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Appliance Identification Algorithm for a Non-Intrusive Home Energy Monitor Using Cogent Confabulation

机译:基于Cogent的非侵入式家庭能源监控器设备识别算法

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摘要

This paper presents an appliance identification algorithm for use with a non-intrusive home energy monitor based on a cogent confabulation neural network. As a cogent confabulation neural network does not require multiplications during the identification phase, it is an effective choice for systems with low-computational capability. A non-intrusive home energy monitor needs to learn not only the energy patterns of individual appliances but also those of combinations of appliances. To relieve the burden of learning power patterns of the combinations, this paper proposes a parameter-building scheme based on the parameters of individual appliances. The proposed algorithm is evaluated on datasets prepared by the reference energy disaggregation dataset and the authors. The average success rate was 83.8% for up to eight appliances and showed better performance than the combinatorial optimization and artificial neural network approaches.
机译:本文提出了一种基于cogent人工神经网络的非侵入式家庭能源监控器的设备识别算法。由于有效的人工神经网络在识别阶段不需要乘法,因此对于具有低计算能力的系统而言,它是一种有效的选择。非侵入式家庭能源监控器不仅需要学习单个设备的能源模式,而且还需要学习设备组合的能源模式。为了减轻组合学习能力模式的负担,本文提出了一种基于单个设备参数的参数构建方案。在参考能量分解数据集和作者准备的数据集上对提出的算法进行了评估。多达八种设备的平均成功率为83.8%,并且比组合优化和人工神经网络方法显示出更好的性能。

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