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A method for aggregating external operating conditions in multi-generation system optimization models

机译:一种在多代系统优化模型中聚合外部操作条件的方法

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摘要

This paper presents a novel, simple method for reducing external operating condition datasets to be used in multi-generation system optimization models. The method, called the Characteristic Operating Pattern (CHOP) method, is a visually-based aggregation method that clusters reference data based on parameter values rather than time of occurrence, thereby preserving important information on short-term relations between the relevant operating parameters. This is opposed to commonly used methods where data are averaged over chronological periods (months or years), and extreme conditions are hidden in the averaged values. The CHOP method is tested in a case study where the operation of a fictive Danish combined heat and power plant is optimized over a historical 5-year period. The optimization model is solved using the full external operating condition dataset, a reduced dataset obtained using the CHOP method, a monthly-averaged dataset, a yearly-averaged dataset, and a seasonal peak/off-peak averaged dataset. The economic result obtained using the CHOP-reduced dataset is significantly more accurate than that obtained using any of the other reduced datasets, while the calculation time is similar to those obtained using the monthly averaged and seasonal peak/off-peak averaged datasets. The outcomes of the study suggest that the CHOP method is advantageous compared to chronology-averaging methods in reducing external operating condition datasets to be used in the design optimization models of flexible multi-generation systems.
机译:本文提出了一种新颖,简单的方法,用于减少要在多代系统优化模型中使用的外部运行状况数据集。该方法称为“特征操作模式(CHOP)”,是一种基于视觉的聚合方法,可基于参数值而不是出现时间对参考数据进行聚类,从而保留有关相关操作参数之间短期关系的重要信息。这与常用方法相反,在常规方法中,数据是按时间顺序(数月或数年)进行平均的,而极端条件则隐藏在平均值中。在一个案例研究中对CHOP方法进行了测试,其中在过去的5年中优化了虚拟的丹麦联合热电厂的运行。使用完整的外部运行条件数据集,使用CHOP方法获得的简化数据集,每月平均数据集,年度平均数据集和季节性高峰/非高峰平均数据集来求解优化模型。使用CHOP缩减的数据集所获得的经济结果比使用其他缩减的数据集所获得的经济结果要准确得多,而计算时间与使用月平均和季节性高峰/非高峰平均数据集所获得的计算时间相似。研究结果表明,与按时间顺序平均的方法相比,CHOP方法在减少要用于柔性多代系统设计优化模型的外部工况数据集方面更具优势。

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