连接物联网设备和机器学习以预测功耗:universitas Widya Dharma Pontianak案例研究

Q2 Energy
Genrawan Hoendarto, Ahmad Saikhu, Raden Venantius Hari Ginardi
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引用次数: 0

摘要

已经开发并实施了多种方法来减少对化石燃料的依赖并节约电力。然而,在减少用电量之前,准确预测用电量至关重要。由于建筑用电量占全球用电量的39%,预测建筑用电量变得越来越重要。其中,校园建筑尤其耗能。在这项研究中,我们使用蒙特卡罗(MC)模拟-对回归树(RT)算法生成的每个叶子进行训练-来预测威迪亚达摩大学Pontianak (UWDP)校园建筑的用电量。与传统方法依赖于叶片内样本的平均值不同,我们的方法结合了它们的可能性。由于RT算法容易过度拟合,因此单独训练每个叶子有望缓解这个问题。这些数据是通过几个月来测量UWDP校园大楼一层每小时的用电量来收集的。本文提出的MCRT预测算法准确率为91.61%,均方根误差为3.49,归一化均方根误差为0.09。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bridging IoT devices and machine learning for predicting power consumption: case study universitas Widya Dharma Pontianak

Multiple methods have been developed and implemented to reduce dependence on fossil fuels and conserve electricity. However, accurately predicting electricity consumption is essential before reducing it. Forecasting building electricity consumption has become increasingly critical, as buildings account for 39% of global electricity consumption. Among these, campus buildings are particularly energy-intensive. In this study, we used Monte Carlo (MC) simulations—trained on each leaf that generated by the regression tree (RT) algorithm—to predict the electricity consumption of Widya Dharma University Pontianak (UWDP)’s campus building. Unlike traditional approaches that rely on the mean of samples within a leaf, our method incorporates their likelihood. Since RT algorithms are prone to overfitting, training each leaf individually is expected to mitigate this issue. The data were collected by measuring hourly electricity consumption on one floor of the UWDP campus building over several months. The proposed MCRT prediction algorithm achieved an accuracy of 91.61%, with a Root Mean Square Error of 3.49 and a Normalized Root Mean Square Error of 0.09.

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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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