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Development of Arduino Microcontroller Based Non-Intrusive Appliances Monitoring System Using Artificial Neural Network

机译:基于人工神经网络的基于Arduino微控制器的Arduino微控制器监测系统

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Non-Intrusive Load Monitoring (NILM) is a process of identifying the connected loads in a premises from the measurements obtained at the service entry. That is, through NILM one can tell the operating conditions (ON or OFF) of the house appliances from the aggregated measurements takenat the service drop. The method is more advanced than the traditional method which require measuring sensors for every load of interest. In an effort to explore the applicability of NILM in home appliances’ recognition, this paper presents the development of a home NILM using arduinomicrocontroller. Aggregated real power (P ), rms current (Irms) and power factor (pf ) of the connected appliances are used as an offline data to train a feed forward ANN whose output is the pattern of the connected loads. Four different home appliances are experimented in generatingthe training data and the ANN model is implemented in the arduino program to identify the loads. Experimental analysis on the monitoring system shows that it can accurately recognize the load patterns when the supply voltage is within the range of 240 V and the pattern may not be recognizedwhen the input voltage deviated from 240 V. The developed system can be applied into home appliances management and control for efficient energy utilization, the operation of which can be assessed without entering into the consumer privacy.
机译:非侵入式负载监视(NILM)是从服务条目中获得的测量中识别所连接的负载的过程。也就是说,通过尼尔姆可以从汇总测量采用服务下降的聚合测量来讲述房具的操作条件(开启或关闭)。该方法比需要测量传感器的传统方法更先进,因为每次感兴趣的负荷都有测量传感器。努力探索尼尔在家电“认可”中的适用性,本文介绍了使用Arduinomrocontroller的家庭尼尔的开发。连接设备的聚合实际功率( p),rms电流(IRMS)和功率因数( pf)用作训练前馈通处的离线数据,其输出是连接负载的图案。在生成训练数据时尝试四种不同的家用电器,并且ANN模型在Arduino程序中实现以识别负载。监控系统的实验分析表明,当电源电压在240V的范围内时,它可以准确地识别负载模式,并且图案可能无法识别出从240 V偏离的输入电压。开发系统可以应用于家用电器管理和控制有效能量利用,可在不进入消费者隐私的情况下进行评估的操作。

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