论文标题
一种提高梯度的方法,用于最佳选择储层水中的投标策略
A gradient boosting approach for optimal selection of bidding strategies in reservoir hydro
论文作者
论文摘要
电力生产商使用广泛的决策支持系统来管理和计划日间电力市场的销售,并且他们经常面临着在任何一天中选择最有利的竞标策略的挑战。直到斑点清理后,最佳解决方案才知道。所使用的模型和策略的结果及其对盈利能力的影响可以连续注册,也可以使用历史数据模拟。访问越来越多的数据将用于应用机器学习模型,以预测任何给定一天的模型和策略的最佳组合。在本文中,已经通过域知识和机器学习技术(梯度增强和神经网络)的结合来分析了几年来两种给定招标策略的历史表现。已经评估了在投标前可以访问模型的各种变量,以预测给定一天的最佳策略。结果表明,机器学习模型可以学会略大胜过静态策略,在该策略中,根据整体历史表现选择一种竞标方法。
Power producers use a wide range of decision support systems to manage and plan for sales in the day-ahead electricity market, and they are often faced with the challenge of choosing the most advantageous bidding strategy for any given day. The optimal solution is not known until after spot clearing. Results from the models and strategy used, and their impact on profitability, can either continuously be registered, or simulated with use of historic data. Access to an increasing amount of data opens for the application of machine learning models to predict the best combination of models and strategy for any given day. In this article, historical performance of two given bidding strategies over several years have been analyzed with a combination of domain knowledge and machine learning techniques (gradient boosting and neural networks). A wide range of variables accessible to the models prior to bidding have been evaluated to predict the optimal strategy for a given day. Results indicate that a machine learning model can learn to slightly outperform a static strategy where one bidding method is chosen based on overall historic performance.