...
首页> 外文期刊>Engineering Technology and Applied Science Research >An End-to-End Machine Learning based Unified Architecture for Non-Intrusive Load Monitoring
【24h】

An End-to-End Machine Learning based Unified Architecture for Non-Intrusive Load Monitoring

机译:基于端到端机基于非侵入式负载监控的统一架构

获取原文
           

摘要

Non-Intrusive Load Monitoring (NILM) or load disaggregation aims to analyze power consumption by decomposing the energy measured at the aggregate level into constituent appliances level. The conventional load disaggregation framework consists of signal processing and machine learning-based pipelined architectures, respectively for explicit feature extraction and decision making. Manual feature selection in such load disaggregation frameworks leads to biased decisions that eventually reduce system performance. This paper presents an efficient End-to-End (E2E) approach-based unified architecture using Gated Recurrent Units (GRU) for NILM. The proposed approach eliminates explicit feature engineering and has a unified classification and prediction model for appliance power. This eventually reduces the computational cost and enhances response time. The performance of the proposed system is compared with conventional algorithms' with the use of recall, precision, accuracy, F1 score, the relative error in total energy and Mean Absolute Error (MAE). These evaluation metrics are calculated on the power consumption of top priority appliances of Reference Energy Disaggregation Dataset (REDD). The proposed architecture with an overall accuracy of 91.2 and MAE of 25.23 outperforms conventional methods for all electrical appliances. It has been showcased through a series of experiments that feature extraction and event-based approaches for NILM can readily be replaced with E2E deep learning techniques allowing simpler and cost-efficient implementation pathways.
机译:非侵入式负荷监测(NILM)或负载分解旨在通过将聚集水平测量的能量分解成组成设备水平来分析功耗。传统的负载分解框架包括信号处理和基于机器学习的流水线架构,分别用于显式特征提取和决策。这种负载分解框架中的手动功能选择导致偏置的决策最终降低系统性能。本文介绍了一种使用Gated经常性单元(GRU)的基于基于端到端的统一架构,用于尼尔。所提出的方法消除了显式特征工程,并具有统一的电器功率分类和预测模型。这最终降低了计算成本并增强了响应时间。将所提出的系统的性能与传统算法的性能进行比较,随着召回,精度,精度,F1得分,总能量的相对误差和平均误差(MAE)。这些评估度量计算在参考能量分配数据集(REDD)的顶级优先级设备的功耗下计算。所提出的架构具有91.2和MAE的整体精度为25.23,优于所有电器的常规方法。它已经通过一系列实验展示了一种实验,即尼尔的特征提取和基于事件的方法可以容易地替换为E2E深度学习技术,允许更简单且具有成本效益的实现路径。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号