Second Order Volterra Filter for Appliance Modelling

M. Akram, Neelanga Thelasingha, R. Godaliyadda, Parakrama B. Ekanayake, J. Ekanayake
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引用次数: 1

Abstract

Availability of large quantities of residential electrical consumption data is bringing considerable attention towards load monitoring, load forecasting, load disaggregation and demand response. Load modelling is the first and most essential step in achieving all the above said tasks. Even though many appliance modelling schemes are presented in the literature, no considerably influential work has been done on modelling appliances under voltage fluctuating environment. Motivated by this fact, we present the design and analysis of a Volterra based appliance modelling scheme which can be used in a voltage fluctuating environment. Principles of Volterra filter, least mean square algorithm for Volterra filter coefficient approximation and applicability of Volterra filter for appliance modelling are discussed. Further, a case study is presented to validate and identify the performance of the model using a data set obtained from a real household. Obtained results show that, Volterra filter can be utilized as an efficient tool for appliance modelling in a supply voltage fluctuating environment. Finally, how Volterra filter modelling can be extended to achieve the non intrusive load monitoring task is discussed.
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用于器具造型的二阶Volterra滤波器
大量住宅用电数据的可用性引起了人们对负荷监测、负荷预测、负荷分解和需求响应的极大关注。负载建模是实现上述所有任务的第一步,也是最重要的一步。尽管文献中提出了许多电器的建模方案,但在电压波动环境下对电器的建模方面还没有做过相当有影响力的工作。基于这一事实,我们提出了一种基于Volterra的电器建模方案的设计和分析,该方案可用于电压波动环境。讨论了伏特拉滤波器的原理、伏特拉滤波器系数近似的最小均方算法以及伏特拉滤波器在电器建模中的适用性。此外,本文还提出了一个案例研究,使用从真实家庭获得的数据集来验证和识别模型的性能。结果表明,Volterra滤波器可以作为电源电压波动环境下电器建模的有效工具。最后,讨论了如何扩展Volterra滤波器模型以实现非侵入式负载监测任务。
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