乳品企业电能消耗预测的系统辨识

L. Frosini, G. Petrecca
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引用次数: 4

摘要

提出了一种基于黑盒技术的乳品企业电能消耗预测系统识别方法。这种预测是意大利自由能源市场所需要的,在那里,能源卖家的目标是根据提前几天安排的负荷流来销售能源。黑箱识别被用作替代能源调查的公司。系统的输入是各工艺单元的工作班次,输出是电能消耗。对线性和神经两种黑箱参数模型进行了评价,并采用主成分分析法对数据进行了预处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
System identification for the prediction of the electric energy consumption of a dairy firm
A system identification method based on black-box techniques for the prediction of the electric energy consumption in a dairy firm is presented. This prediction is required by the Italian free energy market where the energy sellers aim at selling energy according to a load flow scheduled some days in advance. The black-box identification is employed as an alternative to an energy investigation of the firm. The inputs of the system are the work shifts of each process unit and the output is the electric energy consumption. Two black-box parametric models have been evaluated-linear and neural-and the principal component analysis method has been employed to preprocess the data.
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