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Real-time occupancy prediction in a large exhibition hall using deep learning approach

机译:利用深层学习方法的大型展厅实时入住预测

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Intelligent control systems for optimizing the energy management of ordinary buildings and houses have been commonly studied for decades, but the development of such management systems has not been studied much in large exhibition halls. While occupancy prediction is considered as a key element of such intelligent control systems, it is not easy in a large exhibition hall due to its spatial volume and irregular movements of visitors. In this paper, we propose spatial partitioning of the hall and an occupancy prediction model based on recurrent neural network (RNN) with long short-term memory units (LSTM) to solve the mentioned problems. We test the feasibility of our RNN approaches to predict short-term and long-term occupancy using the sequence patterns for hall occupancy changes in separated multiple zones until a current time point. We demonstrate that the proposed RNN model achieves superior performance by comparing with other prediction models. Then we apply our software toolset for predicting real-time occupancy in actual exhibition events in a large exhibition hall. Our prediction software pipeline is integrated into energy management systems in the exhibition hall. (C) 2019 Elsevier B.V. All rights reserved.
机译:几十年来,通常研究了优化普通建筑物和房屋能源管理的智能控制系统,但大型展厅尚未在大型展览馆中进行多大探讨此类管理系统的发展。虽然占用预测被认为是这种智能控制系统的关键要素,但由于其空间体积和游客不规则运动,在一个大型展厅中并不容易。在本文中,我们提出了基于长期内记忆单元(LSTM)的经常性神经网络(RNN)的霍尔和占用预测模型的空间分区,以解决提到的问题。我们测试我们的RNN方法的可行性,以使用分离的多个区域的霍尔占用变化的序列模式预测短期和长期占用,直到当前时间点。我们证明所提出的RNN模型通过与其他预测模型进行比较来实现卓越的性能。然后,我们应用我们的软件工具集以预测大型展厅实际展览活动中的实时入住。我们的预测软件管道集成到展厅的能源管理系统中。 (c)2019 Elsevier B.v.保留所有权利。

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