基于小波的卷积神经网络用于下一代舰载电力系统的非侵入式负载监测

Q4 Engineering
Soroush Senemmar , Jie Zhang
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引用次数: 0

摘要

本研究基于离散小波变换信号处理和卷积神经网络(CNN),为下一代舰载电力系统(SPS)开发了非侵入式负载监测(NILM)框架。我们将所开发的 NILM 方法应用于四区中压直流 (MVDC) SPS,以评估所建议方法的有效性。中压直流 SPS 的每个区都由多个组件组成,如推进负载、脉冲负载、高斜率负载、冷却负载和酒店负载。来自主发电机的电流信号是 NILM 模型的主要输入。首先通过离散小波变换对电流信号进行处理,以创建反映每个区域所有组件状态的系数向量。然后,利用 CNN 架构模型制定并解决多类分类问题,以实时监控负载状态。案例研究结果表明,与基准方法相比,所开发的 NILM 模型能够:(i) 准确监控所有组件的状态,总准确率超过 98%;(ii) 识别独特的脉冲负载,总准确率超过 99%;(iii) 在网络/物理攻击、负载不确定性和高噪声输入等极端事件下保持负载监控功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet-based convolutional neural network for non-intrusive load monitoring of next generation shipboard Power Systems

In this study, a non-intrusive load monitoring (NILM) framework is developed for next generation shipboard power systems (SPS) based on a discrete wavelet transform signal processing and a convolutional neural network (CNN). We have applied the developed NILM method to a four-zone medium voltage direct current (MVDC) SPS to evaluate the effectiveness of the proposed method. Each zone of the MVDC SPS consists of multiple components, such as propulsion load, pulsed load, high ramp rate load, cooling load, and hotel load. The current signals from the main generators are the main inputs to the NILM model. The current signals are first processed through a discrete wavelet transform to create a coefficient vector that reflects the status of all the components in each zone. Then, a multi-class classification problem is formulated and solved using a CNN architecture model to monitor the load statuses in real time. The results of case studies show that the developed NILM model in comparison with benchmark methods can (i) accurately monitor the status of all components with a total accuracy of over 98%, (ii) identify unique pulsed loads with a total accuracy of over 99%, and (iii) sustain the functionality of load monitoring under extreme events such as cyber/physical attacks, load uncertainty, and noisy inputs.

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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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