Identification of electrical appliances using non-intrusive magnetic field and probabilistic neural network (PNN)

Nurul Aishah Mohd Rosdi, F. H. Nordin, A. Ramasamy
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引用次数: 5

Abstract

The electricity waste is severe especially in large organizational buildings where the use of air conditioners, fridges and electrical motors are rampant. Due to lack of energy saving consciousness, users may not switch off this equipment after use. Thus, it would be an advantage if there exist a system that will be able to identify the appliances from one place without the residence having to go and check the state of the appliance or without having to place various sensors intrusively. Since most electrical appliances emit magnetic fields, the paper proposes to use non-intrusive magnetic field signature waveforms to identify the type of appliance used. The magnetic field emitted by table fan, blender and hairdryer are chosen for this purpose. The magnetic field from these three appliances are collected from four different measurement distances i.e. (i) 0cm (ii) 10cm (iii) 30cm and (iv) 60cm. The features of the magnetic field are then extracted and trained offline using the Probabilistic Neural Network (PNN). Once trained, the PNN shows that it is able to successfully identify the appliances regardless of the measurement distance.
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基于非侵入性磁场和概率神经网络的电器识别
电力浪费是严重的,特别是在大型组织建筑中,空调、冰箱和电动机的使用猖獗。由于缺乏节能意识,用户在使用后可能不会关闭本设备。因此,如果存在一种系统,能够从一个地方识别设备,而不需要居民去检查设备的状态,也不需要侵入性地放置各种传感器,这将是一个优势。由于大多数电器都会发射磁场,因此本文建议使用非侵入式磁场特征波形来识别所使用的电器类型。选用台式风扇、搅拌机和吹风机发出的磁场。从四个不同的测量距离,即(i) 0厘米(ii) 10厘米(iii) 30厘米和(iv) 60厘米,收集这三个器具的磁场。然后利用概率神经网络(PNN)对磁场特征进行提取和离线训练。经过训练后,PNN显示,无论测量距离如何,它都能够成功识别器具。
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