The solution of multistage stochastic linear problems (MSLP) represents a challenge for many application areas. Long-term hydrothermal dispatch planning (LHDP) materializes this challenge in a real-world problem that affects electricity markets, economies, and natural resources worldwide. No closed-form solutions are available for MSLP and the definition of non-anticipative policies with high-quality out-of-sample performance is crucial. Linear decision rules (LDR) provide an interesting simulation-based framework for finding high-quality policies for MSLP through two-stage stochastic models. In practical applications, however, the number of parameters to be estimated when using an LDR may be close to or higher than the number of scenarios of the sample average approximation problem, thereby generating an in-sample overfit and poor performances in out-of-sample simulations. In this paper, we propose a novel regularized LDR to solve MSLP based on the AdaLASSO (adaptive least absolute shrinkage and selection operator). The goal is to use the parsimony principle, as largely studied in high-dimensional linear regression models, to obtain better out-of-sample performance for LDR applied to MSLP. Computational experiments show that the overfit threat is non-negligible when using classical non-regularized LDR to solve the LHDP, one of the most studied MSLP with relevant applications. Our analysis highlights the following benefits of the proposed framework in comparison to the non-regularized benchmark: 1) significant reductions in the number of non-zero coefficients (model parsimony), 2) substantial cost reductions in out-of-sample evaluations, and 3) improved spot-price profiles.
翻译:多阶段随机线性问题的解决方案(MSLP)是许多应用领域的一项挑战。长期热液发送规划(LHDP)在影响全球电力市场、经济和自然资源的现实世界问题中实现了这项挑战。对于MSLP来说,没有封闭式的解决方案,因此定义非预测性政策时必须具备高品质的外表性能。线性决定规则(LDR)提供了一个有趣的模拟框架,通过两阶段随机化模型为MSLP找到高质量的政策。然而,在实际应用中,使用LDR时估计的参数数量可能接近或高于对全世界电力市场、经济和自然资源产生影响的现实世界问题。对于MSLPP来说,没有封闭式的解决方案在Smal-DR模拟中,我们建议根据AdLASSO(适应性最低绝对缩压和选择操作员)为MSLP提供了一个新的常规化框架。目标在于使用以下的参数,在高水平水平级的IMLDR模型中,在对高水平的不精确性能性能分析中,在高水平的实验中,在高水平的模型中,将SDRMLDRDR 大幅应用了相关的成本性评估。