Non-intrusive Load Monitoring Method Based on BIC Event Detection and LSTM Network Model

Lei Lu, Dan Yu, P. Lin, Chao Gu, Junguo Feng, Shunyao Yang
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引用次数: 1

Abstract

A non-intrusive load monitoring method based on Bayesian Information Criterion(BIC) event detection and long short-term memory(LSTM) network model is proposed for the current deep learning-based non-intrusive load monitoring algorithms with high event detection requirements. Firstly, we use the sliding window-based BIC algorithm for event detection, design a unified LSTM network model with low complexity, and finally input the detected events into the LSTM model for recognition. The introduced fast event detection algorithm and the modified LSTM network model improve the accuracy of the algorithm. The overall performance of the proposed algorithm is tested on AMPds dataset and real data. The simulation results show that the above method can effectively improve the accuracy and outperform existing algorithms.
基于BIC事件检测和LSTM网络模型的非侵入式负荷监控方法
针对目前对事件检测要求较高的基于深度学习的非侵入性负荷监测算法,提出了一种基于贝叶斯信息准则(BIC)事件检测和LSTM网络模型的非侵入性负荷监测方法。首先,我们使用基于滑动窗口的BIC算法进行事件检测,设计一个统一的低复杂度LSTM网络模型,最后将检测到的事件输入到LSTM模型中进行识别。引入的快速事件检测算法和改进的LSTM网络模型提高了算法的准确性。在AMPds数据集和实际数据上对该算法的总体性能进行了测试。仿真结果表明,该方法能有效提高识别精度,优于现有算法。
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