the sum of sub-functions. The evaluation of each sub-function requires solving a specific optimization sub-problem, with specific computational complexity. Typically, some sub-functions are hard to evaluate, while others are practically straightforward. When applying a bundle method to maximize this type of dual functions, the computational burden of solving sub-problems is preponderant in the whole iterative process. We propose to take full advantage of such separable structure by making a dual bundle iteration after having evaluated only a subset of the dual sub-functions, instead of all of them. This type of incremental approach has already been applied for subgradient algorithms. In this work we use instead a specialized variant of bundle methods and show that such an approach is related to bundle methods with inexact linearizations. We analyze the convergence properties of two incremental-like bundle methods. We apply the incremental approach to a generation planning problem over an horizon of one to three years. This is a large scale stochastic program, unsolvable by a direct frontal approach. For a real-life application on the French power mix, we obtain encouraging numerical results, achieving a significant improvement in speed without losing accuracy.
机译:非平滑优化的重要应用领域是指通过拉格朗日对偶分解大规模或复杂问题。在这种情况下,对偶问题在于最大化凹面非光滑函数,该函数定义为子函数之和。对每个子功能的评估需要解决具有特定计算复杂性的特定优化子问题。通常,某些子功能很难评估,而其他子功能实际上很简单。当应用捆绑方法最大化此类对偶函数时,求解子问题的计算负担在整个迭代过程中占主导地位。我们建议在仅评估了双重子功能的一个子集而不是全部子功能之后,通过进行双重捆绑迭代来充分利用这种可分离结构的优势。这种增量方法已应用于次梯度算法。在这项工作中,我们改用捆绑方法的一种特殊变体,并表明这种方法与线性化不精确的捆绑方法有关。我们分析了两种增量式捆绑方法的收敛性。我们将渐进式方法应用于一到三年的发电计划问题。这是大规模的随机程序,无法通过直接的正面方法解决。对于法国混合动力汽车的实际应用,我们获得了令人鼓舞的数值结果,在不损失精度的情况下实现了速度的显着提高。

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