Contracted Capacity Optimization Problem of Industrial Customers with Risk Assessment

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY
Shih-Hsin Tai, Ming-Tang Tsai, Wen-Hsien Huang, Yon-Hon Tsai
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引用次数: 0

Abstract

This study developed a risk assessment tool for contract capacity optimization problems using the ant colony optimization and auto-regression model. Based on the historical data of demand consumption, the Least Square algorithm, the Recursive Levinson–Durbin algorithm, and the Burg algorithm were used to derive the auto-regression model. Then, ant colony optimization was used to search for the auto-regression model’s best p-order parameters. To avoid the risk of setting the contract capacity, this paper designed the risk tolerance parameter β to correct the predicted value of the auto-regression model. Ant colony optimization was also used to search for the optimal contract capacity with risk assessment under the two-stage time-of-use and three-stage time-of-use. This study employed an industrial consumer with high voltage power in Taiwan as the research object, used the AR model to estimate the contract capacity under the risk assessment, and cut back electricity usage to reduce the operation cost. The results can be used as a basis to develop an efficient tool for industrial customers to select contract capacities with risks to obtain the best economic benefits.
带风险评估的工业客户合同容量优化问题
本研究利用蚁群优化和自动回归模型为合同容量优化问题开发了一种风险评估工具。根据需求消费的历史数据,使用最小平方算法、递归列文森-杜宾算法和伯格算法推导出自动回归模型。然后,采用蚁群优化法寻找自动回归模型的最佳 p 阶参数。为了避免设定合同容量的风险,本文设计了风险容忍度参数 β 来修正自动回归模型的预测值。本文还采用了蚁群优化方法,在两阶段使用时间和三阶段使用时间下,寻找带有风险评估的最优合同容量。本研究以台湾某高压电工业用户为研究对象,利用 AR 模型估算了风险评估下的合同容量,并削减了用电量,降低了运营成本。研究结果可作为开发有效工具的基础,供工业用户选择具有风险的合同容量,以获得最佳经济效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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