The Implementation of Building Intelligent Smart Energy using LSTM Neural Network

I. A. Dahlan, Dananjaya Ariateja, F. Hamami, Heryanto
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引用次数: 1

Abstract

Internet of Things (IoT) makes many devices getting smarter and more connected in the 4.0 industrial revolution. One of the implementations of the Internet of Things is smart energy. It allows communication between humans or between things that make a building smarter. This paper proposes the implementation of the MQTT-based smart meter. The smart meter is used to make it easier for users to monitor and manage the energy consumption of buildings in real-time. It is considered as the main component of a smart network to make efficient and manage energy consumption remotely. Taking into account the increasing demand for electricity in Indonesia, smart meters can reduce overall energy use and reduce global warming by optimizing energy utilization through the internet of things and artificial intelligence. This paper proposes the implementation of the MQTT-based smart meter. This smart meter can measure energy consumption, transmit information related to the energy used, and provide an early warning system to stakeholders through the website in real-time analytics with predictive data on the following month and what days are most used to support energy consumption efficiency planning. This study conducted LTSM and ARIMA to determine forecasting energy consumption with 59 epochs, 8 batch sizes, 64 hidden layers with the results of MSE Error, RMSE Error, Mean Accuracy 0.14,0.373, and 95.16%, respectively. This result is better than ARIMA with MSE error results of 0.812 and 0.66 and RMSE error.
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利用LSTM神经网络实现建筑智能智能能源
物联网(IoT)使许多设备在4.0工业革命中变得更加智能和连接。物联网的实现之一是智能能源。它允许人与人之间或物与物之间的交流,使建筑更智能。本文提出了基于mqtt的智能电表的实现方案。智能电表的使用是为了方便用户实时监控和管理建筑物的能源消耗。它被认为是智能网络的主要组成部分,可以实现远程高效管理能源消耗。考虑到印尼日益增长的电力需求,智能电表可以通过物联网和人工智能优化能源利用,减少整体能源使用,减少全球变暖。本文提出了基于mqtt的智能电表的实现方案。这款智能电表可以测量能源消耗,传输与能源使用相关的信息,并通过网站实时分析预测数据,为利益相关者提供预警系统,以支持能源消耗效率规划。本文采用LTSM和ARIMA方法确定了59个epoch、8个batch size、64个hidden layer的预测能耗,MSE Error、RMSE Error、Mean Accuracy分别为0.14、0.373和95.16%。该结果优于MSE误差结果分别为0.812和0.66的ARIMA和RMSE误差。
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