一种用于功率特征分析中分类比较的新型仿真数据库

H. C. Ancelmo, B. M. Mulinari, Fabiana Pottker, A. Lazzaretti, T. Bazzo, E. Oroski, D. Renaux, C. Lima, R. Linhares, Adriano Gamba
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引用次数: 4

摘要

选择最合适的检测、特征提取和分类方法是实现非侵入式负荷监测(NILM)的基本步骤。为了比较方法,需要一个正确标识和注释的数据集。在这个意义上,文献中已经提出了几个数据集,真实的和模拟的,具有不同的特征,负载和采集场景。一般来说,这些数据集的一个共同特征是没有多个同时发生的负载,在切换的负载之间保持平衡,负载事件的精确指示,以及包含噪声和谐波内容。这种限制可能包括负载分解方法之间的适当比较,从而妨碍后续任务,例如将解决方案嵌入电子系统。为了包括所有这些要求,这项工作提出了一个新的模拟数据集,使用MATLAB-Simulink模型,用真实数据验证,控制每个负载切换的瞬间,允许在每个负载的瞬态期间精确提取特征。此外,通过改变模拟的参数,如谐波含量和噪声,可以评估最先进的方法(电压-电流轨迹,离散傅立叶和小波变换)用于负载分类的性能。一般来说,在低信噪比条件下,电压-电流轨迹法是受影响最大的方法。
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A New Simulated Database for Classification Comparison in Power Signature Analysis
The selection of the most appropriate detection, feature extraction and classification method is a fundamental step for the Non-Intrusive Load Monitoring (NILM) problem. In order to compare methods, a properly identified and annotated dataset is required. In this sense, several datasets have been proposed in the literature, real and simulated, with different features, loads and acquisition scenarios. In general, a common characteristic of these datasets is the absence of multiple simultaneous loads with a balance between the loads that are switched, precise indication of load events, and inclusion of noise and harmonic content. Such limitations may comprise a proper comparison between load disaggregation methods, hindering subsequent tasks, such as embedding the solution in electronic systems. With the aim of including all these requirements, this work presents a new simulated dataset using MATLAB-Simulink models, validated with real data, that controls the instant that each load is switched, allowing to precisely extract features during the transient of each load. Additionally, by varying the parameters of the simulation such as harmonic content and noise, it is possible to evaluate the performance of state-of-the-art methods (Voltage-Current Trajectories, Discrete Fourier and Wavelet Transforms) for load classification. In general, Voltage-Current Trajectory is the most affected method in low signal-to-noise ratio condition.
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