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Prediction-Based Multi-Objective Optimization for Oil Purchasing and Distribution with the NSGA-II Algorithm

机译:NSGA-II算法的基于预测的油品购买和分配多目标优化

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摘要

Due to the uncertainty in oil markets, this paper proposes a novel approach for oil purchasing and distribution optimization by incorporating price and demand prediction, i.e., the prediction-based oil purchasing-and-distribution optimization model. In particular, the proposed method bridges the latest information technology and decision-making technique by introducing the recently proposed information technology (i.e., extreme learning machine (ELM)) into the oil purchasing-and-distribution optimization model. Two main steps are involved: market prediction and planning optimization in the proposed model. In market prediction, the ELM technique is employed to provide fast training time and accurate forecasting results for oil prices and demands. In planning optimization, two objectives of general profit maximization and inventory risk minimization are considered; and the most popular multi-objective evolutionary algorithm (MOEA), nondominated sorting genetic algorithm II (NSGA-II), is implemented to search approximate Pareto optimal solutions. For illustration and verification, the motor gasoline market in the US is focused on as the study sample, and the experimental results demonstrate the superiority of the proposed prediction-based optimization approach over its benchmark models (without market prediction and/or planning optimization), in terms of the highest profit and the lowest risk.
机译:由于石油市场的不确定性,本文提出了一种通过结合价格和需求预测,即基于预测的石油购买和分配优化模型来进行石油购买和分配优化的新方法。特别地,通过将​​最近提出的信息技术(即,极限学习机(ELM))引入到石油购买和分配优化模型中,提出的方法将最新的信息技术和决策技术联系起来。涉及两个主要步骤:建议模型中的市场预测和计划优化。在市场预测中,ELM技术用于提供快速的培训时间和针对油价和需求的准确预测结果。在计划优化中,考虑了一般利润最大化和库存风险最小化两个目标;实现了最流行的多目标进化算法(MOEA),非支配排序遗传算法II(NSGA-II)来搜索近似的帕累托最优解。为了进行说明和验证,我们以美国的汽车汽油市场为研究样本,实验结果表明,所提出的基于预测的优化方法优于其基准模型(无市场预测和/或计划优化),在最高利润和最低风险方面

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