Long Short-Term Memory in Intelligent Buildings

Will Serrano
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Abstract

This paper presents Long Short-Term Memory (LSTM) in iBuilding: Artificial Intelligence in Intelligent Buildings. LSTM networks are widely used in time series data as their learning algorithm does not present exploding and vanishing gradient descent issues as traditional recurrent neural networks with back propagation learning algorithms. This paper proposes the use of LSTM networks to predict the values of the different iBuilding variables, such as environmental conditions, energy consumption or occupancy. Intelligent Buildings are used as an investment portfolio, Technology and Artificial Intelligence plays a critical role to make a successful Return on Investment (ROI). The business case and main driver to use Artificial Intelligence in Intelligent Buildings is to predict the future value of iBuilding variables therefore preventive action can be taken in the present to reduce OPEX costs such as decreasing overnight heating due low predicted low occupancy or preventive maintenance on mechanical and electrical assets such as lifts with fault detection and diagnosis. The predictions of the proposed LSTM in iBuilding has been validated with several public datasets against other predictors. The obtained results demonstrate that LSTM networks are more accurate than the Linear Regression (LR) model, typically used within the embedded predictors found on common spreadsheet software.
智能建筑中的长短期记忆
本文介绍了iBuilding中的长短期记忆(LSTM):智能建筑中的人工智能。LSTM网络由于其学习算法不像传统的带反向传播学习算法的递归神经网络那样存在梯度下降爆炸和消失的问题,在时间序列数据中得到了广泛的应用。本文提出使用LSTM网络来预测不同的iBuilding变量的值,如环境条件、能源消耗或占用。智能建筑作为一种投资组合,技术和人工智能在成功的投资回报率(ROI)中起着至关重要的作用。在智能建筑中使用人工智能的商业案例和主要驱动因素是预测iBuilding变量的未来价值,因此目前可以采取预防措施来降低运营成本,例如由于预测的低占用率而减少夜间供暖,或对机械和电气资产(如具有故障检测和诊断的电梯)进行预防性维护。iBuilding中提出的LSTM的预测已经用几个公共数据集对其他预测器进行了验证。获得的结果表明,LSTM网络比线性回归(LR)模型更准确,线性回归(LR)模型通常用于普通电子表格软件上的嵌入式预测器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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