Disaggregating Convolutional Analysis Sparse Coding

A. Majumdar
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Abstract

This work proposes a convolutional analysis sparse coding based formulation for energy disaggregation. The resulting technique is shift-invariant and hence can learn to represent different devices through very few filters (compared to sparse coding based disaggregation). Consequently, this is less prone to over-fitting and hence improves disaggregation results. The technique is very fast, owing to closed form updates in the operational stage. Comparison has been carried out with some well known benchmarks on the REDD dataset. Results show that our method yields the most accurate results and is faster than most benchmarks.
分解卷积分析 稀疏编码
这项研究提出了一种基于卷积分析稀疏编码的能量分解方法。由此产生的技术是移位不变的,因此可以通过很少的滤波器(与基于稀疏编码的分解技术相比)来学习表示不同的设备。因此,这种方法不易过度拟合,从而改善了分解结果。由于在操作阶段采用封闭式更新,该技术的运行速度非常快。我们在 REDD 数据集上与一些著名的基准进行了比较。结果表明,我们的方法产生了最准确的结果,而且比大多数基准更快。
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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