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A Dynamic Power Features Selection Method for Multi-appliance Recognition on Cloud-Based Smart Grid

机译:基于云的智能电网多设备识别的动态电源特征选择方法

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摘要

Most current studies concerning appliance recognition focus on single appliance recognition, but for general home users, it is universal to simultaneously switch on and off multiple electric appliances. Therefore, this study discusses the recognition of a multi-appliance load, and aims to establish recognition sample data, while reducing the packet transmission quantity and computation complexity of the cloud server. This study proposes a dynamic power features selection method for multi-appliance recognition, which uses the electricity information detected by the smart meter to evaluate current operating condition and rate of change in order to dynamically determine the transmission interval time. As power features and electrical waveforms are not completely identical, the recognition architecture proposed in this study is divided approximately into two stages. The first stage of prediction is implemented by the Factorial Hidden Markov Model (FHMM), and in addition to doping out the presently probable load operation combinations, as well as their probabilities, the key point is to obtain all values after power feature standardization of each combination. The larger the value, the better the load condition combination represents the power feature. These values are ordered, and a specific percentage of the power features are selected to estimate the error of the recognition sample data, which is combined with the probability of the first stage as the final forecast result. According to the experimental results, in multi-load conditions, the first 25% of the power features have the maximum recognition of 83.75%. In the case of a single load, the first 75% of the power features have the maximum recognition of 94.59%.
机译:当前有关设备识别的大多数研究都集中在单个设备识别上,但是对于一般家庭用户而言,同时打开和关闭多个设备是普遍的。因此,本研究讨论了多设备负载的识别,并旨在建立识别样本数据,同时减少云服务器的数据包传输量和计算复杂性。这项研究提出了一种用于多设备识别的动态功率特征选择方法,该方法利用智能电表检测到的电信息来评估当前的工作条件和变化率,从而动态确定传输间隔时间。由于功率特征和电波形不完全相同,因此本研究中提出的识别体系结构大致分为两个阶段。预测的第一阶段由阶乘隐马尔可夫模型(FHMM)实现,除了计算当前可能的负载运行组合及其概率外,关键是要在每个功率特征标准化后获得所有值组合。值越大,负载条件组合代表的功率特性越好。这些值是有序的,并且选择特定百分比的幂特征以估计识别样本数据的误差,该误差与作为最终预测结果的第一阶段的概率结合在一起。根据实验结果,在多负载情况下,前25%的电源功能具有83.75%的最大识别率。在单个负载的情况下,前75%的电源功能具有94.59%的最大识别率。

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